图像处理方法在胸部x线肺炎云检测中的应用

Abhishek Sharma, D. Raju, Sutapa Ranjan
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引用次数: 66

摘要

寻找从医学图像中自动诊断的方法一直是软件开发中最有趣的领域之一。本文介绍了一种仅使用图像处理技术检测胸部x光(CXR)中肺炎云存在的新方法。为此,我们对40例正常和肺炎感染患者进行了模拟胸部x光检查。已经开发了用于裁剪和从图像中提取肺区域的本地算法。为了检测肺炎云,我们采用了Otsu阈值法,将肺部的健康部分与肺炎感染的云区分离开来。我们建议通过计算健康肺面积与总肺面积的比值来确定结果。这项任务是使用Python和OpenCV完成的,因为它们是免费的开源工具,所有人都可以使用,没有任何合法性问题或成本暗示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of pneumonia clouds in chest X-ray using image processing approach
Finding ways to automate diagnostics from medical images, has continuously been one of the most interesting areas of software development. This article presents a novel approach for detecting the presence of pneumonia clouds in chest X-rays (CXR) by using only Image processing techniques. For this, we have worked on 40 analog chest CXRs pertaining to Normal and Pneumonia infected patients. Indigenous algorithms have been developed for cropping and for extraction of the lung region from the images. To detect pneumonia clouds we have used Otsu thresholding which will segregate the healthy part of lung from the pneumonia infected cloudy regions. We are proposing to compute the ratio of area of healthy lung region to total lung region to establish a result. The task has been performed using Python and OpenCV as they are free, opensource tools and can be used by all, without any legality issues or cost implication.
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