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Machine Learning on Biomedical Images: Interactive Learning, Transfer Learning, Class Imbalance, and Beyond

机译:生物医学图像上的机器学习:交互式学习,转移学习,班级失衡及其他

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In this paper, we highlight three issues that limit performance of machine learning on biomedical images, and tackle them through 3 case studies: 1) Interactive Machine Learning (IML): we show how IML can drastically improve exploration time and quality of direct volume rendering. 2) transfer learning: we show how transfer learning along with intelligent pre-processing can result in better Alzheimer's diagnosis using a much smaller training set 3) data imbalance: we show how our novel focal Tversky loss function can provide better segmentation results taking into account the imbalanced nature of segmentation datasets. The case studies are accompanied by in-depth analytical discussion of results with possible future directions.
机译:在本文中,我们重点介绍了三个限制生物医学图像上机器学习性能的问题,并通过3个案例研究解决了这些问题:1)交互式机器学习(IML):我们展示了IML如何极大地改善探索时间和直接体积渲染的质量。 2)转移学习:我们展示了转移学习与智能预处理一起如何使用更小的训练集就能更好地解决阿尔茨海默氏症3)数据失衡:我们展示了我们新的聚焦Tversky损失函数如何在考虑到因素的情况下提供更好的分割结果细分数据集的不平衡本质。案例研究伴随着对结果的深入分析讨论,并可能提出未来的方向。

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