Biochemical algorithm to identify individuals with ALPL variants among subjects with persistent hypophosphatasaemia

Hypophosphatasia (HPP) is a rare and underdiagnosed condition characterized by deficient bone and teeth mineralization. The aim of this study was first, to evaluate the diagnostic utility of employing alkaline phosphatase (ALP) threshold levels to identify adults with variants in ALPL among individu...

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Veröffentlicht in:Orphanet journal of rare diseases 2022-03, Vol.17 (1), p.98-11, Article 98
Hauptverfasser: Tornero, C, Navarro-Compán, V, Buño, A, Heath, K E, Díaz-Almirón, M, Balsa, A, Tenorio, J A, Quer, J, Aguado, P
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Sprache:eng
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Zusammenfassung:Hypophosphatasia (HPP) is a rare and underdiagnosed condition characterized by deficient bone and teeth mineralization. The aim of this study was first, to evaluate the diagnostic utility of employing alkaline phosphatase (ALP) threshold levels to identify adults with variants in ALPL among individuals with persistently low ALP levels and second, to determine the value of also including its substrates (serum pyridoxal-5'-phosphate-PLP-and urinary phosphoetanolamine-PEA) for this purpose in order to create a biochemical algorithm that could facilitate the diagnostic work-up of HPP. The study population comprised 77 subjects with persistent hypophosphatasaemia. They were divided into two groups according to the presence (+GT) or absence (-GT) of pathogenic ALPL variants: 40 +GT and 37 -GT. Diagnostic utility measures were calculated for different ALP thresholds and Receiver Operating Characteristic (ROC) curves were employed to determine PLP and PEA optimal cut-off levels to predict the presence of variants. The optimal threshold for ALP was 25 IU/L; for PLP, 180 nmol/L and for PEA, 30 µmol/g creatinine. Biochemical predictive models were assessed using binary logistic regression analysis and bootstrapping machine learning technique and results were then validated. For ALP 
ISSN:1750-1172
1750-1172
DOI:10.1186/s13023-022-02253-5