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http://dx.doi.org/10.7742/jksr.2022.16.5.595

Comparative Evaluation of Chest Image Pneumonia based on Learning Rate Application  

Kim, Ji-Yul (Daewoo general hospital)
Ye, Soo-Young (Department of Radiology Catholic University of the Pusan)
Publication Information
Journal of the Korean Society of Radiology / v.16, no.5, 2022 , pp. 595-602 More about this Journal
Abstract
This study tried to suggest the most efficient learning rate for accurate and efficient automatic diagnosis of medical images for chest X-ray pneumonia images using deep learning. After setting the learning rates to 0.1, 0.01, 0.001, and 0.0001 in the Inception V3 deep learning model, respectively, deep learning modeling was performed three times. And the average accuracy and loss function value of verification modeling, and the metric of test modeling were set as performance evaluation indicators, and the performance was compared and evaluated with the average value of three times of the results obtained as a result of performing deep learning modeling. As a result of performance evaluation for deep learning verification modeling performance evaluation and test modeling metric, modeling with a learning rate of 0.001 showed the highest accuracy and excellent performance. For this reason, in this paper, it is recommended to apply a learning rate of 0.001 when classifying the presence or absence of pneumonia on chest X-ray images using a deep learning model. In addition, it was judged that when deep learning modeling through the application of the learning rate presented in this paper could play an auxiliary role in the classification of the presence or absence of pneumonia on chest X-ray images. In the future, if the study of classification for diagnosis and classification of pneumonia using deep learning continues, the contents of this thesis research can be used as basic data, and furthermore, it is expected that it will be helpful in selecting an efficient learning rate in classifying medical images using artificial intelligence.
Keywords
Deep learning; Learning-rate; Automatic Diagnosis of Pneumonia; Chest X-ray imaging; Inception V3;
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