基于眼动追踪、脑电图、活动图和行为指标的虚拟现实辅助成人ADHD预测:独立训练和测试样本的机器学习分析

IF 5.8 1区 医学 Q1 PSYCHIATRY
Annika Wiebe, Benjamin Selaskowski, Martha Paskin, Laura Asché, Julian Pakos, Behrem Aslan, Silke Lux, Alexandra Philipsen, Niclas Braun
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引用次数: 0

摘要

鉴于注意缺陷多动障碍(ADHD)的异质性和缺乏既定的生物标志物,准确的诊断和有效的治疗在临床实践中仍然是一个挑战。本研究调查了多模态数据的预测效用,包括眼动追踪、脑电图、活动图和行为指数,以区分患有ADHD的成年人与健康个体。使用支持向量机模型,我们分析了来自两项临床对照研究的独立训练(n = 50)和测试(n = 36)样本。在这两项研究中,参与者在虚拟现实会议室中遇到虚拟干扰时执行注意力任务(连续表现任务)。同时记录任务表现、头部运动、凝视行为、脑电图和当前自我报告的注意力不集中、多动和冲动,并用于模型训练。我们基于最优特征数量(最大相关最小冗余准则)的最终模型在独立测试集中实现了81%的分类准确率。值得注意的是,提取的基于脑电图的特征对这一预测没有显著贡献,因此没有包括在最终模型中。我们的研究结果表明应用生态有效的虚拟现实环境和整合不同的数据模式来增强ADHD诊断的稳健性的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Virtual reality-assisted prediction of adult ADHD based on eye tracking, EEG, actigraphy and behavioral indices: a machine learning analysis of independent training and test samples.

Given the heterogeneous nature of attention-deficit/hyperactivity disorder (ADHD) and the absence of established biomarkers, accurate diagnosis and effective treatment remain a challenge in clinical practice. This study investigates the predictive utility of multimodal data, including eye tracking, EEG, actigraphy, and behavioral indices, in differentiating adults with ADHD from healthy individuals. Using a support vector machine model, we analyzed independent training (n = 50) and test (n = 36) samples from two clinically controlled studies. In both studies, participants performed an attention task (continuous performance task) in a virtual reality seminar room while encountering virtual distractions. Task performance, head movements, gaze behavior, EEG, and current self-reported inattention, hyperactivity, and impulsivity were simultaneously recorded and used for model training. Our final model based on the optimal number of features (maximal relevance minimal redundancy criterion) achieved a promising classification accuracy of 81% in the independent test set. Notably, the extracted EEG-based features had no significant contribution to this prediction and therefore were not included in the final model. Our results suggest the potential of applying ecologically valid virtual reality environments and integrating different data modalities for enhancing robustness of ADHD diagnosis.

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来源期刊
CiteScore
11.50
自引率
2.90%
发文量
484
审稿时长
23 weeks
期刊介绍: Psychiatry has suffered tremendously by the limited translational pipeline. Nobel laureate Julius Axelrod''s discovery in 1961 of monoamine reuptake by pre-synaptic neurons still forms the basis of contemporary antidepressant treatment. There is a grievous gap between the explosion of knowledge in neuroscience and conceptually novel treatments for our patients. Translational Psychiatry bridges this gap by fostering and highlighting the pathway from discovery to clinical applications, healthcare and global health. We view translation broadly as the full spectrum of work that marks the pathway from discovery to global health, inclusive. The steps of translation that are within the scope of Translational Psychiatry include (i) fundamental discovery, (ii) bench to bedside, (iii) bedside to clinical applications (clinical trials), (iv) translation to policy and health care guidelines, (v) assessment of health policy and usage, and (vi) global health. All areas of medical research, including — but not restricted to — molecular biology, genetics, pharmacology, imaging and epidemiology are welcome as they contribute to enhance the field of translational psychiatry.
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