Laboratory of Clinical Pharmacology, Graduate School of Pharmaceutical Sciences, Chiba University, University Hospital, Department of Cardiovascular Surgery, Chiba, Japan.
Thromb Res. 2010 Sep;126(3):183-90. doi: 10.1016/j.thromres.2010.05.016. Epub 2010 Jun 9.
Several factors responsible for inter-individual differences in response to warfarin have been confirmed; however, unidentified factors appear to remain. The purpose of this study was to examine a simple method to evaluate whether optional variables are appropriate as factors to improve dosing algorithms.
All patients were Japanese. Genotyping of selected genes was conducted, and other information was obtained from medical record. Dosing algorithms were constructed by multivariate linear regression analyses and were evaluated by the Akaike Information Criterion (AIC).
Multivariate analysis showed that white blood-cell count (WBC), concomitant use of allopurinol, and CYP4F2 genotype are apparently involved in warfarin dose variation, in addition to well-known factors, such as age and VKORC1 genotype. We evaluated the adequacy of these variables as factors to improve the dosing algorithm using the AIC. Addition of WBC, allopurinol administration and CYP4F2 genotype to the basal algorithm resulted in decreased AIC, suggesting that these factor candidates may contribute to improving the prediction of warfarin maintenance dose. This study is the first to evaluate the warfarin dosing algorithm by AIC. To further improve the dosing algorithm, AIC may be a simple and useful tool to evaluate both the model itself and factors to be incorporated into the algorithm.
已确认有几个导致华法林个体间反应差异的因素;但仍存在一些尚未明确的因素。本研究旨在探讨一种简单的方法,以评估可选变量是否适合作为改善剂量算法的因素。
所有患者均为日本人。对选定基因进行了基因分型,并从病历中获取了其他信息。通过多元线性回归分析构建了给药算法,并通过赤池信息量准则(AIC)进行了评估。
多变量分析表明,除了年龄和 VKORC1 基因型等已知因素外,白细胞计数(WBC)、别嘌呤醇的联合使用以及 CYP4F2 基因型显然与华法林剂量变化有关。我们使用 AIC 评估了这些变量作为改善给药算法的因素的适当性。将 WBC、别嘌呤醇给药和 CYP4F2 基因型添加到基础算法中,AIC 降低,表明这些候选因素可能有助于改善华法林维持剂量的预测。本研究首次通过 AIC 评估了华法林给药算法。为了进一步改进给药算法,AIC 可能是评估模型本身和要纳入算法的因素的一种简单而有用的工具。