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dc.contributor.authorHuang, Guan-Huaen_US
dc.contributor.authorLin, Chih-Hsuanen_US
dc.contributor.authorCai, Yu-Renen_US
dc.contributor.authorChen, Tai-Beenen_US
dc.contributor.authorHsu, Shih-Yenen_US
dc.contributor.authorLu, Nan-Hanen_US
dc.contributor.authorChen, Huei-Yungen_US
dc.contributor.authorWu, Yi-Chenen_US
dc.date.accessioned2020-10-05T02:01:57Z-
dc.date.available2020-10-05T02:01:57Z-
dc.date.issued2020-10-01en_US
dc.identifier.issn1932-1864en_US
dc.identifier.urihttp://dx.doi.org/10.1002/sam.11480en_US
dc.identifier.urihttp://hdl.handle.net/11536/155368-
dc.description.abstractWe analyzed a data set containing functional brain images from 6 healthy controls and 196 individuals with Parkinson's disease (PD), who were divided into five stages according to illness severity. The goal was to predict patients' PD illness stages by using their functional brain images. We employed the following prediction approaches: multivariate statistical methods (linear discriminant analysis, support vector machine, decision tree, and multilayer perceptron [MLP]), ensemble learning models (random forest [RF] and adaptive boosting), and deep convolutional neural network (CNN). For statistical and ensemble models, various feature extraction approaches (principal component analysis [PCA], multilinear PCA, intensity summary statistics [IStat], and Laws' texture energy measure) were employed to extract features, the synthetic minority over-sampling technique was used to address imbalanced data, and the optimal combination of hyperparameters was found using a grid search. For CNN modeling, we applied an image augmentation technique to increase and balance data sizes over different disease stages. We adopted transfer learning to incorporate pretrained VGG16 weights and architecture into the model fitting, and we also tested a state-of-the-art machine learning model that could automatically generate an optimal neural architecture. We found that IStat consistently outperformed other feature extraction approaches. MLP and RF were the analytic approaches with the highest prediction accuracy rate for multivariate statistical and ensemble learning models, respectively. Overall, the deep CNN model with pretrained VGG16 weights and architecture outperformed other approaches; it captured critical features from imaging, effectively distinguished between normal controls and patients with PD, and achieved the highest classification accuracy.en_US
dc.language.isoen_USen_US
dc.subjectdeep neural networken_US
dc.subjectfunctional brain imageen_US
dc.subjectmachine learningen_US
dc.subjectsupervised classificationen_US
dc.titleMulticlass machine learning classification of functional brain images for Parkinson's disease stage predictionen_US
dc.typeArticleen_US
dc.identifier.doi10.1002/sam.11480en_US
dc.identifier.journalSTATISTICAL ANALYSIS AND DATA MININGen_US
dc.citation.volume13en_US
dc.citation.issue5en_US
dc.citation.spage508en_US
dc.citation.epage523en_US
dc.contributor.department統計學研究所zh_TW
dc.contributor.departmentInstitute of Statisticsen_US
dc.identifier.wosnumberWOS:000560572800001en_US
dc.citation.woscount0en_US
Appears in Collections:Articles