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Proposal of a familial hypercholesterolemia paediatric diagnostic score (FH-PeDS)

Jan KafolDepartment of Vascular Diseases, Division of Internal Medicine, University Medical Centre Ljubljana , Ljubljana 1000 ,Beatriz MirandaBioISI–Biosystems and Integrative Sciences Institute, Faculty of Sciences, University of Lisboa , Campo Grande, Lisboa 1749-016 ,Rok SikonjaLatticeFlow AI , Zürich 8005 ,Jaka ŠikonjaDepartment of Endocrinology, Diabetes and Metabolic Diseases, Division of Internal Medicine, University Medical Centre Ljubljana , Ljubljana 1000 ,Albert WiegmanDepartment of Pediatrics, Amsterdam University Medical Centers, University of Amsterdam , Amsterdam 1105 ,Ana Margarida MedeirosBioISI–Biosystems and Integrative Sciences Institute, Faculty of Sciences, University of Lisboa , Campo Grande, Lisboa 1749-016 ,Ana Catarina AlvesBioISI–Biosystems and Integrative Sciences Institute, Faculty of Sciences, University of Lisboa , Campo Grande, Lisboa 1749-016 ,Tomáš FreibergerCentre for Cardiovascular Surgery and Transplantation, and Medical Faculty, Masaryk University , Brno 602 00 ,Barbara A. HuttenAmsterdam Cardiovascular Sciences, Amsterdam University Medical Center, University of Amsterdam , Amsterdam 1105 ,Matej MlinaričDepartment of Endocrinology, Diabetes, and Metabolic Diseases, University Children’s Hospital, University Medical Centre Ljubljana , Bohoriceva 20, Ljubljana 1000 ,Tadej BattelinoDepartment of Endocrinology, Diabetes, and Metabolic Diseases, University Children’s Hospital, University Medical Centre Ljubljana , Bohoriceva 20, Ljubljana 1000 ,Steve E. HumphriesInstitute of Cardiovascular Science, Faculty of Population Health, University College London , London WC1E 6BT ,Mafalda BourbonBioISI–Biosystems and Integrative Sciences Institute, Faculty of Sciences, University of Lisboa , Campo Grande, Lisboa 1749-016 ,Urh GrošeljDepartment of Endocrinology, Diabetes, and Metabolic Diseases, University Children’s Hospital, University Medical Centre Ljubljana , Bohoriceva 20, Ljubljana 1000 ,
2025en
ABI

Аннотация

BACKGROUND AND AIMS: Familial hypercholesterolemia (FH) significantly increases cardiovascular risk from childhood yet remains widely underdiagnosed. This cross-sectional study aimed to evaluate existing pediatric FH diagnostic criteria in real-world cohorts and to develop two novel diagnostic tools: a semi-quantitative scoring system (FH-PeDS) and a machine learning model (ML-FH-PeDS) to enhance early FH detection. METHODS: Five established FH diagnostic criteria were assesed (Dutch Lipid Clinics Network [DLCN], Simon Broome, EAS, Simplified Canadian, and Japanese Atherosclerosis Society) in Slovenian (N=1,360) and Portuguese (N=340) pediatric hypercholesterolemia cohorts, using FH-causing variants as the reference standard. FH-PeDS was developed from the Slovenian cohort, and ML-FH-PeDS was trained and tested using a 60%/40% split before external validation in the Portuguese cohort. RESULTS: Only 47.4% of genetically confirmed FH cases were identified by all established criteria, while 10.9% were missed entirely. FH-PeDS outperformed DLCN in the combined cohort (AUC 0.897 vs. 0.857; p<0.01). ML-FH-PeDS showed superior predictive power (AUC 0.932 in training, 0.904 in testing vs. 0.852 for DLCN; p<0.01) and performed best as a confirmatory test in the testing subgroup (39.7% sensitivity, 87.7% PPV at 98% specificity). In the Portuguese cohort, ML-FH-PeDS maintained strong predictive performance (AUC 0.867 vs. 0.815 for DLCN; p<0.01) despite population differences. CONCLUSIONS: Current FH diagnostic criteria perform suboptimally in children. FH-PeDS and ML-FH-PeDS provide tools to improve FH detection, particularly where genetic testing is limited. They also help guide genetic testing decisions for hypercholesterolemic children. By enabling earlier diagnosis and intervention, these tools may reduce long-term cardiovascular risk and improve outcomes.

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