Shanling Ji , Hongyong Zhang , Cong Zhou , Xia Liu , Chuanxin Liu , Hao Yu
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引用次数: 0
Abstract
Patients with Bipolar Disorder type I (BD-I) exhibit maladaptive risky decision-making, which is related to impulsivity, suicide attempts, and aggressive behavior. Currently, there is a lack of effective predictive methods for early intervention in risky behaviors for patients with BD-I. This study aimed to predict risky behavior in patients with BD-I using resting-state functional magnetic resonance imaging (rs-fMRI). We included 48 patients with BD-I and 124 healthy controls (HC) and constructed voxel-wise functional connectivity (FC), dynamic FC (dFC), effective connectivity (EC), and dynamic EC (dEC) for each subject. The Balloon Analogue Risk Task (BART) was employed to measure the risky decision-making of all participants. We applied connectome-based predictive modeling (CPM) with five regression algorithms to predict risky behaviors as well as Barratt Impulsivity Scale (BIS) scores. Results showed that the BD-I had significantly lower risky adjusted pump scores compared to HC. The dEC-based linear regression-CPM model exhibited significant predictive ability for the adjusted pump scores in BD-I, while no significant predictive power was observed in HC. Furthermore, this model successfully predicted non-planning impulsiveness, motor impulsiveness, and BIS total score, but failed for attentional impulsiveness in BD-I. These findings provide a foundation for future work in predicting risky behaviors of psychiatric patients by using voxel-wise dEC underlying resting state.
躁郁症 I 型(BD-I)患者表现出适应不良的风险决策,这与冲动、自杀企图和攻击行为有关。目前,尚缺乏有效的预测方法对躁狂症 I 型患者的危险行为进行早期干预。本研究旨在利用静息态功能磁共振成像(rs-fMRI)预测 BD-I 患者的危险行为。我们纳入了 48 名 BD-I 患者和 124 名健康对照(HC),并为每个受试者构建了体素功能连通性(FC)、动态 FC(dFC)、有效连通性(EC)和动态 EC(dEC)。我们采用气球模拟风险任务(BART)来测量所有受试者的风险决策能力。我们采用了基于连接组的预测模型(CPM)和五种回归算法来预测危险行为和巴拉特冲动量表(BIS)得分。结果显示,与 HC 相比,BD-I 的风险调整泵得分明显较低。基于 dEC 的线性回归-CPM 模型对 BD-I 的调整后泵评分具有显著的预测能力,而对 HC 则没有显著的预测能力。此外,该模型成功预测了 BD-I 的非计划冲动、运动冲动和 BIS 总分,但未能预测注意力冲动。这些发现为今后利用静息状态下的体素密度预测精神病患者的危险行为奠定了基础。
期刊介绍:
Neuroscience publishes papers describing the results of original research on any aspect of the scientific study of the nervous system. Any paper, however short, will be considered for publication provided that it reports significant, new and carefully confirmed findings with full experimental details.