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A General End-to-End Method for Characterizing Neuropsychiatric Disorders using Free-Viewing Visual Scanning Tasks

机译:使用自由观察视觉扫描任务表征神经精神障碍的一般端到端方法

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The growing availability of eye-gaze tracking technology has allowed for its employment in a wide variety of applications, one of which is the objective diagnosis and monitoring of neuropsychiatric disorders from features of attentional bias extracted from visual scanning patterns. Current techniques in this field are largely comprised of non-generalizable methodologies that rely on domain expertise and study-specific assumptions. In this paper, we present a general, data-driven, end-to-end framework that extracts relevant features of attentional bias from visual scanning behaviour and uses these features to classify between subject groups with standard machine learning techniques. The general framework uses visual scanning data from free-viewing tasks. In these tasks, subjects look at sets of slides with several thematic images while their visual scanning patterns (sets of ordered fixations) are monitored by an eye-tracking system. Subjects' fixations are encoded into relative visual attention maps (RVAMs), and two data-driven methods are proposed to segment regions of interests (ROIs) from RVAMs: 1) using group average RVAMs, and 2) using differences of group average RVAMs. Relative fixation times within the segmented ROIs are then used as input features for a vanilla multilayered perceptron to classify between patient groups. The methods were evaluated on data from two studies: an anorexia nervosa (AN)/healthy controls study (AN study) with 37 subjects, and a bipolar disorder (BD)/major depressive disorder (MDD) study (BD-MDD study) with 73 subjects. Using leave-one-subject-out cross validation, the general methods achieved an area under the receiver operating curve (AUROC) score of 0.935 for the AN study and 0.888 for the BD-MDD study, the latter of which exceeds the performance of the state-of-the-art analysis model designed specifically for the BD-MDD study, which had an AUROC of 0.879. The results validate the proposed framework's efficacy as a generalizable, standard baseline for analyzing visual scanning data.
机译:越来越多的眼睛凝视跟踪技术在各种应用中允许就业,其中一个是从视觉扫描图案中提取的注意力偏差的特征的目标诊断和监测。该字段中的当前技术主要由依赖域专业知识和学习特异性假设的不可概括的方法组成。在本文中,我们介绍了一般的数据驱动的端到端框架,从可视扫描行为中提取注意力偏差的相关特征,并使用这些功能在具有标准机器学习技术的主题组之间进行分类。常规框架使用可视扫描数据从自由查看任务。在这些任务中,受试者通过眼跟踪系统监视它们的视觉扫描模式(有序固定集合)的幻灯片上查看一组幻灯片。受试者的固定被编码成相对视觉注意图(RVAM),并建议两个数据驱动方法,以使用组平均RVAMS和2)使用组平均RVAM的差异来分段为RVAMS:1的区域区域(ROI)。然后将分段的ROI内的相对固定时间用作香草多层患者的输入特征,以分类患者组之间。从两项研究的数据评估了方法:厌食症(AN)/健康对照研究(一项研究),具有37个受试者,以及双相障碍(BD)/主要抑郁症(MDD)研究(BD-MDD研究) 73个科目。使用休假 - 单位外交交叉验证,一般方法在接收器运行曲线(Auroc)的曲线下实现了0.935的一个区域,对于BD-MDD研究,0.888,其中的后者超过了性能专为BD-MDD研究而设计的最先进的分析模型,其具有0.879的Auroc。结果验证了所提出的框架的功效,作为概括的标准基线,用于分析视觉扫描数据。

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