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Application of machine learning in the individualized therapy of tacrolimus in transplant patients

Published on Jan. 15, 2023Total Views: 1759 times Total Downloads: 1761 times Download Mobile

Author: Xiao-Ling LU Bing CHEN

Affiliation: Department of Pharmacy, Ruijin Hospital, Shanghai Jiao Tong University School of Medicine, Shanghai 200025, China

Keywords: Tacrolimus Therapeutic drug monitoring Machine learning Individualized medication

DOI: 10.19960/j.issn.1005-0698.202301011

Reference: Xiao-Ling LU, Bing CHEN.Application of machine learning in the individualized therapy of tacrolimus in transplant patients[J].Yaowu Liuxingbingxue Zazhi,2023, 32(1): 82-88.DOI: 10.19960/j.issn.1005-0698.202301011.[Article in Chinese]

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Abstract

Tacrolimus is a key immunosuppressant to prevent transplant rejection in solid organ transplantation, but its treatment index is narrow, and there are significant differences in bioavailability between and within individuals. Insufficient dose will increase the risk of acute rejection, and excessive exposure will increase the incidence of adverse drug reactions. Therefore, it is necessary to give patients personalized and precise treatment. However, there are some limitations in individualized drug administration based solely on therapeutic drug concentration monitoring. Machine learning can learn from the existing data and automatically build the calculation model of complex relationships. It has the characteristics of high efficiency and high accuracy. Machine learning is more and more used in drug concentration prediction because of its ability to process large and complex data sets. This article reviews the application of machine learning in tacrolimus individualized and precise drug use in transplant patients.

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References

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