| Literature DB >> 29050389 |
Tomas Kalincik1,2, Ali Manouchehrinia3, Lukas Sobisek4,5, Vilija Jokubaitis2,6, Tim Spelman2,6, Dana Horakova4, Eva Havrdova4, Maria Trojano7, Guillermo Izquierdo8, Alessandra Lugaresi9,10, Marc Girard11, Alexandre Prat11, Pierre Duquette11, Pierre Grammond12, Patrizia Sola13, Raymond Hupperts14, Francois Grand'Maison15, Eugenio Pucci16, Cavit Boz17, Raed Alroughani18, Vincent Van Pesch19, Jeannette Lechner-Scott20, Murat Terzi21, Roberto Bergamaschi22, Gerardo Iuliano23, Franco Granella24, Daniele Spitaleri25, Vahid Shaygannejad26, Celia Oreja-Guevara27, Mark Slee28, Radek Ampapa29, Freek Verheul30, Pamela McCombe31, Javier Olascoaga32, Maria Pia Amato33, Steve Vucic34, Suzanne Hodgkinson35, Cristina Ramo-Tello36, Shlomo Flechter37, Edgardo Cristiano38, Csilla Rozsa39, Fraser Moore40, Jose Luis Sanchez-Menoyo41, Maria Laura Saladino42, Michael Barnett43, Jan Hillert3, Helmut Butzkueven2,6,44.
Abstract
Timely initiation of effective therapy is crucial for preventing disability in multiple sclerosis; however, treatment response varies greatly among patients. Comprehensive predictive models of individual treatment response are lacking. Our aims were: (i) to develop predictive algorithms for individual treatment response using demographic, clinical and paraclinical predictors in patients with multiple sclerosis; and (ii) to evaluate accuracy, and internal and external validity of these algorithms. This study evaluated 27 demographic, clinical and paraclinical predictors of individual response to seven disease-modifying therapies in MSBase, a large global cohort study. Treatment response was analysed separately for disability progression, disability regression, relapse frequency, conversion to secondary progressive disease, change in the cumulative disease burden, and the probability of treatment discontinuation. Multivariable survival and generalized linear models were used, together with the principal component analysis to reduce model dimensionality and prevent overparameterization. Accuracy of the individual prediction was tested and its internal validity was evaluated in a separate, non-overlapping cohort. External validity was evaluated in a geographically distinct cohort, the Swedish Multiple Sclerosis Registry. In the training cohort (n = 8513), the most prominent modifiers of treatment response comprised age, disease duration, disease course, previous relapse activity, disability, predominant relapse phenotype and previous therapy. Importantly, the magnitude and direction of the associations varied among therapies and disease outcomes. Higher probability of disability progression during treatment with injectable therapies was predominantly associated with a greater disability at treatment start and the previous therapy. For fingolimod, natalizumab or mitoxantrone, it was mainly associated with lower pretreatment relapse activity. The probability of disability regression was predominantly associated with pre-baseline disability, therapy and relapse activity. Relapse incidence was associated with pretreatment relapse activity, age and relapsing disease course, with the strength of these associations varying among therapies. Accuracy and internal validity (n = 1196) of the resulting predictive models was high (>80%) for relapse incidence during the first year and for disability outcomes, moderate for relapse incidence in Years 2-4 and for the change in the cumulative disease burden, and low for conversion to secondary progressive disease and treatment discontinuation. External validation showed similar results, demonstrating high external validity for disability and relapse outcomes, moderate external validity for cumulative disease burden and low external validity for conversion to secondary progressive disease and treatment discontinuation. We conclude that demographic, clinical and paraclinical information helps predict individual response to disease-modifying therapies at the time of their commencement.Entities:
Keywords: disability; multiple sclerosis; precision medicine; prediction; relapses
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Year: 2017 PMID: 29050389 DOI: 10.1093/brain/awx185
Source DB: PubMed Journal: Brain ISSN: 0006-8950 Impact factor: 13.501