Optimisation Models for Pathway Activity Inference in Cancer

Author:

Chen Yongnan1,Liu Songsong2ORCID,Papageorgiou Lazaros G.3ORCID,Theofilatos Konstantinos4ORCID,Tsoka Sophia1

Affiliation:

1. Department of Informatics, Faculty of Natural, Mathematical and Engineering Sciences, King’s College London, Bush House, London WC2B 4BG, UK

2. School of Management, Harbin Institute of Technology, Harbin 150001, China

3. The Sargent Centre for Process Systems Engineering, Department of Chemical Engineering, University College London, Torrington Place, London WC1E 7JE, UK

4. King’s College London British Heart Foundation Centre, School of Cardiovascular and Metabolic Medicine and Sciences, London SE1 7EH, UK

Abstract

Background: With advances in high-throughput technologies, there has been an enormous increase in data related to profiling the activity of molecules in disease. While such data provide more comprehensive information on cellular actions, their large volume and complexity pose difficulty in accurate classification of disease phenotypes. Therefore, novel modelling methods that can improve accuracy while offering interpretable means of analysis are required. Biological pathways can be used to incorporate a priori knowledge of biological interactions to decrease data dimensionality and increase the biological interpretability of machine learning models. Methodology: A mathematical optimisation model is proposed for pathway activity inference towards precise disease phenotype prediction and is applied to RNA-Seq datasets. The model is based on mixed-integer linear programming (MILP) mathematical optimisation principles and infers pathway activity as the linear combination of pathway member gene expression, multiplying expression values with model-determined gene weights that are optimised to maximise discrimination of phenotype classes and minimise incorrect sample allocation. Results: The model is evaluated on the transcriptome of breast and colorectal cancer, and exhibits solution results of good optimality as well as good prediction performance on related cancer subtypes. Two baseline pathway activity inference methods and three advanced methods are used for comparison. Sample prediction accuracy, robustness against noise expression data, and survival analysis suggest competitive prediction performance of our model while providing interpretability and insight on key pathways and genes. Overall, our work demonstrates that the flexible nature of mathematical programming lends itself well to developing efficient computational strategies for pathway activity inference and disease subtype prediction.

Funder

Henry Lester Trust

National Natural Science Foundation of China

Engineering and Physical Sciences Research Council

Publisher

MDPI AG

Subject

Cancer Research,Oncology

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