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Leveraging Deep Representations of Radiology Reports in Survival Analysis for Predicting Heart Failure Patient Mortality

机译:利用放射学报告的深度表示,以预测心力衰竭患者死亡率的存活分析

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Utilizing clinical texts in survival analysis is difficult because they are largely unstructured. Current automatic extraction models fail to capture textual information comprehensively since their labels are limited in scope. Furthermore, they typically require a large amount of data and high-quality expert annotations for training. In this work, we present a novel method of using BERT-based hidden layer representations of clinical texts as covariates for proportional hazards models to predict patient survival outcomes. We show that hidden layers yield notably more accurate predictions than predefined features, outperforming the previous baseline model by 5.7% on average across C-index and time-dependent AUC.
机译:利用生存分析中的临床文本很难,因为它们在很大程度上是非结构化的。 由于其标签范围有限,因此目前的自动提取模型无法全面捕获文本信息。 此外,它们通常需要大量的数据和高质量的专家注释进行培训。 在这项工作中,我们提出了一种新的方法,使用基于BERT的隐藏层表示作为比例危害模型的协变量,以预测患者存活结果。 我们表明隐藏的层比预定义的特征产生了显着的预测,比C-Index和时间依赖的AUC平均优于先前的基线模型比例为5.7%。

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