Machine learning algorithms (MLAs) have recently been applied to predict gene mutations of Escherichia coli (E. coli) under different exposure conditions, with room for improvement in performance. In a bid to improve performance, we hypothesize that incorporating the interactions between genes will help MLAs make better predictions. To investigate this, we integrated protein-coding gene cofunctional networks into a mutation dataset of E. coli exposed to different conditions. Also, we proposed a feature-selection algorithm based on gene cofunctional networks to pick the most relevant exposure conditions. Then, we used the extended dataset to train a support vector classifier, an artificial neural network, and an ensemble of both MLAs. Separatemodels were trained for each of the protein-coding genes. Validation results showed that our approach improved both the area under the receiver operating characteristic (ROC) curve (AUC) and the area under the precision-recall curve (AUPRC). A peak increase of 8:20% in AUPRC was observed. A similar analysis on selected genes, with ten or more mutation points for each gene, also showed improvement in the general performance of the MLAs. Out-of-sample testing on adaptive laboratory evolution experiments curated from the literature provided further evidence of an enhanced mutation-prediction performance, where a maximum 8:74% boost in the AUC was observed. Finally, we highlighted the genes with the most improved and most degraded predictions due to the additional information of the cofunctional genes. This work suggests that the functional relationship between genes may play a role in gene mutation and illustrates how the relationships might help to improve mutation prediction.
CITATION STYLE
Okwori, M., & Eslami, A. (2020). Investigating the Impact of Gene Cofunctionality in Predicting Gene Mutations of E. Coli. IEEE Access, 8, 167397–167410. https://doi.org/10.1109/ACCESS.2020.3023662
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