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Automated Tumor Proportion Scoring for Assessment of PD-L1 Expression Based on Multi-Stage Ensemble Strategy

机译:基于多阶段集合策略的PD-L1表达评估自动肿瘤比例

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Tumor Programmed Death-Ligand 1 (PD-L1) expression is a crucial biomarker to identify tumor patients who may have an enhanced response to anti-Programmed Death-1 (PD-1)/PD-L1 treatment. Tumor proportion score (TPS) is an indicator to describe the frequency of PD-L1 expression and is essential for selecting from different tumor therapies. In this paper, we propose a novel deep learning-based framework for automated tumor proportion scoring. Specifically, we introduce the clinical diagnosis process to our framework. The framework consists of a cellular localization network (C-Net) and a regional segmentation network (R-Net). The C-Net is dedicated to classifying cells and generating TPS, and R-Net learns to distinguish tumor regions from their normal counterparts. The predictions made by R-Net can, in turn, be used to refine the TPS. We have consolidated the visual TPS from multiple patholo-gists for clinical verification. Concordance measures computed on a set of WSI provide evidence that our method matches visual scoring from multiple pathologists (MAE = 7.405, RMSE = 11.25, PCCs = 0.9305, SRCC = 0.967).
机译:肿瘤编程死亡 - 配体1(PD-L1)表达是一个关键的生物标志物,以鉴定可能对抗程序死亡-1(PD-1)/ PD-L1治疗有增强响应的肿瘤患者。肿瘤比例评分(TPS)是描述PD-L1表达的频率的指示剂,对于从不同的肿瘤疗法中选择来说是必不可少的。在本文中,我们提出了一种新的自动肿瘤比例评分的新型深度学习框架。具体而言,我们向我们的框架介绍了临床诊断过程。该框架包括蜂窝定位网络(C-Net)和区域分割网络(R-NET)。 C-Net专用于对细胞进行分类并产生TP,R-Net学会与其正常的同行分辨肿瘤区域。 R-NET制作的预测又可以用于改进TPS。我们已经将Visual TPS从多个Patholo-GIST合并进行临床验证。在一组WSI上计算的一系列一致措施提供了证据表明我们的方法与多个病理学家的视觉评分相匹配(MAE = 7.405,RMSE = 11.25,PCCS = 0.9305,SRCC = 0.967)。

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