Inter Disease Relations Based on Human Biomarkers by Network Analysis

Shaikh Farhad Hossain, Ming Huang, N. Ono, S. Kanaya, M. Altaf-Ul-Amin
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Abstract

A biomarker (short for biological marker) is a medical sign of a disease or condition which indicates a normal or abnormal state of a body. The biomarker is a key factor in the analysis of diseases and also for analyzing inter disease relations. In the previous study, we designed and developed a human biomarker (metabolites and proteins) database and the database is currently available online. This work was supported by the Ministry of Education, Japan and NAIST Big Data Project. We have used our previously developed database and collected 486 human biomarkers and their respective diseases. We determined the similarity among NCBI disease classes based on associated biomarker fingerprints. For this purpose, we collected biomarker PubChem IDs and using them downloaded the SDF files in a batch, then with those molecular description files determined their atom pair fingerprints using ChemmineR package. We constructed a network of biomarkers based on Tanimoto similarity between their fingerprints and applied DPclusO algorithm to find clusters consisting of biomarkers with similar chemical structures. We also conducted hierarchical clustering of the biomarkers. We categorized all the diseases in our data into 18 NCBI disease classes. Combining all information, we finally determined inter disease relations based on structural similarity between biomarkers.
基于人类生物标志物的疾病间关系网络分析
生物标志物(简称生物标记)是一种疾病或状况的医学标志,表明身体的正常或异常状态。生物标志物是疾病分析和疾病间关系分析的关键因素。在之前的研究中,我们设计并开发了一个人类生物标志物(代谢物和蛋白质)数据库,该数据库目前已在线提供。这项工作得到了日本文部省和NAIST大数据项目的支持。我们使用之前开发的数据库,收集了486种人类生物标志物及其各自的疾病。我们根据相关的生物标志物指纹图谱确定了NCBI疾病类别之间的相似性。为此,我们收集生物标志物PubChem id,并利用它们批量下载SDF文件,然后利用这些分子描述文件使用ChemmineR软件包确定它们的原子对指纹图谱。我们基于指纹间的谷本相似性构建了生物标记物网络,并应用DPclusO算法寻找化学结构相似的生物标记物聚类。我们还对生物标志物进行了分层聚类。我们将数据中的所有疾病分为18个NCBI疾病类别。结合所有信息,我们最终确定了基于生物标志物之间结构相似性的疾病间关系。
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