Acknowledgement
The authors gratefully acknowledge the valuable data provided by the Dairy Farming Promotion Organization (DPO) and the unwavering support from the Tropical Animal Genetic Special Research Unit (TAGU) at Kasetsart University and the University of Florida, Gainesville, Florida, USA. Their contributions have been crucial to the successful completion of this research, and their collaborative efforts are highly appreciated.
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