利用基于移动应用程序的面部标志筛查发育障碍高危儿童的研究

IF 1.8 4区 医学 Q3 PSYCHIATRY Psychiatry Investigation Pub Date : 2024-05-25 DOI:10.30773/pi.2023.0315
Sang Ho Hwang, Y. Yu, Jichul Kim, Taeyeop Lee, Y. Park, Hyo-Won Kim
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引用次数: 0

摘要

目标 发育障碍(DDs)的早期发现和干预对于改善患儿的长期预后至关重要。在本研究中,我们的目标是利用移动应用程序中的面部地标特征来区分发育障碍儿童和发育正常(TD)儿童。方法 本研究招募了 89 名儿童,包括 33 名被诊断为发育障碍的儿童和 56 名发育正常的儿童。本研究招募了 89 名儿童,包括 33 名确诊为 DD 的儿童和 56 名 TD 儿童,目的是利用通过移动应用程序收集的儿童面部视频,检验深度学习分类模型的有效性。研究参与者接受了全面的发育评估,包括由儿童填写《韩国心理教育档案-修订版》,由照顾者填写韩文版《文兰适应行为量表》、韩文版《儿童自闭症评级量表》、《社交反应能力量表》和《儿童行为检查表》。我们使用移动应用程序从录制的视频中提取了面部地标,并使用长时短记忆对 DDs 进行了分类,同时进行了分层 5 倍交叉验证。结果 分类模型的平均准确率为 0.88(范围:0.78-1.00),平均精确度为 0.91(范围:0.75-1.00),平均 F1 分数为 0.80(范围:0.60-1.00)。在使用 SHapley Additive exPlanations(SHAP)解释预测结果时,我们发现最关键的变量是点头角度变量,SHAP 的中位数为 2.6。结论 本研究的结果提供了证据,证明利用随时可用的移动视频数据,面部地标可用于早期检测 DD。
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A Study on the Screening of Children at Risk for Developmental Disabilities Using Facial Landmarks Derived From a Mobile-Based Application
Objective Early detection and intervention of developmental disabilities (DDs) are critical to improving the long-term outcomes of afflicted children. In this study, our objective was to utilize facial landmark features from mobile application to distinguish between children with DDs and typically developing (TD) children.Methods The present study recruited 89 children, including 33 diagnosed with DD, and 56 TD children. The aim was to examine the effectiveness of a deep learning classification model using facial video collected from children through mobile-based application. The study participants underwent comprehensive developmental assessments, which included the child completion of the Korean Psychoeducational Profile-Revised and caregiver completing the Korean versions of Vineland Adaptive Behavior Scale, Korean version of the Childhood Autism Rating Scale, Social Responsiveness Scale, and Child Behavior Checklist. We extracted facial landmarks from recorded videos using mobile application and performed DDs classification using long short-term memory with stratified 5-fold cross-validation.Results The classification model shows an average accuracy of 0.88 (range: 0.78–1.00), an average precision of 0.91 (range: 0.75–1.00), and an average F1-score of 0.80 (range: 0.60–1.00). Upon interpreting prediction results using SHapley Additive exPlanations (SHAP), we verified that the most crucial variable was the nodding head angle variable, with a median SHAP score of 2.6. All the top 10 contributing variables exhibited significant differences in distribution between children with DD and TD (p<0.05).Conclusion The results of this study provide evidence that facial landmarks, utilizing readily available mobile-based video data, can be used to detect DD at an early stage.
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来源期刊
CiteScore
4.10
自引率
3.70%
发文量
105
审稿时长
6-12 weeks
期刊介绍: The Psychiatry Investigation is published on the 25th day of every month in English by the Korean Neuropsychiatric Association (KNPA). The Journal covers the whole range of psychiatry and neuroscience. Both basic and clinical contributions are encouraged from all disciplines and research areas relevant to the pathophysiology and management of neuropsychiatric disorders and symptoms, as well as researches related to cross cultural psychiatry and ethnic issues in psychiatry. The Journal publishes editorials, review articles, original articles, brief reports, viewpoints and correspondences. All research articles are peer reviewed. Contributions are accepted for publication on the condition that their substance has not been published or submitted for publication elsewhere. Authors submitting papers to the Journal (serially or otherwise) with a common theme or using data derived from the same sample (or a subset thereof) must send details of all relevant previous publications and simultaneous submissions. The Journal is not responsible for statements made by contributors. Material in the Journal does not necessarily reflect the views of the Editor or of the KNPA. Manuscripts accepted for publication are copy-edited to improve readability and to ensure conformity with house style.
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