Using artificial intelligence methods to study the effectiveness of exercise in patients with ADHD

Dan Yu, Jia hui Fang
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Abstract

Attention Deficit Hyperactivity Disorder (ADHD) is a prevalent neurodevelopmental disorder that significantly affects children and adults worldwide, characterized by persistent inattention, hyperactivity, and impulsivity. Current research in this field faces challenges, particularly in accurate diagnosis and effective treatment strategies. The analysis of motor information, enriched by artificial intelligence methodologies, plays a vital role in deepening our understanding and improving the management of ADHD. The integration of AI techniques, such as machine learning and data analysis, into the study of ADHD-related motor behaviors, allows for a more nuanced understanding of the disorder. This approach facilitates the identification of patterns and anomalies in motor activity that are often characteristic of ADHD, thereby contributing to more precise diagnostics and tailored treatment strategies. Our approach focuses on utilizing AI techniques to deeply analyze patients' motor information and cognitive processes, aiming to improve ADHD diagnosis and treatment strategies. On the ADHD dataset, the model significantly improved accuracy to 98.21% and recall to 93.86%, especially excelling in EEG data processing with accuracy and recall rates of 96.62 and 95.21%, respectively, demonstrating precise capturing of ADHD characteristic behaviors and physiological responses. These results not only reveal the great potential of our model in improving ADHD diagnostic accuracy and developing personalized treatment plans, but also open up new research perspectives for understanding the complex neurological logic of ADHD. In addition, our study not only suggests innovative perspectives and approaches for ADHD treatment, but also provides a solid foundation for future research exploring similar complex neurological disorders, providing valuable data and insights. This is scientifically important for improving treatment outcomes and patients' quality of life, and points the way for future-oriented medical research and clinical practice.
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利用人工智能方法研究运动对多动症患者的疗效
注意力缺陷多动障碍(ADHD)是一种普遍存在的神经发育障碍,严重影响着全世界的儿童和成人,其特征是持续的注意力不集中、多动和冲动。目前这一领域的研究面临着挑战,尤其是在准确诊断和有效治疗策略方面。通过人工智能方法对运动信息进行分析,对加深我们对多动症的理解和改善对多动症的管理起着至关重要的作用。将机器学习和数据分析等人工智能技术整合到多动症相关运动行为的研究中,可以更细致地了解这种疾病。这种方法有助于识别运动活动的模式和异常,而这往往是多动症的特征,从而有助于更精确的诊断和量身定制的治疗策略。我们的方法侧重于利用人工智能技术深入分析患者的运动信息和认知过程,旨在改进多动症的诊断和治疗策略。在ADHD数据集上,该模型的准确率大幅提高到98.21%,召回率提高到93.86%,尤其在脑电图数据处理方面表现出色,准确率和召回率分别达到96.62%和95.21%,显示了对ADHD特征行为和生理反应的精确捕捉。这些结果不仅揭示了我们的模型在提高多动症诊断准确率和制定个性化治疗方案方面的巨大潜力,而且为理解多动症复杂的神经逻辑开辟了新的研究视角。此外,我们的研究不仅为多动症的治疗提出了创新的视角和方法,还为今后探索类似复杂神经系统疾病的研究奠定了坚实的基础,提供了宝贵的数据和见解。这对于提高治疗效果和患者的生活质量具有重要的科学意义,并为面向未来的医学研究和临床实践指明了方向。
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