Predicting Autism Spectrum Disorder Based On Gender Using Machine Learning Techniques

Tania Akter, M. Ali
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Abstract

Autism is a set of complicated developmental disorders marked by social skills impairments, communication difficulties (verbal and nonverbal), and recurring behavior. Autistic children are frequently alienated as a result of these impairments. Rapid recognition of autism can help to establish a treatment strategy and lessen the burden on sufferers. As a result, effective methods to early diagnosis and treatment for ASD are necessary. The toddler, child, adolescent, and adult screening datasets are collected in this study and separated according to gender (male and female). By using random oversampling (ROS), these datasets are balanced. Next, different classifiers are applied to both the primary and balanced datasets. The MLP classifier produced the best results, and the hyperparameter for it was tuned to improve autism identification rate. However, the experimental outcome for the female dataset is better than the male dataset. The shapely adaptive explanation (SHAP) method is also employed to assess the significant features of male and female.
使用机器学习技术基于性别预测自闭症谱系障碍
自闭症是一组复杂的发育障碍,其特征是社交技能障碍、沟通困难(语言和非语言)和反复出现的行为。由于这些缺陷,自闭症儿童经常被疏远。快速识别自闭症有助于制定治疗策略,减轻患者的负担。因此,有必要采取有效的方法对ASD进行早期诊断和治疗。本研究收集了幼儿、儿童、青少年和成人筛查数据集,并根据性别(男性和女性)进行了分类。通过使用随机过采样(ROS)来平衡这些数据集。接下来,对主数据集和平衡数据集应用不同的分类器。MLP分类器产生了最好的结果,并对其超参数进行了调整,以提高自闭症识别率。然而,女性数据集的实验结果优于男性数据集。采用形状适应解释(SHAP)方法对男女显著性特征进行评价。
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