Prediction of Survival in Follicular Lymphoma Based on Molecular Features of Tumor-Infiltrating Immune Cells
Sandeep S. Dave, M.D., George Wright, Ph.D., Bruce Tan, M.D., Andreas Rosenwald, M.D., Randy D. Gascoyne, M.D., Wing C. Chan, M.D., Richard I. Fisher, M.D., Rita M. Braziel, M.D., Lisa M. Rimsza, M.D., Thomas M. Grogan, M.D., Thomas P. Miller, M.D., Michael LeBlanc, Ph.D., Timothy C. Greiner, M.D., Dennis D. Weisenburger, M.D., James C. Lynch, Ph.D., Julie Vose, M.D., James O. Armitage, M.D., Erlend B. Smeland, M.D., Ph.D., Stein Kvaloy, M.D., Ph.D., Harald Holte, M.D., Ph.D., Jan Delabie, M.D., Ph.D., Joseph M. Connors, M.D., Peter M. Lansdorp, M.D., Ph.D., Qin Ouyang, Ph.D., T. Andrew Lister, M.D., Andrew J. Davies, M.D., Andrew J. Norton, M.D., H. Konrad Muller-Hermelink, M.D., German Ott, M.D., Elias Campo, M.D., Emilio Montserrat, M.D., Wyndham H. Wilson, M.D., Ph.D., Elaine S. Jaffe, M.D., Richard Simon, Ph.D., Liming Yang, Ph.D., John Powell, M.S., Hong Zhao, M.S., Neta Goldschmidt, M.D., Michael Chiorazzi, B.A., and Louis M. Staudt, M.D., Ph.D.
Background Patients with follicular lymphoma may survive forperiods of less than 1 year to more than 20 years after diagnosis.We used gene-expression profiles of tumor-biopsy specimens obtainedat diagnosis to develop a molecular predictor of the lengthof survival.
Methods Gene-expression profiling was performed on 191 biopsyspecimens obtained from patients with untreated follicular lymphoma.Supervised methods were used to discover expression patternsassociated with the length of survival in a training set of95 specimens. A molecular predictor of survival was constructedfrom these genes and validated in an independent test set of96 specimens.
Results Individual genes that predicted the length of survivalwere grouped into gene-expression signatures on the basis oftheir expression in the training set, and two such signatureswere used to construct a survival predictor. The two signaturesallowed patients with specimens in the test set to be dividedinto four quartiles with widely disparate median lengths ofsurvival (13.6, 11.1, 10.8, and 3.9 years), independently ofclinical prognostic variables. Flow cytometry showed that thesesignatures reflected gene expression by nonmalignant tumor-infiltratingimmune cells.
Conclusions The length of survival among patients with follicularlymphoma correlates with the molecular features of nonmalignantimmune cells present in the tumor at diagnosis.
Follicular lymphoma is the second most common form of non-Hodgkin'slymphoma, accounting for about 22 percent of all cases.1 Theclinical course of follicular lymphoma is variable: in somepatients the disease is indolent and slowly progressive overa period of many years, with waxing and waning lymphadenopathy,whereas in others the disease progresses rapidly, often withtransformation to aggressive lymphoma and early death.2,3 Managementincludes observation, chemotherapy, hematopoietic stem-celltransplantation, and immunologic therapies based on antibodiesto B cells4,5,6,7 or idiotype vaccines.8,9,10 There is no conclusiveevidence that any of these approaches offers a clinically significantsurvival advantage, and hence there is no agreement concerningthe best treatment.2
The molecular and cellular mechanisms responsible for the clinicalheterogeneity of follicular lymphoma are unknown. The tumorarises from a germinal-center B cell that, in the majority ofcases, has acquired a t(14;18) translocation that deregulatesBCL2, a key gene in the regulation of cell death. Some tumorssubsequently accumulate further oncogenic aberrations that havebeen associated with transformation to diffuse large-B-celllymphoma.11 However, it is unclear whether these random geneticevents account for the clinical heterogeneity of the disease.Several clinical factors are associated with prognosis in follicularlymphoma, and some of them constitute the International PrognosticIndex (IPI).12,13,14,15,16 However, prognostic models basedon clinical variables have not been successful in determiningthe best initial treatment.
An understanding of the molecular biology that underlies thesurvival differences among patients with follicular lymphomamight provide a more accurate and rational method of risk stratificationto guide treatment and might suggest new therapeutic approachesas well. We conducted a study to determine whether the lengthof survival among patients with follicular lymphoma can be predictedby the gene-expression profiles of the tumors at diagnosis.By whole-genome microarray analysis of gene expression, we constructeda multivariate model of survival that revealed aspects of thebiology of follicular lymphoma that influenced the length ofsurvival.
Methods
Patients
Fresh-frozen tumor-biopsy specimens and clinical data from 191untreated patients who had received a diagnosis of follicularlymphoma between 1974 and 2001 were obtained from seven institutionsin North America and Europe and studied according to a protocolapproved by the National Cancer Institute's institutional reviewboard. The patients had undergone a variety of standard treatmentsafter biopsy, including various chemotherapy regimens (suchas those containing anthracyclines and purine analogues) andautologous stem-cell transplantation, or had been followed withobservation. The median age at diagnosis was 51 years (range,23 to 81), and the median follow-up time was 6.6 years (range,less than 1.0 to 28.2); the median follow-up time among patientsalive at last follow-up was 8.1 years. Additional clinical characteristicsof the patients are listed in Table 1.
Table 1. Clinical Characteristics of the Patients and Relative Risk of Death.
Gene-Expression Profiling
RNA was extracted from the biopsy specimens as previously described17and was examined for gene expression with the use of AffymetrixU133A and U133B microarrays. Lymphoid subpopulations were purifiedand stimulated.17 Monocytes were purified from lymphopheresisspecimens by magnetic sorting for CD14+ cells (Miltenyi Biotec).Cell suspensions obtained from fresh biopsy specimens were separatedby fluorescence-activated cell sorting into a CD19+, malignantsubpopulation and a CD19, nonmalignant subpopulation.Two rounds of linear amplification from total RNA were performed(Ambion).
Statistical Analysis
The statistical methods are described in detail in the Supplementary Appendix(available with the full text of this article at www.nejm.org)and in the Results section. The creation of the gene-expressionbasedmultivariate model is outlined in Figure 1A. In brief, the biopsyspecimens were divided into a training set (95 specimens) anda test set (96 specimens), which were balanced with respectto institution and the length of survival. All aspects of modeldevelopment and all tests of association between gene expressionand survival were based solely on the data from the trainingset. No prior survival analysis or subgroup analysis was attemptedwith the test set.
Figure 1. Survival and Genes Associated with Prognosis in Follicular Lymphoma.
Panel A shows an overview of survival signature analysis, the approach used for the development and validation of a survival predictor based on gene expression. Panel B shows a KaplanMeier survival curve for all the patients for whom these data were available. Panel C shows the hierarchical clustering of survival-associated genes according to their expression in the training set of 95 follicular lymphoma biopsy specimens. The data are represented in a grid format in which each column represents a single case of follicular lymphoma, and each row a single gene. The relative level of gene expression is depicted according to the color scale shown. The dendrogram shows the degree to which the expression pattern of each gene is correlated with that of the other genes; the colored bars represent sets of coordinately regulated genes, defined as gene-expression signatures. To the right of the dendrogram, the genes making up the immune-response 1 and immune-response 2 signatures that formed the survivor-predictor model are listed.
