背景(考古学)
监管科学
利益相关者
利益相关方参与
医学
业务
鉴定(生物学)
过程管理
风险分析(工程)
政治学
公共关系
古生物学
病理
生物
植物
作者
Dominik Karres,Giovanni Lesa,Franca Ligas,Sylvie Benchetrit,Sara Galluzzo,Karen Van Malderen,Jaroslav Štěrba,Maaike van Dartel,Marleen Renard,Peter Sisovsky,Siri Wang,Koen Norga
标识
DOI:10.1016/j.ejca.2022.09.025
摘要
Regulatory decisions on paediatric investigation plans (PIPs) aim at making effective and safe medicines timely available for children with high unmet medical need. At the same time, scientific knowledge progresses continuously leading frequently to the identification of new molecular targets in the therapeutic area of oncology. This, together with further efforts to optimise next generation medicines, results in novel innovative products in development pipelines. In the context of global regulatory development requirements for these growing pipelines of innovative products (e.g. US RACE for children Act), it is an increasing challenge to complete development efforts in paediatric oncology, a therapeutic area of rare and life-threatening diseases with high unmet needs.Regulators recognise feasibility challenges of the regulatory obligations in this context. Here, we explain the EU regulatory decision making strategy applied to paediatric oncology, which aims fostering evidence generation to support developments based on needs and robust science. Because there is a plethora of products under development within given classes of or within cancer types, priorities need to be identified and updated as evidence evolves. This also includes identifying the need for third or fourth generation products to secure focused and accelerated drug development.An agreed PIP, as a plan, is a living document which can be modified in light of new evidence. For this to be successful, input from the various relevant stakeholders, i.e. patients/parents, clinicians and investigators is required. To efficiently obtain this input, the EMA is co-organising with ACCELERATE oncology stakeholder engagement platform meetings.
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