基于看不见区域的鲁棒白质高强度分割。

Xingchen Zhao, Anthony Sicilia, Davneet S Minhas, Erin E O'Connor, Howard J Aizenstein, William E Klunk, Dana L Tudorascu, Seong Jae Hwang
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引用次数: 7

摘要

典型的机器学习框架严重依赖于一个基本假设,即训练和测试数据遵循相同的分布。在越来越多地开始从多个地点或扫描仪获取数据集的医学成像中,由于地点或扫描仪相关因素引起的系统变异性,这种相同的分布假设往往不成立。因此,我们不能简单地期望在给定数据集上训练的模型始终工作良好,或者泛化来自另一个分布的数据集。在这项工作中,我们解决了这个问题,研究了机器学习模型在未见过的医学成像数据中的应用。具体地说,我们考虑域泛化(DG)的挑战性案例,我们在没有任何关于测试分布的知识的情况下训练模型。也就是说,我们对来自一组分布(源)的样本进行训练,并对来自一个新的、不可见的分布(目标)的样本进行测试。我们专注于使用多站点WMH分割挑战数据集和我们的本地内部数据集进行白质高强度(WMH)预测任务。我们确定了两种机械不同的DG方法,即领域对抗性学习和混合,如何在理论上协同作用。然后,我们展示了在未知目标域上WMH预测的显著改进。
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ROBUST WHITE MATTER HYPERINTENSITY SEGMENTATION ON UNSEEN DOMAIN.

Typical machine learning frameworks heavily rely on an underlying assumption that training and test data follow the same distribution. In medical imaging which increasingly begun acquiring datasets from multiple sites or scanners, this identical distribution assumption often fails to hold due to systematic variability induced by site or scanner dependent factors. Therefore, we cannot simply expect a model trained on a given dataset to consistently work well, or generalize, on a dataset from another distribution. In this work, we address this problem, investigating the application of machine learning models to unseen medical imaging data. Specifically, we consider the challenging case of Domain Generalization (DG) where we train a model without any knowledge about the testing distribution. That is, we train on samples from a set of distributions (sources) and test on samples from a new, unseen distribution (target). We focus on the task of white matter hyperintensity (WMH) prediction using the multi-site WMH Segmentation Challenge dataset and our local in-house dataset. We identify how two mechanically distinct DG approaches, namely domain adversarial learning and mix-up, have theoretical synergy. Then, we show drastic improvements of WMH prediction on an unseen target domain.

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