Please use this identifier to cite or link to this item: http://hdl.handle.net/1942/34361
Title: Longitudinal machine learning modeling of MS patient trajectories improves predictions of disability progression
Authors: DE BROUWER, Edward 
BECKER, Thijs 
Moreau, Yves
Havrdova, Eva
Trojano, Maria
Eichau, Sara
Ozakbas, Serkan
Onofrj, Marco
Grammond, Pierre
Kuhle, Jens
Kappos, Ludwig
Sola, Patrizia
Cartechini, Elisabetta
Lechner-Scott, Jeannette
Alroughani, Raed
Gerlach, Oliver
Kalincik, Tomas
Granella, Franco
Grand'maison, Francois
Bergamaschi, Roberto
José Sá, Maria
VAN WIJMEERSCH, Bart 
Soysal, Aysun
Sanchez-Menoyo, Jose
Solaro, Claudio
Boz, Cavit
Iuliano, Gerardo
Buzzard, Katherine
Aguera-Morales, Eduardo
Terzi, Murat
Trivio, Tamara
Spitaleri, Daniele
Van Pesch, Vincent
Shaygannejad, Vahid
Moore, Fraser
Oreja-Guevara, Celia
Maimone, Davide
Gouider, Riadh
Csepany, Tunde
Ramo-Tello, Cristina
PEETERS, Liesbet 
Issue Date: 2021
Publisher: ELSEVIER IRELAND LTD
Source: Computer Methods and Programs in Biomedicine, 208 (Art N° 106180)
Abstract: Background and Objectives: Research in Multiple Sclerosis (MS) has recently focused on extracting knowledge from real-world clinical data sources. This type of data is more abundant than data produced during clinical trials and potentially more informative about real-world clinical practice. However, this comes at the cost of less curated and controlled data sets. In this work we aim to predict disability progression by optimally extracting information from longitudinal patient data in the real-world setting, with a special focus on the sporadic sampling problem. Methods: We use machine learning methods suited for patient trajectories modeling, such as recurrent neural networks and tensor factorization. A subset of 6682 patients from the MSBase registry is used. Results: We can predict disability progression of patients in a two-year horizon with an ROC-AUC of 0.85, which represents a 32% decrease in the ranking pair error (1-AUC) compared to reference methods using static clinical features. Conclusions: Compared to the models available in the literature, this work uses the most complete patient history for MS disease progression prediction and represents a step forward towards AI-assisted precision medicine in MS.
Keywords: Multiple sclerosis;Machine learning;Longitudinal data;Recurrent neural networks;Electronic health records;Disability progression;Real-world data
Document URI: http://hdl.handle.net/1942/34361
ISSN: 0169-2607
e-ISSN: 1872-7565
DOI: 10.1016/j.cmpb.2021.106180
ISI #: WOS:000685503300008
Rights: 2021 Published by Elsevier B.V
Category: A1
Type: Journal Contribution
Validations: ecoom 2022
Appears in Collections:Research publications

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