The Cox model was used to identify genes associated with survivalin the training set. The genes associated with a good prognosisand those associated with a poor prognosis were organized separatelyby hierarchical clustering,18 and genes that had correlatedexpression patterns (r>0.5) were grouped into gene-expressionsignatures. The expression levels of genes within a signaturewere averaged to create a "signature average" for each biopsyspecimen. Two signatures, termed "immune-response 1" and "immune-response2," were used to create a model in the training set in whicha survival-predictor score was assigned to each patient. Thescore was calculated as follows: (2.71 x immune-response 2 signatureaverage) (2.36 x immune-response 1 signature average).A high survival-predictor score was associated with a poor outcome.This model was then evaluated for its association with survivalin the test set.
Results
Construction of a Predictor of Survival Based on Gene Expression
To devise a gene-expressionbased model of survival infollicular lymphoma, we developed an analytical method, calledsurvival signature analysis, which is a modification of a methodpreviously used to create a molecular predictor of survivalin patients with diffuse large-B-cell lymphoma.19 The methodis summarized in Figure 1A. Its key feature is the identificationof gene-expression signatures, which are sets of coordinatelyexpressed genes that can reflect the cell of origin of the cancer,the nature of the nonmalignant cells in the biopsy specimen,and the oncogenic mechanisms responsible for the cancer.20 Survivalsignature analysis begins with the identification of genes havingexpression patterns that are statistically associated with survival.A hierarchical-clustering algorithm is then used to identifysubsets of these genes with expression patterns that are correlatedamong the cancer specimens: these subsets are operationallydefined as survival-associated signatures. By evaluating a limitednumber of survival-associated signatures, we aimed to mitigatethe multiple-comparisons problem that is inherent in the useof large gene-expression data sets to create statistical modelsof survival.21
Genomic-scale gene-expression profiling of tumor-biopsy specimensobtained from 191 patients with untreated follicular lymphomawas performed. The overall survival of this cohort is depictedin Figure 1B. To create a model of survival based on gene expression,we divided the specimens into a training set, which was usedto develop the model, and a test set, which was used to evaluateits reproducibility. Within the training set, the Cox proportional-hazardsmodel was used to identify survival-predictor genes with expressionlevels associated with long survival (good-prognosis genes)or short survival (poor-prognosis genes). A hierarchical-clusteringalgorithm was used to identify gene-expression signatures withinthe good-prognosis and poor-prognosis gene sets, according tothe genes' patterns of expression among all the specimens inthe training set. Ten clusters of coordinately regulated geneswere observed in the good-prognosis gene set or in the poor-prognosisgene set (Figure 1C). We averaged the expression levels of thecomponent genes within each signature, thereby creating a signatureaverage for each patient.
To create a multivariate model of survival, we generated differentcombinations of the 10 gene-expression signature averages andevaluated them for their ability to predict survival withinthe training set. Among models consisting of two signatures,we noted an exceptionally strong statistical synergy betweenone signature from the good-prognosis group and one from thepoor-prognosis group. These signatures were termed immune-response1 and immune-response 2 on the basis of the biologic functionof certain genes within each signature (as discussed below).Although these signatures were not the best predictors of survivalindividually, the binary model formed with them was more predictiveof survival than any other binary model. Together, these twosignatures were highly predictive of survival in the trainingset (P<0.001). Therefore, we decided to base our model onthese two signatures and to test whether any other signaturesadded to the statistical significance of the model, using astep-up procedure.22 Of the remaining eight signatures, onlyone contributed significantly to the model in the training set(P<0.01), resulting in a three-variable model of survival.
This model was associated with survival in a highly statisticallysignificant fashion in both the training set (P<0.001) andthe test set (P=0.003). However, only the immune-response 1and immune-response 2 gene-expression signatures contributedto the predictive power of the model in both sets (Table 2),and the remaining signature was therefore dropped from the model.The two-signature model was significantly associated with survivalamong patients whose specimens were included in the trainingset (P<0.001) and those whose specimens were included inthe test set (P<0.001), thus confirming the model's reproducibility.For each patient, the model generated a survival-predictor score,which ranged from 0.20 to 4.56 (SD, 0.94) in the testset. Each unit increase in the survival-predictor score wasassociated with an increase in the relative risk of death bya factor of 2.27 (95 percent confidence interval, 1.51 to 3.39)in the test set.
Table 2. Predictive Power of Gene-Expression Signatures in Follicular Lymphoma.
To visualize the predictive power of the model, we ranked thepatients according to their survival-predictor scores and dividedthem into four equal quartiles accordingly. KaplanMeierplots of overall survival showed clear differences in survivalaccording to quartile among patients whose specimens were includedin the test set (Figure 2A). The survival medians for the quartileswere as follows: quartile 1, 13.6 years; quartile 2, 11.1 years;quartile 3, 10.8 years; and quartile 4, 3.9 years.
Figure 2. Development of a Molecular Predictor of Survival in Follicular Lymphoma.
Panel A shows overall survival among the patients with biopsy specimens in the test set, according to the quartile of the survival-predictor score (SPS). Panel B shows overall survival according to the International Prognostic Index (IPI) risk group for all the patients for whom these data were available. Panel C shows overall survival among the patients with specimens in the test set for the indicated IPI risk group, stratified according to the quartile of the SPS.
Various clinical variables were significantly associated withthe probability of survival, including the IPI and some of itscomponents and the presence or absence of B symptoms (i.e.,weight loss, night sweats, or fever) (Table 1). The gene-expressionbasedmodel predicted the probability of survival independently ofeach of the clinical variables. The KaplanMeier plotshown in Figure 2B illustrates the association of the IPI withthe probability of survival. Among patients with specimens inthe test set who were at low risk (IPI score, 0 or 1) and thosewho were at intermediate risk (IPI score, 2 or 3), the gene-expressionbasedsurvival model stratified patients into groups differing bymore than five years in median survival (Figure 2C). The high-riskgroup (IPI score, 4 or 5) comprised less than 5 percent of thepatients and was omitted from this analysis. These results demonstratethat the gene-expressionbased model does not act as asurrogate for clinical variables that are known to predict survivalin follicular lymphoma; rather, the gene-expressionbasedmodel identifies distinct biologic attributes of the tumorsthat are associated with survival.
Cellular Origin of Survival-Associated Gene-Expression Signatures
The signatures in the survival model were named on the basisof the biologic function of certain genes within each signature.The immune-response 1 signature includes genes encoding T-cellmarkers (e.g., CD7, CD8B1, ITK, LEF1, and STAT4) and genes thatare highly expressed in macrophages (e.g., ACTN1 and TNFSF13B).Notably, the immune-response 1 signature is not merely a surrogatefor the number of T cells in the tumor-biopsy specimen, sincemany other standard T-cell genes (e.g., CD2, CD4, LAT, TRIM,and SH2D1A) were not associated with survival. The immune-response2 signature includes genes known to be preferentially expressedin macrophages, dendritic cells, or both (e.g., TLR5, FCGR1A,SEPT10, LGMN, and C3AR1).
