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https://rda.sliit.lk/handle/123456789/4148
Title: | Assessing the Efficacy of Machine Learning Algorithms in Predicting Critical Properties of Gold Nanoparticles for Pharmaceutical Applications |
Authors: | Fernando, H Mohottala, S Jayanetti, M Thambiliyagodage, C |
Keywords: | Drug Delivery Machine learning Nanoparticles Pharmaceutical applications XAI |
Issue Date: | 8-Jul-2025 |
Publisher: | Springer Nature Link |
Citation: | Fernando, H., Mohottala, S., Jayanetti, M. et al. Assessing the Efficacy of Machine Learning Algorithms in Predicting Critical Properties of Gold Nanoparticles for Pharmaceutical Applications. BioNanoSci. 15, 445 (2025). https://doi.org/10.1007/s12668-025-02061-8 |
Series/Report no.: | BioNanoScience;Volume 15, article number 445, (2025) |
Abstract: | Au nanoparticles are increasingly used in pharmaceuticals, but their synthesis is costly and time-intensive. Machine Learning can help optimize this process. In this research, eight distinct Machine Learning models were implemented and optimized on a dataset comprising 3000 records of gold nanoparticles. The performance of these models was assessed using four accuracy metrics and the time required for training and inference. The results are promising, with all seven models demonstrating high accuracy and low time requirements. Notably, the XGBoost and Artificial Neural Network models exhibited exceptional performance, with Mean Squared Error values of 0.0235 and 0.0098, Mean Absolute Error values of 0.1021 and 0.0674, Mean Absolute Percentage Deviation values of 0.4945 and 0.3590, R2 scores of 0.9995 and 0.9998, and inference times of 0.0029 and 0.4299 s, respectively. The Explainable Artificial Intelligence analysis of the resulting models revealed some interesting insights into how the models make the predictions and what factors heavily contribute to the nanoparticle AVG_R, allowing chemists to optimize the synthesis for gold nanoparticles better. The key contributions of the research include the design and development of eight Machine Learning models using industry-standard frameworks, the training, tuning, and evaluation of these eight models using five different metrics, and further assessment of these trained models using Explainable Artificial Intelligence. The findings indicate a substantial potential for applying neural networks in the design phase of nanoparticle synthesis, which could lead to significant reductions in both the time and cost required for synthesizing Au nanoparticles for pharmaceutical applications. |
URI: | https://rda.sliit.lk/handle/123456789/4148 |
ISSN: | 2191-1649 |
Appears in Collections: | Department of Applied Sciences |
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s12668-025-02061-8.pdf Until 2050-12-31 | 2.33 MB | Adobe PDF | View/Open Request a copy |
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