Janssen Research and Development, Fremont, CA, USA.
Vital Transformation, Wezembeek-Oppem, Belgium.
Drug Discov Today. 2018 Mar;23(3):652-660. doi: 10.1016/j.drudis.2017.12.002. Epub 2017 Dec 30.
The objective of this paper is to identify the extent to which real world data (RWD) is being utilized, or could be utilized, at scale in drug development. Through screening peer-reviewed literature, we have cited specific examples where RWD can be used for biomarker discovery or validation, gaining a new understanding of a disease or disease associations, discovering new markers for patient stratification and targeted therapies, new markers for identifying persons with a disease, and pharmacovigilance. None of the papers meeting our criteria was specifically geared toward novel targets or indications in the biopharmaceutical sector; the majority were focused on the area of public health, often sponsored by universities, insurance providers or in combination with public health bodies such as national insurers. The field is still in an early phase of practical application, and is being harnessed broadly where it serves the most direct need in public health applications in early, rare and novel disease incidents. However, these exemplars provide a valuable contribution to insights on the use of RWD to create novel, faster and less invasive approaches to advance disease understanding and biomarker discovery. We believe that pharma needs to invest in making better use of Electronic Health Records and the need for more precompetitive collaboration to grow the scale of this 'big denominator' capability, especially given the needs of precision medicine research.
本文旨在确定在药物开发中,实际数据(RWD)在何种程度上得到了利用,或者可以大规模利用。通过筛选同行评议的文献,我们引用了具体的例子,说明 RWD 可用于生物标志物的发现或验证,从而对疾病或疾病相关性有新的认识,发现新的患者分层和靶向治疗标志物,用于识别疾病患者的新标志物,以及药物警戒。符合我们标准的论文没有一篇是专门针对生物制药领域的新靶点或新适应症的;大多数论文都集中在公共卫生领域,通常由大学、保险公司赞助,或与国家保险公司等公共卫生机构联合赞助。该领域仍处于实际应用的早期阶段,在早期、罕见和新型疾病事件中,在最能直接满足公共卫生应用需求的领域广泛利用。然而,这些范例为利用 RWD 创造新颖、更快、更少侵入性的方法来推进疾病理解和生物标志物发现提供了宝贵的见解。我们认为制药公司需要投资于更好地利用电子健康记录,并且需要更多的非竞争合作来扩大这一“大数据”能力的规模,特别是考虑到精准医学研究的需求。