Publication:
Predicting disease progression in multiple sclerosis with clinically accessible information and technology

dc.contributor.coauthorFuchs, T. A. N.
dc.contributor.coauthorSchoonheim, M. M.
dc.contributor.coauthorStrijbis, E. M. M.
dc.contributor.coauthorJelgerhuis, J. R.
dc.contributor.coauthorHorakova, D.
dc.contributor.coauthorHavrdova, E. K.
dc.contributor.coauthorUher, T.
dc.contributor.coauthorZivadinov, R.
dc.contributor.coauthorOzakbas, S.
dc.contributor.coauthorGirard, M.
dc.contributor.coauthorAlroughani, R.
dc.contributor.coauthorGrammond, P.
dc.contributor.coauthorLugaresi, A.
dc.contributor.coauthorTomassini, V.
dc.contributor.coauthorKalincik, T.
dc.contributor.coauthorRoos, I.
dc.contributor.coauthorGerlach, O.
dc.contributor.coauthorWalt, A.
dc.contributor.coauthorKhoury, S. J.
dc.contributor.coauthorPesch, V.
dc.contributor.coauthorSurcinelli, A.
dc.contributor.coauthorFoschi, M.
dc.contributor.coauthorSa, M. J.
dc.contributor.coauthorD’amico, E.
dc.contributor.coauthorKuhle, J.
dc.contributor.coauthorCartechini, E.
dc.contributor.coauthorMaimone, D.
dc.contributor.coauthorKarabudak, R.
dc.contributor.coauthorSoysal, A.
dc.contributor.coauthorSpitaleri, D.
dc.contributor.coauthorLaureys, G.
dc.contributor.coauthorTaylor, B.
dc.contributor.coauthorD’hooghe, M.
dc.contributor.coauthorAmpapa, R.
dc.contributor.coauthorCastillo-Triviño, T.
dc.contributor.coauthorGray, O.
dc.contributor.coauthorGouider, R.
dc.contributor.coauthorMeca-Lallana, J. E.
dc.contributor.coauthorKermode, A. G.
dc.contributor.coauthorFabis-Pedrini, M.
dc.contributor.coauthorCarroll, W. M.
dc.contributor.coauthorGans, K.
dc.contributor.coauthorSanchez-Menoyo, J. L.
dc.contributor.coauthorEtemadifar, M.
dc.contributor.coauthorAl-Asmi, A.
dc.contributor.coauthorMcCombe, P.
dc.contributor.coauthorSimu, M.
dc.contributor.coauthorYetkin, M. F.
dc.contributor.coauthorAl-Harbi, T.
dc.contributor.coauthorCsepany, T.
dc.contributor.coauthorLalive, P.
dc.contributor.coauthorHardy, T. A.
dc.contributor.coauthorRamanathan, S.
dc.contributor.coauthorWillekens, B.
dc.contributor.coauthorSempere, A. P.
dc.contributor.coauthorCárdenas-Robledo, S.
dc.contributor.coauthorHabek, M.
dc.contributor.coauthorSinghal, B.
dc.contributor.coauthorGrigoriadis, N.
dc.contributor.coauthorSimo, M.
dc.contributor.coauthorShaygannejad, V.
dc.contributor.coauthorBlanco, Y.
dc.contributor.coauthorAguera-Morales, E.
dc.contributor.coauthorGarber, J.
dc.contributor.coauthorSolaro, C.
dc.contributor.coauthorShuey, N.
dc.contributor.coauthorKhurana, D.
dc.contributor.coauthorDecoo, D.
dc.contributor.coauthorMoghadasi, A. N.
dc.contributor.coauthorBuzzard, K.
dc.contributor.coauthorSkibina, O.
dc.contributor.coauthorJohn, N.
dc.contributor.coauthorPetersen, T.
dc.contributor.coauthorWeinstock-Guttman, B.
