Ensemble Regression Modelling for Genetic Network Inference

被引:0
|
作者
Gamage, Hasini Nakulugamuwa [1 ]
Chetty, Madhu [1 ]
Shatte, Adrian [2 ]
Hallinan, Jennifer [3 ]
机构
[1] Federat Univ, Hlth Innovat & Transformat Ctr, Churchill, Vic 3842, Australia
[2] Federat Univ, Hlth Innovat & Transformat Ctr, Melbourne, Vic, Australia
[3] BioThink Pty Ltd, Brisbane, Qld, Australia
关键词
Gene Regulatory Networks; regression problem; cross-validated Lasso; cross-validated Ridge; coefficient of determination;
D O I
10.1109/CIBCB55180.2022.9863017
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
An accurate reconstruction of Gene Regulatory Networks (GRNs) from time series gene expression data is crucial for discovering complex biological interactions. Among many different approaches for inferring GRNs, there are several methods which produce high false positive interactions, and are unstable, requiring fine tuning for many of their parameters. In this paper, we consider the GRN inference problem as a regression problem, and propose a simple ensemble regression-based feature selection model which is a combination of cross-validated Lasso and cross-validated Ridge algorithms for reconstructing GRNs. Due to the novelty of the proposed ensemble model, it is able to eliminate overfitting, multi co-linearity issues, and irrelevant genes within one computational approach. While observing the type of gene-gene regulatory interactions the regression model also identifies the direction of these interactions. A new coefficient of determination (R-2)-based approach identifies the best model to fit the data among LassoCV and RidgeCV, and evaluates the model importance in term of gene-wise maximum in-degree which decides the maximum number of regulatory genes including self-regulations that can be selected from a given method. Then, an evaluated gene score-based majority voting technique aggregates the selected gene lists from each method. In our experiments, the performance of the proposed ensemble approach was evaluated using gene expression datasets from three small-scale real gene networks. Our proposed model outperformed other state-of-the-art methods, producing high true positives, reducing false positives, and obtaining high Structural Accuracy, while maintaining model stability and efficiency.
引用
收藏
页码:217 / 224
页数:8
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