IVLGMar 25, 2021

Classification of Pneumonia and Tuberculosis from Chest X-rays

arXiv:2103.14562v17 citations
Originality Synthesis-oriented
AI Analysis

This work addresses the need for automated disease detection in healthcare to assist doctors, but it is incremental as it extends detection to two diseases.

The paper tackles the problem of classifying pneumonia and tuberculosis from chest X-rays, achieving an accuracy of 92.97% in detecting abnormalities.

Artificial intelligence (AI) and specifically machine learning is making inroads into number of fields. Machine learning is replacing and/or complementing humans in a certain type of domain to make systems perform tasks more efficiently and independently. Healthcare is a worthy domain to merge with AI and Machine learning to get things to work smoother and efficiently. The X-ray based detection and classification of diseases related to chest is much needed in this modern era due to the low number of quality radiologists. This thesis focuses on the classification of Pneumonia and Tuberculosis two major chest diseases from the chest X-rays. This system provides an opinion to the user whether one is having a disease or not, thereby helping doctors and medical staff to make a quick and informed decision about the presence of disease. As compared to previous work our model can detect two types of abnormality. Our model can detect whether X-ray is normal or having abnormality which can be pneumonia and tuberculosis 92.97% accurately.

Foundations

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