Department of Cybersecurity and Computer Science, Dawood University of Engineering and Technology, Karachi City 74800, Sindh, Pakistan.
Department of Artificial Intelligence, College of Computer Science and Information Technology, University of Anbar, Anbar 31001, Iraq.
Comput Biol Med. 2023 Nov;166:107539. doi: 10.1016/j.compbiomed.2023.107539. Epub 2023 Oct 4.
The incidence of Autism Spectrum Disorder (ASD) among children, attributed to genetics and environmental factors, has been increasing daily. ASD is a non-curable neurodevelopmental disorder that affects children's communication, behavior, social interaction, and learning skills. While machine learning has been employed for ASD detection in children, existing ASD frameworks offer limited services to monitor and improve the health of ASD patients. This paper presents a complex and efficient ASD framework with comprehensive services to enhance the results of existing ASD frameworks. Our proposed approach is the Federated Learning-enabled CNN-LSTM (FCNN-LSTM) scheme, designed for ASD detection in children using multimodal datasets. The ASD framework is built in a distributed computing environment where different ASD laboratories are connected to the central hospital. The FCNN-LSTM scheme enables local laboratories to train and validate different datasets, including Ages and Stages Questionnaires (ASQ), Facial Communication and Symbolic Behavior Scales (CSBS) Dataset, Parents Evaluate Developmental Status (PEDS), Modified Checklist for Autism in Toddlers (M-CHAT), and Screening Tool for Autism in Toddlers and Children (STAT) datasets, on different computing laboratories. To ensure the security of patient data, we have implemented a security mechanism based on advanced standard encryption (AES) within the federated learning environment. This mechanism allows all laboratories to offload and download data securely. We integrate all trained datasets into the aggregated nodes and make the final decision for ASD patients based on the decision process tree. Additionally, we have designed various Internet of Things (IoT) applications to improve the efficiency of ASD patients and achieve more optimal learning results. Simulation results demonstrate that our proposed framework achieves an ASD detection accuracy of approximately 99% compared to all existing ASD frameworks.
自闭症谱系障碍(ASD)在儿童中的发病率,归因于遗传和环境因素,正日益增加。ASD 是一种不可治愈的神经发育障碍,影响儿童的沟通、行为、社交互动和学习技能。虽然机器学习已被用于儿童 ASD 检测,但现有的 ASD 框架为监测和改善 ASD 患者的健康提供的服务有限。本文提出了一个复杂而高效的 ASD 框架,具有全面的服务,以提高现有 ASD 框架的结果。我们提出的方法是联邦学习支持的 CNN-LSTM(FCNN-LSTM)方案,旨在使用多模态数据集对儿童进行 ASD 检测。ASD 框架构建在分布式计算环境中,其中不同的 ASD 实验室连接到中心医院。FCNN-LSTM 方案使本地实验室能够在不同的计算实验室上训练和验证不同的数据集,包括年龄和阶段问卷(ASQ)、面部交流和符号行为量表(CSBS)数据集、父母评估发育状况(PEDS)、改良幼儿自闭症检查表(M-CHAT)和幼儿和儿童自闭症筛查工具(STAT)数据集。为了确保患者数据的安全性,我们在联邦学习环境中实现了基于高级标准加密(AES)的安全机制。该机制允许所有实验室安全地上传和下载数据。我们将所有训练好的数据集集成到聚合节点中,并根据决策过程树为 ASD 患者做出最终决策。此外,我们设计了各种物联网(IoT)应用程序,以提高 ASD 患者的效率,实现更优的学习结果。仿真结果表明,与所有现有的 ASD 框架相比,我们提出的框架实现了约 99%的 ASD 检测准确率。