Felipe J.J. Reis , Matheus Bartholazzi Lugão de Carvalho , Gabriela de Assis Neves , Leandro Calazans Nogueira , Ney Meziat-Filho
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ML was defined as the utilization of computational systems to encode patterns and relationships, enabling predictions or classifications with minimal human interference.</p></div><div><h3>Data extraction and data synthesis</h3><p>Data were extracted regarding methods, data types, performance metrics, and model availability.</p></div><div><h3>Results</h3><p>Forty-two studies were included. The majority were published after 2020 (n = 25). Fourteen studies (33.3%) were in the musculoskeletal physical therapy field, nine (21.4%) in neurological, and eight (19%) in sports physical therapy. We identified 44 different ML models, with random forest being the most used. Three studies reported on model availability. We identified several clinical applications for ML-based tools, including diagnosis (n = 14), prognosis (n = 7), treatment outcomes prediction (n = 7), clinical decision support (n = 5), movement analysis (n = 4), patient monitoring (n = 3), and personalized care plan (n = 2).</p></div><div><h3>Limitation</h3><p>Model performance metrics, costs, model interpretability, and explainability were not reported.</p></div><div><h3>Conclusion</h3><p>This scope review mapped the emerging landscape of machine learning applications in physical therapy. Despite the growing interest, the field still lacks high-quality studies on validation, model availability, and acceptability to advance from research to clinical practice.</p></div>","PeriodicalId":2,"journal":{"name":"ACS Applied Bio Materials","volume":null,"pages":null},"PeriodicalIF":4.6000,"publicationDate":"2024-09-13","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Machine learning methods in physical therapy: A scoping review of applications in clinical context\",\"authors\":\"Felipe J.J. 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引用次数: 0
摘要
背景机器学习(ML)可高效处理大型数据集,在提高物理治疗的临床实践方面大有可为。目的本范围综述旨在概述在物理治疗的临床环境中使用 ML 方法的研究。ML 被定义为利用计算系统对模式和关系进行编码,从而在最少人为干预的情况下进行预测或分类。数据提取和数据综合提取了有关方法、数据类型、性能指标和模型可用性的数据。大多数研究发表于 2020 年之后(n = 25)。14项研究(33.3%)涉及肌肉骨骼理疗领域,9项(21.4%)涉及神经理疗领域,8项(19%)涉及运动理疗领域。我们发现了 44 种不同的 ML 模型,其中使用最多的是随机森林模型。三项研究报告了模型的可用性。我们确定了基于 ML 工具的几种临床应用,包括诊断(14 例)、预后(7 例)、治疗结果预测(7 例)、临床决策支持(5 例)、运动分析(4 例)、患者监控(3 例)和个性化护理计划(2 例)。尽管人们对机器学习的兴趣与日俱增,但该领域仍然缺乏关于验证、模型可用性和可接受性的高质量研究,因此无法从研究推进到临床实践。
Machine learning methods in physical therapy: A scoping review of applications in clinical context
Background
Machine learning (ML) efficiently processes large datasets, showing promise in enhancing clinical practice within physical therapy.
Objective
The aim of this scoping review is to provide an overview of studies using ML approaches in clinical settings of physical therapy.
Data sources
A scoping review was performed in PubMed, EMBASE, PEDro, Cochrane, Web of Science, and Scopus.
Selection criteria
We included studies utilizing ML methods. ML was defined as the utilization of computational systems to encode patterns and relationships, enabling predictions or classifications with minimal human interference.
Data extraction and data synthesis
Data were extracted regarding methods, data types, performance metrics, and model availability.
Results
Forty-two studies were included. The majority were published after 2020 (n = 25). Fourteen studies (33.3%) were in the musculoskeletal physical therapy field, nine (21.4%) in neurological, and eight (19%) in sports physical therapy. We identified 44 different ML models, with random forest being the most used. Three studies reported on model availability. We identified several clinical applications for ML-based tools, including diagnosis (n = 14), prognosis (n = 7), treatment outcomes prediction (n = 7), clinical decision support (n = 5), movement analysis (n = 4), patient monitoring (n = 3), and personalized care plan (n = 2).
Limitation
Model performance metrics, costs, model interpretability, and explainability were not reported.
Conclusion
This scope review mapped the emerging landscape of machine learning applications in physical therapy. Despite the growing interest, the field still lacks high-quality studies on validation, model availability, and acceptability to advance from research to clinical practice.