AI-Powered Predictive Modeling for Controlled Release Drug Delivery Systems in Cancer Therapy

Authors

  • Rahul Jha, Ruhi Saxena

Keywords:

AI-powered predictive modeling, controlled release, drug delivery systems, cancer therapy, user satisfaction, reliability, personalized treatment, data integration, validation

Abstract

Background: The research evaluates how AI-powered predictive modeling can be used in cancer therapy drug delivery systems with controlled release parameters. A comprehensive evaluation of user opinions and system reliability combined with implications on cancer therapy enables researchers to understand the positive aspects and drawbacks of AI-based clinical drug delivery. Methods:  The researchers collected data from participants who rated their feedback using a Likert scale which showed the essential elements affecting AI model functioning. The model receives positive user feedback because users find it accurate and easy to use with quick outcome generation but some users doubt its value for complex cancer situations. Results: Participants responded positively about the model reliability although inconsistent ratings demonstrate that additional validation testing and improvement of the model are required. Study participants believe AI holds significant potential to boost treatment effectiveness while tailoring therapies to individual patients although more research must happen to yield its complete advantages. Conclusion:  The adoption of this AI system faces three main obstacles because extensive research data needs to be accessible while system integration requires simplification and the model must prove effective with different patient types and therapy plans. The survey participants expressed enthusiastic support for AI development in cancer therapy because they predicted positive outcomes in the long run and believed research on AI models for clinical implementation should continue. This evidence shows that AI can revolutionize cancer therapy yet current obstacles must be solved to fulfill its full potential.

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References

Adepu S, Ramakrishna S. Controlled Drug Delivery Systems: Current Status and Future Directions. Molecules. 2021 Sep 29;26(19):5905. doi: 10.3390/molecules26195905. PMID: 34641447; PMCID: PMC8512302.

Vatansever S, Schlessinger A, Wacker D, Kaniskan HÜ, Jin J, Zhou MM, Zhang B. Artificial intelligence and machine learning-aided drug discovery in central nervous system diseases: State-of-the-arts and future directions. Med Res Rev. 2021 May;41(3):1427-1473. doi: 10.1002/med.21764. Epub 2020 Dec 9. PMID: 33295676; PMCID: PMC8043990.

Das KP, J C. Nanoparticles and convergence of artificial intelligence for targeted drug delivery for cancer therapy: Current progress and challenges. Front Med Technol. 2023 Jan 6;4:1067144. doi: 10.3389/fmedt.2022.1067144. PMID: 36688144; PMCID: PMC9853978.

Afreen Sultana, Mina Zare, Vinoy Thomas, T.S. Sampath Kumar, Seeram Ramakrishna, Nano-based drug delivery systems: Conventional drug delivery routes, recent developments and future prospects,Medicine in Drug Discovery,Volume 15, 2022,100134,ISSN 2590-0986,https://doi.org/10.1016/j.medidd.2022.100134.

Liao J, Li X, Gan Y, Han S, Rong P, Wang W, Li W, Zhou L. Artificial intelligence assists precision medicine in cancer treatment. Front Oncol. 2023 Jan 4;12:998222. doi: 10.3389/fonc.2022.998222. PMID: 36686757; PMCID: PMC9846804.

Ahn JS, Shin S, Yang SA, Park EK, Kim KH, Cho SI, Ock CY, Kim S. Artificial Intelligence in Breast Cancer Diagnosis and Personalized Medicine. J Breast Cancer. 2023 Oct;26(5):405-435. doi: 10.4048/jbc.2023.26.e45. PMID: 37926067; PMCID: PMC10625863.

Wang, J., Zeng, Z., Li, Z. et al. The clinical application of artificial intelligence in cancer precision treatment. J Transl Med 23, 120 (2025). https://doi.org/10.1186/s12967-025-06139-5

Blezek DJ, Olson-Williams L, Missert A, Korfiatis P. AI Integration in the Clinical Workflow. J Digit Imaging. 2021 Dec;34(6):1435-1446. doi: 10.1007/s10278-021-00525-3. Epub 2021 Oct 22. PMID: 34686923; PMCID: PMC8669074.

Nguyen, D., Ngo, B., & vanSonnenberg, E. (2021). AI in the intensive care unit: up-to-date review. Journal of intensive care medicine, 36(10), 1115-1123.

Bhinder B, Gilvary C, Madhukar NS, Elemento O. Artificial Intelligence in Cancer Research and Precision Medicine. Cancer Discov. 2021 Apr;11(4):900-915. doi: 10.1158/2159-8290.CD-21-0090. PMID: 33811123; PMCID: PMC8034385.

Ahmed MI, Spooner B, Isherwood J, Lane M, Orrock E, Dennison A. A Systematic Review of the Barriers to the Implementation of Artificial Intelligence in Healthcare. Cureus. 2023 Oct 4;15(10):e46454. doi: 10.7759/cureus.46454. PMID: 37927664; PMCID: PMC10623210.

Machine learning in healthcare. Habehh H, Gohel S. Curr Genomics. 2021;22:291–300. doi: 10.2174/1389202922666210705124359.

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Published

2025-05-15

How to Cite

1.
Rahul Jha, Ruhi Saxena. AI-Powered Predictive Modeling for Controlled Release Drug Delivery Systems in Cancer Therapy. J Neonatal Surg [Internet]. 2025 May 15 [cited 2026 Mar. 5];14(18S):1177-81. Available from: https://jneonatalsurg.com/index.php/jns/article/view/5902