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使用面部图像检测自闭症谱系障碍:预训练卷积神经网络的性能比较

Autism spectrum disorder detection using facial images: A performance comparison of pretrained convolutional neural networks.

作者信息

Ahmad Israr, Rashid Javed, Faheem Muhammad, Akram Arslan, Khan Nafees Ahmad, Amin Riaz Ul

机构信息

Department of Automation Science Beihang University Beijing China.

Department of IT Services University of Okara Okara Punjab Pakistan.

出版信息

Healthc Technol Lett. 2024 Jan 8;11(4):227-239. doi: 10.1049/htl2.12073. eCollection 2024 Aug.

DOI:10.1049/htl2.12073
PMID:39100502
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11294932/
Abstract

Autism spectrum disorder (ASD) is a complex psychological syndrome characterized by persistent difficulties in social interaction, restricted behaviours, speech, and nonverbal communication. The impacts of this disorder and the severity of symptoms vary from person to person. In most cases, symptoms of ASD appear at the age of 2 to 5 and continue throughout adolescence and into adulthood. While this disorder cannot be cured completely, studies have shown that early detection of this syndrome can assist in maintaining the behavioural and psychological development of children. Experts are currently studying various machine learning methods, particularly convolutional neural networks, to expedite the screening process. Convolutional neural networks are considered promising frameworks for the diagnosis of ASD. This study employs different pre-trained convolutional neural networks such as ResNet34, ResNet50, AlexNet, MobileNetV2, VGG16, and VGG19 to diagnose ASD and compared their performance. Transfer learning was applied to every model included in the study to achieve higher results than the initial models. The proposed ResNet50 model achieved the highest accuracy, 92%, compared to other transfer learning models. The proposed method also outperformed the state-of-the-art models in terms of accuracy and computational cost.

摘要

自闭症谱系障碍(ASD)是一种复杂的心理综合征,其特征是在社交互动、行为受限、言语和非言语交流方面存在持续困难。这种障碍的影响和症状严重程度因人而异。在大多数情况下,ASD症状出现在2至5岁,并持续到青春期及成年期。虽然这种障碍无法完全治愈,但研究表明,早期发现该综合征有助于维持儿童的行为和心理发展。专家们目前正在研究各种机器学习方法,特别是卷积神经网络,以加快筛查过程。卷积神经网络被认为是诊断ASD的有前途的框架。本研究采用不同的预训练卷积神经网络,如ResNet34、ResNet50、AlexNet、MobileNetV2、VGG16和VGG19来诊断ASD,并比较它们的性能。将迁移学习应用于研究中包含的每个模型,以获得比初始模型更高的结果。与其他迁移学习模型相比,所提出的ResNet50模型达到了最高准确率,即92%。所提出的方法在准确率和计算成本方面也优于现有最先进的模型。

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