eRxNet:用于结核病筛查的卷积神经网络管道

Terence Griffin, Qilei Chen, Xinzi Sun, Dechun Wang, M. Brunette, Yu Cao, Benyuan Liu
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引用次数: 1

摘要

结核病是一种传染性疾病,每年影响全世界数百万人。通过提高筛查和诊断的速度和效率,可以显著改善这种疾病的治疗和减少当地流行病。eRxNet是一个卷积神经网络管道,旨在为医疗保健专业人员提供用于结核病筛查的胸部x光片(cxr)的详细和准确分析。该管道结合了整体图像分类、对象检测(边界框)和实例分割(多边形蒙版),以提供不同细节级别的数据分析。为了构建一个高性能的系统,本文对应用于这些任务的不同CNN架构进行了比较。来自两个大型TB数据集(UML-Peru和TBX11K)的图像用于模型的训练和评估。结合两个数据集需要开发一个预处理阶段,包括肺分割和图像增强。我们表明,使用DenseNet、Faster R-CNN和Mask R-CNN组合的cnn的四阶段流水线具有足够强的性能,可以成为结核病筛查的有用工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
eRxNet: A Pipeline of Convolutional Neural Networks for Tuberculosis Screening
Tuberculosis (TB) is a contagious disease affecting millions of people annually worldwide. Treatment of this disease and reduction in local epidemics can be improved markedly by increasing the speed and efficiency of screening and diagnosis. eRxNet is a pipeline of convolutional neural networks designed to provide healthcare professionals with detailed and accurate analysis of chest X-rays (CXRs) for TB screening. The pipeline combines whole image classification, object detection (bounding boxes), and instance segmentation (polygonal masks) to provide data analysis at varying levels of detail. In order to construct a high performing system, a comparison of different CNN architectures applied to these tasks is presented. Images from two large TB datasets, UML-Peru and TBX11K, were used for training and evaluation of the models. Combining the two datasets required the development of a preprocessing stage which includes lung segmentation and image enhancement. We show that the resulting four stage pipeline of CNNs, using a combination of DenseNet, Faster R-CNN, and Mask R-CNN, has sufficiently strong performance to be a useful tool for TB screening.
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