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首页> 外文期刊>EBioMedicine >Artificial intelligence quantified tumour-stroma ratio is an independent predictor for overall survival in resectable colorectal cancer
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Artificial intelligence quantified tumour-stroma ratio is an independent predictor for overall survival in resectable colorectal cancer

机译:量化智能量化肿瘤 - 基质比是可重新分解癌中总存活的独立预测因子

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Background An artificial intelligence method could accelerate the clinical implementation of tumour-stroma ratio (TSR), which has prognostic relevance in colorectal cancer (CRC). We, therefore, developed a deep learning model for the fully automated TSR quantification on routine haematoxylin and eosin (HE) stained whole-slide images (WSI) and further investigated its prognostic validity for patient stratification. Methods We trained a convolutional neural network (CNN) model using transfer learning, with its nine-class tissue classification performance evaluated in two independent test sets. Patch-level segmentation on WSI HE slides was performed using the model, with TSR subsequently derived. A discovery (N=499) and validation cohort (N=315) were used to evaluate the prognostic value of TSR for overall survival (OS). Findings The CNN-quantified TSR was a prognostic factor, independently of other clinicopathologic characteristics, with stroma-high associated with reduced OS in the discovery (HR 1.72, 95% CI 1.24-2.37, P=0.001) and validation cohort (2.08, 1.26-3.42, 0.004). Integrating TSR into a Cox model with other risk factors showed improved prognostic capability. Interpretation We developed a deep learning model to quantify TSR based on histologic WSI of CRC and demonstrated its prognostic validity for patient stratification for OS in two independent CRC patient cohorts. This fully automatic approach allows for the objective and standardised application while reducing pathologists' workload. Thus, it can potentially be of significant aid in clinical prognosis prediction and decision-making. Funding National Key Research and Development Program of China, National Science Fund for Distinguished Young Scholar, and National Science Foundation for Young Scientists of China.
机译:背景技术人工智能方法可以加速肿瘤 - 基质比(TSR)的临床实施,其在结肠直肠癌(CRC)中具有预后相关性。因此,我们为常规血清毒素和曙红(HE)染色的全载图像(WSI)进行了全自动TSR定量的深度学习模型,并进一步研究了其对患者分层的预后有效性。方法我们培训了使用转移学习训练了卷积神经网络(CNN)模型,其九类组织分类性能在两个独立的测试集中进行了评估。使用该模型执行WSI的修补程序级分段,使用该模型执行TSR。发现(n = 499)和验证队列(n = 315)用于评估TSR的全部存活率(OS)的预后值。发现CNN定量的TSR是预后因子,独立于其他临床病理特征,基质高与诊断中减少的OS相关(HR 1.72,95%CI 1.24-2.37,P = 0.001)和验证队列(2.08,1.26 -3.42,0004)。将TSR与其他风险因素集成到COX模型中显示出改善的预后能力。解释我们开发了一种深入学习模型,以基于CRC的组织学WSI量化TSR,并证明了两种独立CRC患者队列中OS对患者分层的预后有效性。这种全自动方法允许客观和标准化的应用,同时减少病理学家的工作量。因此,它可能具有重要的援助临床预测预测和决策。资助中国国家重点研究与发展方案,国家科学基金,为中国的青年科学家国家科学基金会。

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