Abstract

Several gene expression studies have been previously conducted to characterize molecular basis of Wooden Breast myopathy in commercial broiler chickens. These studies have generally used a limited sample size and relied on a binary disease outcome (unaffected or affected by Wooden Breast), which are appropriate for an initial investigation. However, to identify biomarkers of disease severity and development, it is necessary to use a large number of samples with a varying degree of disease severity. Therefore, in this study, we assayed a relatively large number of samples (n = 96) harvested from the pectoralis major muscle of unaffected (U), partially affected (P) and markedly affected (A) chickens. Gene expression analysis was conducted using the nCounter MAX Analysis System and data were analyzed using four different supervised machine-learning methods, including support vector machines (SVM), random forests (RF), elastic net logistic regression (ENET) and Lasso logistic regression (LASSO). The SVM method achieved the highest prediction accuracy for both three-class (U, P and A) and two-class (U and P+A) classifications with 94% prediction accuracy for two-class classification and 85% for three-class classification. The results also identified biomarkers of Wooden Breast severity and development. Additionally, gene expression analysis and ultrastructural evaluations provided evidence of vascular endothelial cell dysfunction in the early pathogenesis of Wooden Breast.

Highlights

  • Wooden Breast disease is a muscle disorder of modern commercial broilers that severely impacts meat quality in affected chickens posing a major challenge to the poultry industry

  • Recall we used the stepwise method to select a subset of genes for prediction in support vector machines (SVM)

  • For three-class classification, there were five genes selected by three methods: two genes ARNT2 and DCTD were selected by SVM, LASSO and elastic net logistic regression (ENET); one gene TLR2-2 by ENET, SVM, random forests (RF); two genes ZNF650

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Summary

Objectives

We aimed to identify gene expression biomarkers associated with the severity of Wooden Breast. The second aim of our study was to further the understanding of Wooden Breast through biological interpretation of results obtained using various statistical methods. To be cost-effective, we aimed to make this panel useful for multiple projects in our laboratory including a project on Wooden Breast [2] and two projects not directly related to Wooden Breast [17, 18]

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