Browsing by Author "Pérez Jeldres, Tamara de Lourdes"
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- ItemPrediction of Extraintestinal Manifestations in Inflammatory Bowel Disease Using Clinical and Genetic Variables with Machine Learning in a Latin IBD Group(2025) Pérez Jeldres, Tamara de Lourdes; Reyes Pérez, Paula; González Hormazábal, Patricio; Avendaño Soriano, Cristóbal Raimundo; Segovia Melero, Roberto; Azócar, Lorena; Verónica Silva; Andrés de la Vega; Arriagada, Elizabeth; Hernández, Elisa; Aguilar, Nataly; Pavez Ovalle, Carolina Denisse; Hernández Rocha, Cristián Antonio; Candia Balboa, Roberto Andrés; Miquel Poblete, Juan Francisco; Álvarez Lobos, Manuel Marcelo; Valdés, Ivania; Medina Rivera, Alejandra; Bustamante, María LeonorExtraintestinal manifestations (EIMs) significantly increase morbidity in inflammatory bowel disease (IBD) patients. In this study, we examined clinical and genetic factors associated with EIMs in 414 Latin IBD patients, utilizing machine learning for predictive modeling. In our IBD group (314 ulcerative colitis (UC) and 100 Crohn’s disease (CD) patients), EIM presence was assessed. Clinical differences between patients with and without EIMs were analyzed using Chi-square and Mann–Whitney U tests. Based on the genetic data of 232 patients, we identified variants linked to EIMs, and the polygenic risk score (PRS) was calculated. A machine learning approach based on logistic regression (LR), random forest (RF), and gradient boosting (GB) models was employed for predicting EIMs. EIMs were present in 29% (120/414) of patients. EIM patients were older (52 vs. 45 years, p = 0.01) and were more likely to have a family history of IBD (p = 0.02) or use anti-TNF therapy (p = 0.01). EIMs were more common in patients with CD than in those with UC without reaching statistical significance (p = 0.06). Four genetic variants were associated with EIM risk (rs9936833, rs4410871, rs3132680, and rs3823417). While the PRS showed limited predictive power (AUC = 0.69), the LR, GB, and RF models demonstrated good predictive capabilities. Approximately one-third of IBD patients experienced EIMs. Significant risk factors included genetic variants, family history, age, and anti-TNF therapy, with predictive models effectively identifying EIM risk.