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Uncertainty Estimates as Data Selection Criteria to Boost Omni-Supervised Learning

机译:不确定性估计为提升全新监督学习的数据选择标准

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For many medical applications, large quantities of imaging data are routinely obtained but it can be difficult and time-consuming to obtain high-quality labels for that data. We propose a novel uncertainty-based method to improve the performance of segmentation networks when limited manual labels are available in a large dataset. We estimate segmentation uncertainty on unlabeled data using test-time augmentation and test-time dropout. We then use uncertainty metrics to select unlabeled samples for further training in a semi-supervised learning framework. Compared to random data selection, our method gives a significant boost in Dice coefficient for semi-supervised volume segmentation on the EADC-ADNI/HARP MRI dataset and the large-scale INTERGROWTH-21st ultrasound dataset. Our results show a greater performance boost on the ultrasound dataset, suggesting that our method is most useful with data of lower or more variable quality.
机译:对于许多医学应用,通常获得大量的成像数据,但是对于该数据获得高质量标签可能是困难和耗时的。我们提出了一种新颖的基于不确定性的方法,以改善有限手动标签在大型数据集中提供有限手动标签时进行分割网络的性能。我们使用测试时间增强和测试时间辍学来估计未标记数据的分割不确定性。然后,我们使用不确定性指标来选择未标记的样本,以便在半监督的学习框架中进一步培训。与随机数据选择相比,我们的方法在EADC-ADNI / HARP MRI数据集和大规模融合21ST超声数据集中提供了对半监控卷分割的骰子系数的显着提升。我们的结果在超声数据集中显示了更大的性能提升,表明我们的方法最有用,对较低或更具可变质量的数据最有用。

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