A systematic review of artificial intelligence for pediatric physiotherapy practice: Past, present, and future

Ravula Sahithya Ravali , Thangavel Mahalingam Vijayakumar , Karunanidhi Santhana Lakshmi , Dinesh Mavaluru , Lingala Viswanath Reddy , Mervin Retnadhas , Tintu Thomas
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引用次数: 11

Abstract

Background: Artificial intelligence (AI) is one of the active research fields to develop systems that mimic human intelligence and is helpful in many fields, particularly in medicine. (“Role of Artificial Intelligence Techniques ... - PubMed”) Physiotherapy is mainly involving in curing bone-related pain and injuries. The recent emergence of artificially intelligent machines has seen human cognitive capacity enhanced by computational agents that can recognize previously hidden patterns within massive data sets. (“(PDF) Artificial intelligence in clinical practice ...”) In this context, artificial intelligence in pediatric physiotherapy could be one of the most important modalities in delivering better medical and healthcare services to needy people. It is an attempt to identify the types, as well as to assess the effectiveness of interventions provided by artificial intelligence on pediatric physical therapy optimization-related outcomes.

Methods: Data acquisition was carried out by systematic searches from various academic and research databases i.e., google scholar, PubMed, and IEEE from March 2011 to March 2021. Besides, numerous trial registries and grey literature resources were also explored. A total of 187 titles/abstracts were screened, and forty-eight full-text articles were assessed for eligibility.

Conclusions: This research describes some of the possible influences of artificial intelligence technologies on pediatric physiotherapy practice, and the subsequent ways in which physiotherapy education will need to change to graduate professionals who are fit for practice in the 21st century health system for promoting safe and effective use of artificial intelligence and the delivery of Pediatric Physical Therapy care to people.

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人工智能在儿童物理治疗实践中的系统回顾:过去、现在和未来
背景:人工智能(AI)是开发模仿人类智能的系统的活跃研究领域之一,在许多领域,特别是医学领域都有帮助。(“人工智能技术的作用……物理治疗主要涉及治疗与骨有关的疼痛和损伤。最近出现的人工智能机器已经通过计算代理增强了人类的认知能力,这些计算代理可以识别大量数据集中以前隐藏的模式。(" (PDF)临床实践中的人工智能。")在这种情况下,儿科物理治疗中的人工智能可能是向有需要的人提供更好的医疗和保健服务的最重要方式之一。这是一项尝试,以确定类型,并评估人工智能提供的干预措施对儿童物理治疗优化相关结果的有效性。方法:2011年3月至2021年3月,系统检索google scholar、PubMed、IEEE等学术研究数据库。此外,还查阅了大量的试验注册库和灰色文献资源。共筛选了187个标题/摘要,并评估了48篇全文文章的资格。结论:本研究描述了人工智能技术对儿童物理治疗实践的一些可能影响,以及随后物理治疗教育需要改变的方式,以适应21世纪卫生系统中适合实践的研究生专业人员,以促进安全有效地使用人工智能并向人们提供儿科物理治疗护理。
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来源期刊
Neuroscience informatics
Neuroscience informatics Surgery, Radiology and Imaging, Information Systems, Neurology, Artificial Intelligence, Computer Science Applications, Signal Processing, Critical Care and Intensive Care Medicine, Health Informatics, Clinical Neurology, Pathology and Medical Technology
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