Classification of schizophrenia based on RAnet-ET: resnet based attention network for eye-tracking.

Ruochen Dang, Ying Wang, Feiyu Zhu, Xiaoyi Wang, Jingping Zhao, Ping Shao, Bing Lang, Yuqi Wang, Zhibin Pan, Bingliang Hu, Renrong Wu, Quan Wang
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Abstract

Objective.There is a notable need of quantifiable and objective methods for the classification of schizophrenia. Patients with schizophrenia exhibit atypical eye movements compared with healthy individuals. To address this need, we have developed a classification model based on eye-tracking (ET) data to assist physicians in the intelligent auxiliary diagnosis of schizophrenia.Approach.This study employed three ET experiments-picture-free viewing, smooth pursuit tracking, and fixation stability-to collect ET data from patients with schizophrenia and healthy controls. The ET data of 292 participants (133 healthy controls and 159 patients with schizophrenia) were recorded. Utilizing ET data in picture-free viewing, we introduce a Resnet-based Attention Network for ET (RAnet-ET) integrated with the attention mechanism. RAnet-ET was trained by employing multiple loss functions to classify patients with schizophrenia and healthy controls. Furthermore, we proposed a classifier for handling multimodal features that combines specific features extracted from the well-trained RAnet-ET, 100 ET variables extracted from three ET experiments, and 19 MATRICS Consensus Cognitive Battery scores.Main results.The RAnet-ET achieved good performance in classifying schizophrenia, yielding an accuracy of 89.04%, a specificity of 90.56%, and an F1 score of 87.87%. The classification results based on multimodal features demonstrated improved performance, achieving 96.37% accuracy, 96.87% sensitivity, 95.87% specificity, and 96.37% F1 score.Significance.By integrating attention mechanisms, we designed RAnet-ET, which achieved good performance in classifying schizophrenia from free-viewing ET data. The synergistic combination of specific features extracted from the well-trained RAnet-ET, MCCB scores, and ET variables achieved exceptional classification performance, distinguishing individuals with schizophrenia from healthy controls. This study underscores the potential of our approach as a pivotal asset for the diagnosis of schizophrenia.

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基于 RAnet-ET 的精神分裂症分类:基于Resnet的眼动追踪注意力网络。
目的:精神分裂症的分类急需可量化、客观的方法。与健康人相比,精神分裂症患者表现出非典型的眼球运动。为了满足这一需求,我们开发了一种基于眼动追踪数据的分类模型,以帮助医生对精神分裂症进行智能辅助诊断。方法:采用无图像观看、平滑追求跟踪和注视稳定性三个眼动实验,收集精神分裂症患者和健康对照者的眼动数据。记录了292名参与者(133名健康对照组和159名精神分裂症患者)的眼动追踪数据。利用无图片观看时的眼球追踪数据,提出了一种基于resnet的眼球追踪注意力网络(RAnet-ET),并结合了注意力机制。RAnet-ET训练采用多个损失函数分类精神分裂症患者和健康对照。此外,我们提出了一个用于处理多模态特征的分类器,该分类器结合了从训练良好的RAnet-ET中提取的特定特征,从三个眼动追踪实验中提取的100个眼动追踪变量以及19个matrix共识认知电池评分。主要结果:RAnet-ET对精神分裂症的分类效果较好,准确率为89.04%,特异性为90.56%,F1评分为87.87%。基于多模态特征的分类结果显示,准确率为96.37%,灵敏度为96.87%,特异性为95.87%,F1评分为96.37%。意义:通过整合注意机制,我们设计了RAnet-ET,在自由观看眼动数据的精神分裂症分类中取得了较好的效果。从训练有素的RAnet-ET、MCCB评分和眼动追踪变量中提取的特定特征的协同组合取得了出色的分类性能,将精神分裂症患者与健康对照区分开来。这项研究强调了我们的方法作为精神分裂症诊断的关键资产的潜力。
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