Since the introduction of digital and computational pathology as a field, one of the major problems in the clinical application of algorithms has been the struggle to generalize well to examples outside the distribution of the training data. Existing work to address this in both pathology and natural images has focused almost exclusively on classification tasks. We explore and evaluate the robustness of the 7 best performing nuclear segmentation and classification models from the largest computational pathology challenge for this problem to date, the CoNIC challenge. We demonstrate that existing state-of-the-art (SoTA) models are robust towards compression artifacts but suffer substantial performance reduction when subjected to shifts in the color domain. We find that using stain normalization to address the domain shift problem can be detrimental to the model performance. On the other hand, neural style transfer is more consistent in improving test performance when presented with large color variations in the wild.
翻译:自将数字和计算病理学作为一个领域以来,在临床应用算法方面的主要问题之一是努力将培训数据分布之外的例子加以概括,在病理学和自然图像方面处理此问题的现有工作几乎完全集中于分类任务。我们探讨和评估迄今为止最大的计算病理学挑战(CONIC挑战)中7个最佳核分解和分类模型的稳健性。我们证明,现有最先进的模型对压缩工艺品具有很强的活力,但在受色域变化影响时,其性能会大大降低。我们发现,使用污点正常化来解决域转移问题可能会损害模型性能。另一方面,神经风格的转换在以野外的颜色变化表现为特点时,在改进测试性能方面更加一致。