机器学习在ADHD诊断中的新应用(扩展摘要)

S. Khanna, William Das
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引用次数: 4

摘要

注意缺陷/多动障碍是儿童和青少年中最普遍的神经发育障碍。然而,目前的临床诊断在发展中国家是不准确、低效和难以获得的,阻碍了适当治疗方案的实施。临床评估是基于对感知行为的定性观察。它们既耗时又昂贵,使少数民族和社会经济弱势群体无法获得在学业、社会和职业上取得成功所需的支持。需要一种更准确和更容易获得的检测方法,以确保所有儿童都能得到诊断并得到适当的治疗方案。本研究提出了一种新的基于机器学习的方法来分析瞳孔动力学数据,作为表征ADHD的客观生物标志物。在可视化和工程化瞳孔特征之后,开发了一种投票集成分类算法和元学习器,并在解密数据集上产生了最优的留一交叉验证指标。特别是集成模型,将ADHD分类为。敏感性821,特异性0.727,AUROC 0.856。这个模型是在一个web应用程序中实现的,该应用程序管理一个记忆任务并实时捕获学生的生物特征。这个应用程序是第一个使用瞳孔大小动态作为生物标志物,并提供了一种时间效率高、准确和可访问的方法来诊断发展中国家的多动症。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Application for the Efficient and Accessible Diagnosis of ADHD Using Machine Learning (Extended Abstract)
Attention-deficit/hyperactivity disorder is the most pervasive neurodevelopmental disorder among children and adolescents. Current clinical diagnosis, however, is inaccurate, inefficient, and inaccessible in developing nations, hindering the administration of proper treatment regimens. Clinical assessments are based on qualitative observations of perceived behavior. They are time-consuming and costly, preventing minorities and socioeconomically disadvantaged groups from gaining the support they need to succeed academically, socially, and occupationally. A more accurate and accessible method of detection is necessary to ensure that all children are able to be diagnosed and given proper treatment regimens. This research proposes a novel machine learning-based method to analyze pupil-dynamics data as an objective biomarker to characterize ADHD. After visualizing and engineering pupillometric features, a voting ensemble classification algorithm and meta learner were developed and yielded the most optimal leave-one-out-cross-validation metrics on a declassified dataset. The ensemble model, in particular, classified ADHD with. 821 sensitivity, 0.727 specificity, and 0.856 AUROC. This model was implemented in a web application that administers a memory task and captures pupil biometrics in realtime. This application is the first to use pupil-size dynamics as a biomarker, and offers a time-efficient, accurate, and accessible approach to diagnose ADHD in developing nations.
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