利用深度学习技术通过胸部 X 光图像和病历检测肺炎和肺结核

Sudhir Kumar Mohapatra, Mesfin Abebe, Lidia Mekuanint, Srinivas Prasad, Prasanta Kumar Bala, Sunil Kumar Dhala
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摘要

肺炎和肺结核是全球主要的公共卫生问题。这些疾病会影响肺部,如果不能及时得到正确诊断,就会成为致命的健康问题。胸部 X 光图像被广泛用于检测和诊断肺炎和肺结核疾病。由于肺炎和肺结核的病理特征相似,因此从胸部 X 光图像检测这两种疾病非常困难,而且需要经验。有时,这种相似性会导致疾病的误诊。一些研究人员使用深度学习和机器学习技术来解决这一误诊问题。不过,这些研究仅使用胸部 X 光图像来开发肺炎和肺结核疾病检测模型。但是,仅使用胸部 X 光图像并不一定能实现准确的疾病检测和分类。在传统或人工方法中,需要医疗记录的支持,并在适当的临床背景下正确解读胸部 X 光图像。本研究利用胸部 X 光图像和医疗记录开发了一个多输入肺炎和肺结核检测模型,以遵循临床程序。该研究对胸部 X 光图像数据采用卷积神经网络,对医疗记录数据采用多层感知器来开发模型。我们采用了特征级连接技术,将卷积神经网络和多层感知器的输出特征向量连接起来,以建立疾病检测模型。为了进行比较,我们还开发了纯图像模型和纯病历模型。结果,纯图像模型的准确率为 92.68%,纯病历模型的准确率为 98.72%,综合模型的准确率提高到 99.61%。总的来说,研究表明,胸部 X 光片和医疗记录的融合能带来更好的准确性,并且更接近临床方法。
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Pneumonia and tuberculosis detection with chest x-ray images and medical records using deep learning techniques
Pneumonia and tuberculosis are the major public health problems worldwide. These diseases affect the lungs, and if they are not diagnosed properly in time, they can become a fatal health problem. Chest x-ray images are widely used to detect and diagnose Pneumonia and Tuberculosis disease. Detection of Pneumonia and Tuberculosis from chest x-ray images is difficult and requires experience due to the similar pathological features of the diseases. Sometimes a misdiagnosis of the disease occurs due to this similarity. Several researchers used deep learning and machine learning techniques to solve this misdiagnosis problem. However, these studies used the chest x-ray images only to develop Pneumonia and Tuberculosis disease detection models. But using the chest x-ray images alone cannot necessarily lead to accurate disease detection and classification. In the traditional or manual approach, medical records are required to support and correctly interpret the chest x-ray images in the appropriate clinical context. This study develops a multi-input Pneumonia and Tuberculosis detection model using chest x-ray images and medical records to follow the clinical procedure. The study applied a Convolutional Neural Network for the chest x-ray image data and a Multilayer perceptron for the medical record data to develop the models. We implemented feature-level concatenation to join the output feature vectors from the Convolutional Neural Network and a Multilayer perceptron for the development of the disease detection model. For the purpose of comparison, we also developed image-only and medical record-only models. Consequently, the image-only model gives an accuracy of 92.68%, the medical record-only model results in 98.72% accuracy, and the combined model accuracy is improved to 99.61%. In general, the study shows that the fusion of the chest x-ray and the medical records leads to better accuracy and is more similar to the clinical approach.
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