Automated diagnosis of myositis from muscle ultrasound: Exploring the use of machine learning and deep learning methods

被引:103
作者
Burlina, Philippe [1 ]
Billings, Seth [1 ]
Joshi, Neil [1 ]
Albayda, Jemima [2 ]
机构
[1] Johns Hopkins Univ, Appl Phys Lab, Laurel, MD USA
[2] Johns Hopkins Sch Med, Div Rheumatol, Baltimore, MD 21205 USA
来源
PLOS ONE | 2017年 / 12卷 / 08期
关键词
SPINAL MUSCULAR-ATROPHY; TEXTURE ANALYSIS; FOLLOW-UP; ULTRASONOGRAPHY; POLYMYOSITIS; SEGMENTATION; ECHOGENICITY; THICKNESS; DISEASES; TOOL;
D O I
10.1371/journal.pone.0184059
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Objective To evaluate the use of ultrasound coupled with machine learning (ML) and deep learning (DL) techniques for automated or semi-automated classification of myositis. Methods Eighty subjects comprised of 19 with inclusion body myositis (IBM), 14 with polymyositis (PM), 14 with dermatomyositis (DM), and 33 normal (N) subjects were included in this study, where 3214 muscle ultrasound images of 7 muscles (observed bilaterally) were acquired. We considered three problems of classification including (A) normal vs. affected (DM, PM, IBM); (B) normal vs. IBM patients; and (C) IBM vs. other types of myositis (DM or PM). We studied the use of an automated DL method using deep convolutional neural networks (DL-DCNNs) for diagnostic classification and compared it with a semi-automated conventional ML method based on random forests (ML-RF) and "engineered" features. We used the known clinical diagnosis as the gold standard for evaluating performance of muscle classification. Results The performance of the DL-DCNN method resulted in accuracies +/- standard deviation of 76.2% +/- 3.1% for problem (A), 86.6% +/- 2.4% for (B) and 74.8% +/- 3.9% for (C), while the ML-RF method led to accuracies of 72.3% +/- 3.3% for problem (A), 84.3% +/- 2.3% for (B) and 68.9% +/- 2.5% for (C). Conclusions This study demonstrates the application of machine learning methods for automatically or semi-automatically classifying inflammatory muscle disease using muscle ultrasound. Compared to the conventional random forest machine learning method used here, which has the drawback of requiring manual delineation of muscle/fat boundaries, DCNN-based classification by and large improved the accuracies in all classification problems while providing a fully automated approach to classification.
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页数:15
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