{"title":"Pharmacogenomics Bias - Systematic distortion of study results by genetic heterogeneity.","authors":"Uwe Siebert, Gaby Sroczynski, Vera Zietemann","doi":"","DOIUrl":null,"url":null,"abstract":"<p><strong>Background: </strong>Decision analyses of drug treatments in chronic diseases require modeling the progression of disease and treatment response beyond the time horizon of clinical or epidemiological studies. In many such models, progression and drug effect have been applied uniformly to all patients; heterogeneity in progression, including pharmacogenomic effects, has been ignored.</p><p><strong>Objective: </strong>We sought to systematically evaluate the existence, direction and relative magnitude of a pharmacogenomics bias (PGX-Bias) resulting from failure to adjust for genetic heterogeneity in both treatment response (HT) and heterogeneity in progression of disease (HP) in decision-analytic studies based on clinical study data.</p><p><strong>Methods: </strong>We performed a systematic literature search in electronic databases for studies regarding the effect of genetic heterogeneity on the validity of study results. Included studies have been summarized in evidence tables. In the case of lacking evidence from published studies we sought to perform our own simulation considering both HT and HP. We constructed two simple Markov models with three basic health states (early-stage disease, late-stage disease, dead), one adjusting and the other not adjusting for genetic heterogeneity. Adjustment was done by creating different disease states for presence (G+) and absence (G-) of a dichotomous genetic factor. We compared the life expectancy gains attributable to treatment resulting from both models and defined pharmacogenomics bias as percent deviation of treatment-related life expectancy gains in the unadjusted model from those in the adjusted model. We calculated the bias as a function of underlying model parameters to create generic results. We then applied our model to lipid-lowering therapy with pravastatin in patients with coronary atherosclerosis, incorporating the influence of two TaqIB polymorphism variants (B1 and B2) on progression and drug efficacy as reported in the DNA substudy of the REGRESS trial.</p><p><strong>Results: </strong>We found four studies that systematically evaluated heterogeneity bias. All of them indicated that there is a potential of heterogeneity bias. However, none of these studies explicitly investigated the effect of genetic heterogeneity. Therefore, we performed our own simulation study. Our generic simulation showed that a purely HT-related bias is negative (conservative) and a purely HP-related bias is positive (liberal). For many typical scenarios, the absolute bias is smaller than 10%. In case of joint HP and HT, the overall bias is likely triggered by the HP component and reaches positive values >100% if fractions of \"fast progressors\" and \"strong treatment responders\" are low. In the clinical example with pravastatin therapy, the unadjusted model overestimated the true life-years gained (LYG) by 5.5% (1.07 LYG vs. 0.99 LYG for 56-year-old men).</p><p><strong>Conclusions: </strong>We have been able to predict the pharmacogenomics bias jointly caused by heterogeneity in progression of disease and heterogeneity in treatment response as a function of characteristics of patients, chronic disease, and treatment. In the case of joint presence of both types of heterogeneity, models ignoring this heterogeneity may generate results that overestimate the treatment benefit.</p>","PeriodicalId":89142,"journal":{"name":"GMS health technology assessment","volume":"4 ","pages":"Doc03"},"PeriodicalIF":0.0000,"publicationDate":"2008-04-15","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://ftp.ncbi.nlm.nih.gov/pub/pmc/oa_pdf/aa/f6/HTA-04-03.PMC3011301.pdf","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"GMS health technology assessment","FirstCategoryId":"1085","ListUrlMain":"","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Background: Decision analyses of drug treatments in chronic diseases require modeling the progression of disease and treatment response beyond the time horizon of clinical or epidemiological studies. In many such models, progression and drug effect have been applied uniformly to all patients; heterogeneity in progression, including pharmacogenomic effects, has been ignored.
Objective: We sought to systematically evaluate the existence, direction and relative magnitude of a pharmacogenomics bias (PGX-Bias) resulting from failure to adjust for genetic heterogeneity in both treatment response (HT) and heterogeneity in progression of disease (HP) in decision-analytic studies based on clinical study data.
