MOLIERE: Automatic Biomedical Hypothesis Generation System.

Justin Sybrandt, Michael Shtutman, Ilya Safro
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引用次数: 49

Abstract

Hypothesis generation is becoming a crucial time-saving technique which allows biomedical researchers to quickly discover implicit connections between important concepts. Typically, these systems operate on domain-specific fractions of public medical data. MOLIERE, in contrast, utilizes information from over 24.5 million documents. At the heart of our approach lies a multi-modal and multi-relational network of biomedical objects extracted from several heterogeneous datasets from the National Center for Biotechnology Information (NCBI). These objects include but are not limited to scientific papers, keywords, genes, proteins, diseases, and diagnoses. We model hypotheses using Latent Dirichlet Allocation applied on abstracts found near shortest paths discovered within this network, and demonstrate the effectiveness of MOLIERE by performing hypothesis generation on historical data. Our network, implementation, and resulting data are all publicly available for the broad scientific community.

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自动生物医学假设生成系统。
假设生成正在成为一种重要的节省时间的技术,它使生物医学研究人员能够快速发现重要概念之间的隐含联系。通常,这些系统对公共医疗数据的特定领域部分进行操作。相比之下,莫里哀利用了超过2450万份文件的信息。我们方法的核心是从国家生物技术信息中心(NCBI)的几个异构数据集中提取的生物医学对象的多模态和多关系网络。这些对象包括但不限于科学论文、关键词、基因、蛋白质、疾病和诊断。我们使用潜在狄利克雷分配方法对在该网络中发现的最短路径附近找到的摘要进行建模,并通过对历史数据进行假设生成来证明MOLIERE的有效性。我们的网络、实施和结果数据都是公开的,可供广泛的科学界使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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