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Multifactorial landscape parses to reveal a predictive model for knee osteoarthritis

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posted on 2025-03-07, 14:21 authored by M Singh, S Valecha, R Khinda, N Kumar, S Singh, PK Juneja, T Kaur, MD Napoli, JS Minhas, P Singh, S Mastana
The present study attempted to investigate whether concerted contributions of significant risk variables, pro‐inflammatory markers, and candidate genes translate into a predictive marker for knee osteoarthritis (KOA). The present study comprised 279 confirmed osteoarthritis patients (Kellgren and Lawrence scale >2) and 287 controls. Twenty SNPs within five genes (CRP, COL1A1, IL‐6, VDR, and eNOS), four pro‐inflammatory markers (interleukin‐6 (IL‐6), interleuin‐1 beta (IL‐1β), tumor necrosis factor alpha (TNF‐α), and high sensitivity C‐reactive protein (hsCRP)), along with significant risk variables were investigated. A receiver operating characteristic (ROC) curve was used to observe the predictive ability of the model for distinguishing patients with KOA. Multivariable logistic regression analysis revealed that higher body mass index (BMI), triglycerides (TG), poor sleep, IL‐6, IL‐1β, and hsCRP were independent predictors for KOA after adjusting for the confounding from other risk variables. Four susceptibility haplotypes for the risk of KOA, AGT, GGGGCT, AGC, and CTAAAT, were observed within CRP, IL‐6, VDR, and eNOS genes, which showed their impact in recessive β(SE): 2.11 (0.76), recessive β(SE): 2.75 (0.59), dominant β(SE): 1.89 (0.52), and multiplicative modes β(SE): 1.89 (0.52), respectively. ROC curve analysis revealed the model comprising higher values of BMI, poor sleep, IL‐6, and IL‐1β was predictive of KOA (AUC: 0.80, 95%CI: 0.74–0.86, p< 0.001), and the strength of the predictive ability increased when susceptibility haplotypes AGC and GGGGCT were involved (AUC: 0.90, 95%CI: 0.87–0.95, p< 0.001).This study offers a predictive marker for KOA based on the risk scores of some pertinent genes and their genetic variants along with some pro‐inflammatory markers and traditional risk variables.

History

Published in

International Journal of Environmental Research and Public Health

Volume

18

Issue

11

Pagination

5933 - 5933

Publisher

MDPI AG

issn

1661-7827

eissn

1660-4601

Spatial coverage

Switzerland

Language

eng

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