Multimodal-neuroimaging machine-learning analysis of motor disability in multiple sclerosis

被引:0
|
作者
Barbora Rehák Bučková
Jan Mareš
Antonín Škoch
Jakub Kopal
Jaroslav Tintěra
Robert Dineen
Kamila Řasová
Jaroslav Hlinka
机构
[1] The Czech Technical University in Prague,
[2] Institute of Computer Science of the Czech Academy of Sciences,undefined
[3] National Institute of Mental Health,undefined
[4] Institute for Clinical and Experimental Medicine,undefined
[5] University of Nottingham,undefined
[6] National Institute for Health Research,undefined
[7] Charles University,undefined
来源
Brain Imaging and Behavior | 2023年 / 17卷
关键词
Multiple sclerosis; Machine learning; Multimodal analysis; Prediction; MRI;
D O I
暂无
中图分类号
学科分类号
摘要
Motor disability is a dominant and restricting symptom in multiple sclerosis, yet its neuroimaging correlates are not fully understood. We apply statistical and machine learning techniques on multimodal neuroimaging data to discriminate between multiple sclerosis patients and healthy controls and to predict motor disability scores in the patients. We examine the data of sixty-four multiple sclerosis patients and sixty-five controls, who underwent the MRI examination and the evaluation of motor disability scales. The modalities used comprised regional fractional anisotropy, regional grey matter volumes, and functional connectivity. For analysis, we employ two approaches: high-dimensional support vector machines run on features selected by Fisher Score (aiming for maximal classification accuracy), and low-dimensional logistic regression on the principal components of data (aiming for increased interpretability). We apply analogous regression methods to predict symptom severity. While fractional anisotropy provides the classification accuracy of 96.1% and 89.9% with both approaches respectively, including other modalities did not bring further improvement. Concerning the prediction of motor impairment, the low-dimensional approach performed more reliably. The first grey matter volume component was significantly correlated (R = 0.28-0.46, p < 0.05) with most clinical scales. In summary, we identified the relationship between both white and grey matter changes and motor impairment in multiple sclerosis. Furthermore, we were able to achieve the highest classification accuracy based on quantitative MRI measures of tissue integrity between patients and controls yet reported, while also providing a low-dimensional classification approach with comparable results, paving the way to interpretable machine learning models of brain changes in multiple sclerosis.
引用
收藏
页码:18 / 34
页数:16
相关论文
共 50 条
  • [31] Machine Learning Use for Prognostic Purposes in Multiple Sclerosis
    Seccia, Ruggiero
    Romano, Silvia
    Salvetti, Marco
    Crisanti, Andrea
    Palagi, Laura
    Grassi, Francesca
    LIFE-BASEL, 2021, 11 (02): : 1 - 18
  • [32] Multivariate Machine Learning Methods for Fusing Multimodal Functional Neuroimaging Data
    Daehne, Sven
    Biessmann, Felix
    Samek, Wojciech
    Haufe, Stefan
    Goltz, Dominique
    Gundlach, Christopher
    Villringer, Arno
    Fazli, Siamac
    Muller, Klaus-Robert
    PROCEEDINGS OF THE IEEE, 2015, 103 (09) : 1507 - 1530
  • [33] Big-Data Analysis, Cluster Analysis, and Machine-Learning Approaches
    Alonso-Betanzos, Amparo
    Bolon-Canedo, Veronica
    SEX-SPECIFIC ANALYSIS OF CARDIOVASCULAR FUNCTION, 2018, 1065 : 607 - 626
  • [34] Data-Driven Machine-Learning Quantifies Differences in the Voiding Initiation Network in Neurogenic Voiding Dysfunction in Women With Multiple Sclerosis
    Karmonik, Christof
    Boone, Timothy
    Khavari, Rose
    INTERNATIONAL NEUROUROLOGY JOURNAL, 2019, 23 (03) : 195 - 204
  • [35] Classifying multiple sclerosis patients on the basis of SDMT performance using machine learning
    Buyukturkoglu, Korhan
    Zeng, Dana
    Bharadwaj, Srinidhi
    Tozlu, Ceren
    Mormina, Enricomaria
    Igwe, Kay C.
    Lee, Seonjoo
    Habeck, Christian
    Brickman, Adam M.
    Riley, Claire S.
    De Jager, Philip L.
    Sumowski, James F.
    Leavitt, Victoria M.
    MULTIPLE SCLEROSIS JOURNAL, 2021, 27 (01) : 107 - 116
  • [36] Predicting Perovskite Performance with Multiple Machine-Learning Algorithms
    Li, Ruoyu
    Deng, Qin
    Tian, Dong
    Zhu, Daoye
    Lin, Bin
    CRYSTALS, 2021, 11 (07)
  • [37] Analysis of defective pathways and drug repositioning in Multiple Sclerosis via machine learning approaches
    deAndres-Galiana, Enrique J.
    Bea, Guillermina
    Fernandez-Martinez, Juan L.
    Saligan, Leo N.
    COMPUTERS IN BIOLOGY AND MEDICINE, 2019, 115
  • [38] A machine-learning based analysis for the recognition of progressive central hypovolemia
    Bennis, Frank C.
    van der Ster, Bjorn J. P.
    van Lieshout, Johannes J.
    Andriessen, Peter
    Delhaas, Tammo
    PHYSIOLOGICAL MEASUREMENT, 2017, 38 (09) : 1791 - 1801
  • [39] Impact of Melatonin on Motor, Cognitive and Neuroimaging Indices in Patients with Multiple Sclerosis
    Roostaei, Tina
    Sahraian, Mohammad Ali
    Hajeaghaee, Sara
    Gholipour, Taha
    Togha, Mansoureh
    Siroos, Bahaadin
    Mansouri, Sepideh
    Mohammadshirazi, Zahra
    Alasti, Maryam Aghazadeh
    Harirchian, Mohammad Hossein
    IRANIAN JOURNAL OF ALLERGY ASTHMA AND IMMUNOLOGY, 2015, 14 (06) : 589 - 595
  • [40] Time-Dependent Deep Learning Prediction of Multiple Sclerosis Disability
    Mayfield, John D.
    Murtagh, Ryan
    Ciotti, John
    Robertson, Derrick
    Naqa, Issam El
    JOURNAL OF IMAGING INFORMATICS IN MEDICINE, 2024, 37 (06): : 3231 - 3249