A Clinical Prognostic Model Based on Machine Learning from the Fondazione Italiana Linfomi (FIL) MCL0208 Phase III Trial

Author:

Zaccaria Gian MariaORCID,Ferrero SimoneORCID,Hoster Eva,Passera RobertoORCID,Evangelista Andrea,Genuardi ElisaORCID,Drandi DanielaORCID,Ghislieri MarcoORCID,Barbero Daniela,Del Giudice Ilaria,Tani Monica,Moia Riccardo,Volpetti Stefano,Cabras Maria Giuseppina,Di Renzo Nicola,Merli Francesco,Vallisa Daniele,Spina Michele,Pascarella Anna,Latte Giancarlo,Patti Caterina,Fabbri AlbertoORCID,Guarini Attilio,Vitolo UmbertoORCID,Hermine Olivier,Kluin-Nelemans Hanneke C,Cortelazzo Sergio,Dreyling Martin,Ladetto Marco

Abstract

Background: Multicenter clinical trials are producing growing amounts of clinical data. Machine Learning (ML) might facilitate the discovery of novel tools for prognostication and disease-stratification. Taking advantage of a systematic collection of multiple variables, we developed a model derived from data collected on 300 patients with mantle cell lymphoma (MCL) from the Fondazione Italiana Linfomi-MCL0208 phase III trial (NCT02354313). Methods: We developed a score with a clustering algorithm applied to clinical variables. The candidate score was correlated to overall survival (OS) and validated in two independent data series from the European MCL Network (NCT00209222, NCT00209209); Results: Three groups of patients were significantly discriminated: Low, Intermediate (Int), and High risk (High). Seven discriminants were identified by a feature reduction approach: albumin, Ki-67, lactate dehydrogenase, lymphocytes, platelets, bone marrow infiltration, and B-symptoms. Accordingly, patients in the Int and High groups had shorter OS rates than those in the Low and Int groups, respectively (Int→Low, HR: 3.1, 95% CI: 1.0–9.6; High→Int, HR: 2.3, 95% CI: 1.5–4.7). Based on the 7 markers, we defined the engineered MCL international prognostic index (eMIPI), which was validated and confirmed in two independent cohorts; Conclusions: We developed and validated a ML-based prognostic model for MCL. Even when currently limited to baseline predictors, our approach has high scalability potential.

Funder

Ministero della Salute

Fondazione CRT

Regione Puglia

Publisher

MDPI AG

Subject

Cancer Research,Oncology

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