Department of Computer Sciences, College of Computer and Information Sciences, Princess Nourah bint Abdulrahman University, P.O. Box 84428, Riyadh 11671, Saudi Arabia.
Department of Computer Science, King Abdulaziz University, Jeddah 22254, Saudi Arabia.
J Neurosci Methods. 2025 Jan;413:110315. doi: 10.1016/j.jneumeth.2024.110315. Epub 2024 Nov 10.
Autism spectrum disorder (ASD) is defined by the deficits of social relating, language, object use and understanding, intelligence and learning, and verbal and nonverbal communication. Most of the individuals with ASD have genetic conditions; however, early identification and intervention reduce the use of health services and other diagnostic procedures. The varied nature of ASD is widely acknowledged, with each affected individual displaying distinct traits. The variability among autistic children underscores the challenge of identifying effective teaching strategies, as what works for one child may not be suitable for another. In this study, we merge two ASD screening datasets focusing on toddlers. We employ three feature engineering techniques to extract significant features from the dataset to enhance model performance. This study presents an innovative two-phase method where initially, we employ diverse machine learning models, such as a combination of logistic regression and support vector machine classifiers. The focus of the second phase is on identifying tailored educational methods for children with ASD through the assessment of their behavioral, verbal, and physical responses. The main goal of this study is to develop personalized educational strategies for individuals with ASD. This will be achieved by employing machine learning techniques to enhance precision and better meet their unique needs. Experimental results achieve a classification accuracy of 94% in ASD identification using Chi-square extracted features. Concerning the choice of the best teaching approach for ASD children, the proposed approach shows 99.29% accuracy. Performance comparison with existing studies shows the superior performance of the proposed LR-SVM ensemble coupled with Chi-square features. In conclusion, the proposed approach provides a two-phase strategy for identifying ASD children and offering a suitable teaching strategy with respect to the severity of the ASD, thereby potentially contributing to the development of tailored solutions for children with varying needs.
自闭症谱系障碍(ASD)的定义是社交关系、语言、物体使用和理解、智力和学习以及言语和非言语交流方面的缺陷。大多数 ASD 患者都有遗传条件;然而,早期识别和干预可以减少对卫生服务和其他诊断程序的使用。ASD 的多样性是公认的,每个受影响的个体都表现出不同的特征。自闭症儿童的变异性很大,这凸显了识别有效教学策略的挑战,因为对一个孩子有效的方法可能不适合另一个孩子。在这项研究中,我们合并了两个专注于幼儿的 ASD 筛查数据集。我们采用了三种特征工程技术从数据集中提取重要特征,以提高模型性能。本研究提出了一种创新的两阶段方法,首先,我们采用了多种机器学习模型,例如逻辑回归和支持向量机分类器的组合。第二阶段的重点是通过评估儿童的行为、言语和身体反应,为 ASD 儿童确定量身定制的教育方法。本研究的主要目标是为 ASD 患者开发个性化的教育策略。这将通过采用机器学习技术来提高精度并更好地满足他们的独特需求来实现。使用卡方提取特征的实验结果在 ASD 识别方面实现了 94%的分类准确率。关于为 ASD 儿童选择最佳教学方法,所提出的方法显示出 99.29%的准确率。与现有研究的性能比较表明,所提出的 LR-SVM 集成与卡方特征相结合具有优越的性能。总之,所提出的方法为识别 ASD 儿童提供了一种两阶段策略,并根据 ASD 的严重程度提供了合适的教学策略,从而为具有不同需求的儿童提供量身定制的解决方案的开发做出了潜在贡献。