To identify directly the cells that expressed these signatureswithin the tumor-biopsy specimens, the CD19+, malignant cellswere separated from the CD19, nonmalignant cells by flowsorting, and each subpopulation was profiled for gene expression.Figure 3A shows the difference in the gene-expression signatureaverages between the CD19+ and CD19 subpopulations fromfour patients. A germinal-center B-cell signature was constructedfrom genes known to be overexpressed at this stage of B-celldifferentiation20 (specifically, MME, MEF2C, BCL6, LMO2, PRSPAP2,MBD4, EBF, and MYBL1). The malignant cells in follicular lymphomaare of germinal-center origin, and the CD19+, malignant fractionwould therefore be expected to express this signature highly,as was found to be the case in the sorted samples (Figure 3A).In contrast, the immune-response 1 and immune-response 2 signatureaverages were higher in the CD19, nonmalignant cellsfrom the tumors. Moreover, most of the component genes of theimmune-response 1 and immune-response 2 signatures were expressedmore highly in the CD19, nonmalignant cells than in theCD19+, malignant cells (Figure 3B).
Figure 3. Cellular Origin of the Survival-Associated Gene-Expression Signatures.
Panel A shows the relative expression of the survival-associated signature averages in the CD19+ and CD19 subpopulation of cells isolated from four biopsy specimens from patients with follicular lymphoma. Panel B shows the expression of individual genes in the survival-associated gene-expression signatures. The left-hand portion of Panel B depicts gene expression in purified normal immune-cell populations. Lanes 1, 2, and 3 contain total tonsillar germinal-center B cells; lane 4 contains tonsillar germinal-center CD77+ centroblasts; lanes 5 and 6 contain peripheral-blood B cells obtained before stimulation; lane 7 contains peripheral-blood B cells obtained 24 hours after anti-IgM stimulation; lane 8 contains peripheral-blood B cells obtained 48 hours after anti-IgM stimulation; lanes 9 and 10 contain peripheral-blood T cells obtained before stimulation; lane 11 contains peripheral-blood T cells obtained seven days after anti-CD3 stimulation; and lanes 12, 13, and 14 contain peripheral-blood monocytes. The right-hand portion of Panel B depicts the average expression of each gene in the CD19+ and CD19 subpopulations isolated from the tumor-biopsy specimens. The relative level of gene expression is depicted according to the color scales shown.
To characterize the expression of the two survival-associatedgene-expression signatures within the hematopoietic lineage,we profiled gene expression in various purified subpopulationsderived from peripheral blood or tonsils (Figure 3B). None ofthe genes in the immune-response 1 or immune-response 2 signatureswere preferentially expressed in germinal-center B cells, thecell of origin of follicular lymphoma. Instead, many of thegenes in the immune-response 1 signature were more highly expressedin T cells than in any of the B-cell or monocyte subpopulations,and others were more highly expressed in both T cells and monocytesthan in B cells. Many of the genes within the immune-response2 signature were more highly expressed in monocytes than inany of the lymphoid subpopulations. These findings support thenotion that the immune-response 1 and immune-response 2 signaturesreflect the biologic characteristics of the nonmalignant immunecells within the biopsy specimens.
Discussion
In this study, we identified a molecular predictor of the lengthof survival in patients with follicular lymphoma a predictorthat may prove useful clinically. The molecular features offollicular lymphoma at the time of diagnosis dictated, to alarge degree, the aggressiveness of the disease and the durationof survival, suggesting that the random acquisition of oncogenicabnormalities after diagnosis does not have a major effect onsurvival. The gene-expression signatures that were associatedwith survival were not surrogates for clinical prognostic variables.Rather, these signatures identified biologic attributes of thetumors that influenced survival. Unexpectedly, the gene-expressionsignatures that predicted survival were derived from nonmalignantcells in the tumors. This observation points to an importantinterplay between the host immune system and the malignant cellsin this form of cancer.
How might this molecular predictor of survival be used clinically?The survival predictor can identify a substantial subgroup ofpatients who have an indolent form of the disease (more than75 percent of the overall population of patients with follicularlymphoma), among whom the median survival after diagnosis ismore than 10 years. This is a subgroup of patients for whomour survival predictor would provide valuable prognostic informationand for whom watchful waiting is appropriate. In the quartilewith the least favorable prognosis, patients survived a medianof only 3.9 years; for these patients, newer treatments in thecontext of clinical trials should be considered. Indeed, themolecular predictor could be used to design clinical trialsthat have achievable end points. Since, overall, patients withfollicular lymphoma survive a median of more than 10 years,it has been difficult to complete clinical trials in which overallsurvival is the primary end point. Now, however, a clinicaltrial could be designed to enroll only those patients in thequartile with the least favorable prognosis, a strategy thatwould allow assessment of overall survival.
Our analytical approach, survival signature analysis, focusedon sets of coordinately regulated genes known as gene-expressionsignatures.20 Surprisingly, the two gene-expression signaturesthat predicted survival, immune-response 1 and immune-response2, comprised genes expressed by nonmalignant tumor-infiltratingcells. The immune-response 1 signature included several T-cellrestrictedgenes but was not merely a measure of the number of tumor-infiltratingT cells, since a signature of panT-cell genes was notassociated with survival. The immune-response 1 signature alsoincluded genes that were more highly expressed in monocytesthan in T cells, suggesting that it reflected a mixture of immunecells. The immune-response 2 signature did not include T-cellrestrictedgenes but rather genes that are highly expressed in monocytes,dendritic cells, or both.23,24,25,26,27,28 The statistical synergyof these two signatures in the survival model suggests thattheir relative contribution to the tumor's gene-expression profile not their absolute expression levels is of primaryimportance. In other words, the nature of the infiltrating immunecells was the predominant feature of the tumor that predictedthe length of survival.
There is considerable clinical evidence that immune responsesare important in follicular lymphoma. In some cases, the lymphomaregresses spontaneously,29 an observation that has also beenmade in melanoma and renal-cell carcinoma and that may indicatean effective antitumor immune response. The response of follicularlymphomas to idiotype vaccines also highlights the potentialof the immune system to recognize and counteract this type oflymphoma.8,9,10 Although these findings suggest that the clinicalcourse of follicular lymphoma can be modulated by immune responses,our study provides a molecular signature of the type of immuneresponse that is associated with long-term survival.
It is also possible that the lymph-node cells responsible forthe immune-response 1 signature provide trophic signals thatpromote the survival or proliferation of the malignant cells.This signature could represent a variant germinal-center reactionthat includes T cells, follicular dendritic cells, and the malignantcells. The dependence of the malignant cells on these environmentalsignals may prevent them from leaving the lymph node, possiblyaccounting for the association between the immune-response 1signature and prolonged survival. An understanding of the natureof these trophic signals provided by the microenvironment infollicular lymphoma could provide new targets for therapy.
In a pilot study involving 26 patients with follicular lymphomawho were treated with rituximab, the expression of certain geneswas associated with responsiveness to this treatment,30 butthese genes do not overlap appreciably with our survival-predictorgenes and do not predict overall survival in our series (datanot shown). Clearly, future investigations should evaluate thesemolecular predictors of survival in a prospective fashion.
Our work provides a molecular tool to investigate aspects ofthe immune response to follicular lymphoma that may positivelyor negatively influence the pace of the disease. The genes inthe immune-response signatures can be used as markers to identifysubpopulations of immune cells that may promote or antagonizethe proliferation or survival of the malignant clone.
Supported by funding from the Center for Cancer Research, NationalCancer Institute; by a National Cancer Institute Director'sChallenge grant (UO1-CA84967); and by funding from Cancer ResearchUK (to Drs. Lister and Davies). Dr. Tan was a Howard HughesMedical Institute Research Scholar at the National Institutesof Health while this study was under way.
