» Articles » PMID: 37499908

An Artificial Intelligence-assisted Physiologically-based Pharmacokinetic Model to Predict Nanoparticle Delivery to Tumors in Mice

Overview
Specialty Pharmacology
Date 2023 Jul 27
PMID 37499908
Authors
Affiliations
Soon will be listed here.
Abstract

The critical barrier for clinical translation of cancer nanomedicine stems from the inefficient delivery of nanoparticles (NPs) to target solid tumors. Rapid growth of computational power, new machine learning and artificial intelligence (AI) approaches provide new tools to address this challenge. In this study, we established an AI-assisted physiologically based pharmacokinetic (PBPK) model by integrating an AI-based quantitative structure-activity relationship (QSAR) model with a PBPK model to simulate tumor-targeted delivery efficiency (DE) and biodistribution of various NPs. The AI-based QSAR model was developed using machine learning and deep neural network algorithms that were trained with datasets from a published "Nano-Tumor Database" to predict critical input parameters of the PBPK model. The PBPK model with optimized NP cellular uptake kinetic parameters was used to predict the maximum delivery efficiency (DEmax) and DE at 24 (DE24) and 168 h (DE168) of different NPs in the tumor after intravenous injection and achieved a determination coefficient of R = 0.83 [root mean squared error (RMSE) = 3.01] for DE24, R = 0.56 (RMSE = 2.27) for DE168, and R = 0.82 (RMSE = 3.51) for DEmax. The AI-PBPK model predictions correlated well with available experimentally-measured pharmacokinetic profiles of different NPs in tumors after intravenous injection (R ≥ 0.70 for 133 out of 288 datasets). This AI-based PBPK model provides an efficient screening tool to rapidly predict delivery efficiency of a NP based on its physicochemical properties without relying on an animal training dataset.

Citing Articles

Advances in medical devices using nanomaterials and nanotechnology: Innovation and regulatory science.

Lin C, Huang X, Xue Y, Jiang S, Chen C, Liu Y Bioact Mater. 2025; 48:353-369.

PMID: 40060145 PMC: 11889687. DOI: 10.1016/j.bioactmat.2025.02.017.


Harnessing Artificial Intelligence to Overcome Key Challenges in Psychedelic Research and Therapy.

Kargbo R ACS Med Chem Lett. 2025; 16(1):3-7.

PMID: 39811120 PMC: 11726372. DOI: 10.1021/acsmedchemlett.4c00548.


[Application of Nano-drug Delivery Technology in Overcoming Drug Resistance 
in Lung Cancer].

Lu Y, Wang C, Liu B Zhongguo Fei Ai Za Zhi. 2025; 27(11):864-872.

PMID: 39800482 PMC: 11732387. DOI: 10.3779/j.issn.1009-3419.2024.101.30.


Orchestrating cancer therapy: Recent advances in nanoplatforms harmonize immunotherapy with multifaceted treatments.

Xu R, Lin P, Zheng J, Lin Y, Mai Z, Lu Y Mater Today Bio. 2025; 30:101386.

PMID: 39742149 PMC: 11683241. DOI: 10.1016/j.mtbio.2024.101386.


The Role of Artificial Intelligence and Machine Learning in Accelerating the Discovery and Development of Nanomedicine.

Agrahari V, Choonara Y, Mosharraf M, Patel S, Zhang F Pharm Res. 2024; 41(12):2289-2297.

PMID: 39623144 DOI: 10.1007/s11095-024-03798-9.


References
1.
Carlander U, Li D, Jolliet O, Emond C, Johanson G . Toward a general physiologically-based pharmacokinetic model for intravenously injected nanoparticles. Int J Nanomedicine. 2016; 11:625-40. PMC: 4755468. DOI: 10.2147/IJN.S94370. View

2.
Bae Y, Nishiyama N, Fukushima S, Koyama H, Yasuhiro M, Kataoka K . Preparation and biological characterization of polymeric micelle drug carriers with intracellular pH-triggered drug release property: tumor permeability, controlled subcellular drug distribution, and enhanced in vivo antitumor efficacy. Bioconjug Chem. 2005; 16(1):122-30. DOI: 10.1021/bc0498166. View

3.
Bae Y, Nishiyama N, Kataoka K . In vivo antitumor activity of the folate-conjugated pH-sensitive polymeric micelle selectively releasing adriamycin in the intracellular acidic compartments. Bioconjug Chem. 2007; 18(4):1131-9. DOI: 10.1021/bc060401p. View

4.
Lin Z, Monteiro-Riviere N, Kannan R, Riviere J . A computational framework for interspecies pharmacokinetics, exposure and toxicity assessment of gold nanoparticles. Nanomedicine (Lond). 2015; 11(2):107-19. DOI: 10.2217/nnm.15.177. View

5.
Goh G, Hodas N, Vishnu A . Deep learning for computational chemistry. J Comput Chem. 2017; 38(16):1291-1307. DOI: 10.1002/jcc.24764. View