Sardella Marco, Lungu Calin
Department of Pharmacovigilance, ADIENNE S.r.l.S.U., Via Galileo Galilei, 19, 20867, Italy.
Department of Pharmacovigilance, DDCS S.A., Luxembourg.
Ther Adv Drug Saf. 2019 Oct 21;10:2042098619882819. doi: 10.1177/2042098619882819. eCollection 2019.
Different strategies have been studied to allow a better characterization of the safety profile of orphan drugs soon after their approval. At the end of the development phases only few data are available because of the small number of subjects exposed to an orphan medicine for the treatment of rare or ultra-rare conditions. As a consequence, the evaluation of the safety profile is limited at the time of the first approval. In the post-marketing period, all available sources should be combined for a better understanding of the safety of orphan drugs. These sources, include outputs from large databases such as the European Medicines Agency's EudraVigilance database. Analyses of data from this source are required to be performed by marketing authorization holders (MAHs) as part of their signal management activities. In 2018, the Pharmacovigilance Risk Assessment Committee (PRAC) assessed 114 confirmed signals, 79% of which included data from EudraVigilance. MAHs have access to statistical calculations for drug-event combinations (DECs) from EudraVigilance, provided in the form of measures of disproportionality of ratios of the observed proportion of spontaneous cases for a DEC in relation to the proportion of cases that would be expected if no association existed between the drug and the event. However, such statistical summaries for orphan drugs could be misleading because of the very limited safety data available for orphan drugs (under-reporting together with low numbers of exposed patients). In addition, the applied statistical methodology in most instances is constrained by different confounding factors such as indications of specific medicines and the wide spectrum of medical conditions/diseases of patients from whom reporting of disproportionality ratios are derived (i.e. proportions of DECs for orphan drugs (ODECs) from a small patient population suffering the rare disease and the proportion of DECs in the rest of the population represented in the whole database who have been treated with other medicines for a wide range of indications, and prescribed to treat completely different medical conditions). As expected, these statistical calculations produced not only signals of disproportionate reporting (SDRs) that are false positives, but also not sensitive enough to detect certain SDRs, thus resulting in false negatives. In the context of rare/ultra-rare life-threatening diseases where new molecules have been made available on the market on the basis of their proven efficacy, but with only limited safety data at the time of approval, false negatives could be a special concern since unlikely converted in positives or becoming positives with notable delay. Subgroup analyses (using a limited dataset comprising ADRs within specific individual case safety reports (ICSRs), sorted by indication/disease relevant to the drug of interest could, at least in part, possibly reduce some of the weaknesses resulting from the abovementioned confounding factors. On the other hand it could also cause the loss of some identification of SDRs that would be captured if no database restrictions had been undertaken. Therefore, data subgroup analysis should not be selected as a preferred approach to quantitative signal detection for orphan drugs but rather evaluated as complementary possibly to confirm negatives or to further characterize detected SDRs. Some examples of false negatives originating from quantitative signal detection in EudraVigilance applied to orphan drugs are discussed in this article.
人们研究了不同策略,以便在孤儿药获批后不久就能更好地描述其安全性特征。在研发阶段结束时,由于接触用于治疗罕见或超罕见病症的孤儿药的受试者数量较少,所以可用数据有限。因此,在首次获批时,对安全性特征的评估是有限的。在上市后阶段,应整合所有可用来源,以便更好地了解孤儿药的安全性。这些来源包括大型数据库的输出结果,如欧洲药品管理局的EudraVigilance数据库。作为其信号管理活动的一部分,上市许可持有人(MAH)需要对来自该来源的数据进行分析。2018年,药物警戒风险评估委员会(PRAC)评估了114个确认信号,其中79%包含来自EudraVigilance的数据。MAH可以获取EudraVigilance中药物 - 事件组合(DEC)的统计计算结果,其形式为DEC自发病例观察比例与假设药物和事件之间无关联时预期病例比例的不成比例度量。然而,由于孤儿药可用的安全性数据非常有限(报告不足以及暴露患者数量少),此类孤儿药的统计摘要可能会产生误导。此外,在大多数情况下,所应用的统计方法受到不同混杂因素的限制,如特定药物的适应症以及报告不成比例比率所源自的患者的广泛医疗状况/疾病谱(即来自患有罕见疾病的小患者群体的孤儿药DEC(ODEC)比例以及整个数据库中其余人群中接受其他多种适应症药物治疗并被处方用于治疗完全不同医疗状况的DEC比例)。不出所料,这些统计计算不仅产生了作为假阳性的不成比例报告信号(SDR),而且对检测某些SDR的敏感度也不够,从而导致假阴性。在罕见/超罕见的危及生命疾病的背景下,新分子基于已证实的疗效上市,但获批时安全性数据有限,假阴性可能是一个特别令人担忧的问题,因为不太可能转变为阳性或显著延迟后才变为阳性。亚组分析(使用包含特定个体病例安全性报告(ICSR)内按与感兴趣药物相关的适应症/疾病分类的药品不良反应的有限数据集)至少在一定程度上可能会减少上述混杂因素导致的一些弱点问题。另一方面,它也可能导致丢失一些如果没有进行数据库限制就会捕获的SDR识别信息。因此,数据亚组分析不应被选为孤儿药定量信号检测的首选方法,而应评估为可能作为补充方法,以确认阴性结果或进一步描述检测到的SDR。本文讨论了一些在EudraVigilance中应用于孤儿药的定量信号检测产生假阴性的例子。