Source Information
From National Cancer Institute (S.S.D., G.W., B.T., A.R., W.H.W., E.S.J., R.S., H.Z., N.G., M.C., L.M.S.); Center for Information Technology (L.Y., J.P.); and National Heart, Lung, and Blood Institute (S.S.D.) all in Bethesda, Md.; British Columbia Cancer Center, Vancouver, Canada (R.D.G., J.M.C., P.M.L., Q.O.); University of Nebraska Medical Center, Omaha (W.C.C., T.C.G., D.D.W., J.C.L., J.V., J.O.A.); Southwest Oncology Group, San Antonio, Tex. (R.I.F., T.M.G., T.P.M., M.L.); University of Rochester School of Medicine, Rochester, N.Y. (R.I.F.); Oregon Health and Science University, Portland (R.M.B.); University of Arizona Cancer Center, Tucson (L.M.R., T.M.G., T.P.M.); Fred Hutchinson Cancer Research Center, Seattle (M.L.); Norwegian Radium Hospital, Oslo (E.B.S., S.K., H.H., J.D.); Cancer Research UK, St. Bartholomew's Hospital, London (T.A.L., A.J.D., A.J.N.); University of Würzburg, Würzburg, Germany (A.R., H.K.M.-H., G.O.); and University of Barcelona, Barcelona, Spain (E.C., E.M.).
Address reprint requests to Dr. Staudt at the National Cancer Institute, Bldg. 10, Rm. 4N114, NIH, Bethesda, MD 20892, or at lstaudt{at}mail.nih.gov.
References
Armitage JO, Weisenburger DD. New approach to classifying non-Hodgkin's lymphomas: clinical features of the major histologic subtypes. J Clin Oncol 1998;16:2780-2795. [Abstract]
Horning SJ. Follicular lymphoma: have we made any progress? Ann Oncol 2000;11:Suppl 1:23-27. [Free Full Text]
Johnson PW, Rohatiner AZ, Whelan JS, et al. Patterns of survival in patients with recurrent follicular lymphoma: a 20-year study from a single center. J Clin Oncol 1995;13:140-147. [Free Full Text]
Czuczman MS, Grillo-Lopez AJ, White CA, et al. Treatment of patients with low-grade B-cell lymphoma with the combination of chimeric anti-CD20 monoclonal antibody and CHOP chemotherapy. J Clin Oncol 1999;17:268-276. [Free Full Text]
Colombat P, Salles G, Brousse N, et al. Rituximab (anti-CD20 monoclonal antibody) as single first-line therapy for patients with follicular lymphoma with a low tumor burden: clinical and molecular evaluation. Blood 2001;97:101-106. [Free Full Text]
Witzig TE, Gordon LI, Cabanillas F, et al. Randomized controlled trial of yttrium-90-labeled ibritumomab tiuxetan radioimmunotherapy versus rituximab immunotherapy for patients with relapsed or refractory low-grade, follicular, or transformed B cell non-Hodgkin's lymphoma. J Clin Oncol 2002;20:2453-2463. [Free Full Text]
Maloney DG, Grillo-Lopez AJ, White CA, et al. IDEC-C2B8 (rituximab) anti-CD20 monoclonal antibody therapy in patients with relapsed low-grade non-Hodgkin's lymphoma. Blood 1997;90:2188-2195. [Free Full Text]
Bendandi M, Gocke CD, Kobrin CB, et al. Complete molecular remissions induced by patient-specific vaccination plus granulocyte-monocyte colony-stimulating factor against lymphoma. Nat Med 1999;5:1171-1177. [CrossRef][ISI][Medline]
Kwak LW, Campbell MJ, Czerwinski DK, Hart S, Miller RA, Levy R. Induction of immune responses in patients with B-cell lymphoma against the surface-immunoglobulin idiotype expressed by their tumors. N Engl J Med 1992;327:1209-1215. [Abstract]
Timmerman JM, Czerwinski DK, Davis TA, et al. Idiotype-pulsed dendritic cell vaccination for B-cell lymphoma: clinical and immune responses in 35 patients. Blood 2002;99:1517-1526. [Free Full Text]
Lossos IS, Levy R. Higher grade transformation of follicular lymphoma: phenotypic tumor progression associated with diverse genetic lesions. Semin Cancer Biol 2003;13:191-202. [CrossRef][Medline]
Federico M, Vitolo U, Zinzani PL, et al. Prognosis of follicular lymphoma: a predictive model based on a retrospective analysis of 987 cases. Blood 2000;95:783-789. [Free Full Text]
Lopez-Guillermo A, Montserrat E, Bosch F, Terol MJ, Campo E, Rozman C. Applicability of the International Index for aggressive lymphomas to patients with low-grade lymphoma. J Clin Oncol 1994;12:1343-1348. [Abstract]
Montoto S, Lopez-Guillermo A, Ferrer A, et al. Survival after progression in patients with follicular lymphoma: analysis of prognostic factors. Ann Oncol 2002;13:523-530. [Free Full Text]
Decaudin D, Lepage E, Brousse N, et al. Low-grade stage III-IV follicular lymphoma: multivariate analysis of prognostic factors in 484 patients -- a study of the Groupe d'Etude des Lymphomes de l'Adulte. J Clin Oncol 1999;17:2499-2505. [Free Full Text]
Solal-Celigny P, Roy P, Colombat P, et al. Follicular Lymphoma International Prognostic Index. Blood 2004;104:1258-1265. [Free Full Text]
Alizadeh AA, Eisen MB, Davis RE, et al. Distinct types of diffuse large B-cell lymphoma identified by gene expression profiling. Nature 2000;403:503-511. [CrossRef][Medline]
Eisen MB, Spellman PT, Brown PO, Botstein D. Cluster analysis and display of genome-wide expression patterns. Proc Natl Acad Sci U S A 1998;95:14863-14868. [Free Full Text]
Rosenwald A, Wright G, Chan WC, et al. The use of molecular profiling to predict survival after chemotherapy for diffuse large-B-cell lymphoma. N Engl J Med 2002;346:1937-1947. [Free Full Text]
Shaffer AL, Rosenwald A, Hurt EM, et al. Signatures of the immune response. Immunity 2001;15:375-385. [CrossRef][ISI][Medline]
Ransohoff DF. Rules of evidence for cancer molecular-marker discovery and validation. Nat Rev Cancer 2004;4:309-314. [CrossRef][ISI][Medline]
Drapner NS, Smith H. Applied regression analysis. New York: Wiley, 1966.
