Statistical model choice including variable selection based on variable importance: A relevant way for biomarkers selection to predict meat tenderness

被引:0
|
作者
M. P. Ellies-Oury
M. Chavent
A. Conanec
M. Bonnet
B. Picard
J. Saracco
机构
[1] Université Clermont Auvergne,
[2] INRA,undefined
[3] VetAgro Sup,undefined
[4] UMR Herbivores,undefined
[5] INRIA Bordeaux Sud-Ouest,undefined
[6] CQFD Team,undefined
[7] Université de Bordeaux,undefined
[8] IMB,undefined
[9] UMR 5251,undefined
[10] ENSC - Bordeaux INP,undefined
[11] IMB,undefined
[12] UMR 5251,undefined
来源
关键词
D O I
暂无
中图分类号
学科分类号
摘要
In this paper, we describe a new computational methodology to select the best regression model to predict a numerical variable of interest Y and to select simultaneously the most interesting numerical explanatory variables strongly linked to Y. Three regression models (parametric, semi-parametric and non-parametric) are considered and estimated by multiple linear regression, sliced inverse regression and random forests. Both the variables selection and the model choice are computational. A measure of importance based on random perturbations is calculated for each covariate. The variables above a threshold are selected. Then a learning/test samples approach is used to estimate the Mean Square Error and to determine which model (including variable selection) is the most accurate. The R package modvarsel (MODel and VARiable SELection) implements this computational approach and applies to any regression datasets. After checking the good behavior of the methodology on simulated data, the R package is used to select the proteins predictive of meat tenderness among a pool of 21 candidate proteins assayed in semitendinosus muscle from 71 young bulls. The biomarkers were selected by linear regression (the best regression model) to predict meat tenderness. These biomarkers, we confirm the predominant role of heat shock proteins and metabolic ones.
引用
收藏
相关论文
共 50 条
  • [31] Input variable selection for model-based production control and optimisation
    Glavan, M. (miha.glavan@ijs.si), 1600, Springer London (68): : 9 - 12
  • [32] Variable Selection in Normal Mixture Model Based Clustering under Heteroscedasticity
    Kim, Seung-Gu
    KOREAN JOURNAL OF APPLIED STATISTICS, 2011, 24 (06) : 1213 - 1224
  • [33] A simple model-based approach to variable selection in classification and clustering
    Partovi Nia, Vahid
    Davison, Anthony C.
    CANADIAN JOURNAL OF STATISTICS-REVUE CANADIENNE DE STATISTIQUE, 2015, 43 (02): : 157 - 175
  • [34] Probing for Sparse and Fast Variable Selection with Model-Based Boosting
    Thomas, Janek
    Hepp, Tobias
    Mayr, Andreas
    Bischl, Bernd
    COMPUTATIONAL AND MATHEMATICAL METHODS IN MEDICINE, 2017, 2017
  • [35] Input variable selection for model-based production control and optimisation
    Miha Glavan
    Dejan Gradišar
    Maja Atanasijević-Kunc
    Stanko Strmčnik
    Gašper Mušič
    The International Journal of Advanced Manufacturing Technology, 2013, 68 : 2743 - 2759
  • [36] Driving Behavior Modeling Based on Consistent Variable Selection in a PWARX Model
    Nwadiuto, Jude Chibuike
    Okuda, Hiroyuki
    Suzuki, Tatsuya
    APPLIED SCIENCES-BASEL, 2021, 11 (11):
  • [37] Variable selection in discriminant analysis based on the location model for mixed variables
    Mahat, Nor Idayu
    Krzanowski, Wojtek Janusz
    Hernandez, Adolfo
    ADVANCES IN DATA ANALYSIS AND CLASSIFICATION, 2007, 1 (02) : 105 - 122
  • [38] Input variable selection for model-based production control and optimisation
    Glavan, Miha
    Gradisar, Dejan
    Atanasijevic-Kunc, Maja
    Strmcnik, Stanko
    Music, Gasper
    INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2013, 68 (9-12): : 2743 - 2759
  • [39] Robust spline-based variable selection in varying coefficient model
    Feng, Long
    Zou, Changliang
    Wang, Zhaojun
    Wei, Xianwu
    Chen, Bin
    METRIKA, 2015, 78 (01) : 85 - 118
  • [40] "Parallelized Variable Selection and Modeling based on Prediction" algorithm on GPU for Feature Selection and ADMET Model Generation
    Koneti, Geervani
    Ramamurthi, Narayanan
    2017 IEEE INTERNATIONAL CONFERENCE ON BIOINFORMATICS AND BIOMEDICINE (BIBM), 2017, : 2268 - 2269