A TaqMan Low-Density Array to Predict Outcome in Advanced Hodgkin's Lymphoma Using Paraffin-Embedded Samples

Beatriz Sánchez‐Espiridión(Spanish National Cancer Research Centre), Abel Sánchez‐Aguilera(Instituto de Salud Carlos III), Carlos Montalbán(Hospital Universitario Ramón y Cajal), Carmen Alonso-Martín, Rafael Martínez(Hospital Clínico San Carlos), Joaquín González‐Carreró(Hospital Xeral Calde), Concepción Poderós(University Hospital Complex Of Vigo), Carmen Bellas(Hospital Universitario Ramón y Cajal), Manuel Fresno, Cesar Morante(Hospital Universitario Central de Asturias), María J. Mestre(Hospital Universitario de Móstoles), Miguel Mendez(Hospital Universitario de Móstoles), Francisco Mazorra(Marqués de Valdecilla University Hospital), Eulogio Conde(Marqués de Valdecilla University Hospital), Ángel Castaño(Hospital Universitario Severo Ochoa), Pedro Sánchez‐Godoy(Hospital Universitario Severo Ochoa), José Francisco Tomás, Manolo M. Morente(Instituto de Salud Carlos III), Miguel Á. Piris(Instituto de Salud Carlos III), Juan F. Garcı́a(The University of Texas MD Anderson Cancer Center), for the Spanish Hodgkin's Lymphoma Study Group
Clinical Cancer Research
February 15, 2009
Cited by 37

Abstract

PURPOSE: Despite major advances in the treatment of classic Hodgkin's lymphoma (cHL), approximately 30% of patients in advanced stages may eventually die as result of the disease, and current methods to predict prognosis are rather unreliable. Thus, the application of robust techniques for the identification of biomarkers associated with treatment response is essential if new predictive tools are to be developed. EXPERIMENTAL DESIGN: We used gene expression data from advanced cHL patients to identify transcriptional patterns from the tumoral cells and their nonneoplastic microenvironment, associated with lack of maintained treatment response. Gene-Set Enrichment Analysis was used to identify functional pathways associated with unfavorable outcome that were significantly enriched in either the Hodgkin's and Reed-Sternberg cells (regulation of the G2-M checkpoint, chaperones, histone modification, and signaling pathways) or the reactive cell microenvironment (mainly represented by specific T-cell populations and macrophage activation markers). RESULTS: To explore the pathways identified previously, we used a series of 52 formalin-fixed paraffin-embedded advanced cHL samples and designed a real-time PCR-based low-density array that included the most relevant genes. A large majority of the samples (82.7%) and all selected genes were analyzed successfully with this approach. CONCLUSIONS: The results of this assay can be combined in a single risk score integrating these biological pathways associated with treatment response and eventually used in a larger series to develop a new molecular outcome predictor for advanced cHL.


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