HEMnet: Integration of Electronic Medical Records with Molecular Interaction Networks and Domain Knowledge for Survival Analysis

Edward W. Huang, Sheng Wang, Bingxue Li, Ran Zhang, Baoyan Liu, Runshun Zhang, Jie Liu, Xuezhong Zhou, Hongsheng Lin, ChengXiang Zhai
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引用次数: 3

Abstract

The continual growth of electronic medical record (EMR) databases has paved the way for many data mining applications, including the discovery of novel disease-drug associations and the prediction of patient survival rates. However, these tasks are hindered because EMRs are usually segmented or incomplete. EMR analysis is further limited by the overabundance of medical term synonyms and morphologies, which causes existing techniques to mismatch records containing semantically similar but lexically distinct terms. Current solutions fill in missing values with techniques that tend to introduce noise rather than reduce it. In this paper, we propose to simultaneously infer missing data and solve semantic mismatching in EMRs by first integrating EMR data with molecular interaction networks and domain knowledge to build the HEMnet, a heterogeneous medical information network. We then project this network onto a low-dimensional space, and group entities in the network according to their relative distances. Lastly, we use this entity distance information to enrich the original EMRs. We evaluate the effectiveness of this method according to its ability to separate patients with dissimilar survival functions. We show that our method can obtain significant (p-value < 0.01) results for each cancer subtype in a lung cancer dataset, while the baselines cannot.
HEMnet:电子医疗记录与分子相互作用网络和生存分析领域知识的集成
电子医疗记录(EMR)数据库的持续增长为许多数据挖掘应用铺平了道路,包括发现新的疾病-药物关联和预测患者存活率。然而,这些任务受到阻碍,因为电子病历通常是分段的或不完整的。EMR分析进一步受到医学术语同义词和形态学过多的限制,这导致现有技术无法匹配包含语义相似但词汇不同的术语的记录。目前的解决方案是用引入噪声而不是减少噪声的技术来填补缺失值。本文提出将EMR数据与分子相互作用网络和领域知识相结合,构建异构医疗信息网络HEMnet,同时推断缺失数据和解决语义不匹配问题。然后我们将这个网络投射到一个低维空间,并根据它们的相对距离对网络中的实体进行分组。最后,我们利用这些实体距离信息来丰富原始电子病历。我们根据其分离具有不同生存功能的患者的能力来评估这种方法的有效性。我们表明,我们的方法可以对肺癌数据集中的每个癌症亚型获得显著(p值< 0.01)的结果,而基线则不能。
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