Back to Search Start Over

OptiMo‐LDLr: An Integrated In Silico Model with Enhanced Predictive Power for LDL Receptor Variants, Unraveling Hot Spot Pathogenic Residues

Authors :
Asier Larrea‐Sebal
Iñaki Sasiain
Shifa Jebari‐Benslaiman
Unai Galicia‐Garcia
Kepa B. Uribe
Asier Benito‐Vicente
Irene Gracia‐Rubio
Harbil Bediaga‐Bañeres
Sonia Arrasate
Ana Cenarro
Fernando Civeira
Humberto González‐Díaz
Cesar Martín
Source :
Advanced Science, Vol 11, Iss 13, Pp n/a-n/a (2024)
Publication Year :
2024
Publisher :
Wiley, 2024.

Abstract

Abstract Familial hypercholesterolemia (FH) is an inherited metabolic disease affecting cholesterol metabolism, with 90% of cases caused by mutations in the LDL receptor gene (LDLR), primarily missense mutations. This study aims to integrate six commonly used predictive software to create a new model for predicting LDLR mutation pathogenicity and mapping hot spot residues. Six predictive‐software are selected: Polyphen‐2, SIFT, MutationTaster, REVEL, VARITY, and MLb‐LDLr. Software accuracy is tested with the characterized variants annotated in ClinVar and, by bioinformatic and machine learning techniques all models are integrated into a more accurate one. The resulting optimized model presents a specificity of 96.71% and a sensitivity of 98.36%. Hot spot residues with high potential of pathogenicity appear across all domains except for the signal peptide and the O‐linked domain. In addition, translating this information into 3D structure of the LDLr highlights potentially pathogenic clusters within the different domains, which may be related to specific biological function. The results of this work provide a powerful tool to classify LDLR pathogenic variants. Moreover, an open‐access guide user interface (OptiMo‐LDLr) is provided to the scientific community. This study shows that combination of several predictive software results in a more accurate prediction to help clinicians in FH diagnosis.

Details

Language :
English
ISSN :
21983844
Volume :
11
Issue :
13
Database :
Directory of Open Access Journals
Journal :
Advanced Science
Publication Type :
Academic Journal
Accession number :
edsdoj.91edba494e384699a0634101a006d890
Document Type :
article
Full Text :
https://doi.org/10.1002/advs.202305177