Toward a unified framework for interpreting machine-learning models in neuroimaging

被引:96
作者
Kohoutova, Lada [1 ,2 ]
Heo, Juyeon [3 ]
Cha, Sungmin [3 ]
Lee, Sungwoo [1 ,2 ]
Moon, Taesup [3 ]
Wager, Tor D. [4 ,5 ,6 ]
Woo, Choong-Wan [1 ,2 ]
机构
[1] Inst Basic Sci, Ctr Neurosci Imaging Res, Suwon, South Korea
[2] Sungkyunkwan Univ, Dept Biomed Engn, Suwon, South Korea
[3] Sungkyunkwan Univ, Dept Elect & Comp Engn, Suwon, South Korea
[4] Dartmouth Coll, Dept Psychol & Brain Sci, Hanover, NH 03755 USA
[5] Univ Colorado, Dept Psychol & Neurosci, Boulder, CO 80309 USA
[6] Univ Colorado, Inst Cognit Sci, Boulder, CO 80309 USA
基金
新加坡国家研究基金会;
关键词
PRINCIPAL-COMPONENTS; BRAIN SIGNATURES; PATTERN-ANALYSIS; HUMAN STRIATUM; TEMPORAL-LOBE; FMRI; PAIN; SELECTION; REPRESENTATIONS; CLASSIFICATION;
D O I
10.1038/s41596-019-0289-5
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Machine learning is a powerful tool for creating computational models relating brain function to behavior, and its use is becoming widespread in neuroscience. However, these models are complex and often hard to interpret, making it difficult to evaluate their neuroscientific validity and contribution to understanding the brain. For neuroimaging-based machine-learning models to be interpretable, they should (i) be comprehensible to humans, (ii) provide useful information about what mental or behavioral constructs are represented in particular brain pathways or regions, and (iii) demonstrate that they are based on relevant neurobiological signal, not artifacts or confounds. In this protocol, we introduce a unified framework that consists of model-, feature- and biology-level assessments to provide complementary results that support the understanding of how and why a model works. Although the framework can be applied to different types of models and data, this protocol provides practical tools and examples of selected analysis methods for a functional MRI dataset and multivariate pattern-based predictive models. A user of the protocol should be familiar with basic programming in MATLAB or Python. This protocol will help build more interpretable neuroimaging-based machine-learning models, contributing to the cumulative understanding of brain mechanisms and brain health. Although the analyses provided here constitute a limited set of tests and take a few hours to days to complete, depending on the size of data and available computational resources, we envision the process of annotating and interpreting models as an open-ended process, involving collaborative efforts across multiple studies and laboratories. Neuroimaging-based machine-learning models should be interpretable to neuroscientists and users in applied settings. This protocol describes how to assess the interpretability of models based on fMRI.
引用
收藏
页码:1399 / 1435
页数:37
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