INRA, UMR444 Laboratoire de Génétique Cellulaire, F-31326 Castanet Tolosan, France.
J Anim Sci. 2012 Dec;90(13):4729-40. doi: 10.2527/jas.2012-5338. Epub 2012 Oct 16.
Predicting phenotypes is a statistical and biotechnical challenge, both in medicine (predicting an illness) and animal breeding (predicting the carcass economical value on a young living animal). High-throughput fine phenotyping is possible using metabolomics, which describes the global metabolic status of an individual, and is the closest to the terminal phenotype. The purpose of this work was to quantify the prediction power of metabolomic profiles for commonly used production phenotypes from a single blood sample from growing pigs. Several statistical approaches were investigated and compared on the basis of cross validation: raw data vs. signal preprocessing (wavelet transformation), with a single-feature selection method. The best results in terms of prediction accuracy were obtained when data were preprocessed using wavelet transformations on the Daubechies basis. The phenotypes related to meat quality were not well predicted because the blood sample was taken some time before slaughter, and slaughter is known to have a strong influence on these traits. By contrast, phenotypes of potential economic interest (e.g., lean meat percentage and ADFI) were well predicted (R(2) = 0.7; P < 0.0001) using metabolomic data.
预测表型是一个统计学和生物技术方面的挑战,无论是在医学(预测疾病)还是动物育种(预测活体动物的胴体经济价值)中。利用代谢组学可以实现高通量的精细表型分析,它描述了个体的整体代谢状态,最接近终端表型。本研究的目的是从生长猪的单个血样中定量预测代谢组谱对常用生产表型的预测能力。基于交叉验证,我们研究并比较了几种统计方法:原始数据与信号预处理(小波变换),使用单一特征选择方法。在 Daubechies 基上使用小波变换对数据进行预处理时,获得了最佳的预测准确性结果。与肉质相关的表型预测效果不佳,因为采血时间是在屠宰前,而众所周知,屠宰对这些性状有很大影响。相比之下,使用代谢组学数据可以很好地预测具有潜在经济价值的表型(例如,瘦肉百分比和 ADFI)(R(2) = 0.7;P < 0.0001)。