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Reverse classification accuracy: predicting segmentation performance in the absence of ground truth

机译:反向分类准确性:在没有基本事实的情况下预测分段性能

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摘要

When integrating computational tools such as au- tomatic segmentation into clinical practice, it is of utmost importance to be able to assess the level of accuracy on new data, and in particular, to detect when an automatic method fails. However, this is difficult to achieve due to absence of ground truth. Segmentation accuracy on clinical data might be different from what is found through cross-validation because validation data is often used during incremental method development, which can lead to overfitting and unrealistic performance expectations. Before deployment, performance is quantified using different metrics, for which the predicted segmentation is compared to a reference segmentation, often obtained manually by an expert. But little is known about the real performance after deployment when a reference is unavailable. In this paper, we introduce the concept of reverse classification accuracy (RCA) as a framework for predicting the performance of a segmentation method on new data. In RCA we take the predicted segmentation from a new image to train a reverse classifier which is evaluated on a set of reference images with available ground truth. The hypothesis is that if the predicted segmentation is of good quality, then the reverse classifier will perform well on at least some of the reference images. We validate our approach on multi-organ segmentation with different classifiers and segmentation methods. Our results indicate that it is indeed possible to predict the quality of individual segmentations, in the absence of ground truth. Thus, RCA is ideal for integration into automatic processing pipelines in clinical routine and as part of large-scale image analysis studies.
机译:在将自动分割等计算工具集成到临床实践中时,最重要的是能够评估新数据的准确性,尤其是检测自动方法何时失败。但是,由于缺乏地面真理,很难做到这一点。临床数据上的细分准确性可能与通过交叉验证发现的准确性有所不同,因为在增量方法开发过程中经常使用验证数据,这可能导致过拟合和不切实际的性能期望。在部署之前,使用不同的指标对性能进行量化,为此,将预测的细分与参考细分(通常由专家手动获取)进行比较。但是,当参考不可用时,对部署后的实际性能知之甚少。在本文中,我们介绍了反向分类准确性(RCA)的概念,作为预测新数据分割方法性能的框架。在RCA中,我们将从新图像中进行预测分割,以训练反向分类器,该分类器是在具有可用地面真实性的一组参考图像上进行评估的。假设是,如果预测的分割质量良好,则反向分类器将在至少一些参考图像上表现良好。我们使用不同的分类器和分割方法验证了我们在多器官分割中的方法。我们的结果表明,在没有事实依据的情况下,确实有可能预测单个细分的质量。因此,RCA非常适合在临床常规程序中以及作为大规模图像分析研究的一部分集成到自动处理管道中。

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