» Articles » PMID: 33831027

Ridge Regression and Its Applications in Genetic Studies

Overview
Journal PLoS One
Date 2021 Apr 8
PMID 33831027
Citations 17
Authors
Affiliations
Soon will be listed here.
Abstract

With the advancement of technology, analysis of large-scale data of gene expression is feasible and has become very popular in the era of machine learning. This paper develops an improved ridge approach for the genome regression modeling. When multicollinearity exists in the data set with outliers, we consider a robust ridge estimator, namely the rank ridge regression estimator, for parameter estimation and prediction. On the other hand, the efficiency of the rank ridge regression estimator is highly dependent on the ridge parameter. In general, it is difficult to provide a satisfactory answer about the selection for the ridge parameter. Because of the good properties of generalized cross validation (GCV) and its simplicity, we use it to choose the optimum value of the ridge parameter. The GCV function creates a balance between the precision of the estimators and the bias caused by the ridge estimation. It behaves like an improved estimator of risk and can be used when the number of explanatory variables is larger than the sample size in high-dimensional problems. Finally, some numerical illustrations are given to support our findings.

Citing Articles

Early prediction of 30-day mortality in patients with surgical wound infections following cardiothoracic surgery: Development and validation of the SWICS-30 score utilizing conventional logistic regression and artificial neural network.

Cedeno J, Strabelli T, Besen B, Souza R, Sierra D, de Souza L Braz J Infect Dis. 2025; 29(2):104510.

PMID: 39985931 PMC: 11893298. DOI: 10.1016/j.bjid.2025.104510.


The role of epigenetic regulation in pancreatic ductal adenocarcinoma progression and drug response: an integrative genomic and pharmacological prognostic prediction model.

Fu K, Su J, Zhou Y, Chen X, Hu X Front Pharmacol. 2024; 15:1498031.

PMID: 39640482 PMC: 11618540. DOI: 10.3389/fphar.2024.1498031.


Harmonizing two measures of adaptive functioning using computational approaches: prediction of vineland adaptive behavior scales II (VABS-II) from the adaptive behavior assessment system II (ABAS-II) scores.

Smith C, Lautarescu A, Charman T, Crosbie J, Schachar R, Iaboni A Mol Autism. 2024; 15(1):51.

PMID: 39627866 PMC: 11616349. DOI: 10.1186/s13229-024-00630-4.


Prognostic characteristics and drug sensitivity analysis of hepatocellular carcinoma based on histone modification-related genes: a multi-omics integrated study revealing potential therapeutic targets and individualized treatment strategies.

Sun P, Ding Z, Chen J, Ou K, Zhou D, Li R Front Pharmacol. 2024; 15:1489469.

PMID: 39584133 PMC: 11582355. DOI: 10.3389/fphar.2024.1489469.


Identifying biological markers and sociodemographic factors that influence the gap between phenotypic and chronological ages.

Pala D, Xu J, Xie Y, Zhang Y, Shen L Inform Health Soc Care. 2024; 49(3-4):162-176.

PMID: 39318145 PMC: 11576235. DOI: 10.1080/17538157.2024.2400247.


References
1.
Lee J, Zhang S, Saha S, Santa Anna S, Jiang C, Perkins J . RNA expression analysis using an antisense Bacillus subtilis genome array. J Bacteriol. 2001; 183(24):7371-80. PMC: 95586. DOI: 10.1128/JB.183.24.7371-7380.2001. View

2.
Zamboni N, Fischer E, Muffler A, Wyss M, Hohmann H, Sauer U . Transient expression and flux changes during a shift from high to low riboflavin production in continuous cultures of Bacillus subtilis. Biotechnol Bioeng. 2004; 89(2):219-32. DOI: 10.1002/bit.20338. View

3.
Hellton K, Hjort N . Fridge: Focused fine-tuning of ridge regression for personalized predictions. Stat Med. 2018; 37(8):1290-1303. DOI: 10.1002/sim.7576. View