Predicting multicellular function through multi-layer tissue networks

07/14/2017
by   Marinka Zitnik, et al.
0

Motivation: Understanding functions of proteins in specific human tissues is essential for insights into disease diagnostics and therapeutics, yet prediction of tissue-specific cellular function remains a critical challenge for biomedicine. Results: Here we present OhmNet, a hierarchy-aware unsupervised node feature learning approach for multi-layer networks. We build a multi-layer network, where each layer represents molecular interactions in a different human tissue. OhmNet then automatically learns a mapping of proteins, represented as nodes, to a neural embedding based low-dimensional space of features. OhmNet encourages sharing of similar features among proteins with similar network neighborhoods and among proteins activated in similar tissues. The algorithm generalizes prior work, which generally ignores relationships between tissues, by modeling tissue organization with a rich multiscale tissue hierarchy. We use OhmNet to study multicellular function in a multi-layer protein interaction network of 107 human tissues. In 48 tissues with known tissue-specific cellular functions, OhmNet provides more accurate predictions of cellular function than alternative approaches, and also generates more accurate hypotheses about tissue-specific protein actions. We show that taking into account the tissue hierarchy leads to improved predictive power. Remarkably, we also demonstrate that it is possible to leverage the tissue hierarchy in order to effectively transfer cellular functions to a functionally uncharacterized tissue. Overall, OhmNet moves from flat networks to multiscale models able to predict a range of phenotypes spanning cellular subsystems

READ FULL TEXT

page 1

page 9

research
06/04/2021

Deep Contextual Learners for Protein Networks

Spatial context is central to understanding health and disease. Yet refe...
research
08/21/2023

Switched auxiliary loss for robust training of transformer models for histopathological image segmentation

Functional tissue Units (FTUs) are cell population neighborhoods local t...
research
06/13/2018

Deep Multiscale Model Learning

The objective of this paper is to design novel multi-layer neural networ...
research
10/28/2009

Artificial Immune Tissue using Self-Orgamizing Networks

As introduced by Bentley et al. (2005), artificial immune systems (AIS) ...
research
02/01/2022

A Graph Based Neural Network Approach to Immune Profiling of Multiplexed Tissue Samples

Multiplexed immunofluorescence provides an unprecedented opportunity for...
research
06/12/2023

Connecting continuum poroelasticity with discrete synthetic vascular trees for modeling liver tissue

Computational simulations have the potential to assist in liver resectio...
research
08/17/2022

Image Varifolds on Meshes for Mapping Spatial Transcriptomics

Advances in the development of largely automated microscopy methods such...

Please sign up or login with your details

Forgot password? Click here to reset