利用两种闪光强度的视网膜电图,通过多模态时频分析和机器学习检测自闭症谱系障碍和注意力缺陷多动障碍。

IF 3.2 2区 心理学 Q1 PSYCHOLOGY, DEVELOPMENTAL
Sultan Mohammad Manjur, Luis Roberto Mercado Diaz, Irene O Lee, David H Skuse, Dorothy A Thompson, Fernando Marmolejos-Ramos, Paul A Constable, Hugo F Posada-Quintero
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引用次数: 0

摘要

目的:自闭症谱系障碍(ASD)和注意力缺陷多动障碍(ADHD)同样会改变患者的认知功能,并对其社会交往、注意力和沟通能力构成挑战。然而,这两种疾病是不同的神经系统疾病,会表现出不同的特征,需要不同的管理策略。开发有助于早期区分的工具是可取的,这样就可以根据个人的具体要求进行适当的早期干预和支持。目前对自闭症和多动症的诊断程序需要采用多学科方法,而且可能耗时较长。本研究调查了视网膜电图(ERG)(一种测量视网膜对光反应的眼部测试)在快速筛查 ASD 和 ADHD 方面的潜力:以前的研究发现了 ASD 和 ADHD 之间 ERG 振幅的差异,但本研究探索了时频分析(TFS)来捕捉信号的动态变化。研究使用两种时频分析技术分析了286名受试者(146名对照组、94名ASD组、46名ADHD组)的ERG数据:结果:选择了关键特征,并训练了机器学习模型,以根据ERG反应对个体进行分类。最佳模型在区分对照组、ASD 组和 ADHD 组方面的总体准确率达到 70%:结论:ERG 对较强闪光强度的反应提供了更好的分辨能力,高频动态(80-300 Hz)比低频成分更有信息量。为了进一步改进分类,可能需要更多不同强度的闪光,并与同时符合 ASD 和 ADHD 分类且同时被诊断为这两种疾病的参与者进行区分比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Detecting Autism Spectrum Disorder and Attention Deficit Hyperactivity Disorder Using Multimodal Time-Frequency Analysis with Machine Learning Using the Electroretinogram from Two Flash Strengths.

Detecting Autism Spectrum Disorder and Attention Deficit Hyperactivity Disorder Using Multimodal Time-Frequency Analysis with Machine Learning Using the Electroretinogram from Two Flash Strengths.

Purpose: Autism spectrum disorder (ASD) and attention deficit hyperactivity disorder (ADHD) are conditions that similarly alter cognitive functioning ability and challenge the social interaction, attention, and communication skills of affected individuals. Yet these are distinct neurological conditions that can exhibit diverse characteristics which require different management strategies. It is desirable to develop tools to assist with early distinction so that appropriate early interventions and support may be tailored to an individual's specific requirements. The current diagnostic procedures for ASD and ADHD require a multidisciplinary approach and can be lengthy. This study investigated the potential of electroretinogram (ERG), an eye test measuring retinal responses to light, for rapid screening of ASD and ADHD.

Methods: Previous studies identified differences in ERG amplitude between ASD and ADHD, but this study explored time-frequency analysis (TFS) to capture dynamic changes in the signal. ERG data from 286 subjects (146 control, 94 ASD, 46 ADHD) was analyzed using two TFS techniques.

Results: Key features were selected, and machine learning models were trained to classify individuals based on their ERG response. The best model achieved 70% overall accuracy in distinguishing control, ASD, and ADHD groups.

Conclusion: The ERG to the stronger flash strength provided better separation and the high frequency dynamics (80-300 Hz) were more informative features than lower frequency components. To further improve classification a greater number of different flash strengths may be required along with a discrimination comparison to participants who meet both ASD and ADHD classifications and carry both diagnoses.

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来源期刊
CiteScore
8.00
自引率
10.30%
发文量
433
期刊介绍: The Journal of Autism and Developmental Disorders seeks to advance theoretical and applied research as well as examine and evaluate clinical diagnoses and treatments for autism and related disabilities. JADD encourages research submissions on the causes of ASDs and related disorders, including genetic, immunological, and environmental factors; diagnosis and assessment tools (e.g., for early detection as well as behavioral and communications characteristics); and prevention and treatment options. Sample topics include: Social responsiveness in young children with autism Advances in diagnosing and reporting autism Omega-3 fatty acids to treat autism symptoms Parental and child adherence to behavioral and medical treatments for autism Increasing independent task completion by students with autism spectrum disorder Does laughter differ in children with autism? Predicting ASD diagnosis and social impairment in younger siblings of children with autism The effects of psychotropic and nonpsychotropic medication with adolescents and adults with ASD Increasing independence for individuals with ASDs Group interventions to promote social skills in school-aged children with ASDs Standard diagnostic measures for ASDs Substance abuse in adults with autism Differentiating between ADHD and autism symptoms Social competence and social skills training and interventions for children with ASDs Therapeutic horseback riding and social functioning in children with autism Authors and readers of the Journal of Autism and Developmental Disorders include sch olars, researchers, professionals, policy makers, and graduate students from a broad range of cross-disciplines, including developmental, clinical child, and school psychology; pediatrics; psychiatry; education; social work and counseling; speech, communication, and physical therapy; medicine and neuroscience; and public health.
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