Using connectome-based predictive modeling to predict individual behavior from brain connectivity

被引:660
|
作者
Shen, Xilin [1 ]
Finn, Emily S. [2 ]
Scheinost, Dustin [1 ]
Rosenberg, Monica D. [3 ]
Chun, Marvin M. [2 ,3 ,4 ]
Papademetris, Xenophon [1 ,5 ]
Constable, R. Todd [1 ,2 ,6 ]
机构
[1] Yale Sch Med, Dept Radiol & Biomed Imaging, New Haven, CT 06510 USA
[2] Yale Sch Med, Interdept Neurosci Program, New Haven, CT 06510 USA
[3] Yale Univ, Dept Psychol, New Haven, CT USA
[4] Yale Sch Med, Dept Neurosci, New Haven, CT USA
[5] Yale Univ, Dept Biomed Engn, New Haven, CT USA
[6] Yale Sch Med, Dept Neurosurg, New Haven, CT 06510 USA
基金
美国国家卫生研究院; 美国国家科学基金会;
关键词
RESTING-STATE FMRI; FUNCTIONAL CONNECTIVITY; CLASSIFICATION; ORGANIZATION; MOTION;
D O I
10.1038/nprot.2016.178
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
N euroimaging is a fast-developing research area in which anatomical and functional images of human brains are collected using techniques such as functional magnetic resonance imaging (fMRI), diffusion tensor imaging (DTI), and electroencephalography (EEEEG). Technical advances and large-scale data sets have allowed for the development of models capable of predicting individual differences in traits and behavior using brain connectivity measures derived from neuroimaging data. Here, we present connectome-based predictive modeling (CPCPM), a data-driven protocol for developing predictive models of brain-behavior relationships from connectivity data using cross-validation. This protocol includes the following steps: (i) feature selection, (ii) feature summarization, (iii) model building, and (iv) assessment of prediction significance. We also include suggestions for visualizing the most predictive features (i. e., brain connections). The final result should be a generalizable model that takes brain connectivity data as input and generates predictions of behavioral measures in novel subjects, accounting for a considerable amount of the variance in these measures. It has been demonstrated that the CPCPM protocol performs as well as or better than many of the existing approaches in brain-behavior prediction. As CPCPM focuses on linear modeling and a purely data-driven approach, neuroscientists with limited or no experience in machine learning or optimization will find it easy to implement these protocols. Depending on the volume of data to be processed, the protocol can take 10-100 min for model building, 1-48 h for permutation testing, and 10-20 min for visualization of results.
引用
收藏
页码:506 / 518
页数:13
相关论文
共 50 条
  • [1] Using connectome-based predictive modeling to predict individual behavior from brain connectivity
    Xilin Shen
    Emily S Finn
    Dustin Scheinost
    Monica D Rosenberg
    Marvin M Chun
    Xenophon Papademetris
    R Todd Constable
    Nature Protocols, 2017, 12 : 506 - 518
  • [2] Longitudinal Connectome-based Predictive Modeling for REM Sleep Behavior Disorder from Structural Brain Connectivity
    Giancardo, Luca
    Ellmore, Timothy M.
    Suescun, Jessika
    Ocasio, Laura
    Kamali, Arash
    Riascos-Castaneda, Roy
    Schiess, Mya C.
    MEDICAL IMAGING 2018: COMPUTER-AIDED DIAGNOSIS, 2018, 10575
  • [3] Connectome-Based Predictive Modeling of Individual Anxiety
    Wang, Zhihao
    Goerlich, Katharina S.
    Ai, Hui
    Aleman, Andre
    Luo, Yue-Jia
    Xu, Pengfei
    CEREBRAL CORTEX, 2021, 31 (06) : 3006 - 3020
  • [4] Using modular connectome-based predictive modeling to reveal brain-behavior relationships of individual differences in working memory
    Yang, Huayi
    Zhang, Junjun
    Jin, Zhenlan
    Bashivan, Pouya
    Li, Ling
    BRAIN STRUCTURE & FUNCTION, 2023, 228 (06): : 1479 - 1492
  • [5] Using modular connectome-based predictive modeling to reveal brain-behavior relationships of individual differences in working memory
    Huayi Yang
    Junjun Zhang
    Zhenlan Jin
    Pouya Bashivan
    Ling Li
    Brain Structure and Function, 2023, 228 : 1479 - 1492
  • [6] Connectome-based predictive modeling of trait forgiveness
    Li, Jingyu
    Qiu, Jiang
    Li, Haijiang
    SOCIAL COGNITIVE AND AFFECTIVE NEUROSCIENCE, 2023, 18 (01)
  • [7] Connectome-Based Predictive Modeling of Trait Mindfulness
    Treves, Isaac N.
    Kucyi, Aaron
    Park, Madelynn
    Kral, Tammi R. A.
    Goldberg, Simon B.
    Davidson, Richard J.
    Rosenkranz, Melissa
    Whitfield-Gabrieli, Susan
    Gabrieli, John D. E.
    HUMAN BRAIN MAPPING, 2025, 46 (01)
  • [8] Connectome-Based Predictive Modeling of Creativity Anxiety
    Ren, Zhiting
    Daker, Richard J.
    Shi, Liang
    Sun, Jiangzhou
    Beaty, Roger E.
    Wu, Xinran
    Chen, Qunlin
    Yang, Wenjing
    Lyons, Ian M.
    Green, Adam E.
    Qiu, Jiang
    NEUROIMAGE, 2021, 225
  • [9] Functional Connectome-Based Predictive Modeling in Autism
    Horien, Corey
    Floris, Dorothea L.
    Greene, Abigail S.
    Noble, Stephanie
    Rolison, Max
    Tejavibulya, Link
    O'Connor, David
    McPartland, James C.
    Scheinost, Dustin
    Chawarska, Katarzyna
    Lake, Evelyn M. R.
    Constable, R. Todd
    BIOLOGICAL PSYCHIATRY, 2022, 92 (08) : 626 - 642
  • [10] Brain Functional Connectivity Predicts Depression and Anxiety During Childhood and Adolescence: A Connectome-Based Predictive Modeling Approach
    Morfini, Francesca
    Kucyi, Aaron
    Zhang, Jiahe
    Bauer, Clemens
    Bloom, Paul Alexander
    Pagliaccio, David
    Auerbach, Randy P.
    Whitfield-Gabrieli, Susan
    BIOLOGICAL PSYCHIATRY, 2023, 93 (09) : S327 - S328