Assigning ICD-O-3 Codes to Pathology Reports using Neural Multi-Task Training with Hierarchical Regularization.

Anthony Rios, Eric B Durbin, Isaac Hands, Ramakanth Kavuluru
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引用次数: 5

Abstract

Tracking population-level cancer information is essential for researchers, clinicians, policymakers, and the public. Unfortunately, much of the information is stored as unstructured data in pathology reports. Thus, too process the information, we require either automated extraction techniques or manual curation. Moreover, many of the cancer-related concepts appear infrequently in real-world training datasets. Automated extraction is difficult because of the limited data. This study introduces a novel technique that incorporates structured expert knowledge to improve histology and topography code classification models. Using pathology reports collected from the Kentucky Cancer Registry, we introduce a novel multi-task training approach with hierarchical regularization that incorporates structured information about the International Classification of Diseases for Oncology, 3rd Edition classes to improve predictive performance. Overall, we find that our method improves both micro and macro F1. For macro F1, we achieve up to a 6% absolute improvement for topography codes and up to 4% absolute improvement for histology codes.

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使用具有层次规则化的神经多任务训练将ICD-O-3代码分配给病理学报告。
追踪人群层面的癌症信息对研究人员、临床医生、政策制定者和公众至关重要。不幸的是,大部分信息都作为非结构化数据存储在病理学报告中。因此,在处理信息时,我们需要自动提取技术或手动管理。此外,许多与癌症相关的概念很少出现在现实世界的训练数据集中。由于数据有限,自动提取很困难。本研究介绍了一种新技术,该技术结合了结构化的专家知识来改进组织学和地形图代码分类模型。利用从肯塔基州癌症注册中心收集的病理学报告,我们引入了一种具有分层规则化的新的多任务训练方法,该方法结合了关于国际肿瘤疾病分类第三版课程的结构化信息,以提高预测性能。总的来说,我们发现我们的方法改进了微观和宏观F1。对于宏F1,我们实现了地形代码高达6%的绝对改进和组织学代码高达4%的绝对改进。
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