Identification of Monotonically Classifying Pairs of Genes for Ordinal Disease Outcomes
Identification of Monotonically Classifying Pairs of Genes for Ordinal Disease Outcomes
Fourquet, O.; Afenteva, D.; Zhang, K.; Hautaniemi, S.; Krejca, M.; Doerr, C.; Schwikowski, B.
AbstractIn this study, we extend an existing classification method for identifying pairs of genes whose joint expression is associated with binary outcomes to ordinal multi-class outcomes, such as overall survival or disease progression. Our approach is motivated by the need for interpretable classifiers that can provide insights into the underlying biological mechanisms. It can be easily adapted to different research questions, such as identifying gene pair signatures or functional enrichment. We demonstrate that our method is comparable to state-of-the-art classification approaches in terms of performance, while offering the benefit of higher interpretability and adaptability to solve different research questions. Our evaluation on two real-world use cases in glioblastoma and high-grade serous ovarian carcinoma shows that our approach can effectively predict ordinal outcomes and provide novel biological insights. The code is available at https://github.com/oceanefrqt/MBMC.