Deep Generative Classifiers for Thoracic Disease Diagnosis with Chest X-ray Images
Chengsheng Mao, Yiheng Pan, Zexian Zeng, Liang Yao, Yuan Luo

TL;DR
This paper introduces deep generative classifiers for thoracic disease diagnosis from chest X-ray images, aiming to improve robustness to noise and reduce overfitting compared to traditional deterministic models.
Contribution
The paper proposes a novel deep generative classifier architecture with a distribution layer and sampling mechanism, enhancing robustness and performance in chest X-ray disease classification.
Findings
Deep generative classifiers outperform deterministic counterparts on chest X-ray data.
The approach reduces overfitting and noise sensitivity in disease diagnosis.
Models achieve superior accuracy on the chest X-ray14 dataset.
Abstract
Thoracic diseases are very serious health problems that plague a large number of people. Chest X-ray is currently one of the most popular methods to diagnose thoracic diseases, playing an important role in the healthcare workflow. However, reading the chest X-ray images and giving an accurate diagnosis remain challenging tasks for expert radiologists. With the success of deep learning in computer vision, a growing number of deep neural network architectures were applied to chest X-ray image classification. However, most of the previous deep neural network classifiers were based on deterministic architectures which are usually very noise-sensitive and are likely to aggravate the overfitting issue. In this paper, to make a deep architecture more robust to noise and to reduce overfitting, we propose using deep generative classifiers to automatically diagnose thorax diseases from the chest…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Radiomics and Machine Learning in Medical Imaging · AI in cancer detection
