基于可解释机器学习模型的肺炎x射线成像分类

Luyu Zeng, Zhong Zheng, Rui Zhang
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引用次数: 0

摘要

covid -19的爆发给世界各地的医疗系统带来了巨大的压力。这种呼吸道疾病的高度传染性对先进的诊断技术提出了挑战,以实现快速、可扩展、负担得起和高精度的检测。在之前的研究中,Tsiknakis使用卷积神经网络(CNN)和迁移学习技术,在区分Covid-19感染者和健康人的肺部x射线图像方面取得了很高的准确性。然而,在第四类分类(细菌性肺炎、covid - 19、正常肺炎和病毒性肺炎)中,准确率不高。它很难区分细菌性肺炎和病毒性肺炎。基于CNN、迁移学习和可解释的机器学习方法,这项工作精确地实现了数据处理和增强,并在置信度之后添加了第二个二元分类器。这样一来,四元分类的准确率和召回率都有了明显的提高,特别是对于细菌性肺炎和病毒性肺炎,模型也变得更具可解释性。
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Pneumonia X-ray Imaging Classification Based on an Interpretable Machine Learning Model
The outbreak of Covld-19 has put tremendous pressure on medical systems around the world. The highly infectious nature of this respiratory disease challenges advanced diagnostic technology to achieve rapid, scalable, affordable, and high-precision testing. In previous studies, Tsiknakis used Convolutional Neural Network (CNN) and transfer learning to achieved high accuracy in distinguishing the lung X-ray images of Covid-19 infectors and healthy people. However, its accuracy is not so high in quaternary classification (Bacterial Pneumonia, Covidl9, Normal, and Viral Pneumonia). It can hardly distinguish between bacterial pneumonia and viral pneumonia. Based on CNN, transfer learning, and interpretable machine learning methods, this work precisely implements data processing and augmentation and adds a second binary classifier following a confidence level. In this way, the accuracy and recall rate of the quaternary classification are significantly improved, especially for bacterial pneumonia and viral pneumonia, and the model also becomes more interpretable.
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