Predicting Relapse in Patients With Medulloblastoma by Integrating Evidence From Clinical and Genomic Features

Author:

Tamayo Pablo1,Cho Yoon-Jae1,Tsherniak Aviad1,Greulich Heidi1,Ambrogio Lauren1,Schouten-van Meeteren Netteke1,Zhou Tianni1,Buxton Allen1,Kool Marcel1,Meyerson Matthew1,Pomeroy Scott L.1,Mesirov Jill P.1

Affiliation:

1. From the Eli and Edythe Broad Institute of Massachusetts Institute of Technology and Harvard University, Cambridge; Dana-Farber Cancer Institute; Brigham and Women’s Hospital, Harvard Medical School; Children’s Hospital, Boston, MA; Academic Medical Center, Amsterdam, the Netherlands; and Children’s Oncology Group, Arcadia, CA.

Abstract

Purpose Despite significant progress in the molecular understanding of medulloblastoma, stratification of risk in patients remains a challenge. Focus has shifted from clinical parameters to molecular markers, such as expression of specific genes and selected genomic abnormalities, to improve accuracy of treatment outcome prediction. Here, we show how integration of high-level clinical and genomic features or risk factors, including disease subtype, can yield more comprehensive, accurate, and biologically interpretable prediction models for relapse versus no-relapse classification. We also introduce a novel Bayesian nomogram indicating the amount of evidence that each feature contributes on a patient-by-patient basis. Patients and Methods A Bayesian cumulative log-odds model of outcome was developed from a training cohort of 96 children treated for medulloblastoma, starting with the evidence provided by clinical features of metastasis and histology (model A) and incrementally adding the evidence from gene-expression–derived features representing disease subtype–independent (model B) and disease subtype–dependent (model C) pathways, and finally high-level copy-number genomic abnormalities (model D). The models were validated on an independent test cohort (n = 78). Results On an independent multi-institutional test data set, models A to D attain an area under receiver operating characteristic (au-ROC) curve of 0.73 (95% CI, 0.60 to 0.84), 0.75 (95% CI, 0.64 to 0.86), 0.80 (95% CI, 0.70 to 0.90), and 0.78 (95% CI, 0.68 to 0.88), respectively, for predicting relapse versus no relapse. Conclusion The proposed models C and D outperform the current clinical classification schema (au-ROC, 0.68), our previously published eight-gene outcome signature (au-ROC, 0.71), and several new schemas recently proposed in the literature for medulloblastoma risk stratification.

Publisher

American Society of Clinical Oncology (ASCO)

Subject

Cancer Research,Oncology

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