Department of Biomedical Informatics and Medical Education, University of Washington School of Medicine, Seattle, Washington, USA.
J Am Med Inform Assoc. 2012 Sep-Oct;19(5):840-50. doi: 10.1136/amiajnl-2011-000405. Epub 2012 Apr 26.
Pharmacogenomics evaluations of variability in drug metabolic processes may be useful for making individual drug response predictions. We present an approach to deriving 'phenotype scores' based on existing pharmacogenomics knowledge and a patient's genomics data. Pharmacogenomics plays an important role in the bioactivation of tamoxifen, a prodrug administered to patients for breast cancer treatment. Tamoxifen is therefore considered a model for many drugs requiring bioactivation. We investigate whether this knowledge-based approach can be applied to produce a phenotype score that is predictive of the endoxifen/N-desmethyltamoxifen (NDM) plasma concentration ratio in patients taking tamoxifen.
We implement a knowledge-based model for calculating phenotype scores from patient-specific genotype data. These data include allelic variants of genes encoding enzymes involved in the bioactivation of tamoxifen. We performed quantile linear regression to evaluate whether six phenotype scoring algorithms are predictive of patient endoxifen/NDM plasma concentration ratio, and validate our scoring methods.
Our model illustrates a knowledge-based approach to predict drug metabolism efficacy given patient genomics data. Results showed that for one phenotype scoring algorithm, scores were weakly correlated with patient endoxifen/NDM plasma concentration ratios. This algorithm performed better than simple metrics for variation in individual and multiple genes.
We discuss advantages of the model, challenges to its implementation in a personalized medicine context, and provide example future directions.
We demonstrate the utility of our model in a tamoxifen case study context. We also provide evidence that more complicated polygenic models are needed to represent heterogeneity in clinical outcomes.
药物代谢过程中变异的药物基因组学评估可能有助于进行个体药物反应预测。我们提出了一种基于现有药物基因组学知识和患者基因组数据推导“表型评分”的方法。药物基因组学在他莫昔芬(一种用于乳腺癌治疗的前药)的生物活化中起着重要作用。因此,他莫昔芬被认为是许多需要生物活化的药物的模型。我们研究了这种基于知识的方法是否可以用于产生一种表型评分,该评分可预测服用他莫昔芬的患者中环己烯雌酚/N-去甲基他莫昔芬(NDM)的血浆浓度比。
我们实施了一种基于知识的模型,用于根据患者特异性基因型数据计算表型评分。这些数据包括编码参与他莫昔芬生物活化的酶的基因的等位基因变体。我们进行了分位数线性回归,以评估六种表型评分算法是否可预测患者中环己烯雌酚/NDM 血浆浓度比,并验证了我们的评分方法。
我们的模型说明了一种基于知识的方法,用于根据患者基因组数据预测药物代谢功效。结果表明,对于一种表型评分算法,评分与患者环己烯雌酚/NDM 血浆浓度比之间存在弱相关性。该算法比个体和多个基因变异的简单指标表现更好。
我们讨论了模型的优势、在个性化医疗环境中实施模型的挑战,并提供了未来的示例方向。
我们在他莫昔芬病例研究背景下证明了我们模型的实用性。我们还提供了证据表明,需要更复杂的多基因模型来表示临床结果的异质性。