๐Ÿ‘ค Ahmed Bendary

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Ammal M Metwally, Nesma M Elaraby, Wafaa M Ezzat +10 more ยท 2025 ยท Lipids in health and disease ยท BioMed Central ยท added 2026-04-24
Familial dyslipidemia (FD), particularly familial hypercholesterolemia (FH), is a major contributor to premature cardiovascular disease (CVD), especially in regions with high consanguinity and underut Show more
Familial dyslipidemia (FD), particularly familial hypercholesterolemia (FH), is a major contributor to premature cardiovascular disease (CVD), especially in regions with high consanguinity and underutilized genetic screening, such as Egypt. This study aimed to assess clinical, biochemical, and genetic factors that differentiate FD patients with and without CVD, and to develop a composite risk score for individualized stratification. A cross-sectional study was conducted on 60 Egyptian patients aged 15-25 years with genetically confirmed FD, equally divided based on CVD status. All participants underwent detailed clinical assessment, lipid profiling, and targeted next-generation sequencing of LDLR, APOB, and PCSK9 genes. Missense variants were evaluated using SIFT, PolyPhen-2, CADD, and ฮ”ฮ”G stability scores, and classified according to ACMG criteria. Compared to non-CVD patients, those with CVD had significantly higher triglyceride levels (median: 356.5 vs. 236.5ย mg/dL; pโ€‰<โ€‰0.001) and a higher frequency of heterozygous pathogenic LDLR variants (30.0% vs. 3.3%; pโ€‰=โ€‰0.006), while homozygous variants were more common in non-CVD patients (26.7% vs. 0%; pโ€‰=โ€‰0.002). Deleterious missense variants were notably more frequent in the CVD group (56.7% vs. 10.0%; pโ€‰<โ€‰0.001). A 10-variable composite risk score integrating clinical, lipid, and bioinformatic predictors effectively distinguished high- and moderate-risk cases (AUCโ€‰=โ€‰0.742; pโ€‰=โ€‰0.022), with 89.5% sensitivity and 81.8% negative predictive value. The study highlights the importance of combining clinical and genomic data for early risk stratification and introduces a pragmatic tool for identifying high-risk youth in resource-limited, consanguineous populations. Show less
๐Ÿ“„ PDF DOI: 10.1186/s12944-025-02814-0
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