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GUI Based Thoracic Disease Detection Using Segmented Deep Convolutional Neural Network

International Conference on Computing Communication Control and automation(2022)

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摘要
Deep learning has shown exciting results in the field of medical imaging. Thoracic problems can be serious, and if not detected and treated in a timely manner, they can result in death. Chest X-ray imaging is being used to diagnose numerous thoracic disorders. Generally, we required a knowledgeable and experienced radiologist to examine chest X-ray images and determine whether or not a person has certain thorax abnormalities. Everyone doesn't have the opportunity to consult an expert in a timely manner to treat chest disease because in certain circumstances, speedy diagnostics are required. As a consequence, we present an image classification and segmentation-based algorithm that would predict a specific thoracic condition and produce a mask, empowering doctors to make critical decisions. Deep Learning approaches have proven their worth in a range of contexts, outperforming many state-of-the-art models. We used the U-Net framework with ResNet as the backbone and got good results. In medical image processing and semantic segmentation, U-Net outperforms.
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关键词
Thoracic Disorders,Chest X-ray,Classification,Segmentation,Convolutional Neural Network,Disease Screening System
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