Pharmacovigilance Research Center, Department of Drug Design and Pharmacology, University of Copenhagen, Copenhagen, Denmark.
Pharmacometrics Research Group, Department of Drug Design and Pharmacology, University of Copenhagen, Copenhagen, Denmark.
Clin Pharmacol Ther. 2022 Jun;111(6):1278-1285. doi: 10.1002/cpt.2577. Epub 2022 Mar 25.
We compared the predictive performance of an artificial neural network to traditional pharmacometric modeling for population prediction of plasma concentrations of valproate in real-world data. We included individuals aged 65 years or older with epilepsy who redeemed their first prescription of valproate after the diagnosis of epilepsy and had at least one valproate plasma concentration measured. A long short-term memory neural network (LSTM) was developed using the training data set to fit the LSTM and the test data set to validate the model. Predictions from the LSTM were compared with those obtained from the population predictions from a pharmacometric model by Birnbaum et al. which had the best predictive performance for population predictions of valproate concentrations in Danish databases. We used the cutoff of ± 20 mg/L of prediction error to define good predictions. A total of 1,252 individuals were included in the study. The LSTM fitted using the training data set had poor predictive performance in the test data set, but better than that of the pharmacometric model. The proportion of individuals with at least one predicted concentration within ± 20 mg/L of observed concentration was largest in case of the LSTM (64.4%, 95% confidence interval (CI): 58.4-70.2%) compared with the pharmacometric model by Birnbaum et al. (49.8%, 95% CI: 47.0-52.6%). LSTM shows better predictive performance to predict valproate plasma concentrations compared with a traditional pharmacometric model in the investigated setting with real-world data in older patients with epilepsy where information on exact timepoints for both dosing and plasma concentration measurement are missing.
我们比较了人工神经网络与传统药代动力学模型在真实世界数据中预测丙戊酸血药浓度的预测性能。我们纳入了年龄在 65 岁及以上、确诊癫痫后首次开具丙戊酸处方且至少有一次丙戊酸血药浓度测量的个体。使用训练数据集开发了一个长短期记忆神经网络(LSTM),以拟合 LSTM,并使用测试数据集验证模型。将 LSTM 的预测结果与 Birnbaum 等人的药代动力学模型的群体预测结果进行比较,该模型在丹麦数据库中对丙戊酸浓度的群体预测具有最佳的预测性能。我们使用预测误差 ± 20mg/L 的截值来定义良好的预测。共有 1252 名个体纳入研究。使用训练数据集拟合的 LSTM 在测试数据集中的预测性能较差,但优于药代动力学模型。至少有一个预测浓度在观察浓度 ± 20mg/L 内的个体比例在 LSTM 中最大(64.4%,95%置信区间:58.4-70.2%),而在 Birnbaum 等人的药代动力学模型中为 49.8%(95%置信区间:47.0-52.6%)。在研究中,在存在缺失剂量和血药浓度测量的确切时间点信息的情况下,LSTM 在真实世界数据中对年龄较大的癫痫患者的丙戊酸血药浓度预测表现优于传统药代动力学模型。