Literature DB >> 26737281

A machine learning pipeline for multiple sclerosis course detection from clinical scales and patient reported outcomes.

Samuele Fiorini, Alessandro Verri, Andrea Tacchino, Michela Ponzio, Giampaolo Brichetto, Annalisa Barla.   

Abstract

In this work we present a machine learning pipeline for the detection of multiple sclerosis course from a collection of inexpensive and non-invasive measures such as clinical scales and patient-reported outcomes. The proposed analysis is conducted on a dataset coming from a clinical study comprising 457 patients affected by multiple sclerosis. The 91 collected variables describe patients mobility, fatigue, cognitive performance, emotional status, bladder continence and quality of life. A preliminary data exploration phase suggests that the group of patients diagnosed as Relapsing-Remitting can be isolated from other clinical courses. Supervised learning algorithms are then applied to perform feature selection and course classification. Our results confirm that clinical scales and patient-reported outcomes can be used to classify Relapsing-Remitting patients.

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Year:  2015        PMID: 26737281     DOI: 10.1109/EMBC.2015.7319381

Source DB:  PubMed          Journal:  Conf Proc IEEE Eng Med Biol Soc        ISSN: 1557-170X


  7 in total

1.  Identifying Key Symptoms Differentiating Myalgic Encephalomyelitis and Chronic Fatigue Syndrome from Multiple Sclerosis.

Authors:  Diana Ohanian; Abigail Brown; Madison Sunnquist; Jacob Furst; Laura Nicholson; Lauren Klebek; Leonard A Jason
Journal:  Neurology (ECronicon)       Date:  2016-12-19

Review 2.  Innovations in research and clinical care using patient-generated health data.

Authors:  Heather S L Jim; Aasha I Hoogland; Naomi C Brownstein; Anna Barata; Adam P Dicker; Hans Knoop; Brian D Gonzalez; Randa Perkins; Dana Rollison; Scott M Gilbert; Ronica Nanda; Anders Berglund; Ross Mitchell; Peter A S Johnstone
Journal:  CA Cancer J Clin       Date:  2020-04-20       Impact factor: 508.702

3.  Multiple sclerosis diagnosis and phenotype identification by multivariate classification of in vivo frontal cortex metabolite profiles.

Authors:  Kelley M Swanberg; Abhinav V Kurada; Hetty Prinsen; Christoph Juchem
Journal:  Sci Rep       Date:  2022-08-16       Impact factor: 4.996

4.  The role of machine learning in developing non-magnetic resonance imaging based biomarkers for multiple sclerosis: a systematic review.

Authors:  Md Zakir Hossain; Elena Daskalaki; Anne Brüstle; Jane Desborough; Christian J Lueck; Hanna Suominen
Journal:  BMC Med Inform Decis Mak       Date:  2022-09-15       Impact factor: 3.298

5.  Collaboration between a human group and artificial intelligence can improve prediction of multiple sclerosis course: a proof-of-principle study.

Authors:  Andrea Tacchella; Silvia Romano; Michela Ferraldeschi; Marco Salvetti; Andrea Zaccaria; Andrea Crisanti; Francesca Grassi
Journal:  F1000Res       Date:  2017-12-22

6.  Considering patient clinical history impacts performance of machine learning models in predicting course of multiple sclerosis.

Authors:  Ruggiero Seccia; Daniele Gammelli; Fabio Dominici; Silvia Romano; Anna Chiara Landi; Marco Salvetti; Andrea Tacchella; Andrea Zaccaria; Andrea Crisanti; Francesca Grassi; Laura Palagi
Journal:  PLoS One       Date:  2020-03-20       Impact factor: 3.240

Review 7.  A systematic review of the applications of artificial intelligence and machine learning in autoimmune diseases.

Authors:  I S Stafford; M Kellermann; E Mossotto; R M Beattie; B D MacArthur; S Ennis
Journal:  NPJ Digit Med       Date:  2020-03-09
  7 in total

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