Li DN, Matthews SP, Antoniou AN, Mazzeo D, Watts C. Multistep autoactivation of asparaginyl endopeptidase in vitro and in vivo. J Biol Chem 2003;278:38980-38990. [Free Full Text]
Sui L, Zhang W, Liu Q, et al. Cloning and functional characterization of human septin 10, a novel member of septin family cloned from dendritic cells. Biochem Biophys Res Commun 2003;304:393-398. [CrossRef][Medline]
Hayashi F, Smith KD, Ozinsky A, et al. The innate immune response to bacterial flagellin is mediated by Toll-like receptor 5. Nature 2001;410:1099-1103. [CrossRef][Medline]
Muzio M, Bosisio D, Polentarutti N, et al. Differential expression and regulation of Toll-like receptors (TLR) in human leukocytes: selective expression of TLR3 in dendritic cells. J Immunol 2000;164:5998-6004. [Free Full Text]
Roglic A, Prossnitz ER, Cavanagh SL, Pan Z, Zou A, Ye RD. cDNA cloning of a novel G protein-coupled receptor with a large extracellular loop structure. Biochim Biophys Acta 1996;1305:39-43. [Medline]
Ames RS, Li Y, Sarau HM, et al. Molecular cloning and characterization of the human anaphylatoxin C3a receptor. J Biol Chem 1996;271:20231-20234. [Free Full Text]
Horning SJ, Rosenberg SA. The natural history of initially untreated low-grade non-Hodgkin's lymphomas. N Engl J Med 1984;311:1471-1475. [Abstract]
Bohen SP, Troyanskaya OG, Alter O, et al. Variation in gene expression patterns in follicular lymphoma and the response to rituximab. Proc Natl Acad Sci U S A 2003;100:1926-1930. [Free Full Text]
Lymphoma-Infiltrating Immune Cells
Kobayashi K., Murashige N., Kishi Y. Jr., Naresh K. N., Gajewski T. F., Dave S. S., Staudt L. M.
Extract |
Full Text |
PDF
N Engl J Med 2005;
352:724-725, Feb 17, 2005.
Correspondence
This article has been cited by other articles:
Friedrichs, B., Siegel, S., Kloess, M., Barsoum, A., Coggin, J. Jr., Rohrer, J., Jakob, I., Tiemann, M., Heidorn, K., Schulte, C., Kabelitz, D., Steinmann, J., Schmitz, N., Zeis, M.
(2008). Humoral Immune Responses against the Immature Laminin Receptor Protein Show Prognostic Significance in Patients with Chronic Lymphocytic Leukemia. J. Immunol.
180: 6374-6384
[Abstract][Full Text]
Dave, S. S.
(2008). Follicular lymphoma and the microenvironment. Blood
111: 4427-4428
[Full Text]
Byers, R. J., Sakhinia, E., Joseph, P., Glennie, C., Hoyland, J. A., Menasce, L. P., Radford, J. A., Illidge, T.
(2008). Clinical quantitation of immune signature in follicular lymphoma by RT-PCR-based gene expression profiling. Blood
111: 4764-4770
[Abstract][Full Text]
Taskinen, M., Karjalainen-Lindsberg, M.-L., Leppa, S.
(2008). Prognostic influence of tumor-infiltrating mast cells in patients with follicular lymphoma treated with rituximab and CHOP. Blood
111: 4664-4667
[Abstract][Full Text]
Ladetto, M., De Marco, F., Benedetti, F., Vitolo, U., Patti, C., Rambaldi, A., Pulsoni, A., Musso, M., Liberati, A. M., Olivieri, A., Gallamini, A., Pogliani, E., Scalabrini, D. R., Callea, V., Di Raimondo, F., Pavone, V., Tucci, A., Cortelazzo, S., Levis, A., Boccadoro, M., Majolino, I., Pileri, A., Gianni, A. M., Passera, R., Corradini, P., Tarella, C., for Gruppo Italiano Trapianto di Midollo Osseo (GI,
(2008). Prospective, multicenter randomized GITMO/IIL trial comparing intensive (R-HDS) versus conventional (CHOP-R) chemoimmunotherapy in high-risk follicular lymphoma at diagnosis: the superior disease control of R-HDS does not translate into an overall survival advantage. Blood
111: 4004-4013
[Abstract][Full Text]
Zhang, Y., Sanjose, S. D., Bracci, P. M., Morton, L. M., Wang, R., Brennan, P., Hartge, P., Boffetta, P., Becker, N., Maynadie, M., Foretova, L., Cocco, P., Staines, A., Holford, T., Holly, E. A., Nieters, A., Benavente, Y., Bernstein, L., Zahm, S. H., Zheng, T.
(2008). Personal Use of Hair Dye and the Risk of Certain Subtypes of Non-Hodgkin Lymphoma. Am J Epidemiol
0: kwn058v1-kwn058
[Abstract][Full Text]
Jordanova, E. S., Gorter, A., Ayachi, O., Prins, F., Durrant, L. G., Kenter, G. G., van der Burg, S. H., Fleuren, G. J.
(2008). Human Leukocyte Antigen Class I, MHC Class I Chain-Related Molecule A, and CD8+/Regulatory T-Cell Ratio: Which Variable Determines Survival of Cervical Cancer Patients?. Clin. Cancer Res.
14: 2028-2035
[Abstract][Full Text]
Fonseca, C., Dranoff, G.
(2008). Capitalizing on the Immunogenicity of Dying Tumor Cells. Clin. Cancer Res.
14: 1603-1608
[Abstract][Full Text]
Navarro, A., Gaya, A., Martinez, A., Urbano-Ispizua, A., Pons, A., Balague, O., Gel, B., Abrisqueta, P., Lopez-Guillermo, A., Artells, R., Montserrat, E., Monzo, M.
(2008). MicroRNA expression profiling in classic Hodgkin lymphoma. Blood
111: 2825-2832
[Abstract][Full Text]
Tzankov, A., Meier, C., Hirschmann, P., Went, P., Pileri, S. A., Dirnhofer, S.
(2008). Correlation of high numbers of intratumoral FOXP3+ regulatory T cells with improved survival in germinal center-like diffuse large B-cell lymphoma, follicular lymphoma and classical Hodgkin's lymphoma. haematol
93: 193-200
[Abstract][Full Text]
Canioni, D., Salles, G., Mounier, N., Brousse, N., Keuppens, M., Morchhauser, F., Lamy, T., Sonet, A., Rousselet, M.-C., Foussard, C., Xerri, L.
(2008). High Numbers of Tumor-Associated Macrophages Have an Adverse Prognostic Value That Can Be Circumvented by Rituximab in Patients With Follicular Lymphoma Enrolled Onto the GELA-GOELAMS FL-2000 Trial. JCO
26: 440-446
[Abstract][Full Text]
LeBrun, D., Baetz, T., Foster, C., Farmer, P., Sidhu, R., Guo, H., Harrison, K., Somogyi, R., Greller, L. D., Feilotter, H.
(2008). Predicting Outcome in Follicular Lymphoma by Using Interactive Gene Pairs. Clin. Cancer Res.
14: 478-487
[Abstract][Full Text]
Lidgren, L.
(2008). Chronic inflammation, joint replacement and malignant lymphoma. J Bone Joint Surg Br
90-B: 7-10
[Abstract][Full Text]
Burkle, A., Niedermeier, M., Schmitt-Graff, A., Wierda, W. G., Keating, M. J., Burger, J. A.
(2007). Overexpression of the CXCR5 chemokine receptor, and its ligand, CXCL13 in B-cell chronic lymphocytic leukemia. Blood
110: 3316-3325
[Abstract][Full Text]
Taskinen, M., Karjalainen-Lindsberg, M.-L., Nyman, H., Eerola, L.-M., Leppa, S.
(2007). A High Tumor-Associated Macrophage Content Predicts Favorable Outcome in Follicular Lymphoma Patients Treated with Rituximab and Cyclophosphamide-Doxorubicin-Vincristine-Prednisone. Clin. Cancer Res.
13: 5784-5789
[Abstract][Full Text]
Pitini, V., Arrigo, C., Naro, C., Altavilla, G.
(2007). Interleukin-2 and Lymphokine-Activated Killer Cell Therapy in Patients with Relapsed B-Cell Lymphoma Treated with Rituximab. Clin. Cancer Res.
