Objective and automatic assessment approach for diagnosing attention-deficit/hyperactivity disorder based on skeleton detection and classification analysis in outpatient videos.

IF 3.4 3区 医学 Q1 PEDIATRICS
Chen-Sen Ouyang, Rei-Cheng Yang, Rong-Ching Wu, Ching-Tai Chiang, Yi-Hung Chiu, Lung-Chang Lin
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引用次数: 0

Abstract

Background: Attention-deficit/hyperactivity disorder (ADHD) is diagnosed in accordance with Diagnostic and Statistical Manual of Mental Disorders, Fifth Edition criteria by using subjective observations and information provided by parents and teachers. However, subjective analysis often leads to overdiagnosis or underdiagnosis. There are two types of motor abnormalities in patients with ADHD. First, hyperactivity with fidgeting and restlessness is the major diagnostic criterium for ADHD. Second, developmental coordination disorder characterized by deficits in the acquisition and execution of coordinated motor skills is not the major criterium for ADHD. In this study, a machine learning-based approach was proposed to evaluate and classify 96 patients into ADHD (48 patients, 26 males and 22 females, with mean age: 7y6m) and non-ADHD (48 patients, 26 males and 22 females, with mean age: 7y8m) objectively and automatically by quantifying their movements and evaluating the restlessness scales.

Methods: This approach is mainly based on movement quantization through analysis of variance in patients' skeletons detected in outpatient videos. The patients' skeleton sequence in the video was detected using OpenPose and then characterized using 11 values of feature descriptors. A classification analysis based on six machine learning classifiers was performed to evaluate and compare the discriminating power of different feature combinations.

Results: The results revealed that compared with the non-ADHD group, the ADHD group had significantly larger means in all cases of single feature descriptors. The single feature descriptor "thigh angle", with the values of 157.89 ± 32.81 and 15.37 ± 6.62 in ADHD and non-ADHD groups (p < 0.0001), achieved the best result (optimal cutoff, 42.39; accuracy, 91.03%; sensitivity, 90.25%; specificity, 91.86%; and AUC, 94.00%).

Conclusions: The proposed approach can be used to evaluate and classify patients into ADHD and non-ADHD objectively and automatically and can assist physicians in diagnosing ADHD.

基于门诊视频骨骼检测和分类分析的注意力缺陷/多动症客观自动诊断评估方法。
背景:注意力缺陷/多动障碍(ADHD)是根据《精神疾病诊断与统计手册》第五版的标准,通过家长和教师提供的主观观察和信息进行诊断的。然而,主观分析往往会导致过度诊断或诊断不足。多动症患者的运动异常有两种类型。首先,多动与烦躁不安是多动症的主要诊断标准。其次,以协调运动技能的习得和执行缺陷为特征的发育协调障碍不是多动症的主要诊断标准。本研究提出了一种基于机器学习的方法,通过对96名患者的动作量化和躁动量表进行评估,客观、自动地将其分为多动症(48名患者,26名男性和22名女性,平均年龄:7岁6个月)和非多动症(48名患者,26名男性和22名女性,平均年龄:7岁8个月):方法:该方法主要是通过分析门诊视频中检测到的患者骨骼的方差,对其运动进行量化。使用 OpenPose 检测视频中的患者骨骼序列,然后使用 11 个特征描述值对其进行特征描述。基于六个机器学习分类器进行了分类分析,以评估和比较不同特征组合的判别能力:结果显示,与非多动症组相比,多动症组在所有情况下单一特征描述的平均值都明显较大。其中,单一特征描述 "大腿角度 "在多动症组和非多动症组的均值分别为 157.89 ± 32.81 和 15.37 ± 6.62(p 结论:多动症组和非多动症组的均值明显高于非多动症组:所提出的方法可用于客观、自动地对多动症和非多动症患者进行评估和分类,并可协助医生诊断多动症。
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来源期刊
Child and Adolescent Psychiatry and Mental Health
Child and Adolescent Psychiatry and Mental Health PEDIATRICSPSYCHIATRY-PSYCHIATRY
CiteScore
7.00
自引率
3.60%
发文量
84
审稿时长
16 weeks
期刊介绍: Child and Adolescent Psychiatry and Mental Health, the official journal of the International Association for Child and Adolescent Psychiatry and Allied Professions, is an open access, online journal that provides an international platform for rapid and comprehensive scientific communication on child and adolescent mental health across different cultural backgrounds. CAPMH serves as a scientifically rigorous and broadly open forum for both interdisciplinary and cross-cultural exchange of research information, involving psychiatrists, paediatricians, psychologists, neuroscientists, and allied disciplines. The journal focusses on improving the knowledge base for the diagnosis, prognosis and treatment of mental health conditions in children and adolescents, and aims to integrate basic science, clinical research and the practical implementation of research findings. In addition, aspects which are still underrepresented in the traditional journals such as neurobiology and neuropsychology of psychiatric disorders in childhood and adolescence are considered.
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