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人工智能在康复中的应用:以残疾儿童和青少年的参与为目标:范围综述。

Artificial Intelligence in Rehabilitation Targeting the Participation of Children and Youth With Disabilities: Scoping Review.

机构信息

Rehabilitation Sciences, College of Applied Health Sciences, University of Illinois at Chicago, Chicago, IL, United States.

Children's Participation in Environment Research Lab, University of Illinois at Chicago, Chicago, IL, United States.

出版信息

J Med Internet Res. 2021 Nov 4;23(11):e25745. doi: 10.2196/25745.

Abstract

BACKGROUND

In the last decade, there has been a rapid increase in research on the use of artificial intelligence (AI) to improve child and youth participation in daily life activities, which is a key rehabilitation outcome. However, existing reviews place variable focus on participation, are narrow in scope, and are restricted to select diagnoses, hindering interpretability regarding the existing scope of AI applications that target the participation of children and youth in a pediatric rehabilitation setting.

OBJECTIVE

The aim of this scoping review is to examine how AI is integrated into pediatric rehabilitation interventions targeting the participation of children and youth with disabilities or other diagnosed health conditions in valued activities.

METHODS

We conducted a comprehensive literature search using established Applied Health Sciences and Computer Science databases. Two independent researchers screened and selected the studies based on a systematic procedure. Inclusion criteria were as follows: participation was an explicit study aim or outcome or the targeted focus of the AI application; AI was applied as part of the provided and tested intervention; children or youth with a disability or other diagnosed health conditions were the focus of either the study or AI application or both; and the study was published in English. Data were mapped according to the types of AI, the mode of delivery, the type of personalization, and whether the intervention addressed individual goal-setting.

RESULTS

The literature search identified 3029 documents, of which 94 met the inclusion criteria. Most of the included studies used multiple applications of AI with the highest prevalence of robotics (72/94, 77%) and human-machine interaction (51/94, 54%). Regarding mode of delivery, most of the included studies described an intervention delivered in-person (84/94, 89%), and only 11% (10/94) were delivered remotely. Most interventions were tailored to groups of individuals (93/94, 99%). Only 1% (1/94) of interventions was tailored to patients' individually reported participation needs, and only one intervention (1/94, 1%) described individual goal-setting as part of their therapy process or intervention planning.

CONCLUSIONS

There is an increasing amount of research on interventions using AI to target the participation of children and youth with disabilities or other diagnosed health conditions, supporting the potential of using AI in pediatric rehabilitation. On the basis of our results, 3 major gaps for further research and development were identified: a lack of remotely delivered participation-focused interventions using AI; a lack of individual goal-setting integrated in interventions; and a lack of interventions tailored to individually reported participation needs of children, youth, or families.

摘要

背景

在过去十年中,人工智能(AI)在提高儿童和青少年参与日常生活活动方面的应用研究迅速增加,这是康复的关键成果。然而,现有的综述对参与的重视程度不同,范围较窄,仅限于选择诊断,这阻碍了对儿科康复环境中针对儿童和青少年参与的 AI 应用的现有范围的解释。

目的

本范围综述旨在研究 AI 如何融入针对残疾或其他诊断健康状况的儿童和青年参与有价值活动的儿科康复干预措施。

方法

我们使用既定的应用健康科学和计算机科学数据库进行了全面的文献检索。两名独立研究人员根据系统程序筛选和选择研究。纳入标准如下:参与是明确的研究目标或结果,或 AI 应用的目标重点;AI 作为提供和测试的干预措施的一部分应用;残疾或其他诊断健康状况的儿童或青年是研究或 AI 应用的重点,或者两者都是;并且研究以英文发表。根据 AI 类型、交付模式、个性化类型以及干预措施是否针对个体目标设定,对数据进行了映射。

结果

文献检索确定了 3029 篇文献,其中 94 篇符合纳入标准。大多数纳入的研究使用了多种 AI 应用,其中机器人技术(72/94,77%)和人机交互(51/94,54%)的应用最为广泛。关于交付模式,大多数纳入的研究都描述了面对面的干预措施(84/94,89%),只有 11%(10/94)是远程交付。大多数干预措施都是针对个体的(93/94,99%)。只有 1%(1/94)的干预措施针对患者个体报告的参与需求进行了调整,只有一项干预措施(1/94,1%)将个体目标设定描述为其治疗过程或干预计划的一部分。

结论

针对残疾或其他诊断健康状况的儿童和青年参与的干预措施使用 AI 的研究数量不断增加,这支持了在儿科康复中使用 AI 的潜力。根据我们的结果,确定了进一步研究和开发的 3 个主要差距:缺乏使用 AI 进行远程参与为重点的干预措施;缺乏将个体目标设定纳入干预措施;以及缺乏针对儿童、青少年或家庭个体报告的参与需求进行调整的干预措施。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5200/8603165/cf77d1318f02/jmir_v23i11e25745_fig1.jpg

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