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Automatic classification of histopathological diagnoses for building a large scale tissue catalogue

机译:用于组织大规模组织目录的组织病理学诊断的自动分类

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摘要

In this paper an automatic classification system for pathological findings is presented. The starting point in our undertaking was a pathologic tissue collection with about 1.4 million tissue samples described by free text records over 23 years. Exploring knowledge out of this “big data” pool is a challenging task, especially when dealing with unstructured data spanning over many years. The classification is based on an ontology-based term extraction and decision tree build with a manually curated classification system. The information extracting system is based on regular expressions and a text substitution system. We describe the generation of the decision trees by medical experts using a visual editor. Also the evaluation of the classification process with a reference data set is described. We achieved an F-Score of 89,7% for ICD-10 and an F-Score of 94,7% for ICD-O classification. For the information extraction of the tumor staging and receptors we achieved am F-Score ranging from 81,8 to 96,8%.
机译:本文提出了一种针对病理结果的自动分类系统。我们开展这项工作的出发点是进行病理组织收集,在23年的自由文本记录中描述了约140万个组织样本。从“大数据”库中挖掘知识是一项艰巨的任务,尤其是在处理跨越多年的非结构化数据时。该分类基于具有手动策划分类系统的基于本体的术语提取和决策树构建。信息提取系统基于正则表达式和文本替换系统。我们描述了医学专家使用可视化编辑器生成决策树的过程。还描述了使用参考数据集评估分类过程。对于ICD-10,我们的F分数为89.7%,对于ICD-O分类,我们的F分数为94.7%。对于肿瘤分期和受体的信息提取,我们获得的F-分数为81.8至96.8%。

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