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Graph-based signal integration for high-throughput phenotyping

机译:基于图的信号集成实现高通量表型

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BackgroundElectronic Health Records aggregated in Clinical Data Warehouses (CDWs) promise to revolutionize Comparative Effectiveness Research and suggest new avenues of research. However, the effectiveness of CDWs is diminished by the lack of properly labeled data. We present a novel approach that integrates knowledge from the CDW, the biomedical literature, and the Unified Medical Language System (UMLS) to perform high-throughput phenotyping. In this paper, we automatically construct a graphical knowledge model and then use it to phenotype breast cancer patients. We compare the performance of this approach to using MetaMap when labeling records.ResultsMetaMap's overall accuracy at identifying breast cancer patients was 51.1% (n=428); recall=85.4%, precision=26.2%, and F1=40.1%. Our unsupervised graph-based high-throughput phenotyping had accuracy of 84.1%; recall=46.3%, precision=61.2%, and F1=52.8%.ConclusionsWe conclude that our approach is a promising alternative for unsupervised high-throughput phenotyping.
机译:背景技术临床数据仓库(CDW)中汇总的电子健康记录有望彻底改变比较效果研究,并为研究提供新的途径。但是,由于缺少正确标记的数据,CDW的有效性降低了。我们提出了一种新颖的方法,该方法整合了来自CDW,生物医学文献和统一医学语言系统(UMLS)的知识,以执行高通量表型分析。在本文中,我们将自动构建图形化知识模型,然后将其用于表型乳腺癌患者。我们将这种方法与记录记录时使用MetaMap的性能进行了比较。结果MetaMap识别乳腺癌患者的总体准确率为51.1%(n = 428);召回率为85.4%,精度为26.2%,F 1 = 40.1%。我们基于无监督图的高通量表型的准确度为84.1%;召回率= 46.3%,精度= 61.2%,F 1 = 52.8%。结论我们得出结论,我们的方法是无监督高通量表型的一种有前途的替代方法。

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