Methods: We performed a systematic literature search in electronic databases for studies regarding the effect of genetic heterogeneity on the validity of study results. Included studies have been summarized in evidence tables. In the case of lacking evidence from published studies we sought to perform our own simulation considering both HT and HP. We constructed two simple Markov models with three basic health states (early-stage disease, late-stage disease, dead), one adjusting and the other not adjusting for genetic heterogeneity. Adjustment was done by creating different disease states for presence (G+) and absence (G-) of a dichotomous genetic factor. We compared the life expectancy gains attributable to treatment resulting from both models and defined pharmacogenomics bias as percent deviation of treatment-related life expectancy gains in the unadjusted model from those in the adjusted model. We calculated the bias as a function of underlying model parameters to create generic results. We then applied our model to lipid-lowering therapy with pravastatin in patients with coronary atherosclerosis, incorporating the influence of two TaqIB polymorphism variants (B1 and B2) on progression and drug efficacy as reported in the DNA substudy of the REGRESS trial.
Results: We found four studies that systematically evaluated heterogeneity bias. All of them indicated that there is a potential of heterogeneity bias. However, none of these studies explicitly investigated the effect of genetic heterogeneity. Therefore, we performed our own simulation study. Our generic simulation showed that a purely HT-related bias is negative (conservative) and a purely HP-related bias is positive (liberal). For many typical scenarios, the absolute bias is smaller than 10%. In case of joint HP and HT, the overall bias is likely triggered by the HP component and reaches positive values >100% if fractions of "fast progressors" and "strong treatment responders" are low. In the clinical example with pravastatin therapy, the unadjusted model overestimated the true life-years gained (LYG) by 5.5% (1.07 LYG vs. 0.99 LYG for 56-year-old men).
Conclusions: We have been able to predict the pharmacogenomics bias jointly caused by heterogeneity in progression of disease and heterogeneity in treatment response as a function of characteristics of patients, chronic disease, and treatment. In the case of joint presence of both types of heterogeneity, models ignoring this heterogeneity may generate results that overestimate the treatment benefit.
背景:慢性病药物治疗的决策分析需要在临床或流行病学研究的时间范围之外建立疾病进展和治疗反应的模型。在许多这样的模型中,进展和药物效果已统一应用于所有患者;进展的异质性,包括药物基因组效应,一直被忽视。目的:我们试图系统地评估药物基因组学偏倚(PGX-Bias)的存在、方向和相对程度,这种偏倚是由于决策分析研究中基于临床研究数据未能调整治疗反应(HT)和疾病进展(HP)的遗传异质性而导致的。方法:我们在电子数据库中进行了系统的文献检索,以研究遗传异质性对研究结果有效性的影响。纳入的研究在证据表中进行了总结。在缺乏已发表研究证据的情况下,我们试图在考虑HT和HP的情况下进行我们自己的模拟。我们构建了两个具有三种基本健康状态(早期疾病、晚期疾病、死亡)的简单马尔可夫模型,一个调整和另一个不调整遗传异质性。调整是通过创建不同的疾病状态的存在(G+)和不存在(G-)的二分遗传因素。我们比较了两种模型中治疗导致的预期寿命增加,并将药物基因组学偏差定义为未调整模型中与调整模型中治疗相关的预期寿命增加的百分比偏差。我们将偏差计算为基础模型参数的函数,以创建通用结果。然后,我们将我们的模型应用于冠状动脉粥样硬化患者的普伐他汀降脂治疗,纳入回归试验DNA亚研究中报道的两种TaqIB多态性变异(B1和B2)对进展和药物疗效的影响。结果:我们发现了四项系统评估异质性偏倚的研究。所有这些都表明存在异质性偏倚的可能性。然而,这些研究都没有明确调查遗传异质性的影响。因此,我们进行了自己的模拟研究。我们的一般模拟表明,纯ht相关的偏差是负的(保守的),纯hp相关的偏差是正的(自由的)。对于许多典型场景,绝对偏差小于10%。在HP和HT联合的情况下,如果“快速进展者”和“强治疗反应者”的比例较低,总体偏差可能由HP成分触发,达到大于100%的阳性值。在普伐他汀治疗的临床实例中,未经调整的模型高估了56岁男性的真实生命年(LYG) 5.5% (1.07 LYG vs 0.99 LYG)。结论:我们已经能够预测由疾病进展的异质性和治疗反应的异质性作为患者、慢性疾病和治疗特征的函数共同引起的药物基因组学偏倚。在两种异质性同时存在的情况下,忽略这种异质性的模型可能会产生高估治疗效益的结果。