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A Comprehensive Study of Data Augmentation Strategies for Prostate Cancer Detection in Diffusion-Weighted MRI Using Convolutional Neural Networks.

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机构: [1]School of Optoelectronic Science and Engineering,University of Electronic Science and Technology of China,Chengdu, Sichuan, China [2]Institute of Medical Science, University of Toronto, Toronto,ON, Canada [3]Department of Diagnostic Imaging, The Hospital for SickChildren (SickKids), University of Toronto, 555 UniversityAvenue, Toronto, ON, Canada [4]Joint Department of Medical Imaging, Sinai Health System,University Health Network, University of Toronto, Toronto,ON, Canada [5]Lunenfeld-Tanenbaum Research Institute, Sinai HealthSystem, Toronto, ON, Canada [6]Sunnybrook Research Institute, Toronto, ON, Canada [7]Department of Mechanical and Industrial Engineering,University of Toronto, Toronto, ON, Canada
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关键词: Data augmentation CNNs Prostate cancer detection Diffusion-weighted MRI

摘要:
Data augmentation refers to a group of techniques whose goal is to battle limited amount of available data to improve model generalization and push sample distribution toward the true distribution. While different augmentation strategies and their combinations have been investigated for various computer vision tasks in the context of deep learning, a specific work in the domain of medical imaging is rare and to the best of our knowledge, there has been no dedicated work on exploring the effects of various augmentation methods on the performance of deep learning models in prostate cancer detection. In this work, we have statically applied five most frequently used augmentation techniques (random rotation, horizontal flip, vertical flip, random crop, and translation) to prostate diffusion-weighted magnetic resonance imaging training dataset of 217 patients separately and evaluated the effect of each method on the accuracy of prostate cancer detection. The augmentation algorithms were applied independently to each data channel and a shallow as well as a deep convolutional neural network (CNN) was trained on the five augmented sets separately. We used area under receiver operating characteristic (ROC) curve (AUC) to evaluate the performance of the trained CNNs on a separate test set of 95 patients, using a validation set of 102 patients for finetuning. The shallow network outperformed the deep network with the best 2D slice-based AUC of 0.85 obtained by the rotation method.© 2021. Society for Imaging Informatics in Medicine.

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出版当年[2021]版:
大类 | 3 区 工程技术
小类 | 3 区 核医学
最新[2023]版:
大类 | 2 区 工程技术
小类 | 3 区 核医学
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第一作者机构: [1]School of Optoelectronic Science and Engineering,University of Electronic Science and Technology of China,Chengdu, Sichuan, China [2]Institute of Medical Science, University of Toronto, Toronto,ON, Canada [3]Department of Diagnostic Imaging, The Hospital for SickChildren (SickKids), University of Toronto, 555 UniversityAvenue, Toronto, ON, Canada
通讯作者:
通讯机构: [2]Institute of Medical Science, University of Toronto, Toronto,ON, Canada [3]Department of Diagnostic Imaging, The Hospital for SickChildren (SickKids), University of Toronto, 555 UniversityAvenue, Toronto, ON, Canada [7]Department of Mechanical and Industrial Engineering,University of Toronto, Toronto, ON, Canada
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