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Enhancing Recall Using Data Cleaning for Biomedical Big Data

机译:使用数据清理技术对生物医学大数据进行增强召回

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In clinical practice, large amounts of heterogeneous medical data are generated on a daily basis. This data has the potential to be used for biomedical research and as a diagnostic reference for physicians. However, leveraging heterogeneous data for analysis requires integrating it first. Integration process includes a pre-processing data cleaning phase that eliminates inconsistencies and errors originating from each data source. In this paper, we describe a workflow for cleaning heterogeneous biomedical data sources. Our novel data cleaning approach can be applied for replacement of missing text and to improve the number of relevant cases retrieved by search queries. When the threshold for missing category replacement is met, our results show that our method achieves a missing content replacement precision of 85%, which represents an improvement of 18% over the baseline state of our datasets.
机译:在临床实践中,每天都会生成大量的异构医学数据。该数据具有用于生物医学研究和作为医师诊断参考的潜力。但是,利用异构数据进行分析需要首先对其进行集成。集成过程包括预处理数据清除阶段,该阶段可消除源自每个数据源的不一致和错误。在本文中,我们描述了用于清洁异构生物医学数据源的工作流程。我们新颖的数据清除方法可用于替换丢失的文本,并提高通过搜索查询检索到的相关案例的数量。当满足缺失类别替换的阈值时,我们的结果表明,我们的方法实现了85%的缺失内容替换精度,这比数据集的基线状态提高了18%。

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