"SWASTHA-SHWASA": UTILITY OF DEEP LEARNING FOR DIAGNOSIS OF COMMON LUNG PATHOLOGIES FROM CHEST X-RAYS

被引:1
作者
Aishwarya, N. [1 ]
Veena, M. B. [1 ]
Ullas, Yashas L. [2 ]
Rajasekaran, Rajsri Thuthikadu [3 ]
机构
[1] BMS Coll Engn, Bengaluru, India
[2] Sri Devaraj Urs Acad Higher Educ & Res Ctr, Kolar, India
[3] Evidencian Res Associates, Depatment Community Med, Bengaluru, India
关键词
XAI; Healthcare; Deep Learning; COVID-19; Cross-population generalization; Respiratory Diseases; Chest X-Rays;
D O I
10.9756/INTJECSE/V14I5.198
中图分类号
G76 [特殊教育];
学科分类号
040109 ;
摘要
Respiratory diseases are one of the leading causes of death and disability in the world. Integration of AI with existing Chest X-Ray (CXR) diagnostics is currently a hot research topic. On similar lines, we propose a technique termed "Swasta-shwasa" for multi-class classification that associates CXR with one among Tuberculosis, COVID-19, Viral pneumonia, Bacteria Pneumonia, Normal and Lung Opacity ailments based on Deep Learning. The proposed technique which has accomplished an overall 98% test accuracy, 0.9991 AUROC, average Specificity of 99.82% and average Sensitivity of 98.51% involves four stages: Pre-processing, Segmentation, Classification and Saliency map visualization. Further, the trained model is used to predict on unseen real life data of COVID-19 cases from India and a cross-population generalization accuracy of 85% is witnessed. XAI is augmented for model interpretability. We also explore why CLAHE may not be suitable choice for pre-processing of CXRs.
引用
收藏
页码:1895 / 1905
页数:11
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