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Decoding multilevel relationships with the human tissue-cell-molecule network. | LitMetric

Decoding multilevel relationships with the human tissue-cell-molecule network.

Brief Bioinform

Institute for TCM-X, MOE Key Laboratory of Bioinformatics, Bioinformatics Division, BNRIST, Department of Automation, Tsinghua University, 100084 Beijing, China.

Published: September 2022

AI Article Synopsis

  • Understanding the biological functions of molecules in human tissues is essential for insights into health and disease, but uncovering these complex relationships can be challenging due to their varied nature.
  • A new framework called Graph Local InfoMax (GLIM) has been developed to analyze a human multilevel network that integrates data from multiple tissues and cell types to identify relationships among disease phenotypes and molecules.
  • GLIM has shown superior performance in predicting disease-related genes and has been successfully applied to uncover the network involved in gastritis and gastric cancer, highlighting its potential for revealing detailed disease mechanisms.

Article Abstract

Understanding the biological functions of molecules in specific human tissues or cell types is crucial for gaining insights into human physiology and disease. To address this issue, it is essential to systematically uncover associations among multilevel elements consisting of disease phenotypes, tissues, cell types and molecules, which could pose a challenge because of their heterogeneity and incompleteness. To address this challenge, we describe a new methodological framework, called Graph Local InfoMax (GLIM), based on a human multilevel network (HMLN) that we established by introducing multiple tissues and cell types on top of molecular networks. GLIM can systematically mine the potential relationships between multilevel elements by embedding the features of the HMLN through contrastive learning. Our simulation results demonstrated that GLIM consistently outperforms other state-of-the-art algorithms in disease gene prediction. Moreover, GLIM was also successfully used to infer cell markers and rewire intercellular and molecular interactions in the context of specific tissues or diseases. As a typical case, the tissue-cell-molecule network underlying gastritis and gastric cancer was first uncovered by GLIM, providing systematic insights into the mechanism underlying the occurrence and development of gastric cancer. Overall, our constructed methodological framework has the potential to systematically uncover complex disease mechanisms and mine high-quality relationships among phenotypical, tissue, cellular and molecular elements.

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Source
http://dx.doi.org/10.1093/bib/bbac170DOI Listing

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