Author: Haque, M. I. U.; Dubey, A. K.; Hinkle, J. D.
Title: The Effect of Image Resolution on Automated Classification of Chest X-rays Cord-id: h82g85y9 Document date: 2021_8_1
ID: h82g85y9
Snippet: Deep learning models have received much attention lately for their ability to achieve expert-level performance on the accurate automated analysis of chest X-rays. Although publicly available chest X-ray datasets include high resolution images, most models are trained on reduced size images due to limitations on GPU memory and training time. As compute capability continues to advance, it will become feasible to train large convolutional neural networks on high-resolution images. This study is bas
Document: Deep learning models have received much attention lately for their ability to achieve expert-level performance on the accurate automated analysis of chest X-rays. Although publicly available chest X-ray datasets include high resolution images, most models are trained on reduced size images due to limitations on GPU memory and training time. As compute capability continues to advance, it will become feasible to train large convolutional neural networks on high-resolution images. This study is based on the publicly available MIMIC-CXR-JPG dataset, comprising 377,110 high resolution chest X-ray images, and provided with 14 labels to the corresponding free-text radiology reports. We find, interestingly, that tasks that require a large receptive field are better suited to downscaled input images, and we verify this qualitatively by inspecting effective receptive fields and class activation maps of trained models. Finally, we show that stacking an ensemble across resolutions outperforms each individual learner at all input resolutions while providing interpretable scale weights, suggesting that multi-scale features are crucially important to information extraction from high-resolution chest X-rays.
Search related documents:
Co phrase search for related documents- abnormal chest and logistic regression model: 1, 2
- accuracy improve and adam optimizer: 1
- accuracy improve and adaptive histogram: 1
- accuracy improve and adaptive histogram equalization: 1
- accuracy improve and local feature: 1
- accuracy improve and localization map: 1
- accuracy improve and logistic regression model: 1, 2
Co phrase search for related documents, hyperlinks ordered by date