Singh Rahul, Zhang Yanlei, Bhaskar Dhananjay, Srihari Vinod, Tek Cenk, Zhang Xian, Adam Noah J, Krishnaswamy Smita, Hirsch Joy
Wu Tsai Institute, Yale University.
Department of Computer Science, Yale University.
bioRxiv. 2024 Nov 8:2024.11.07.622469. doi: 10.1101/2024.11.07.622469.
Schizophrenia is a severe psychiatric disorder associated with a wide range of cognitive and neurophysiological dysfunctions and long-term social difficulties. In this paper, we test the hypothesis that integration of multiple simultaneous acquisitions of neuroimaging, behavioral, and clinical information will be better for prediction of early psychosis than unimodal recordings. We propose a novel framework to investigate the neural underpinnings of the early psychosis symptoms (that can develop into Schizophrenia with age) using multimodal acquisitions of neural and behavioral recordings including functional near-infrared spectroscopy (fNIRS) and electroencephalography (EEG), and facial features. Our data acquisition paradigm is based on live face-to-face interaction in order to study the neural correlates of social cognition in first-episode psychosis (FEP). We propose a novel deep representation learning framework, Neural-PRISM, for learning joint multimodal compressed representations combining neural as well as behavioral recordings. These learned representations are subsequently used to describe, classify, and predict the severity of early psychosis in patients, as measured by the Positive and Negative Syndrome Scale (PANSS) and Global Assessment of Functioning (GAF) scores. We found that incorporating joint multimodal representations from fNIRS and EEG along with behavioral recordings enhances classification between typical controls and FEP individuals. Additionally, our results suggest that geometric and topological features such as curvatures and path signatures of the embedded trajectories of brain activity enable detection of discriminatory neural characteristics in early psychosis.
精神分裂症是一种严重的精神疾病,与广泛的认知和神经生理功能障碍以及长期的社会困难相关。在本文中,我们检验了这样一个假设:与单模态记录相比,同时整合多种神经影像学、行为学和临床信息的采集,对早期精神病的预测效果会更好。我们提出了一个新颖的框架,利用包括功能性近红外光谱(fNIRS)、脑电图(EEG)和面部特征在内的神经和行为记录的多模态采集,来研究早期精神病症状(随着年龄增长可能发展为精神分裂症)的神经基础。我们的数据采集范式基于面对面的实时互动,以便研究首发精神病(FEP)中社会认知的神经关联。我们提出了一种新颖的深度表征学习框架,即神经棱镜(Neural-PRISM),用于学习结合神经和行为记录的联合多模态压缩表征。随后,这些学习到的表征被用于描述、分类和预测患者早期精神病的严重程度,这通过阳性和阴性症状量表(PANSS)以及功能总体评定量表(GAF)得分来衡量。我们发现,将来自fNIRS和EEG的联合多模态表征与行为记录相结合,可增强典型对照组和FEP个体之间的分类。此外,我们的结果表明,诸如大脑活动嵌入轨迹的曲率和路径特征等几何和拓扑特征,能够检测出早期精神病中有鉴别性的神经特征。