Department of Clinical Pharmacy, The First Hospital of Hebei Medical University, 89 Donggang Road, Yuhua District, Shijiazhuang, 066003, China.
The Technology Innovation Center for Artificial Intelligence in Clinical Pharmacy of Hebei Province, The First Hospital of Hebei Medical University, Shijiazhuang, China.
Int J Clin Pharm. 2024 Aug;46(4):899-909. doi: 10.1007/s11096-024-01724-y. Epub 2024 May 16.
Venlafaxine is frequently prescribed for patients with depression. To control the concentration of venlafaxine within the therapeutic window for the best treatment effect, a model to predict venlafaxine concentration is necessary.
Our objective was to develop a prediction model for venlafaxine concentration using real-world evidence based on machine learning and deep learning techniques.
Patients who underwent venlafaxine treatment between November 2019 and August 2022 were included in the study. Important variables affecting venlafaxine concentration were identified using a combination of univariate analysis, sequential forward selection, and machine learning techniques. Predictive performance of nine machine learning and deep learning algorithms were assessed, and the one with the optimal performance was selected for modeling. The final model was interpreted using SHapley Additive exPlanations.
A total of 330 eligible patients were included. Five influential variables that affect venlafaxine concentration were venlafaxine daily dose, sex, age, hyperlipidemia, and adenosine deaminase. The venlafaxine concentration prediction model was developed using the eXtreme Gradient Boosting algorithm (R = 0.65, mean absolute error = 77.92, root mean square error = 93.58). In the testing cohort, the accuracy of the predicted concentration within ± 30% of the actual concentration was 73.49%. In the subgroup analysis, the prediction accuracy was 69.39% within the recommended therapeutic range of venlafaxine concentration within ± 30% of the actual value.
The XGBoost model for predicting blood concentration of venlafaxine using real-world evidence was developed, guiding the adjustment of regimen in clinical practice.
文拉法辛常用于治疗抑郁症患者。为了将文拉法辛浓度控制在治疗窗内以达到最佳治疗效果,需要建立预测文拉法辛浓度的模型。
我们旨在使用基于机器学习和深度学习技术的真实世界证据开发文拉法辛浓度预测模型。
研究纳入了 2019 年 11 月至 2022 年 8 月期间接受文拉法辛治疗的患者。采用单因素分析、逐步向前选择和机器学习技术相结合的方法,确定影响文拉法辛浓度的重要变量。评估了 9 种机器学习和深度学习算法的预测性能,并选择性能最佳的算法进行建模。最后,使用 SHapley Additive exPlanations 对最终模型进行解释。
共纳入 330 例符合条件的患者。有 5 个影响文拉法辛浓度的重要变量,分别为文拉法辛日剂量、性别、年龄、高脂血症和腺苷脱氨酶。使用极端梯度提升算法(XGBoost)建立了文拉法辛浓度预测模型(R=0.65,平均绝对误差=77.92,均方根误差=93.58)。在测试队列中,预测浓度与实际浓度相差在±30%范围内的准确率为 73.49%。在亚组分析中,预测值在文拉法辛推荐治疗浓度范围内,实际浓度相差在±30%范围内的准确率为 69.39%。
本研究开发了一种使用真实世界证据预测文拉法辛血药浓度的 XGBoost 模型,为临床实践中调整方案提供了指导。