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Combining Multiple Resting-State fMRI Features during Classification: Optimized Frameworks and Their Application to Nicotine Addiction
被引:19
作者:
Ding, Xiaoyu
[1
]
Yang, Yihong
[1
]
Stein, Elliot A.
[1
]
Ross, Thomas J.
[1
]
机构:
[1] Natl Inst Drug Abuse, Natl Inst Hlth, Neuroimaging Res Branch, Intramural Res Program, Baltimore, MD 21224 USA
关键词:
feature combination;
kernel combination;
classifier combination;
resting-state fMRI;
nicotine addiction;
support vector machine;
FUNCTIONAL CONNECTIVITY PATTERNS;
BRAIN ACTIVITY;
MULTIVARIATE CLASSIFICATION;
DISCRIMINATIVE ANALYSIS;
CAUSAL CONNECTIVITY;
GRANGER CAUSALITY;
SALIENCE NETWORK;
NEURAL-NETWORK;
MACHINE;
ACTIVATION;
D O I:
10.3389/fnhum.2017.00362
中图分类号:
Q189 [神经科学];
学科分类号:
071006 ;
摘要:
Machine learning techniques have been applied to resting-state fMRI data to predict neurological or neuropsychiatric disease states. Existing studies have used either a single type of resting-state feature or a few feature types (<4) in the prediction model. However, resting-state data can be processed in many different ways, yielding different feature types containing complementary and/or novel information, leaving uncertain the most informative features to provide to the classifier. In this study, multiple resting-state features were calculated from two main analytical categories: local measures and network measures. Feature selection was adopted using an optimized grid-search approach selecting top ranked features from statistical tests. We then tested three optimized frameworks: feature combination, kernel combination, and classifier combination, all using the support vector machine as an elementary classifier, to combine these resting-state feature types. When applied to nicotine addiction, with a cohort size of 100 smokers and 100 non-smokers, via a 10-fold cross-validation procedure, the feature combination and the classifier combination achieved an accuracy of 75.5%, while the kernel combination achieved a 73.0% accuracy; all three combination frameworks improved classification performance compared to the single feature type based results (best accuracy 70.5%). This study not only reveals the discriminative power of resting-state data, but also demonstrates the efficiency of combining multiple features from one data phenotype to improve classification performance.
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页数:14
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