Deep Learning-Based Brain Computed Tomography Image Classification with Hyperparameter Optimization through Transfer Learning for Stroke

被引:24
作者
Chen, Yung-Ting [1 ]
Chen, Yao-Liang [1 ]
Chen, Yi-Yun [1 ]
Huang, Yu-Ting [1 ]
Wong, Ho-Fai [2 ]
Yan, Jiun-Lin [3 ]
Wang, Jiun-Jie [1 ]
机构
[1] Chang Gung Mem Hosp, Dept Diagnost Radiol, Keelung 204201, Taiwan
[2] Chang Gung Univ, Chang Gung Mem Hosp, Dept Med Imaging & Intervent, Linkou 333423, Taiwan
[3] Chang Gung Mem Hosp, Dept Neurosurg, Keelung 204201, Taiwan
关键词
machine learning; neuroradiology; computed tomography; stroke; classification; NETWORKS; CAD;
D O I
10.3390/diagnostics12040807
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Brain computed tomography (CT) is commonly used for evaluating the cerebral condition, but immediately and accurately interpreting emergent brain CT images is tedious, even for skilled neuroradiologists. Deep learning networks are commonly employed for medical image analysis because they enable efficient computer-aided diagnosis. This study proposed the use of convolutional neural network (CNN)-based deep learning models for efficient classification of strokes based on unenhanced brain CT image findings into normal, hemorrhage, infarction, and other categories. The included CNN models were CNN-2, VGG-16, and ResNet-50, all of which were pretrained through transfer learning with various data sizes, mini-batch sizes, and optimizers. Their performance in classifying unenhanced brain CT images was tested thereafter. This performance was then compared with the outcomes in other studies on deep learning-based hemorrhagic or ischemic stroke diagnoses. The results revealed that among our CNN-2, VGG-16, and ResNet-50 analyzed by considering several hyperparameters and environments, the CNN-2 and ResNet-50 outperformed the VGG-16, with an accuracy of 0.9872; however, ResNet-50 required a longer time to present the outcome than did the other networks. Moreover, our models performed much better than those reported previously. In conclusion, after appropriate hyperparameter optimization, our deep learning-based models can be applied to clinical scenarios where neurologist or radiologist may need to verify whether their patients have a hemorrhage stroke, an infarction, and any other symptom.
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页数:12
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