自动分析自闭症谱系障碍儿童视频中的刻板动作

IF 10.5 1区 医学 Q1 MEDICINE, GENERAL & INTERNAL JAMA Network Open Pub Date : 2024-09-12 DOI:10.1001/jamanetworkopen.2024.32851
Tal Barami, Liora Manelis-Baram, Hadas Kaiser, Michal Ilan, Aviv Slobodkin, Ofri Hadashi, Dor Hadad, Danel Waissengreen, Tanya Nitzan, Idan Menashe, Analya Michaelovsky, Michal Begin, Ditza A. Zachor, Yair Sadaka, Judah Koler, Dikla Zagdon, Gal Meiri, Omri Azencot, Andrei Sharf, Ilan Dinstein
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Current quantification of SMM severity is extremely limited, with studies relying on coarse and subjective caregiver reports or laborious manual annotation of short video recordings.ObjectiveTo assess the utility of a new open-source AI algorithm that can analyze extensive video recordings of children and automatically identify segments with heterogeneous SMMs, thereby enabling their direct and objective quantification.Design, Setting, and ParticipantsThis retrospective cohort study included 241 children (aged 1.4 to 8.0 years) with ASD. Video recordings of 319 behavioral assessments carried out at the Azrieli National Centre for Autism and Neurodevelopment Research in Israel between 2017 and 2021 were extracted. Behavioral assessments included cognitive, language, and autism diagnostic observation schedule, 2nd edition (ADOS-2) assessments. Data were analyzed from October 2020 to May 2024.ExposuresEach assessment was recorded with 2 to 4 cameras, yielding 580 hours of video footage. 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引用次数: 0

摘要

重要性立体定向运动(SMM)是一种局限性重复行为,是自闭症谱系障碍(ASD)的核心症状。目前对 SMM 严重程度的量化非常有限,研究依赖于粗略和主观的护理人员报告,或对短视频录像进行费力的人工标注。目的评估一种新型开源人工智能算法的实用性,该算法可以分析儿童的大量视频录像,并自动识别具有异质性 SMM 的片段,从而对其进行直接和客观的量化。研究人员提取了 2017 年至 2021 年期间在以色列 Azrieli 国家自闭症和神经发育研究中心进行的 319 次行为评估的视频记录。行为评估包括认知、语言和自闭症诊断观察表第二版(ADOS-2)评估。数据分析时间为 2020 年 10 月至 2024 年 5 月。每次评估都使用 2 到 4 台摄像机进行记录,共产生 580 个小时的视频录像。在这些大量的视频记录中,人工标注者识别出了7352个视频片段,其中包含不同儿童进行的异质SMM(21.14小时的视频)。主要结果和测量采用姿势估计算法提取每个视频帧中所有个体的骨骼表征,并训练对象检测算法识别每个视频中的儿童。然后使用儿童的骨骼表征来训练使用三维卷积神经网络的 SMM 识别算法。结果在来自 241 名儿童(172 [78%] 名男性;平均 [SD] 年龄为 3.97 [1.30] 岁)的 319 份行为评估记录中,该算法准确检测出测试数据中 92.53% (95% CI, 81.09%-95.10%) 的人工注释 SMM,精确度为 66.82% (95% CI, 55.28%-72.05%) 。算法识别的每个儿童 SMM 的总体数量和持续时间与人工注释的 SMM 数量和持续时间高度相关(r = 0.8; 95% CI, 0.67-0.93; P &amp;lt; .001; and r = 0.88; 95% CI, 0.74-0.96; P &amp;lt; .001)。结论和相关性这项研究表明,算法能够识别多种多样的SMM,并对其进行高精度量化,从而客观、直接地估计个别ASD儿童的SMM严重程度。
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Automated Analysis of Stereotypical Movements in Videos of Children With Autism Spectrum Disorder
ImportanceStereotypical motor movements (SMMs) are a form of restricted and repetitive behavior, which is a core symptom of autism spectrum disorder (ASD). Current quantification of SMM severity is extremely limited, with studies relying on coarse and subjective caregiver reports or laborious manual annotation of short video recordings.ObjectiveTo assess the utility of a new open-source AI algorithm that can analyze extensive video recordings of children and automatically identify segments with heterogeneous SMMs, thereby enabling their direct and objective quantification.Design, Setting, and ParticipantsThis retrospective cohort study included 241 children (aged 1.4 to 8.0 years) with ASD. Video recordings of 319 behavioral assessments carried out at the Azrieli National Centre for Autism and Neurodevelopment Research in Israel between 2017 and 2021 were extracted. Behavioral assessments included cognitive, language, and autism diagnostic observation schedule, 2nd edition (ADOS-2) assessments. Data were analyzed from October 2020 to May 2024.ExposuresEach assessment was recorded with 2 to 4 cameras, yielding 580 hours of video footage. Within these extensive video recordings, manual annotators identified 7352 video segments containing heterogeneous SMMs performed by different children (21.14 hours of video).Main outcomes and measuresA pose estimation algorithm was used to extract skeletal representations of all individuals in each video frame and was trained an object detection algorithm to identify the child in each video. The skeletal representation of the child was then used to train an SMM recognition algorithm using a 3 dimensional convolutional neural network. Data from 220 children were used for training and data from the remaining 21 children were used for testing.ResultsAmong 319 behavioral assessment recordings from 241 children (172 [78%] male; mean [SD] age, 3.97 [1.30] years), the algorithm accurately detected 92.53% (95% CI, 81.09%-95.10%) of manually annotated SMMs in our test data with 66.82% (95% CI, 55.28%-72.05%) precision. Overall number and duration of algorithm-identified SMMs per child were highly correlated with manually annotated number and duration of SMMs (r = 0.8; 95% CI, 0.67-0.93; P &amp;lt; .001; and r = 0.88; 95% CI, 0.74-0.96; P &amp;lt; .001, respectively).Conclusions and relevanceThis study suggests the ability of an algorithm to identify a highly diverse range of SMMs and quantify them with high accuracy, enabling objective and direct estimation of SMM severity in individual children with ASD.
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来源期刊
JAMA Network Open
JAMA Network Open Medicine-General Medicine
CiteScore
16.00
自引率
2.90%
发文量
2126
审稿时长
16 weeks
期刊介绍: JAMA Network Open, a member of the esteemed JAMA Network, stands as an international, peer-reviewed, open-access general medical journal.The publication is dedicated to disseminating research across various health disciplines and countries, encompassing clinical care, innovation in health care, health policy, and global health. JAMA Network Open caters to clinicians, investigators, and policymakers, providing a platform for valuable insights and advancements in the medical field. As part of the JAMA Network, a consortium of peer-reviewed general medical and specialty publications, JAMA Network Open contributes to the collective knowledge and understanding within the medical community.
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