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Training Medical Image Analysis Systems like Radiologists

机译:培训放射线医师等医学图像分析系统

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The training of medical image analysis systems using machine learning approaches follows a common script: collect and annotate a large dataset, train the classifier on the training set, and test it on a hold-out test set. This process bears no direct resemblance with radiologist training, which is based on solving a series of tasks of increasing difficulty, where each task involves the use of significantly smaller datasets than those used in machine learning. In this paper, we propose a novel training approach inspired by how radiologists are trained. In particular, we explore the use of meta-training that models a classifier based on a series of tasks. Tasks are selected using teacher-student curriculum learning, where each task consists of simple classification problems containing small training sets. We hypothesize that our proposed meta-training approach can be used to pre-train medical image analysis models. This hypothesis is tested on the automatic breast screening classification from DCE-MRI trained with weakly labeled datasets. The classification performance achieved by our approach is shown to be the best in the field for that application, compared to state of art baseline approaches: DenseNet, multiple instance learning and multi-task learning.
机译:使用机器学习方法的医学图像分析系统的训练遵循一个通用的脚本:收集并注释大型数据集,在训练集上训练分类器,并在保留测试集上对其进行测试。此过程与放射科医生的培训没有直接的相似之处,后者是基于解决一系列难度越来越大的任务的,其中每个任务都涉及使用比机器学习中使用的数据集少得多的数据集。在本文中,我们提出了一种新颖的培训方法,该方法受放射科医生的培训方式启发。特别是,我们探索了使用元训练来对基于一系列任务的分类器进行建模的方法。任务是使用师生课程学习来选择的,其中每个任务都由简单的分类问题组成,其中包含小的训练集。我们假设我们提出的元训练方法可用于预训练医学图像分析模型。该假设已在DCE-MRI弱标签数据集训练的自动乳房筛查分类上进行了检验。与最先进的基准方法(DenseNet,多实例学习和多任务学习)相比,我们的方法实现的分类性能在该应用程序中被证明是最佳的。

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