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Unsupervised machine learning improves risk stratification in newly diagnosed multiple myeloma: an analysis of the Spanish Myeloma Group

Authors :
Adrian Mosquera Orgueira
Marta Sonia González Pérez
Jose Diaz Arias
Laura Rosiñol
Albert Oriol
Ana Isabel Teruel
Joaquin Martinez Lopez
Luis Palomera
Miguel Granell
Maria Jesus Blanchard
Javier de la Rubia
Ana López de la Guia
Rafael Rios
Anna Sureda
Miguel Teodoro Hernandez
Enrique Bengoechea
María José Calasanz
Norma Gutierrez
Maria Luis Martin
Joan Blade
Juan-Jose Lahuerta
Jesús San Miguel
Maria Victoria Mateos
the PETHEMA/GEM Cooperative Group
Source :
Blood Cancer Journal, Vol 12, Iss 4, Pp 1-9 (2022)
Publication Year :
2022
Publisher :
Nature Publishing Group, 2022.

Abstract

Abstract The International Staging System (ISS) and the Revised International Staging System (R-ISS) are commonly used prognostic scores in multiple myeloma (MM). These methods have significant gaps, particularly among intermediate-risk groups. The aim of this study was to improve risk stratification in newly diagnosed MM patients using data from three different trials developed by the Spanish Myeloma Group. For this, we applied an unsupervised machine learning clusterization technique on a set of clinical, biochemical and cytogenetic variables, and we identified two novel clusters of patients with significantly different survival. The prognostic precision of this clusterization was superior to those of ISS and R-ISS scores, and appeared to be particularly useful to improve risk stratification among R-ISS 2 patients. Additionally, patients assigned to the low-risk cluster in the GEM05 over 65 years trial had a significant survival benefit when treated with VMP as compared with VTD. In conclusion, we describe a simple prognostic model for newly diagnosed MM whose predictions are independent of the ISS and R-ISS scores. Notably, the model is particularly useful in order to re-classify R-ISS score 2 patients in 2 different prognostic subgroups. The combination of ISS, R-ISS and unsupervised machine learning clusterization brings a promising approximation to improve MM risk stratification.

Details

Language :
English
ISSN :
20445385
Volume :
12
Issue :
4
Database :
Directory of Open Access Journals
Journal :
Blood Cancer Journal
Publication Type :
Academic Journal
Accession number :
edsdoj.86ce994b44c6bfb5da1a17d16eaf
Document Type :
article
Full Text :
https://doi.org/10.1038/s41408-022-00647-z