Study on the TB and non-TB diagnosis using two-step deep learning-based binary classifier

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Abstract

A deep learning-based binary classifier was proposed to diagnose tuberculosis (TB) and non-TB disease using a chest X-ray radiograph. The proposed classifier comprised two-step binary decision trees, each trained by a deep learning model with convolution neural network (CNN) based on the PyTorch frame. Normal and abnormal images of chest X-ray was classified in the first step. The abnormal images were predicted to be classified into TB and non-TB disease by the second step of the process. The accuracies of first and second step were 98% and 80% respectively. Moreover, re-training could improve the stability of prediction accuracy for images in different data groups.

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Yoo, S. H., Geng, H., Chiu, T. L., Yu, S. K., Cho, D. C., Heo, J., … Min, B. J. (2020). Study on the TB and non-TB diagnosis using two-step deep learning-based binary classifier. Journal of Instrumentation, 15(10). https://doi.org/10.1088/1748-0221/15/10/P10011

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