Accurate Identification of Attention-deficit/Hyperactivity Disorder Using Machine Learning Approaches

Nizar Alsharif, M. Al-Adhaileh, Mohammed Al-Yaari
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Abstract

The identification of ADHD is laden with a great number of challenges and obstacles. If a patient is incorrectly diagnosed, there is a possibility that this will have adverse impact on their health. ADHD is a neurodevelopmental condition characterized by persistent patterns of inattention, hyperactivity, and impulsivity that often emerge in infancy. ADHD is a neurodevelopmental disorder characterized by difficulties in sustaining attention, concentrating, and regulating behavior. Therefore, using artificial intelligence approaches for early detection is very important for reducing the increase in disease. The goal of this research is to find out an accurate model that could differentiate between those who have ADHD and those who do not have it by making use of the method of pattern recognition. The research project was composed of a combination of event-related potential data from people who had been diagnosed with ADHD, in addition to a control group that was made up of people who did not have ADHD. This research presents novel machine learning models based on decision tree (DT), random forest (RF), support vector machine (SVM), and multilayer perceptron (MLP), using dataset collected from ADHD patients for the purpose of training. Significant performance outcomes have been seen in the context of the SVM which has achieved a high accuracy rate of 91%. MLP has demonstrated an accuracy rate of 89%. Furthermore, the RF model has shown an accuracy rate of 87%. Finally, the DT model revealed accurate results up to 78%. The aforementioned results highlight the effectiveness of the utilized methods and the ability of modern computational frameworks in attaining substantial levels of accuracy in the diagnosis and categorization of ADHD.
利用机器学习方法准确识别注意力缺陷/多动症
多动症的鉴定充满了挑战和障碍。如果患者被错误诊断,有可能会对其健康造成不良影响。多动症是一种神经发育性疾病,其特征是注意力不集中、多动和冲动的持续模式,通常在婴儿期就已出现。多动症是一种神经发育障碍性疾病,其特点是难以保持注意力、集中注意力和调节行为。因此,利用人工智能方法进行早期检测对于减少疾病的增加非常重要。本研究的目标是利用模式识别的方法,找出一个可以区分多动症患者和非患者的精确模型。该研究项目由一组被诊断为多动症患者的事件相关电位数据和一组非多动症患者的对照数据组成。这项研究提出了基于决策树(DT)、随机森林(RF)、支持向量机(SVM)和多层感知器(MLP)的新型机器学习模型,使用从多动症患者那里收集的数据集进行训练。SVM 的准确率高达 91%,取得了显著的性能成果。MLP 的准确率为 89%。此外,RF 模型的准确率为 87%。最后,DT 模型的准确率高达 78%。上述结果凸显了所使用方法的有效性以及现代计算框架在诊断和分类多动症方面达到相当高准确度的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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