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Next-generation Sequencing-Based Newborn Screening Initiatives in Europe: an Overview

Rare Disease and Orphan Drugs Journal(2023)

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Abstract
Aim: This article describes results from a survey targeting healthcare professionals (HCPs) leading newborn screening (NBS) initiatives in Europe. The survey was developed within the framework of a dedicated working group set up by the International Rare Diseases Research Consortium (IRDiRC) to gather collective efforts relating to NBS. The objectives of the survey were to gain a better understanding of approaches being tested for the expansion of NBS and to raise awareness of the significant momentum across Europe to evaluate novel technologies for use in future NBS programs. Methods: A web-based survey including 57 questions was developed to gather information about genomic newborn screening initiatives in Europe that are using next-generation sequencing (NGS) as a first-tier test. Responses were analyzed qualitatively, and aggregated results are presented herein. The identity of some initiatives is not presented to preserve confidentiality. Results: The findings of the survey indicated that most initiatives are in the planning stage and have not yet started. Although all 14 studies are heterogeneous in design, there is broad consensus that NGS approaches to NBS will, in the short term, be implemented in parallel with current screening programs. The results of this survey can be used to inform the design of studies still in the early planning stages. Conclusion: Here, we provide an overview of NGS-based initiatives in Europe. Importantly, the initiatives described herein will generate evidence to evaluate the utility and feasibility of NGS approaches to NBS, thereby shortening the pathway to responsible implementation of NGS in NBS and informing future research efforts.
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