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TeamHCMUS: Analysis of Clinical Text

机译:TeamHCMUS:临床文本分析

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摘要

We developed a system to participate in shared tasks on the analyzing clinical text. Our system approaches are both machine learning-based and rule-based. We applied the machine learning-based approach for Task 1: disorder identification, and the rule-based approach for Task 2: template slot filling for the disorder. In Task 1, we developed a supervised conditional random fields model that was based on a rich set of features, and used for predicting disorder mentions. In Task 2, we based on the dependency tree to build a rule set. This rule set was extracted from the training data and applied to fill values of disorder attribute types on the test data. The evaluation on the test data showed that our system achieved the F-score of 0.656 (0.685 in case of relaxed score) for Task 1 and the F*WA of 0.576 for Task 2A and the F*WA of 0.671 for Task 2B.
机译:我们开发了一个系统来参与临床文本分析中的共享任务。我们的系统方法既基于机器学习又基于规则。我们将基于机器学习的方法用于任务1:疾病识别,并将基于规则的方法应用于任务2:针对疾病的模板插槽填充。在任务1中,我们开发了一个监督条件随机场模型,该模型基于一组丰富的功能,并用于预测疾病提及。在任务2中,我们基于依赖关系树构建规则集。该规则集是从训练数据中提取的,并用于在测试数据上填充疾病属性类型的值。对测试数据的评估表明,我们的系统对任务1的F得分为0.656(在轻松得分的情况下为0.685),对于任务2A的F * WA为0.576,对于任务2B的F * WA为0.671。

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