Detection of Pneumonia from Chest X-Ray images using Machine Learning

S. M., Varalakshmi Perumal, Gowtham Yuvaraj, Sakthi Jaya Sundar Rajasekar
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Abstract

The survival percentage of lung patients can be improved if pneumonia is detected early. Images of the chest X-ray (CXR) are the most common way of identifying and diagnosing pneumonia. A competent radiologist faces a difficult problem in detecting pneumonia from CXR images. Many people are at danger of contracting pneumonia, especially in developing countries where billions of people live in energy poverty and rely on polluting energy sources. Though there are effective tools in existence to prevent, diagnose and treat pneumonia, pneumonia-related deaths are prevalent in most of the countries. But only a small amount of health budgets is allocated to eradicate pneumonia. If the diagnosis of the disease is made in more reliable and cost effective way, tackling the disease won’t be a herculean task. Machine learning algorithms paved a great way to easily identify, diagnose and predict the disease with minimal amount of time. This paper represents the identification of pneumonia from chest X-Ray by implementing traditional machine learning algorithms with ensemble using optimal number of image features with the help of correlation co-efficient. Also deep learning approach has been implemented. The proposed method traditional machine learning approach and deep learning approach achieved accuracy rates of 93.57% and 93.59% and time required for pneumonia detection is 157,452 s (approx.) and 240,253 s (approx.) respectively.
利用机器学习从胸部x射线图像中检测肺炎
如果早期发现肺炎,可以提高肺部患者的生存率。胸部x光片(CXR)图像是识别和诊断肺炎的最常用方法。一位称职的放射科医生面临着从CXR图像中检测肺炎的难题。许多人有感染肺炎的危险,特别是在数十亿人生活在能源贫困和依赖污染能源的发展中国家。尽管已有预防、诊断和治疗肺炎的有效工具,但与肺炎相关的死亡在大多数国家普遍存在。但是,用于根除肺炎的卫生预算只有很少一部分。如果以更可靠和更经济有效的方式进行疾病诊断,解决疾病将不是一项艰巨的任务。机器学习算法为在最短的时间内轻松识别、诊断和预测疾病铺平了一条很好的道路。本文通过实现传统的机器学习算法,在相关系数的帮助下,利用最优数量的图像特征进行集成,从胸部x射线中识别肺炎。此外,还实现了深度学习方法。本文提出的方法,传统机器学习方法和深度学习方法的准确率分别为93.57%和93.59%,肺炎检测所需时间分别为157,452 s(约)和240,253 s(约)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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