Advancement of Deep Learning in Pneumonia and Covid-19 Classification and Localization: A Qualitative and Quantitative Analysis
Aakash Shah, Manan Shah

TL;DR
This paper systematically reviews deep learning advancements for detecting and localizing pneumonia and Covid-19 from chest X-ray and CT scans, analyzing model architectures, challenges, and effectiveness to aid researchers and beginners.
Contribution
It provides a comprehensive qualitative and quantitative analysis of deep learning models for pneumonia and Covid-19 detection, focusing on architecture, generalizability, and tradeoffs.
Findings
Deep learning models show high accuracy in disease detection.
Modified architectures improve model performance and robustness.
Quantitative results highlight the effectiveness of various models.
Abstract
Around 450 million people are affected by pneumonia every year which results in 2.5 million deaths. Covid-19 has also affected 181 million people which has lead to 3.92 million casualties. The chances of death in both of these diseases can be significantly reduced if they are diagnosed early. However, the current methods of diagnosing pneumonia (complaints + chest X-ray) and covid-19 (RT-PCR) require the presence of expert radiologists and time, respectively. With the help of Deep Learning models, pneumonia and covid-19 can be detected instantly from Chest X-rays or CT scans. This way, the process of diagnosing Pneumonia/Covid-19 can be made more efficient and widespread. In this paper, we aim to elicit, explain, and evaluate, qualitatively and quantitatively, major advancements in deep learning methods aimed at detecting or localizing community-acquired pneumonia (CAP), viral…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Anomaly Detection Techniques and Applications · Machine Learning in Healthcare
