Lung Disease Classification Using Deep Learning Models from Chest X-ray Images

Salma Sultana, Anik Pramanik, Md. Sadekur Rahman
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引用次数: 1

Abstract

In the very recent past, Infectious disease-related sickness has long posed a concern on a global scale. Each year, COVID-19, pneumonia, and tuberculosis cause a large number of deaths because they all affect the lungs. Early detection and diagnosis can increase the likelihood of receiving quality treatment in all circumstances. A low-cost, simple imaging approach called chest X-ray imaging enables to detection and screen lung abnormalities brought on by infectious diseases for example Covid-19, pneumonia, and tuberculosis. This paper provided a thorough analysis of current deep-learning methods for diagnosing Covid-19, pneumonia, and TB. According to the research papers reviewed, Deep Convolutional Neural Network is the most used deep learning method for identifying Covid-19, pneumonia, and TB from chest X-ray (CXR) images. We compared the proposed DNN to well-known DNNs like Efficient-NetB0, DenseNet169, and DenseNet201 in order to more accurately assess how well it performed. Our findings are equivalent to the state-of-the-art, and since the proposed CNN is lightweight, it may be employed for widespread screening in areas with limited resources. From three diverse publicly accessible datasets merged into one dataset, the suggested DNN generated the following precisions for that dataset: 99.15%, 98.89%, and 97.79% for EfficientNetB0, DenseNet169, and DenseNet201 respectively. The proposed network can help radiologists make quick and accurate diagnoses because it is effective at identifying COVID-19 and other lung contagious disorders utilizing chest X-ray images. This paper also gives young scientists a good insight into how to create CNN models that are highly efficient when used with medical images to identify diseases early.
利用胸部x射线图像的深度学习模型进行肺部疾病分类
在最近的过去,与传染病有关的疾病长期以来在全球范围内引起了关注。每年,COVID-19、肺炎和结核病都会造成大量死亡,因为它们都会影响肺部。早期发现和诊断可以增加在所有情况下接受高质量治疗的可能性。一种被称为胸部x射线成像的低成本、简单的成像方法能够检测和筛查由Covid-19、肺炎和结核病等传染病引起的肺部异常。本文对当前用于诊断Covid-19、肺炎和结核病的深度学习方法进行了全面分析。根据所回顾的研究论文,深度卷积神经网络是从胸部x射线(CXR)图像中识别Covid-19,肺炎和结核病的最常用的深度学习方法。我们将提出的深度神经网络与众所周知的深度神经网络(如Efficient-NetB0、DenseNet169和DenseNet201)进行了比较,以便更准确地评估其性能。我们的研究结果相当于最先进的技术,并且由于拟议的CNN重量轻,它可以用于资源有限的地区的广泛筛查。从三个不同的可公开访问的数据集合并到一个数据集中,建议的深度神经网络为该数据集生成了以下精度:有效率netb0, DenseNet169和DenseNet201分别为99.15%,98.89%和97.79%。该网络可以帮助放射科医生快速准确地诊断,因为它可以有效地利用胸部x射线图像识别COVID-19和其他肺部传染性疾病。这篇论文也让年轻的科学家们很好地了解了如何创建CNN模型,这些模型在与医学图像一起使用时非常有效,可以早期识别疾病。
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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