| Style | Citing Format |
|---|---|
| MLA | Khodadadi F, et al.. "Leveraging Ensemble Machine Learning Models (Xgboost and Random Forest) and Genetic Algorithms to Predict Factors Contributing to the Liposomal Entrapment of Therapeutics." Nanoscale, vol. 17, no. 38, 2025, pp. 22271-22290. |
| APA | Khodadadi F, Taghizadeh F, Hashemi Baghi A, Ayyoubzadeh SM, Dadashzadeh S, Haeri A (2025). Leveraging Ensemble Machine Learning Models (Xgboost and Random Forest) and Genetic Algorithms to Predict Factors Contributing to the Liposomal Entrapment of Therapeutics. Nanoscale, 17(38), 22271-22290. |
| Chicago | Khodadadi F, Taghizadeh F, Hashemi Baghi A, Ayyoubzadeh SM, Dadashzadeh S, Haeri A. "Leveraging Ensemble Machine Learning Models (Xgboost and Random Forest) and Genetic Algorithms to Predict Factors Contributing to the Liposomal Entrapment of Therapeutics." Nanoscale 17, no. 38 (2025): 22271-22290. |
| Harvard | Khodadadi F et al. (2025) 'Leveraging Ensemble Machine Learning Models (Xgboost and Random Forest) and Genetic Algorithms to Predict Factors Contributing to the Liposomal Entrapment of Therapeutics', Nanoscale, 17(38), pp. 22271-22290. |
| Vancouver | Khodadadi F, Taghizadeh F, Hashemi Baghi A, Ayyoubzadeh SM, Dadashzadeh S, Haeri A. Leveraging Ensemble Machine Learning Models (Xgboost and Random Forest) and Genetic Algorithms to Predict Factors Contributing to the Liposomal Entrapment of Therapeutics. Nanoscale. 2025;17(38):22271-22290. |
| BibTex | @article{ author = {Khodadadi F and Taghizadeh F and Hashemi Baghi A and Ayyoubzadeh SM and Dadashzadeh S and Haeri A}, title = {Leveraging Ensemble Machine Learning Models (Xgboost and Random Forest) and Genetic Algorithms to Predict Factors Contributing to the Liposomal Entrapment of Therapeutics}, journal = {Nanoscale}, volume = {17}, number = {38}, pages = {22271-22290}, year = {2025} } |
| RIS | TY - JOUR AU - Khodadadi F AU - Taghizadeh F AU - Hashemi Baghi A AU - Ayyoubzadeh SM AU - Dadashzadeh S AU - Haeri A TI - Leveraging Ensemble Machine Learning Models (Xgboost and Random Forest) and Genetic Algorithms to Predict Factors Contributing to the Liposomal Entrapment of Therapeutics JO - Nanoscale VL - 17 IS - 38 SP - 22271 EP - 22290 PY - 2025 ER - |