Molecular Genetics and Metabolism Reports (Sep 2016)

Diagnosis of adenylosuccinate lyase deficiency by metabolomic profiling in plasma reveals a phenotypic spectrum

  • Taraka R. Donti,
  • Gerarda Cappuccio,
  • Leroy Hubert,
  • Juanita Neira,
  • Paldeep S. Atwal,
  • Marcus J. Miller,
  • Aaron L. Cardon,
  • V. Reid Sutton,
  • Brenda E. Porter,
  • Fiona M. Baumer,
  • Michael F. Wangler,
  • Qin Sun,
  • Lisa T. Emrick,
  • Sarah H. Elsea

DOI
https://doi.org/10.1016/j.ymgmr.2016.07.007
Journal volume & issue
Vol. 8, no. C
pp. 61 – 66

Abstract

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Adenylosuccinate lyase (ADSL) deficiency is a rare autosomal recessive neurometabolic disorder that presents with a broad-spectrum of neurological and physiological symptoms. The ADSL gene produces an enzyme with binary molecular roles in de novo purine synthesis and purine nucleotide recycling. The biochemical phenotype of ADSL deficiency, accumulation of SAICAr and succinyladenosine (S-Ado) in biofluids of affected individuals, serves as the traditional target for diagnosis with targeted quantitative urine purine analysis employed as the predominate method of detection. In this study, we report the diagnosis of ADSL deficiency using an alternative method, untargeted metabolomic profiling, an analytical scheme capable of generating semi-quantitative z-score values for over 1000 unique compounds in a single analysis of a specimen. Using this method to analyze plasma, we diagnosed ADSL deficiency in four patients and confirmed these findings with targeted quantitative biochemical analysis and molecular genetic testing. ADSL deficiency is part of a large a group of neurometabolic disorders, with a wide range of severity and sharing a broad differential diagnosis. This phenotypic similarity among these many inborn errors of metabolism (IEMs) has classically stood as a hurdle in their initial diagnosis and subsequent treatment. The findings presented here demonstrate the clinical utility of metabolomic profiling in the diagnosis of ADSL deficiency and highlights the potential of this technology in the diagnostic evaluation of individuals with neurologic phenotypes.

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