In light of antibiotics being classified as environmental hormone-like compounds, their interference with the endocrine system has significantly impacted human health and ecological environments. This study employed Density Functional Theory (DFT) within Gaussian09, conducting structural optimizations and property calculations on 23 typical antibiotic molecules at the B3LYP/3-21G and B3LYP/6-31G(d) levels to obtain structural parameters and acquired physicochemical property parameters through the RDKit database in ChemDes platform for quantitative processing of the compounds. Multiple linear regression analysis identified the primary factors affecting antibiotics' biological toxicity (pLD50), and a QSAR model was established. The model's predictive capability was analyzed using leave-one-out cross-validation, and the binding modes and mechanisms of action between estrogen receptors (ER) and antibiotics were investigated via molecular docking and molecular dynamics simulations. The results indicate that six property parameters significantly influence the biological toxicity of antibiotics, with the established QSAR model C exhibiting regression coefficients R