Literature DB >> 34253769

Interpretable deep learning for the remote characterisation of ambulation in multiple sclerosis using smartphones.

Andrew P Creagh1, Florian Lipsmeier2, Michael Lindemann2, Maarten De Vos3,4,5.   

Abstract

The emergence of digital technologies such as smartphones in healthcare applications have demonstrated the possibility of developing rich, continuous, and objective measures of multiple sclerosis (MS) disability that can be administered remotely and out-of-clinic. Deep Convolutional Neural Networks (DCNN) may capture a richer representation of healthy and MS-related ambulatory characteristics from the raw smartphone-based inertial sensor data than standard feature-based methodologies. To overcome the typical limitations associated with remotely generated health data, such as low subject numbers, sparsity, and heterogeneous data, a transfer learning (TL) model from similar large open-source datasets was proposed. Our TL framework leveraged the ambulatory information learned on human activity recognition (HAR) tasks collected from wearable smartphone sensor data. It was demonstrated that fine-tuning TL DCNN HAR models towards MS disease recognition tasks outperformed previous Support Vector Machine (SVM) feature-based methods, as well as DCNN models trained end-to-end, by upwards of 8-15%. A lack of transparency of "black-box" deep networks remains one of the largest stumbling blocks to the wider acceptance of deep learning for clinical applications. Ensuing work therefore aimed to visualise DCNN decisions attributed by relevance heatmaps using Layer-Wise Relevance Propagation (LRP). Through the LRP framework, the patterns captured from smartphone-based inertial sensor data that were reflective of those who are healthy versus people with MS (PwMS) could begin to be established and understood. Interpretations suggested that cadence-based measures, gait speed, and ambulation-related signal perturbations were distinct characteristics that distinguished MS disability from healthy participants. Robust and interpretable outcomes, generated from high-frequency out-of-clinic assessments, could greatly augment the current in-clinic assessment picture for PwMS, to inform better disease management techniques, and enable the development of better therapeutic interventions.
© 2021. The Author(s).

Entities:  

Year:  2021        PMID: 34253769     DOI: 10.1038/s41598-021-92776-x

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.379


  6 in total

1.  Time--frequency analysis of biosignals.

Authors:  Paul Addison; James Walker; Rodrigo Guido
Journal:  IEEE Eng Med Biol Mag       Date:  2009 Sep-Oct

2.  Interpretable deep neural networks for single-trial EEG classification.

Authors:  Irene Sturm; Sebastian Lapuschkin; Wojciech Samek; Klaus-Robert Müller
Journal:  J Neurosci Methods       Date:  2016-10-13       Impact factor: 2.390

3.  Quantifying six-minute walk induced gait deterioration with inertial sensors in multiple sclerosis subjects.

Authors:  Matthew M Engelhard; Sriram Raju Dandu; Stephen D Patek; John C Lach; Myla D Goldman
Journal:  Gait Posture       Date:  2016-07-27       Impact factor: 2.840

Review 4.  High-performance medicine: the convergence of human and artificial intelligence.

Authors:  Eric J Topol
Journal:  Nat Med       Date:  2019-01-07       Impact factor: 53.440

5.  Validity of the timed 25-foot walk as an ambulatory performance outcome measure for multiple sclerosis.

Authors:  Robert W Motl; Jeffrey A Cohen; Ralph Benedict; Glenn Phillips; Nicholas LaRocca; Lynn D Hudson; Richard Rudick
Journal:  Mult Scler       Date:  2017-02-16       Impact factor: 6.312

6.  Explaining the unique nature of individual gait patterns with deep learning.

Authors:  Fabian Horst; Sebastian Lapuschkin; Wojciech Samek; Klaus-Robert Müller; Wolfgang I Schöllhorn
Journal:  Sci Rep       Date:  2019-02-20       Impact factor: 4.379

  6 in total

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