Skip to main navigation Skip to search Skip to main content

Explainable time-to-progression predictions in multiple sclerosis

  • MSBase Study Group
  • KU Leuven
  • Hasselt University
  • Noorderhart
  • Faculty of Rehabilitation Sciences
  • Royal Melbourne Hospital
  • University of Melbourne
  • Concord Repatriation General Hospital
  • Charles University
  • University of Bologna
  • IRCCS Istituto delle Scienze Neurologiche di Bologna
  • Razi University Hospital
  • Université de Tunis El Manar
  • University of Geneva
  • University of Western Australia
  • Murdoch University
  • Izmir Ekonomi University
  • Multiple Sclerosis Research Association
  • University of Catania
  • University of Montreal
  • Gabriele d'Annunzio University
  • SS Annunziata University Hospital
  • Al-Amiri Hospital
  • Zuyderland
  • Maastricht University
  • American University of Beirut
  • Université catholique de Louvain
  • Centro Hospitalar Universitário de São João
  • Inovação e Desenvolvimento Fernando Pessoa
  • Faculdade de Ciências da Saúde
  • University Fernando Pessoa
  • CSSS Saint-Jérôme
  • Azienda Ospedaliera di Rilievo Nazionale San Giuseppe Moscati Avellino
  • Post Office Royal Brisbane Hospital
  • University of Queensland
  • Galliera Hospital
  • ML Novarese Hospital Moncrivello
  • Alfred Health
  • Monash University
  • Ghent University
  • Galdakao-Usansolo University Hospital
  • Biocruces-Bizkaia Health Research Institute
  • Groene Hart Ziekenhuis
  • Sultan Qaboos University
  • Hospital General de Agudos Juan Fernandez
  • University of Debrecen
  • King Fahad Specialist Hospital, Dammam
  • Sir Charles Gairdner Hospital
  • Jahn Ferenc Teaching Hospital
  • Bombay Hospital and Medical Research Centre
  • The University of Sydney

Research output: Contribution to journalArticlepeer-review

4 Scopus citations

Abstract

Background: Prognostic machine learning research in multiple sclerosis has been mainly focusing on black-box models predicting whether a patients’ disability will progress in a fixed number of years. However, as this is a binary yes/no question, it cannot take individual disease severity into account. Therefore, in this work we propose to model the time to disease progression instead. Additionally, we use explainable machine learning techniques to make the model outputs more interpretable. Methods: A preprocessed subset of 29,201 patients of the international data registry MSBase was used. Disability was assessed in terms of the Expanded Disability Status Scale (EDSS). We predict the time to significant and confirmed disability progression using random survival forests, a machine learning model for survival analysis. Performance is evaluated on a time-dependent area under the receiver operating characteristic and the precision–recall curves. Importantly, predictions are then explained using SHAP and Bellatrex, two explainability toolboxes, and lead to both global (population-wide) as well as local (patient visit-specific) insights. Results: On the task of predicting progression in 2 years, the random survival forest achieves state-of-the-art performance, comparable to previous work employing a random forest. However, here the random survival forest has the added advantage of being able to predict progression over a longer time horizon, with AUROC >60% for the first 10 years after baseline. Explainability techniques further validated the model by extracting clinically valid insights from the predictions made by the model. For example, a clear decline in the per-visit probability of progression is observed in more recent years since 2012, likely reflecting globally increasing use of more effective MS therapies. Conclusion: The binary classification models found in the literature can be extended to a time-to-event setting without loss of performance, thus allowing a more comprehensive prediction of patient prognosis. Furthermore, explainability techniques proved to be key to reach a better understanding of the model and increase validation of its behaviour.

Original languageEnglish
Article number108624
JournalComputer Methods and Programs in Biomedicine
Volume263
DOIs
StatePublished - May 2025

Keywords

  • Disability progression
  • Explainable artificial intelligence
  • Longitudinal data
  • Multiple sclerosis
  • Survival analysis

Fingerprint

Dive into the research topics of 'Explainable time-to-progression predictions in multiple sclerosis'. Together they form a unique fingerprint.

Cite this