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. 2021 Jun 8:12:650024.
doi: 10.3389/fneur.2021.650024. eCollection 2021.

Assessment Methods of Post-stroke Gait: A Scoping Review of Technology-Driven Approaches to Gait Characterization and Analysis

Affiliations

Assessment Methods of Post-stroke Gait: A Scoping Review of Technology-Driven Approaches to Gait Characterization and Analysis

Dhanya Menoth Mohan et al. Front Neurol. .

Abstract

Background: Gait dysfunction or impairment is considered one of the most common and devastating physiological consequences of stroke, and achieving optimal gait is a key goal for stroke victims with gait disability along with their clinical teams. Many researchers have explored post stroke gait, including assessment tools and techniques, key gait parameters and significance on functional recovery, as well as data mining, modeling and analyses methods. Research Question: This study aimed to review and summarize research efforts applicable to quantification and analyses of post-stroke gait with focus on recent technology-driven gait characterization and analysis approaches, including the integration of smart low cost wearables and Artificial Intelligence (AI), as well as feasibility and potential value in clinical settings. Methods: A comprehensive literature search was conducted within Google Scholar, PubMed, and ScienceDirect using a set of keywords, including lower extremity, walking, post-stroke, and kinematics. Original articles that met the selection criteria were included. Results and Significance: This scoping review aimed to shed light on tools and technologies employed in post stroke gait assessment toward bridging the existing gap between the research and clinical communities. Conventional qualitative gait analysis, typically used in clinics is mainly based on observational gait and is hence subjective and largely impacted by the observer's experience. Quantitative gait analysis, however, provides measured parameters, with good accuracy and repeatability for the diagnosis and comparative assessment throughout rehabilitation. Rapidly emerging smart wearable technology and AI, including Machine Learning, Support Vector Machine, and Neural Network approaches, are increasingly commanding greater attention in gait research. Although their use in clinical settings are not yet well leveraged, these tools promise a paradigm shift in stroke gait quantification, as they provide means for acquiring, storing and analyzing multifactorial complex gait data, while capturing its non-linear dynamic variability and offering the invaluable benefits of predictive analytics.

Keywords: artificial intelligence; dynamics; gait; hemiplegia; machine learning; post-stroke; spatiotemporal; statistical tools.

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Conflict of interest statement

The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

Figures

Figure 1
Figure 1
Flowchart of the search.
Figure 2
Figure 2
Functional phases of a normal gait cycle according to (50).
Figure 3
Figure 3
An example of uncorrected post-stroke spastic gait pattern (66).

References

    1. Mackay J, Mensah GA. The Atlas of Heart Disease and Stroke. Geneva: World Health Organization; (2004).
    1. Johnston SC, Mendis S, Mathers CD. Global variation in stroke burden and mortality: estimates from monitoring, surveillance, and modelling. Lancet Neurol. (2009) 8:345–54. 10.1016/S1474-4422(09)70023-7 - DOI - PubMed
    1. Zain A. Every Hour One Person Gets a Stroke in UAE-Khaleej Times (2019). Available online at: https://www.khaleejtimes.com/news/uae-health/one-in-every-hour-gets-stro... (Accessed March 16, 2019).
    1. Lyden PD, Hantson L. Assessment scales for the evaluation of stroke patients. J Stroke Cerebrovasc Dis. (1998) 7:113–27. 10.1016/S1052-3057(98)80138-9 - DOI - PubMed
    1. Harrison JK, McArthur KS, Quinn TJ. Assessment scales in stroke: clinimetric and clinical considerations. Clin Intervent Aging (2013) 8:201. 10.2147/CIA.S32405 - DOI - PMC - PubMed

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