MEDLINE和患者数据之间的疾病合并症联系

Tejaswi Rohit Anupindi, P. Srinivasan
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引用次数: 2

摘要

本文对MEDLINE和患者数据之间的一类推断链接进行了分析。两个数据集中的记录通过疾病关联对联系起来,以强调疾病合并症。在MEDLINE中,疾病对是通过挖掘特定模式提取的,例如MeSH疾病项1/病因学和MeSH疾病项2/并发症。我们的模式集从2017年下载的MEDLINE中提取了701780对,其中包含近2700万条记录。从另一项研究中获得的患者数据有6088553对疾病共发生对。我们推断连接的方法包括将ICD9代码和MeSH术语映射到UMLS概念id,然后采用精确和近似匹配策略。近似匹配策略涉及到UMLS中存在的语义关系。我们能够将使用5位ICD9编码的2,478,366对患者疾病对连接到MEDLINE对(从而连接到相应的文档),并将536,685对MEDLINE疾病对连接到患者疾病对(从而隐式连接到相应的患者记录)。虽然这些数字很大,但比例在43%到77%之间。这表明,将这两个数据集连接起来的其他方法将是有趣的。此外,在许多选择中,共病是一个特殊的观点。我们认为,研究生物医学数据集之间的推断联系——特别是核心数据集之间的联系——在丰富生物医学知识网络方面具有重要价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Disease Comorbidity Linkages between MEDLINE and Patient Data
This paper presents an analysis of a class of inferred links between MEDLINE and patient data. Records in the two datasets are linked via pairs of disease associations with a view to emphasizing disease comorbidities. In MEDLINE disease pairs are extracted by mining specific patterns such as MeSH disease term 1/etiology and MeSH disease term 2/complications. 701,780 pairs are extracted by our pattern set from a 2017 download of MEDLINE with close to 27 million records. The patient data, obtained from another study, has 6,088,553 disease cooccurrence pairs. Our methodology to infer connections involves mapping ICD9 codes and MeSH terms to UMLS concept ids followed by both exact and approximate matching strategies. The approximate matching strategy involves semantic relations present in the UMLS. We are able to connect 2,478,366 patient disease pairs encoded using 5 digit ICD9 codes to MEDLINE pairs (and therefore to the corresponding documents) and 536,685 MEDLINE disease pairs onto the patient disease pairs (and therefore implicitly to the corresponding patient records). While these numbers are large the percentages are between 43% and 77%. This indicates that other approaches for linking the two datasets would be of interest. Moreover, comorbidity is a particular viewpoint among many options. We suggest that the study of inferred links between biomedical datasets - especially between core datasets - is of great value in terms of enriching the biomedical web of knowledge.
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