Dairy milk production is a quantitative trait that is controlled by many biological and
environmental factors. This study employs a network-driven systems approach and clustering
algorithm to uncover deeper insights into its genetic associations. We analyzed the GSE33680 dataset
from the GEO database to understand the biological importance of milk production through gene
expression and modules. In this study, we employed CytoNCA and ClusterONE plugins within
Cytoscape for network analysis. Moreover, miRWalk software was utilized to detect miRNAs,
and DAVID was employed to identify gene ontology and pathways. The results revealed 140 upregulated
genes and 312 down-regulated genes. In addition, we have identified 91 influential genes
and 47 miRNAs that are closely associated with milk production. Through our examination of the
network connecting these genes, we have found significant involvement in important biological
processes such as calcium ion transit across cell membranes, the BMP signaling pathway, and the
regulation of MAPK cascade. The conclusive network analysis further reveals that GAPDH, KDR,
CSF1, PYGM, RET, PPP2CA, GUSB, and PRKCA are closely linked to key pathways essential for
governing milk production. Various mechanisms can control these genes, making them valuable for
breeding programs aiming to enhance selection indexes.