Kim Dohyun, Choi Hyun-Soo, Lee DongHoon, Kim Minkyu, Kim Yoon, Han Seon-Sook, Heo Yeonjeong, Park Ju-Hee, Park Jinkyeong
Department of Research and Development, ZIOVISION Co, Ltd, Chuncheon, Republic of Korea.
Department of Computer Science and Engineering, Seoul National University of Science and Technology, Seoul, Republic of Korea.
JMIR Form Res. 2024 Mar 8;8:e45202. doi: 10.2196/45202.
Vancomycin pharmacokinetics are highly variable in patients with critical illnesses, and clinicians commonly use population pharmacokinetic (PPK) models based on a Bayesian approach to dose. However, these models are population-dependent, may only sometimes meet the needs of individual patients, and are only used by experienced clinicians as a reference for making treatment decisions. To assist real-world clinicians, we developed a deep learning-based decision-making system that predicts vancomycin therapeutic drug monitoring (TDM) levels in patients in intensive care unit.
This study aimed to establish joint multilayer perceptron (JointMLP), a new deep-learning model for predicting vancomycin TDM levels, and compare its performance with the PPK models, extreme gradient boosting (XGBoost), and TabNet.
We used a 977-case data set split into training and testing groups in a 9:1 ratio. We performed external validation of the model using 1429 cases from Kangwon National University Hospital and 2394 cases from the Medical Information Mart for Intensive Care-IV (MIMIC-IV). In addition, we performed 10-fold cross-validation on the internal training data set and calculated the 95% CIs using the metric. Finally, we evaluated the generalization ability of the JointMLP model using the MIMIC-IV data set.
Our JointMLP model outperformed other models in predicting vancomycin TDM levels in internal and external data sets. Compared to PPK, the JointMLP model improved predictive power by up to 31% (mean absolute error [MAE] 6.68 vs 5.11) on the internal data set and 81% (MAE 11.87 vs 6.56) on the external data set. In addition, the JointMLP model significantly outperforms XGBoost and TabNet, with a 13% (MAE 5.75 vs 5.11) and 14% (MAE 5.85 vs 5.11) improvement in predictive accuracy on the inner data set, respectively. On both the internal and external data sets, our JointMLP model performed well compared to XGBoost and TabNet, achieving prediction accuracy improvements of 34% and 14%, respectively. Additionally, our JointMLP model showed higher robustness to outlier data than the other models, as evidenced by its higher root mean squared error performance across all data sets. The mean errors and variances of the JointMLP model were close to zero and smaller than those of the PPK model in internal and external data sets.
Our JointMLP approach can help optimize treatment outcomes in patients with critical illnesses in an intensive care unit setting, reducing side effects associated with suboptimal vancomycin administration. These include increased risk of bacterial resistance, extended hospital stays, and increased health care costs. In addition, the superior performance of our model compared to existing models highlights its potential to help real-world clinicians.
在危重症患者中,万古霉素的药代动力学具有高度变异性,临床医生通常使用基于贝叶斯方法的群体药代动力学(PPK)模型来确定剂量。然而,这些模型依赖于群体数据,可能仅有时能满足个体患者的需求,并且仅由经验丰富的临床医生用作制定治疗决策的参考。为了帮助实际临床工作中的医生,我们开发了一种基于深度学习的决策系统,用于预测重症监护病房患者的万古霉素治疗药物监测(TDM)水平。
本研究旨在建立一种新的用于预测万古霉素TDM水平的深度学习模型——联合多层感知器(JointMLP),并将其性能与PPK模型、极端梯度提升(XGBoost)和TabNet进行比较。
我们使用了一个包含977个病例的数据集,按照9:1的比例分为训练组和测试组。我们使用江原国立大学医院的1429个病例和重症监护医学信息集市-IV(MIMIC-IV)的2394个病例对模型进行外部验证。此外,我们对内部训练数据集进行了10倍交叉验证,并使用该指标计算了95%置信区间。最后,我们使用MIMIC-IV数据集评估JointMLP模型的泛化能力。
我们的JointMLP模型在预测内部和外部数据集中的万古霉素TDM水平方面优于其他模型。与PPK相比,JointMLP模型在内部数据集上的预测能力提高了31%(平均绝对误差[MAE]从6.68降至5.11),在外部数据集上提高了81%(MAE从11.87降至6.56)。此外,JointMLP模型显著优于XGBoost和TabNet,在内部数据集上的预测准确率分别提高了13%(MAE从5.75降至5.11)和14%(MAE从5.85降至5.11)。在内部和外部数据集上,我们的JointMLP模型与XGBoost和TabNet相比表现良好,预测准确率分别提高了34%和14%。此外,我们的JointMLP模型对异常值数据的鲁棒性高于其他模型,这在所有数据集上其更高的均方根误差性能中得到了证明。在内部和外部数据集中,JointMLP模型的平均误差和方差接近零且小于PPK模型。
我们的JointMLP方法有助于在重症监护病房环境中优化危重症患者的治疗结果,减少与万古霉素给药不当相关的副作用。这些副作用包括细菌耐药性增加、住院时间延长和医疗费用增加。此外,我们的模型与现有模型相比的卓越性能突出了其帮助实际临床医生的潜力。