Lacking mechanistic disease definitions and corresponding association data hamper progress in network medicine and beyond

Lacking mechanistic disease definitions and corresponding association data hamper progress in network medicine and beyond

Abstract

A long-term objective of network medicine is to replace our current, mainly phenotype-based disease definitions by subtypes of health conditions corresponding to distinct pathomechanisms. For this, molecular and health data are modeled as networks and are mined for pathomechanisms. However, many such studies rely on large-scale disease association data where diseases are annotated using the very phenotype-based disease definitions the network medicine field aims to overcome. This raises the question to which extent the biases mechanistically inadequate disease annotations introduce in disease association data distort the results of studies which use such data for pathomechanism mining. We address this question using global- and local-scale analyses of networks constructed from disease association data of various types. Our results indicate that large-scale disease association data should be used with care for pathomechanism mining and that analyses of such data should be accompanied by close-up analyses of molecular data for well-characterized patient cohorts.

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Authors
  • Sadegh, Sepideh
  • Skelton, James
  • Anastasi, Elisa
  • Anil, Wipat
  • Möller, Anna
  • Blumenthal, David B.
  • Kriege, Nils M.
  • Kronberg, Jaanika
  • Haller, Toomas
  • Kacprowski, Tim
  • Baumbach, Jan
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Shortfacts
Category
Journal Paper
Divisions
Data Mining and Machine Learning
Journal or Publication Title
Nature Communications
ISSN
2041-1723
Number
1662
Volume
14
Date
25 March 2023
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