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基于Cox回归的功能连接性与治疗结果建模用于物质使用障碍复发预测和疾病亚型分类

Cox Regression Based Modeling of Functional Connectivity and Treatment Outcome for Relapse Prediction and Disease Subtyping in Substance Use Disorder.

作者信息

Zhai Tianye, Gu Hong, Yang Yihong

机构信息

Neuroimaging Research Branch, Intramural Research Program, National Institute on Drug Abuse, National Institutes of Health, Baltimore, MD, United States.

出版信息

Front Neurosci. 2021 Nov 11;15:768602. doi: 10.3389/fnins.2021.768602. eCollection 2021.

Abstract

Functional magnetic resonance imaging (fMRI) has become one of the most widely used noninvasive neuroimaging technique in research of cognitive neurosciences and of neural mechanisms of neuropsychiatric/neurological diseases. A primary goal of fMRI-based neuroimaging studies is to identify biomarkers for brain-behavior relationship and ultimately perform individualized treatment outcome prognosis. However, the concern of inadequate validation and the nature of small sample sizes are associated with fMRI-based neuroimaging studies, both of which hinder the translation from scientific findings to clinical practice. Therefore, the current paper presents a modeling approach to predict time-dependent prognosis with fMRI-based brain metrics and follow-up data. This prediction modeling is a combination of seed-based functional connectivity and voxel-wise Cox regression analysis with built-in nested cross-validation, which has been demonstrated to be able to provide robust and unbiased model performance estimates. Demonstrated with a cohort of treatment-seeking cocaine users from psychosocial treatment programs with 6-month follow-up, our proposed modeling method is capable of identifying brain regions and related functional circuits that are predictive of certain follow-up behavior, which could provide mechanistic understanding of neuropsychiatric/neurological disease and clearly shows neuromodulation implications and can be used for individualized prognosis and treatment protocol design.

摘要

功能磁共振成像(fMRI)已成为认知神经科学以及神经精神/神经疾病神经机制研究中使用最广泛的非侵入性神经成像技术之一。基于fMRI的神经成像研究的一个主要目标是识别脑-行为关系的生物标志物,并最终进行个体化治疗结果预测。然而,基于fMRI的神经成像研究存在验证不足和样本量小的问题,这两者都阻碍了从科学发现到临床实践的转化。因此,本文提出了一种建模方法,利用基于fMRI的脑指标和随访数据来预测时间依赖性预后。这种预测建模是基于种子的功能连接和体素级Cox回归分析与内置嵌套交叉验证的结合,已被证明能够提供稳健且无偏差的模型性能估计。通过对来自心理社会治疗项目的寻求治疗的可卡因使用者队列进行6个月的随访验证,我们提出的建模方法能够识别预测特定随访行为的脑区和相关功能回路,这可以提供对神经精神/神经疾病的机制理解,并清楚地显示神经调节的意义,可用于个体化预后和治疗方案设计。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2cf1/8632554/94a54eb0a415/fnins-15-768602-g001.jpg

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