Kaelin Vera C, Valizadeh Mina, Salgado Zurisadai, Sim Julia G, Anaby Dana, Boyd Andrew D, Parde Natalie, Khetani Mary A
Rehabilitation 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.
Front Rehabil Sci. 2022;3. doi: 10.3389/fresc.2022.855240.
There is increased interest in using artificial intelligence (AI) to provide participation-focused pediatric re/habilitation. Existing reviews on the use of AI in participation-focused pediatric re/habilitation focus on interventions and do not screen articles based on their definition of participation. AI-based assessments may help reduce provider burden and can support operationalization of the construct under investigation. To extend knowledge of the landscape on AI use in participation-focused pediatric re/habilitation, a scoping review on AI-based participation-focused assessments is needed.
To understand how the construct of participation is captured and operationalized in pediatric re/habilitation using AI.
We conducted a scoping review of literature published in Pubmed, PsycInfo, ERIC, CINAHL, IEEE Xplore, ACM Digital Library, ProQuest Dissertation and Theses, ACL Anthology, AAAI Digital Library, and Google Scholar. Documents were screened by 2-3 independent researchers following a systematic procedure and using the following inclusion criteria: (1) focuses on capturing participation using AI; (2) includes data on children and/or youth with a congenital or acquired disability; and (3) published in English. Data from included studies were extracted [e.g., demographics, type(s) of AI used], summarized, and sorted into categories of participation-related constructs.
Twenty one out of 3,406 documents were included. Included assessment approaches mainly captured participation through annotated observations ( = 20; 95%), were administered in person ( = 17; 81%), and applied machine learning ( = 20; 95%) and computer vision ( = 13; 62%). None integrated the child or youth perspective and only one included the caregiver perspective. All assessment approaches captured behavioral involvement, and none captured emotional or cognitive involvement or attendance. Additionally, 24% ( = 5) of the assessment approaches captured participation-related constructs like activity competencies and 57% ( = 12) captured aspects not included in contemporary frameworks of participation.
Main gaps for future research include lack of: (1) research reporting on common demographic factors and including samples representing the population of children and youth with a congenital or acquired disability; (2) AI-based participation assessment approaches integrating the child or youth perspective; (3) remotely administered AI-based assessment approaches capturing both child or youth attendance and involvement; and (4) AI-based assessment approaches aligning with contemporary definitions of participation.
利用人工智能(AI)提供以参与为重点的儿科康复越来越受到关注。现有的关于在以参与为重点的儿科康复中使用人工智能的综述侧重于干预措施,且未根据参与的定义筛选文章。基于人工智能的评估可能有助于减轻提供者的负担,并能支持所研究结构的操作化。为了扩展关于在以参与为重点的儿科康复中使用人工智能的情况的知识,需要对基于人工智能的以参与为重点的评估进行范围综述。
了解在儿科康复中如何利用人工智能来捕捉和操作化参与这一结构。
我们对发表在PubMed、PsycInfo、ERIC、CINAHL、IEEE Xplore、ACM数字图书馆、ProQuest学位论文数据库、ACL文集、AAAI数字图书馆和谷歌学术上的文献进行了范围综述。由2至3名独立研究人员按照系统程序并使用以下纳入标准对文献进行筛选:(1)侧重于利用人工智能捕捉参与情况;(2)包括有关患有先天性或后天性残疾的儿童和/或青少年的数据;(3)以英文发表。从纳入研究中提取数据(如人口统计学、所使用的人工智能类型),进行总结,并分类为与参与相关的结构类别。
3406篇文献中有21篇被纳入。纳入的评估方法主要通过注释观察来捕捉参与情况(n = 20;95%),采用面对面实施(n = 17;81%),并应用机器学习(n = 20;95%)和计算机视觉(n = 13;62%)。没有一种方法整合了儿童或青少年的视角,只有一种方法纳入了照顾者的视角。所有评估方法都捕捉到了行为参与,没有一种方法捕捉到了情感或认知参与或出勤情况。此外,24%(n = 5)的评估方法捕捉到了与参与相关的结构,如活动能力,57%(n = 12)的评估方法捕捉到了当代参与框架中未包括的方面。
未来研究的主要差距包括缺乏:(1)关于常见人口统计学因素的研究报告,以及缺乏代表患有先天性或后天性残疾的儿童和青少年人群的样本;(2)整合儿童或青少年视角的基于人工智能的参与评估方法;(3)能够捕捉儿童或青少年出勤和参与情况的远程实施的基于人工智能的评估方法;(4)与当代参与定义相一致的基于人工智能的评估方法。