利用生物医学知识图的语义模式预测治疗关系。

Gokhan Bakal, Ramakanth Kavuluru
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引用次数: 8

摘要

为引起人类疾病负担的已知疾病确定新的潜在治疗方案(例如药物和程序)是生物医学研究的一项中心任务。由于所有候选药物都不能通过动物和临床试验进行测试,因此首先尝试体外方法来确定有希望的候选药物。即使在这一步之前,由于最近的进展,计算机或计算方法也被用于确定可行的治疗方案。通常,使用远程监督方法,自然语言处理(NLP)和机器学习用于预测任何给定实体对之间的特定关系。本文报告了基于生物医学知识图的语义模式预测生物医学实体之间治疗关系的初步结果。因此,我们避免明确地使用NLP,尽管知识图本身可能是从NLP提取中构建的。我们的直觉相当直接——参与治疗关系的实体可以使用从科学文献中提取的生物医学知识图中的类似路径模式连接起来。使用来自著名的统一医学语言系统(UMLS)的治疗关系实例数据集,我们通过使用来自知名知识图的图路径模式作为机器学习模型的特征来验证我们的直觉。我们获得了很高的召回率(92%),但准确率从95%下降到可接受的71%,因为我们从均匀的类别分布到负面实例的十倍增加。我们还证明,与长度≤2的模式相比,使用长度≤3的模式训练的模型在f分数上的统计显著提高。我们的研究结果显示了利用知识图进行关系提取的潜力,我们相信这是第一次使用图模式作为识别生物医学关系的特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Predicting Treatment Relations with Semantic Patterns over Biomedical Knowledge Graphs.

Predicting Treatment Relations with Semantic Patterns over Biomedical Knowledge Graphs.

Identifying new potential treatment options (say, medications and procedures) for known medical conditions that cause human disease burden is a central task of biomedical research. Since all candidate drugs cannot be tested with animal and clinical trials, in vitro approaches are first attempted to identify promising candidates. Even before this step, due to recent advances, in silico or computational approaches are also being employed to identify viable treatment options. Generally, natural language processing (NLP) and machine learning are used to predict specific relations between any given pair of entities using the distant supervision approach. In this paper, we report preliminary results on predicting treatment relations between biomedical entities purely based on semantic patterns over biomedical knowledge graphs. As such, we refrain from explicitly using NLP, although the knowledge graphs themselves may be built from NLP extractions. Our intuition is fairly straightforward - entities that participate in a treatment relation may be connected using similar path patterns in biomedical knowledge graphs extracted from scientific literature. Using a dataset of treatment relation instances derived from the well known Unified Medical Language System (UMLS), we verify our intuition by employing graph path patterns from a well known knowledge graph as features in machine learned models. We achieve a high recall (92 %) but precision, however, decreases from 95% to an acceptable 71% as we go from uniform class distribution to a ten fold increase in negative instances. We also demonstrate models trained with patterns of length ≤ 3 result in statistically significant gains in F-score over those trained with patterns of length ≤ 2. Our results show the potential of exploiting knowledge graphs for relation extraction and we believe this is the first effort to employ graph patterns as features for identifying biomedical relations.

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