Machine learning assisted exploration of the influential parameters on the PLGA nanoparticles

被引:8
|
作者
Rezvantalab, Sima [1 ]
Mihandoost, Sara [2 ]
Rezaiee, Masoumeh [1 ]
机构
[1] Urmia Univ Technol, Dept Chem Engn, Orumiyeh 57166419, Iran
[2] Urmia Univ Technol, Dept Elect Engn, Orumiyeh 57166419, Iran
关键词
LOADED PLGA; ENCAPSULATION EFFICIENCY; PEG; OPTIMIZATION; PLATFORM; RELEASE; POLYMER; SYSTEM;
D O I
10.1038/s41598-023-50876-w
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Poly ( lactic-co-glycolic acid) (PLGA)-based nanoparticles (NPs) are widely investigated as drug delivery systems. However, despite the numerous reviews and research papers discussing various physicochemical and technical properties that affect NP size and drug loading characteristics, predicting the influential features remains difficult. In the present study, we employed four different machine learning (ML) techniques to create ML models using effective parameters related to NP size, encapsulation efficiency (E.E.%), and drug loading (D.L.%). These parameters were extracted from the different literature. Least Absolute Shrinkage and Selection Operator was used to investigate the input parameters and identify the most influential features (descriptors). Initially, ML models were trained and validated using tenfold validation methods, and subsequently, next their performances were evaluated and compared in terms of absolute error, mean absolute, error and R-square. After comparing the performance of different ML models, we decided to use support vector regression for predicting the size and E.E.% and random forest for predicting the D.L.% of PLGA-based NPs. Furthermore, we investigated the interactions between these target variables using ML methods and found that size and E.E.% are interrelated, while D.L.% shows no significant relationship with the other targets. Among these variables, E.E.% was identified as the most influential parameter affecting the NPs' size. Additionally, we found that certain physicochemical properties of PLGA, including molecular weight (Mw) and the lactide-to-glycolide (LA/GA) ratio, are the most determining features for E.E.% and D.L.% of the final NPs, respectively.
引用
收藏
页数:12
相关论文
共 50 条
  • [41] Machine Learning-Assisted Prediction and Exploration of the Homogeneous Oxidation of Mercury in Coal Combustion Flue Gas
    Zhang, Weijin
    Chen, Jiefeng
    Huang, Guohai
    Zu, Hongxiao
    Yang, Zequn
    Qu, Wenqi
    Yang, Jianping
    Leng, Lijian
    Li, Hailong
    ENVIRONMENTAL SCIENCE & TECHNOLOGY, 2025,
  • [42] Exploration and Insights on Topology Adjustment of Giant Heterometallic Cages Featuring Inorganic Skeletons Assisted by Machine Learning
    Du, Ming-Hao
    Dai, Yiheng
    Jiang, Lin-Peng
    Su, Yu-Ming
    Qi, Ming-Qiang
    Wang, Cheng
    Long, La-Sheng
    Zheng, Lan-Sun
    Kong, Xiang-Jian
    JOURNAL OF THE AMERICAN CHEMICAL SOCIETY, 2023, 145 (42) : 23188 - 23195
  • [43] Machine-learning-assisted exploration of anion-pillared metal organic frameworks for gas separation
    Hu, Jianbo
    Cui, Jiyu
    Gao, Bin
    Yang, Lifeng
    Ding, Qi
    Li, Yijian
    Mo, Yiming
    Chen, Huajun
    Cui, Xili
    Xing, Huabin
    MATTER, 2022, 5 (11) : 3901 - 3911
  • [44] Machine Learning-Assisted Exploration of a Two-Dimensional Nanoslit for Blast Furnace Gas Separation
    Huan, Feicheng
    Qiu, Chenglong
    Sun, Yin
    Luo, Gaoyang
    Deng, Shengwei
    Wang, Jianguo
    INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH, 2023, 62 (43) : 17974 - 17985
  • [45] Machine-Learning Assisted Exploration: Toward the Next-Generation Catalyst for Hydrogen Evolution Reaction
    Wei, Sichen
    Baek, Soojung
    Yue, Hongyan
    Liu, Maomao
    Yun, Seok Joon
    Park, Sehwan
    Lee, Young Hee
    Zhao, Jiong
    Li, Huamin
    Reyes, Kristofer
    Yao, Fei
    JOURNAL OF THE ELECTROCHEMICAL SOCIETY, 2021, 168 (12)
  • [46] Nonparametric machine learning for mapping forest cover and exploring influential factors
    Bao Liu
    Lei Gao
    Baoan Li
    Raymundo Marcos-Martinez
    Brett A. Bryan
    Landscape Ecology, 2020, 35 : 1683 - 1699
  • [47] Nonparametric machine learning for mapping forest cover and exploring influential factors
    Liu, Bao
    Gao, Lei
    Li, Baoan
    Marcos-Martinez, Raymundo
    Bryan, Brett A.
    LANDSCAPE ECOLOGY, 2020, 35 (07) : 1683 - 1699
  • [48] Influential parameters on submerged discharge capacity of converging ogee spillways based on experimental study and machine learning-based modeling
    Roushangar, Kiyoumars
    Foroudi, Ali
    Saneie, Mojtaba
    JOURNAL OF HYDROINFORMATICS, 2019, 21 (03) : 474 - 492
  • [49] INVESTIGATING THE INFLUENTIAL FACTORS ON FIREFIGHTER INJURIES USING STATISTICAL MACHINE LEARNING
    Yang, Zijiang
    Liu, Youwu
    PROCEEDINGS OF 2018 INTERNATIONAL CONFERENCE ON MACHINE LEARNING AND CYBERNETICS (ICMLC), VOL 2, 2018, : 422 - 427
  • [50] watex: machine learning research in water exploration
    Kouadio, Kouao Laurent
    Liu, Jianxin
    Liu, Rong
    SOFTWAREX, 2023, 22