从讣告中提取亲属关系以增强基因研究电子健康记录

Kai He, Jialun Wu, Xiaoyong Ma, Chong Zhang, Ming Huang, Chen Li, Lixia Yao
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引用次数: 12

摘要

索赔数据库和电子健康记录数据库通常不捕获亲属关系或家庭关系信息,而这对于基因研究是必不可少的。我们将网络讣告作为一种新的数据来源,提出了一种特殊的命名实体识别和关系提取方案,从网络讣告中提取人名和亲属关系。在10倍交叉验证实验中,基于1809份标注讣告和一种新颖的标注方案,我们的联合神经模型在10个及以上样本的57个亲属关系中实现了宏观平均精度、召回率和F度量分别为72.69%、78.54%和74.93%,微观平均精度、召回率和F度量分别为95.74%、98.25%和96.98%。当使用34个亲属关系和50个或更多的样本进行训练时,模型的性能显著提高。利用讣告中提到的年龄、死亡日期、出生日期和居住地等附加信息,我们预见到为基因研究提供全面准确的亲属信息补充电子病历数据库的前景广阔。
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Extracting Kinship from Obituary to Enhance Electronic Health Records for Genetic Research
Claims database and electronic health records database do not usually capture kinship or family relationship information, which is imperative for genetic research. We identify online obituaries as a new data source and propose a special named entity recognition and relation extraction solution to extract names and kinships from online obituaries. Built on 1,809 annotated obituaries and a novel tagging scheme, our joint neural model achieved macro-averaged precision, recall and F measure of 72.69%, 78.54% and 74.93%, and micro-averaged precision, recall and F measure of 95.74%, 98.25% and 96.98% using 57 kinships with 10 or more examples in a 10-fold cross-validation experiment. The model performance improved dramatically when trained with 34 kinships with 50 or more examples. Leveraging additional information such as age, death date, birth date and residence mentioned by obituaries, we foresee a promising future of supplementing EHR databases with comprehensive and accurate kinship information for genetic research.
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