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Supplementary Data 1 from Predicting Outcome in Follicular Lymphoma by Using Interactive Gene Pairs

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posted on 2023-03-31, 16:01 authored by David LeBrun, Tara Baetz, Cheryl Foster, Patricia Farmer, Roger Sidhu, Hong Guo, Karen Harrison, Roland Somogyi, Larry D. Greller, Harriet Feilotter
Supplementary Data 1 from Predicting Outcome in Follicular Lymphoma by Using Interactive Gene Pairs

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ARTICLE ABSTRACT

Purpose: Follicular lymphoma is a common lymphoma of adults. Although its course is often indolent, a substantial proportion of patients have a poor prognosis, often due to rapid progression or transformation to a more aggressive lymphoma. Currently available clinical prognostic scores, such as the follicular lymphoma international prognostic index, are not able to optimally predict transformation or poor outcome.Experimental Design: Gene expression profiling was done on primary lymphoma biopsy samples.Results: Using a statistically conservative approach, predictive interaction analysis, we have identified pairs of interacting genes that predict poor outcome, measured as death within 5 years of diagnosis. The best gene pair performs >1,000-fold better than any single gene or the follicular lymphoma international prognostic index in our data set. Many gene pairs achieve outcome prediction accuracies exceeding 85% in extensive cross-validation and noise sensitivity computational analyses. Many genes repeatedly appear in top-ranking pairs, suggesting that they reproducibly provide predictive capability.Conclusions: The evidence reported here may provide the basis for an expression-based, multi-gene test for predicting poor follicular lymphoma outcomes.

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