13: 5497-5497
[Full Text]
Ross, C. W., Ouillette, P. D., Saddler, C. M., Shedden, K. A., Malek, S. N.
(2007). Comprehensive Analysis of Copy Number and Allele Status Identifies Multiple Chromosome Defects Underlying Follicular Lymphoma Pathogenesis. Clin. Cancer Res.
13: 4777-4785
[Abstract][Full Text]
Klapper, W., Hoster, E., Rolver, L., Schrader, C., Janssen, D., Tiemann, M., Bernd, H.-W., Determann, O., Hansmann, M.-L., Moller, P., Feller, A., Stein, H., Wacker, H.-H., Dreyling, M., Unterhalt, M., Hiddemann, W., Ott, G.
(2007). Tumor Sclerosis but Not Cell Proliferation or Malignancy Grade Is a Prognostic Marker in Advanced-Stage Follicular Lymphoma: The German Low Grade Lymphoma Study Group. JCO
25: 3330-3336
[Abstract][Full Text]
Wong, H. R., Shanley, T. P., Sakthivel, B., Cvijanovich, N., Lin, R., Allen, G. L., Thomas, N. J., Doctor, A., Kalyanaraman, M., Tofil, N. M., Penfil, S., Monaco, M., Tagavilla, M. A., Odoms, K., Dunsmore, K., Barnes, M., Aronow, B. J., for the Genomics of Pediatric SIRS/Septic Shock In,
(2007). Genome-level expression profiles in pediatric septic shock indicate a role for altered zinc homeostasis in poor outcome. Physiol. Genomics
30: 146-155
[Abstract][Full Text]
Diaz-Uriarte, R., Alibes, A., Morrissey, E. R., Canada, A., Rueda, O. M., Neves, M. L.
(2007). Asterias: integrated analysis of expression and aCGH data using an open-source, web-based, parallelized software suite. Nucleic Acids Res
35: W75-W80
[Abstract][Full Text]
Cerhan, J. R., Wang, S., Maurer, M. J., Ansell, S. M., Geyer, S. M., Cozen, W., Morton, L. M., Davis, S., Severson, R. K., Rothman, N., Lynch, C. F., Wacholder, S., Chanock, S. J., Habermann, T. M., Hartge, P.
(2007). Prognostic significance of host immune gene polymorphisms in follicular lymphoma survival. Blood
109: 5439-5446
[Abstract][Full Text]
Gribben, J. G.
(2007). How I treat indolent lymphoma. Blood
109: 4617-4626
[Abstract][Full Text]
Zangani, M. M., Froyland, M., Qiu, G. Y., Meza-Zepeda, L. A., Kutok, J. L., Thompson, K. M., Munthe, L. A., Bogen, B.
(2007). Lymphomas can develop from B cells chronically helped by idiotype-specific T cells. J. Exp. Med.
204: 1181-1191
[Abstract][Full Text]
Sakhinia, E., Glennie, C., Hoyland, J. A., Menasce, L. P., Brady, G., Miller, C., Radford, J. A., Byers, R. J.
(2007). Clinical quantitation of diagnostic and predictive gene expression levels in follicular and diffuse large B-cell lymphoma by RT-PCR gene expression profiling. Blood
109: 3922-3928
[Abstract][Full Text]
Woetmann, A., Lovato, P., Eriksen, K. W., Krejsgaard, T., Labuda, T., Zhang, Q., Mathiesen, A.-M., Geisler, C., Svejgaard, A., Wasik, M. A., Odum, N.
(2007). Nonmalignant T cells stimulate growth of T-cell lymphoma cells in the presence of bacterial toxins. Blood
109: 3325-3332
[Abstract][Full Text]
Mulligan, G., Mitsiades, C., Bryant, B., Zhan, F., Chng, W. J., Roels, S., Koenig, E., Fergus, A., Huang, Y., Richardson, P., Trepicchio, W. L., Broyl, A., Sonneveld, P., Shaughnessy, J. D. Jr, Leif Bergsagel, P., Schenkein, D., Esseltine, D.-L., Boral, A., Anderson, K. C.
(2007). Gene expression profiling and correlation with outcome in clinical trials of the proteasome inhibitor bortezomib. Blood
109: 3177-3188
[Abstract][Full Text]
Focosi, D., Petrini, M.
(2007). CD57 Expression on Lymphoma Microenvironment As a New Prognostic Marker Related to Immune Dysfunction. JCO
25: 1289-1291
[Full Text]
Hilchey, S. P., De, A., Rimsza, L. M., Bankert, R. B., Bernstein, S. H.
(2007). Follicular Lymphoma Intratumoral CD4+CD25+GITR+ Regulatory T Cells Potently Suppress CD3/CD28-Costimulated Autologous and Allogeneic CD8+CD25- and CD4+CD25- T Cells. J. Immunol.
178: 4051-4061
[Abstract][Full Text]
Nagel, S., Burek, C., Venturini, L., Scherr, M., Quentmeier, H., Meyer, C., Rosenwald, A., Drexler, H. G., MacLeod, R. A. F.
(2007). Comprehensive analysis of homeobox genes in Hodgkin lymphoma cell lines identifies dysregulated expression of HOXB9 mediated via ERK5 signaling and BMI1. Blood
109: 3015-3023
[Abstract][Full Text]
Radcliffe, C. M., Arnold, J. N., Suter, D. M., Wormald, M. R., Harvey, D. J., Royle, L., Mimura, Y., Kimura, Y., Sim, R. B., Inoges, S., Rodriguez-Calvillo, M., Zabalegui, N., de Cerio, A. L.-D., Potter, K. N., Mockridge, C. I., Dwek, R. A., Bendandi, M., Rudd, P. M., Stevenson, F. K.
(2007). Human Follicular Lymphoma Cells Contain Oligomannose Glycans in the Antigen-binding Site of the B-cell Receptor. J. Biol. Chem.
282: 7405-7415
[Abstract][Full Text]
Perrot, I., Blanchard, D., Freymond, N., Isaac, S., Guibert, B., Pacheco, Y., Lebecque, S.
(2007). Dendritic Cells Infiltrating Human Non-Small Cell Lung Cancer Are Blocked at Immature Stage. J. Immunol.
178: 2763-2769
[Abstract][Full Text]
Lamant, L., Reynies, A. d., Duplantier, M.-M., Rickman, D. S., Sabourdy, F., Giuriato, S., Brugieres, L., Gaulard, P., Espinos, E., Delsol, G.
(2007). Gene-expression profiling of systemic anaplastic large-cell lymphoma reveals differences based on ALK status and two distinct morphologic ALK+ subtypes. Blood
109: 2156-2164
[Abstract][Full Text]
Staudt, L. M.
(2007). A Closer Look at Follicular Lymphoma. NEJM
356: 741-742
[Full Text]
Ma, S., Huang, J.
(2007). Clustering threshold gradient descent regularization: with applications to microarray studies. Bioinformatics
23: 466-472
[Abstract][Full Text]
Byers, R. J., Di Vizio, D., O'Connell, F., Tholouli, E., Levenson, R. M., Gossard, K., Twomey, D., Yang, Y., Benedettini, E., Rose, J., Ligon, K. L., Finn, S. P., Golub, T. R., Loda, M.
(2007). Semiautomated Multiplexed Quantum Dot-Based in Situ Hybridization and Spectral Deconvolution. J. Mol. Diagn.
