论文标题
Stypath:用于强大组织学图像分类的样式转移数据增强
StyPath: Style-Transfer Data Augmentation For Robust Histology Image Classification
论文作者
论文摘要
即使对于经验丰富的肾病学家,肾脏移植中抗体介导的排斥反应(AMR)的分类仍然具有挑战性。这部分是因为组织学组织染色分析通常以低观察者一致性和差的可重复性为特征。观察者间分歧的含义的原因之一是(和内部)病理实验室之间组织染色质量的可变性,以及档案切片的逐渐褪色。染色颜色和强度的变化可能会使病理学家的组织评估很难,最终影响了它们描述相关形态特征的能力。能够基于肾脏组织学图像准确预测AMR状态对于改善患者治疗和护理至关重要。我们提出了一条新型的管道,以基于Stypath建立强大的深层神经网络,以基于Stypath,这是一种组织学数据增强技术,该技术利用轻巧的样式转移算法来减少样品特异性偏见。使用单个GTX Titan V GPU和Pytorch以1.84 +-0.03秒生成每个图像,这使其比其他流行的组织学数据增强技术更快。我们使用贝叶斯性能的蒙特卡洛(MC)估计值评估了我们的模型,并产生了不确定性的认知度量,以比较基线和Stypath增强模型。我们还产生了由经验丰富的肾病学家评估的结果的毕业-CAM表示。我们使用这种定性分析来阐明每个模型的假设。我们的结果表明,我们的样式转移增强技术可提高组织学分类的性能(从14.8%降低到11.5%)和概括能力。
The classification of Antibody Mediated Rejection (AMR) in kidney transplant remains challenging even for experienced nephropathologists; this is partly because histological tissue stain analysis is often characterized by low inter-observer agreement and poor reproducibility. One of the implicated causes for inter-observer disagreement is the variability of tissue stain quality between (and within) pathology labs, coupled with the gradual fading of archival sections. Variations in stain colors and intensities can make tissue evaluation difficult for pathologists, ultimately affecting their ability to describe relevant morphological features. Being able to accurately predict the AMR status based on kidney histology images is crucial for improving patient treatment and care. We propose a novel pipeline to build robust deep neural networks for AMR classification based on StyPath, a histological data augmentation technique that leverages a light weight style-transfer algorithm as a means to reduce sample-specific bias. Each image was generated in 1.84 +- 0.03 seconds using a single GTX TITAN V gpu and pytorch, making it faster than other popular histological data augmentation techniques. We evaluated our model using a Monte Carlo (MC) estimate of Bayesian performance and generate an epistemic measure of uncertainty to compare both the baseline and StyPath augmented models. We also generated Grad-CAM representations of the results which were assessed by an experienced nephropathologist; we used this qualitative analysis to elucidate on the assumptions being made by each model. Our results imply that our style-transfer augmentation technique improves histological classification performance (reducing error from 14.8% to 11.5%) and generalization ability.