用于肺部疾病检测与分类的图像数据集

Yassamine Lala Bouali, Isra Boucetta, I. E. I. Bekkouch, Mourad Bouache, S. Mazouzi
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引用次数: 2

摘要

肺部疾病是几种致命疾病的一部分。尽管在医疗保健领域取得了进步,但其中一些疾病仍然是世界上最致命的疾病。本文分析了如何利用人工智能处理的x射线图像,通过对肺部疾病的自动检测和分类,帮助内科医生和放射科医生进行诊断。在这项研究中,我们提出了一个新的图像数据集,该数据集由1071张胸部x射线图像组成,这些图像具有两种常见的肺部病变,即肺炎和肺结核。此外,在医学专家的帮助下,我们手动为每张图像提供疾病边界框。我们使用提出的数据集来训练基于深度学习的对象检测模型,以证明胸部病变可以自动检测、分类,最重要的是,可以定位。我们的结果是有希望的,并且表明所提出的数据集允许训练准确的肺部疾病检测模型。
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An Image Dataset for Lung Disease Detection and Classification
Lung diseases are part of several fatal illnesses. Although there are advances in the healthcare domain, some of them still top the list of worldwide mortal diseases. This paper analyzes how X-ray images, processed according to Artificial Intelligence, can be used to assist medical physicians and radiologists in their diagnosis by automatic detection and classification of lung diseases. In this study, we present a new image dataset that consists of 1071 chest X-ray images with two common lung pathologies, i.e. pneumonia and tuberculosis. In addition, with the help of medical specialists, we manually provided each image with disease bounding boxes. We used the proposed dataset to train Deep Learning based object detection models to demonstrate that thoracic pathologies can be automatically detected, classified and most importantly, localized. Our results are promising and show that the proposed dataset allows training accurate lung disease detection models.
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