9: 20-29
[Abstract][Full Text]
Glas, A. M., Knoops, L., Delahaye, L., Kersten, M. J., Kibbelaar, R. E., Wessels, L. A., van Laar, R., van Krieken, J. H. J.M., Baars, J. W., Raemaekers, J., Kluin, P. M., van 't Veer, L. J., de Jong, D.
(2007). Gene-Expression and Immunohistochemical Study of Specific T-Cell Subsets and Accessory Cell Types in the Transformation and Prognosis of Follicular Lymphoma. JCO
25: 390-398
[Abstract][Full Text]
O'Mahony, D., Morris, J. C., Quinn, C., Gao, W., Wilson, W. H., Gause, B., Pittaluga, S., Neelapu, S., Brown, M., Fleisher, T. A., Gulley, J. L., Schlom, J., Nussenblatt, R., Albert, P., Davis, T. A., Lowy, I., Petrus, M., Waldmann, T. A., Janik, J. E.
(2007). A Pilot Study of CTLA-4 Blockade after Cancer Vaccine Failure in Patients with Advanced Malignancy. Clin. Cancer Res.
13: 958-964
[Abstract][Full Text]
Wahlin, B. E., Sander, B., Christensson, B., Kimby, E.
(2007). CD8+ T-Cell Content in Diagnostic Lymph Nodes Measured by Flow Cytometry Is a Predictor of Survival in Follicular Lymphoma. Clin. Cancer Res.
13: 388-397
[Abstract][Full Text]
Ame-Thomas, P., Maby-El Hajjami, H., Monvoisin, C., Jean, R., Monnier, D., Caulet-Maugendre, S., Guillaudeux, T., Lamy, T., Fest, T., Tarte, K.
(2007). Human mesenchymal stem cells isolated from bone marrow and lymphoid organs support tumor B-cell growth: role of stromal cells in follicular lymphoma pathogenesis. Blood
109: 693-702
[Abstract][Full Text]
Natkunam, Y.
(2007). The Biology of the Germinal Center. ASH Education Book
2007: 210-215
[Abstract][Full Text]
Salles, G. A.
(2007). Clinical Features, Prognosis and Treatment of Follicular Lymphoma. ASH Education Book
2007: 216-225
[Abstract][Full Text]
Neelapu, S. S., Kwak, L. W.
(2007). Vaccine Therapy for B-Cell Lymphomas: Next-Generation Strategies. ASH Education Book
2007: 243-249
[Abstract][Full Text]
Alvaro, T., Lejeune, M., Salvado, M.-T., Lopez, C., Jaen, J., Bosch, R., Pons, L. E.
(2006). Immunohistochemical Patterns of Reactive Microenvironment Are Associated With Clinicobiologic Behavior in Follicular Lymphoma Patients. JCO
24: 5350-5357
[Abstract][Full Text]
Lee, A. M., Clear, A. J., Calaminici, M., Davies, A. J., Jordan, S., MacDougall, F., Matthews, J., Norton, A. J., Gribben, J. G., Lister, T. A., Goff, L. K.
(2006). Number of CD4+ Cells and Location of Forkhead Box Protein P3-Positive Cells in Diagnostic Follicular Lymphoma Tissue Microarrays Correlates With Outcome. JCO
24: 5052-5059
[Abstract][Full Text]
Carreras, J., Lopez-Guillermo, A., Fox, B. C., Colomo, L., Martinez, A., Roncador, G., Montserrat, E., Campo, E., Banham, A. H.
(2006). High numbers of tumor-infiltrating FOXP3-positive regulatory T cells are associated with improved overall survival in follicular lymphoma. Blood
108: 2957-2964
[Abstract][Full Text]
Yang, Z.-Z., Novak, A. J., Ziesmer, S. C., Witzig, T. E., Ansell, S. M.
(2006). Attenuation of CD8+ T-Cell Function by CD4+CD25+ Regulatory T Cells in B-Cell Non-Hodgkin's Lymphoma.. Cancer Res.
66: 10145-10152
[Abstract][Full Text]
Wang, S. S., Cerhan, J. R., Hartge, P., Davis, S., Cozen, W., Severson, R. K., Chatterjee, N., Yeager, M., Chanock, S. J., Rothman, N.
(2006). Common Genetic Variants in Proinflammatory and Other Immunoregulatory Genes and Risk for Non-Hodgkin Lymphoma. Cancer Res.
66: 9771-9780
[Abstract][Full Text]
Ruan, J., Hyjek, E., Kermani, P., Christos, P. J., Hooper, A. T., Coleman, M., Hempstead, B., Leonard, J. P., Chadburn, A., Rafii, S.
(2006). Magnitude of Stromal Hemangiogenesis Correlates with Histologic Subtype of Non-Hodgkin's Lymphoma.. Clin. Cancer Res.
12: 5622-5631
[Abstract][Full Text]
Inoges, S., Rodriguez-Calvillo, M., Zabalegui, N., Lopez-Diaz de Cerio, A., Villanueva, H., Soria, E., Suarez, L., Rodriguez-Caballero, A., Pastor, F., Garcia-Munoz, R., Panizo, C., Perez-Calvo, J., Melero, I., Rocha, E., Orfao, A., Bendandi, M.
(2006). Clinical benefit associated with idiotypic vaccination in patients with follicular lymphoma.. JNCI J Natl Cancer Inst
98: 1292-1301
[Abstract][Full Text]
Zhan, F., Huang, Y., Colla, S., Stewart, J. P., Hanamura, I., Gupta, S., Epstein, J., Yaccoby, S., Sawyer, J., Burington, B., Anaissie, E., Hollmig, K., Pineda-Roman, M., Tricot, G., van Rhee, F., Walker, R., Zangari, M., Crowley, J., Barlogie, B., Shaughnessy, J. D. Jr
(2006). The molecular classification of multiple myeloma. Blood
108: 2020-2028
[Abstract][Full Text]
Seo, D., Ginsburg, G. S., Goldschmidt-Clermont, P. J.
(2006). Gene Expression Analysis of Cardiovascular Diseases: Novel Insights Into Biology and Clinical Applications. J Am Coll Cardiol
48: 227-235
[Abstract][Full Text]
Davicioni, E., Graf Finckenstein, F., Shahbazian, V., Buckley, J. D., Triche, T. J., Anderson, M. J.
(2006). Identification of a PAX-FKHR Gene Expression Signature that Defines Molecular Classes and Determines the Prognosis of Alveolar Rhabdomyosarcomas.. Cancer Res.
66: 6936-6946
[Abstract][Full Text]
Sanchez-Aguilera, A., Montalban, C., de la Cueva, P., Sanchez-Verde, L., Morente, M. M., Garcia-Cosio, M., Garcia-Larana, J., Bellas, C., Provencio, M., Romagosa, V., de Sevilla, A. F., Menarguez, J., Sabin, P., Mestre, M. J., Mendez, M., Fresno, M. F., Nicolas, C., Piris, M. A., Garcia, J. F., for the Spanish Hodgkin Lymphoma Study Group,
(2006). Tumor microenvironment and mitotic checkpoint are key factors in the outcome of classic Hodgkin lymphoma. Blood
108: 662-668
[Abstract][Full Text]
Ek, S., Andreasson, U., Hober, S., Kampf, C., Ponten, F., Uhlen, M., Merz, H., Borrebaeck, C. A. K.
