Determining the characteristics of genetic disorders that predict inclusion in newborn genomic sequencing programs.

Thomas Minten,Nina B Gold,Sarah Bick, Sophia Adelson, Nils Gehlenborg,Laura M Amendola,François Boemer,Alison J Coffey, Nicolas Encina, Bianca E Russell,Laurent Servais, Kristen L Sund, Petros Tsipouras,David Bick,Ryan J Taft,Robert C Green, ICoNS Gene List Subcommittee

medRxiv : the preprint server for health sciences(2024)

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摘要
Over 30 international research studies and commercial laboratories are exploring the use of genomic sequencing to screen apparently healthy newborns for genetic disorders. These programs have individualized processes for determining which genes and genetic disorders are queried and reported in newborns. We compared lists of genes from 26 research and commercial newborn screening programs and found substantial heterogeneity among the genes included. A total of 1,750 genes were included in at least one newborn genome sequencing program, but only 74 genes were included on >80% of gene lists, 16 of which are not associated with conditions on the Recommended Uniform Screening Panel. We used a linear regression model to explore factors related to the inclusion of individual genes across programs, finding that a high evidence base as well as treatment efficacy were two of the most important factors for inclusion. We applied a machine learning model to predict how suitable a gene is for newborn sequencing. As knowledge about and treatments for genetic disorders expand, this model provides a dynamic tool to reassess genes for newborn screening implementation. This study highlights the complex landscape of gene list curation among genomic newborn screening programs and proposes an empirical path forward for determining the genes and disorders of highest priority for newborn screening programs.
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