6533b852fe1ef96bd12ab72a

RESEARCH PRODUCT

0132: Identifying familial hypercholesterolemia from registries of patients with acute myocardial infarction: an algorithm-based approach

Marianne ZellerClaude TouzeryTabassome SimonNicolas DanchinMichel FarnierYves Cottin

subject

education.field_of_studybusiness.industryVascular diseasePopulationFamilial hypercholesterolemiaFamilial hypercholesterolemia030204 cardiovascular system & hematology[ SDV.MHEP.CSC ] Life Sciences [q-bio]/Human health and pathology/Cardiology and cardiovascular systemmedicine.disease03 medical and health sciencesMyocardial infarction0302 clinical medicine[SDV.MHEP.CSC]Life Sciences [q-bio]/Human health and pathology/Cardiology and cardiovascular systemMedicineIn patient030212 general & internal medicineMyocardial infarctionLipid loweringFamily historyCardiology and Cardiovascular MedicinebusinesseducationAlgorithmLipid clinicComputingMilieux_MISCELLANEOUS

description

Background and aims Familial hypercholesterolemia (FH) is at very high risk of early myocardial infarction (MI). The prevalence of FH, which is estimated to be at least 1:500 in the general population, remains unclear in patients with acute MI. From databases of 2 French regional and nationwide registries of acute MI (RICO and FAST-MI, respectively), we aimed to determine FH prevalence by developing a specific algorithm. Methods and results Consecutive patients with AMI ≤48 hours of onset included 1) in FAST-MI: during a one-month period in 213 institutions at the end of 2005 and 2) in RICO: from January 2001 December 2013 (≈13y), were considered in the 2 databases. The algorithm was adapted from Dutch lipid clinic network criteria and was build upon 4 variables (i.e. LDL level and previous use of lipid lowering medications, premature and family history) to identify FH probability. The LDL level was adjusted on each type of lipid lowering medications and the probability of FH was defined taking into account missing data rate. Among the 7484 patients included in the RICO registry, 29.1% had premature vascular disease, 29.7% had familial history, 19.9% were under lipid lowering medications and 9.7% had LDL ≥5mmol/L. FH prevalence was calculated as unlikely (72.6%), possible (24.6%) and probable /definite (2.8%). Conclusion Our 4-variables algorithm is relevant to determine FH probability in databases from MI registries. In this large population reflecting routine clinical practice in acute MI, a high prevalence of FH was found, suggesting the opportunity for prevention strategies.

10.1016/s1878-6480(16)30058-1https://hal.archives-ouvertes.fr/hal-01514197