(2006). From Gene Expression Analysis to Tissue Microarrays: A Rational Approach to Identify Therapeutic and Diagnostic Targets in Lymphoid Malignancies. Mol. Cell. Proteomics
5: 1072-1081
[Abstract][Full Text]
Yang, Z.-Z., Novak, A. J., Stenson, M. J., Witzig, T. E., Ansell, S. M.
(2006). Intratumoral CD4+CD25+ regulatory T-cell-mediated suppression of infiltrating CD4+ T cells in B-cell non-Hodgkin lymphoma. Blood
107: 3639-3646
[Abstract][Full Text]
Taylor, J., Tibshirani, R.
(2006). A tail strength measure for assessing the overall univariate significance in a dataset. Biostatistics
7: 167-181
[Abstract][Full Text]
Mantovani, A.
(2006). Linking Inflammation and Cancer: The Chemokine Connection in Mestastasis. aacredbook
2006: 7-10
[Full Text]
Abramson, J. S.
(2006). T-cell/histiocyte-rich B-cell lymphoma: biology, diagnosis, and management.. The Oncologist
11: 384-392
[Abstract][Full Text]
Anichini, A., Mortarini, R., Romagnoli, L., Baldassari, P., Cabras, A., Carlo-Stella, C., Gianni, A. M., Di Nicola, M.
(2006). Skewed T-cell differentiation in patients with indolent non-Hodgkin lymphoma reversed by ex vivo T-cell culture with {gamma}c cytokines. Blood
107: 602-609
[Abstract][Full Text]
Sehn, L. H.
(2006). Optimal Use of Prognostic Factors in Non-Hodgkin Lymphoma. ASH Education Book
2006: 295-302
[Abstract][Full Text]
Czuczman, M. S.
(2006). Controversies in Follicular Lymphoma: "Who, What, When, Where, and Why?" (Not Necessarily in That Order!). ASH Education Book
2006: 303-310
[Abstract][Full Text]
Morton, L. M., Wang, S. S., Devesa, S. S., Hartge, P., Weisenburger, D. D., Linet, M. S.
(2006). Lymphoma incidence patterns by WHO subtype in the United States, 1992-2001. Blood
107: 265-276
[Abstract][Full Text]
Chtanova, T., Newton, R., Liu, S. M., Weininger, L., Young, T. R., Silva, D. G., Bertoni, F., Rinaldi, A., Chappaz, S., Sallusto, F., Rolph, M. S., Mackay, C. R.
(2005). Identification of T Cell-Restricted Genes, and Signatures for Different T Cell Responses, Using a Comprehensive Collection of Microarray Datasets. J. Immunol.
175: 7837-7847
[Abstract][Full Text]
Wilson, W. H.
(2005). R-CHOP strikes again with survival benefit in follicular lymphoma. Blood
106: 3678-3679
[Full Text]
Clark, E A, Ledbetter, J A
(2005). How does B cell depletion therapy work, and how can it be improved?. Ann Rheum Dis
64: iv77-iv80
[Abstract][Full Text]
Farinha, P., Masoudi, H., Skinnider, B. F., Shumansky, K., Spinelli, J. J., Gill, K., Klasa, R., Voss, N., Connors, J. M., Gascoyne, R. D.
(2005). Analysis of multiple biomarkers shows that lymphoma-associated macrophage (LAM) content is an independent predictor of survival in follicular lymphoma (FL). Blood
106: 2169-2174
[Abstract][Full Text]
de Jong, D.
(2005). Molecular Pathogenesis of Follicular Lymphoma: A Cross Talk of Genetic and Immunologic Factors. JCO
23: 6358-6363
[Abstract][Full Text]
Perea, G., Altes, A., Montoto, S., Lopez-Guillermo, A., Domingo-Domenech, E., Fernandez-Sevilla, A., Ribera, J. M., Grau, J., Pedro, C., Angel Hernandez, J., Estany, C., Briones, J., Martino, R., Sureda, A., Sierra, J., Montserrat, E.
(2005). Prognostic indexes in follicular lymphoma: a comparison of different prognostic systems. Ann Oncol
16: 1508-1513
[Abstract][Full Text]
Gulmann, C., Espina, V., Petricoin, E. III, Longo, D. L., Santi, M., Knutsen, T., Raffeld, M., Jaffe, E. S., Liotta, L. A., Feldman, A. L.
(2005). Proteomic Analysis of Apoptotic Pathways Reveals Prognostic Factors in Follicular Lymphoma. Clin. Cancer Res.
11: 5847-5855
[Abstract][Full Text]
Cohen, S. J., Cohen, R. B., Meropol, N. J.
(2005). Targeting Signal Transduction Pathways in Colorectal Cancer--More Than Skin Deep. JCO
23: 5374-5385
[Abstract][Full Text]
Leonard, J. P., Coleman, M., Ketas, J., Ashe, M., Fiore, J. M., Furman, R. R., Niesvizky, R., Shore, T., Chadburn, A., Horne, H., Kovacs, J., Ding, C. L., Wegener, W. A., Horak, I. D., Goldenberg, D. M.
(2005). Combination Antibody Therapy With Epratuzumab and Rituximab in Relapsed or Refractory Non-Hodgkin's Lymphoma. JCO
23: 5044-5051
[Abstract][Full Text]
Zucca, E., Bertoni, F.
(2005). Another Piece of the MALT Lymphomas Jigsaw. JCO
23: 4832-4834
[Full Text]
Jaffe, E. S.
(2005). Cutaneous lymphomas: it's location, location, location. Blood
105: 3394-3395
[Full Text]
Rambaldi, A., Carlotti, E., Oldani, E., Starza, I. D., Baccarani, M., Cortelazzo, S., Lauria, F., Arcaini, L., Morra, E., Pulsoni, A., Rigacci, L., Rupolo, M., Zaja, F., Zinzani, P. L., Barbui, T., Foa, R.
(2005). Quantitative PCR of bone marrow BCL2/IgH+ cells at diagnosis predicts treatment response and long-term outcome in follicular non-Hodgkin lymphoma. Blood
105: 3428-3433
[Abstract][Full Text]
Tibshirani, R., Hong, W.-J., Warnke, R., Chu, G., Staudt, L. M., Wright, G., Dave, S.
(2005). Immune Signatures in Follicular Lymphoma. NEJM
352: 1496-1497
[Full Text]
Gong, Q., Chan, A. C., Martin, F.
(2005). Contributions of Circulatory Dynamics and Cellular Microenvironment in Anti-CD20 mAb Immunotherapy. aacredbook
2005: 160-165
[Full Text]
Porcu, P.
(2005). Profiling is a good thing (at least in the clinic). Blood
105: 1843-1843
[Full Text]
Kobayashi, K., Murashige, N., Kishi, Y. Jr., Naresh, K. N., Gajewski, T. F., Dave, S. S., Staudt, L. M.
(2005). Lymphoma-Infiltrating Immune Cells. NEJM
352: 724-725
[Full Text]
Gascoyne, R. D.
(2005). Hematopathology Approaches to Diagnosis and Prognosis of Indolent B-Cell Lymphomas. ASH Education Book
2005: 299-306
[Abstract][Full Text]
Freedman, A. S.
(2005). Biology and Management of Histologic Transformation of Indolent Lymphoma. ASH Education Book
2005: 314-320
[Abstract][Full Text]
Friedberg, J. W.
(2005). Unique Toxicities and Resistance Mechanisms Associated with Monoclonal Antibody Therapy. ASH Education Book
2005: 329-334
[Abstract][Full Text]