To B(enign) or Not to B: Functionalisation of Variant in a Mild Form of Argininosuccinate Lyase Deficiency Identified Through Newborn Screening
CLINICAL DYSMORPHOLOGY(2024)
KK Womens & Childrens Hosp | Agcy Sci Technol & ResASTAR | Duke NUS Med Sch
Abstract
Argininosuccinate lyase (ASL) deficiency is an autosomal recessive disorder of the urea cycle with a diverse spectrum of clinical presentation that is detectable in newborn screening. We report an 8-year-old girl with ASL deficiency who was detected through newborn screening and was confirmed using biochemical and functional assay. She is compound heterozygous for a likely pathogenic variant NM_000048.4(ASL):c.283C>T (p.Arg95Cys) and a likely benign variant NM_000048.4(ASL): c.1319T>C (p.Leu440Pro). Functional characterisation of the likely benign genetic variant in ASL was performed. Genomic sequencing was performed on the index patient presenting with non-specific symptoms of poor feeding and lethargy and shown to have increased serum and urine argininosuccinic acid. Functional assay using HEK293T cell model was performed. ASL enzymatic activity was reduced for Leu440Pro. This study highlights the role of functional testing of a variant that may appear benign in a patient with a phenotype consistent with ASL deficiency, and reclassifies NM_000048.4(ASL): c.1319T>C (p.Leu440Pro) variant as likely pathogenic.
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Key words
argininosuccinase deficiency,argininosuccinic aciduria,ASL deficiency,functional assay,newborn screening,urea cycle defect
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