A Systematic Review and Analysis of Lung Disease Detection Techniques

Artificial Intelligence (AI) advancements have astonishingly taken place in the last decade, and it is seen their way into innumerable applications from driverless cars to medical diagnosis. AI is being highly used to identify lung diseases in the present years. Its main aim is to estimate human cog...

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Bibliographic Details
Published in2023 International Conference on Circuit Power and Computing Technologies (ICCPCT) pp. 1868 - 1874
Main Authors Mamachan, Shinu, Arunkumar, R, Padma Suresh, L.
Format Conference Proceeding
LanguageEnglish
Published IEEE 10.08.2023
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Summary:Artificial Intelligence (AI) advancements have astonishingly taken place in the last decade, and it is seen their way into innumerable applications from driverless cars to medical diagnosis. AI is being highly used to identify lung diseases in the present years. Its main aim is to estimate human cognition in the analysis of complicated medical data attained from diagnostic tests for lung diseases. In this review paper, 20 research papers are studied based on different techniques of machine learning as well as deep learning employed for the detection of lung disease. In addition, research papers are reviewed on the basis of diverse kinds of lung diseases, namely tuberculosis, COVID-19, pneumonia, involving lung cancer by classifying the papers based on the methods, like Random forest, Deep CNN, voting classifier, etc. Then, gaps and issues in the research identified in conventional works are enlisted. This helps the researchers in finding a solution and progress their research. The literature review examines various factors when analyzing works, including the datasets used, metrics for evaluating performance, methods employed for detection/classification, and the performance achieved by those detection methods. By analyzing the existing literary works on lung disease detection, the review identifies research challenges that can guide researchers to enhance their work and suggests future directions for improvement.
DOI:10.1109/ICCPCT58313.2023.10245744