利用人工智能技术进行个性化文拉法辛剂量预测:基于真实世界数据的回顾性分析。

IF 2.6 4区 医学 Q2 PHARMACOLOGY & PHARMACY
Yimeng Liu, Ze Yu, Xuxiao Ye, Jinyuan Zhang, Xin Hao, Fei Gao, Jing Yu, Chunhua Zhou
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引用次数: 0

摘要

背景:文拉法辛的剂量方案因人而异:目的:本研究旨在通过真实世界的数据分析确定与文拉法辛剂量相关的影响因素,并利用先进的人工智能技术构建个性化剂量模型:我们对接受文拉法辛治疗的抑郁症患者进行了一项回顾性研究。方法:我们对接受文拉法辛治疗的抑郁症患者进行了回顾性研究。随后,比较了七个模型(XGBoost、LightGBM、CatBoost、GBDT、ANN、TabNet 和 DT)的预测性能。最终选择了表现最佳的算法来建立剂量预测模型。模型验证使用了混淆矩阵和 ROC 分析。此外,还进行了剂量亚组分析:结果:共纳入 298 名患者。结果:共纳入 298 例患者,选择 TabNet 建立文拉法辛剂量预测模型,该模型表现出最高的性能,准确率达 0.80。分析确定了与文拉法辛每日剂量相关的七个关键变量,包括血液中的文拉法辛浓度、总蛋白、淋巴细胞、年龄、球蛋白、胆碱酯酶和血小板计数。预测75毫克、150毫克和225毫克文拉法辛剂量的曲线下面积(AUC)分别为0.90、0.85和0.90:我们利用真实世界的数据成功开发了一个 TabNet 模型来预测文拉法辛的剂量。该模型显示了相当高的预测准确性,为文拉法辛提供了个性化的用药方案。这些发现为临床用药提供了宝贵的指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Personalized venlafaxine dose prediction using artificial intelligence technology: a retrospective analysis based on real-world data.

Personalized venlafaxine dose prediction using artificial intelligence technology: a retrospective analysis based on real-world data.

Background: Venlafaxine dose regimens vary considerably between individuals, requiring personalized dosing.

Aim: This study aimed to identify dose-related influencing factors of venlafaxine through real-world data analysis and to construct a personalized dose model using advanced artificial intelligence techniques.

Method: We conducted a retrospective study on patients with depression treated with venlafaxine. Significant variables were selected through a univariate analysis. Subsequently, the predictive performance of seven models (XGBoost, LightGBM, CatBoost, GBDT, ANN, TabNet, and DT) was compared. The algorithm that demonstrated optimal performance was chosen to establish the dose prediction model. Model validation used confusion matrices and ROC analysis. Additionally, a dose subgroup analysis was conducted.

Results: A total of 298 patients were included. TabNet was selected to establish the venlafaxine dose prediction model, which exhibited the highest performance with an accuracy of 0.80. The analysis identified seven crucial variables correlated with venlafaxine daily dose, including blood venlafaxine concentration, total protein, lymphocytes, age, globulin, cholinesterase, and blood platelet count. The area under the curve (AUC) for predicting venlafaxine doses of 75 mg, 150 mg, and 225 mg were 0.90, 0.85, and 0.90, respectively.

Conclusion: We successfully developed a TabNet model to predict venlafaxine doses using real-world data. This model demonstrated substantial predictive accuracy, offering a personalized dosing regimen for venlafaxine. These findings provide valuable guidance for the clinical use of the drug.

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来源期刊
CiteScore
4.10
自引率
8.30%
发文量
131
审稿时长
4-8 weeks
期刊介绍: The International Journal of Clinical Pharmacy (IJCP) offers a platform for articles on research in Clinical Pharmacy, Pharmaceutical Care and related practice-oriented subjects in the pharmaceutical sciences. IJCP is a bi-monthly, international, peer-reviewed journal that publishes original research data, new ideas and discussions on pharmacotherapy and outcome research, clinical pharmacy, pharmacoepidemiology, pharmacoeconomics, the clinical use of medicines, medical devices and laboratory tests, information on medicines and medical devices information, pharmacy services research, medication management, other clinical aspects of pharmacy. IJCP publishes original Research articles, Review articles , Short research reports, Commentaries, book reviews, and Letters to the Editor. International Journal of Clinical Pharmacy is affiliated with the European Society of Clinical Pharmacy (ESCP). ESCP promotes practice and research in Clinical Pharmacy, especially in Europe. The general aim of the society is to advance education, practice and research in Clinical Pharmacy . Until 2010 the journal was called Pharmacy World & Science.
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