4.7 Article

Prediction of drug permeation through microneedled skin by machine learning

Journal

Publisher

WILEY
DOI: 10.1002/btm2.10512

Keywords

machine learning; microneedle; multiple linear regression; random forest; transdermal; XGBoost

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Stratum corneum as the outermost layer of the skin prevents external substances from entering the human body. Microneedles can facilitate drug permeation through the skin by penetrating the stratum corneum. Machine learning methods are employed to predict drug permeation through the skin, eliminating the need for costly and time-consuming experiments.
Stratum corneum is the outermost layer of the skin preventing external substances from entering human body. Microneedles (MNs) are sharp protrusions of a few hundred microns in length, which can penetrate the stratum corneum to facilitate drug permeation through skin. To determine the amount of drug delivered through skin, in vitro drug permeation testing is commonly used, but the testing is costly and time-consuming. To address this issue, machine learning methods were employed to predict drug permeation through the skin, circumventing the need of conducting skin permeation experiments. By comparing the experimental data and simulated results, it was found extreme gradient boosting (XGBoost) was the best among the four simulation methods. It was also found that drug loading, permeation time, and MN surface area were critical parameters in the models. In conclusion, machine learning is useful to predict drug permeation profiles for MN-facilitated transdermal drug delivery.

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