dc.contributor.departmentSchool of Medicine
dc.contributor.kuauthorAltıntaş, Ayşe
dc.contributor.schoolcollegeinstituteSCHOOL OF MEDICINE
dc.date.accessioned2026-07-07T08:50:14Z
dc.date.issued2026
dc.description.abstractBackground Predicting disease progression at the individual level is essential for personalized medicine. We previously developed machine-learning tools to estimate 5-year progression risk in people with multiple sclerosis (PwMS). Such models should account for disease-modifying therapy (DMT) and objective outcome definitions. Methods In a retrospective multicenter case–control study, we evaluated adults with relapsing–remitting multiple sclerosis (RRMS) at baseline. Using machine-learning, we developed two complementary tools for individualized 5-year risk estimation: DAAE-M, optimized for transparency, software-neutral use, and mitigation of indication bias, and ELIE, optimized for dynamic landmark-based modeling, complex treatment histories, and mitigation of immortal-time bias. Disease progression was defined using both a clinical outcome (RRMS-to-progressive MS) and an objective outcome (late-stage confirmed progression independent of relapse activity). Results Among 34,510 people with RRMS (72.6% female, mean age = 37.1, mean disease duration = 5.8), 9.8% and 21% met clinical and objective progression criteria, respectively, over five years. Both models demonstrated good calibration across risk-groups (Brier scores 0.06–0.16). DAAE-M provided patient-level risk estimates with monotonic risk escalation across risk-groups for clinical (3.1%/11.2%/22.6%/33.0%) and objective (8.4%/14.5%/23.3%/38.8%) progression. For DAAE-M, high-efficacy DMT was associated with approximately half the progression risk compared with low-efficacy DMT (risk-ratios: 0.42–0.59; p < 0.01). ELIE also showed good calibration across risk deciles with increasing incidence for both clinical (0.3%/1.2%/1.7%/2.5%/3.7%/5.5%/7.2%/10.2%/14.3%/21.5%) and objective (0.9%/1.6%/2.5%/4.0%/5.8%/7.8%/10.2%/15.3%/20.9%/32.5%) outcomes. Conclusion We developed two well-calibrated machine-learning-based tools for individualized 5-year prediction of clinically- and objectively-defined MS progression, each with distinct strengths in usability, bias handling, and treatment modeling. These findings support future tool use in personalized risk stratification and secondary prevention.
dc.description.harvestedfromManual
dc.description.indexedbyWOS
dc.description.indexedbyScopus
dc.description.indexedbyPubMed
dc.description.publisherscopeInternational
dc.description.readpublishN/A
dc.description.sponsoredbyTubitakEuEU
dc.description.sponsorshipThis work is supported by the European Committee for Treatment and Research in Multiple Sclerosis (ECTRIMS), financially supporting the fellowship of the principal author Dr. Tom A.N. Fuchs.
dc.description.versionPublished Version
dc.identifier.WoSQuartileQ1
dc.identifier.doi10.1007/s00415-026-13802-4
dc.identifier.eissn1432-1459
dc.identifier.embargoN/A
dc.identifier.endpage18
dc.identifier.issn0340-5354
dc.identifier.issue5
dc.identifier.pubmed42002655
dc.identifier.scopus2-s2.0-105036087422
dc.identifier.startpage1
dc.identifier.urihttp://doi.org/10.1007/s00415-026-13802-4
dc.identifier.urihttps://hdl.handle.net/20.500.14288/33318
dc.identifier.volume273
dc.identifier.wos001743622500001
dc.keywordsMultiple sclerosis
dc.keywordsDecision support tools
dc.keywordsPrediction
dc.keywordsClinical
dc.keywordsDisease progression
dc.keywordsSecondary progressive multiple sclerosis
dc.keywordsDisease
dc.keywordsNeurology
dc.keywordsClinical trial
dc.keywordsDecile
dc.keywordsRisk assessment
dc.keywordsRetrospective cohort study
dc.keywordsFramingham risk score
dc.languageeng
dc.publisherSpringer
dc.relation.affiliationKoç University
dc.relation.collectionKoç University Institutional Repository
dc.relation.ispartofJournal of Neurology
dc.relation.openaccessN/A
dc.rightsN/A
dc.rights.uriN/A
dc.subjectNeurosciences
dc.subjectNeurology
dc.titlePredicting disease progression in multiple sclerosis with clinically accessible information and technology
dc.typeJournal Article
dspace.entity.typePublication
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