Improved prediction of gene expression through integrating cell signalling models with machine learning
Artikel i vetenskaplig tidskrift, 2022

Background: A key problem in bioinformatics is that of predicting gene expression levels. There are two broad approaches: use of mechanistic models that aim to directly simulate the underlying biology, and use of machine learning (ML) to empirically predict expression levels from descriptors of the experiments. There are advantages and disadvantages to both approaches: mechanistic models more directly reflect the underlying biological causation, but do not directly utilize the available empirical data; while ML methods do not fully utilize existing biological knowledge. Results: Here, we investigate overcoming these disadvantages by integrating mechanistic cell signalling models with ML. Our approach to integration is to augment ML with similarity features (attributes) computed from cell signalling models. Seven sets of different similarity feature were generated using graph theory. Each set of features was in turn used to learn multi-target regression models. All the features have significantly improved accuracy over the baseline model - without the similarity features. Finally, the seven multi-target regression models were stacked together to form an overall prediction model that was significantly better than the baseline on 95% of genes on an independent test set. The similarity features enable this stacking model to provide interpretable knowledge about cancer, e.g. the role of ERBB3 in the MCF7 breast cancer cell line. Conclusion: Integrating mechanistic models as graphs helps to both improve the predictive results of machine learning models, and to provide biological knowledge about genes that can help in building state-of-the-art mechanistic models.

Gene expression

Machine learning

Multi-target regression

Författare

Nada Al taweraqi

Taif University

University of Manchester

Ross King

Alan Turing Institute

University of Cambridge

Chalmers, Biologi och bioteknik, Systembiologi

BMC Bioinformatics

14712105 (eISSN)

Vol. 23 1 323

Ämneskategorier

Bioinformatik (beräkningsbiologi)

Bioinformatik och systembiologi

Sannolikhetsteori och statistik

DOI

10.1186/s12859-022-04787-8

PubMed

35933367

Mer information

Senast uppdaterat

2022-08-19