基于胸部x射线图像的结核病检测的深度学习模型

Quang H. Nguyen, Binh P. Nguyen, S. D. Dao, Balagopal Unnikrishnan, R. Dhingra, Savitha Rani Ravichandran, Sravani Satpathy, Nirmal Raja Palaparthi, M. Chua
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引用次数: 37

摘要

本文探讨了迁移学习在医学影像学肺结核检测中的应用。在使用ImageNet权重的常规方法上,我们展示了一种改进的迁移学习方法。我们还发现来自ImageNet权重的低级特征对于x射线等模式的成像任务没有用处,并提出了一种通过在多类别多标签场景中训练模型来获得低级特征的新方法。与从随机初始化设置进行训练相比,这可以提高结核病分类的性能。换句话说,我们提出了一种在数据受限的环境(如医疗保健部门)中进行训练的更好方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Models for Tuberculosis Detection from Chest X-ray Images
This paper explores the usefulness of transfer learning on medical imaging for tuberculosis detection. We show an improved method for transfer learning over the regular method of using ImageNet weights. We also discover that the low-level features from ImageNet weights are not useful for imaging tasks for modalities like X-rays and also propose a new method for obtaining low level features by training the models in a multiclass multilabel scenario. This results in an improved performance in the classification of tuberculosis as opposed to training from a randomly initialized settings. In other words, we have proposed a better way for training in a data constrained setting such as the healthcare sector.
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