Please use this identifier to cite or link to this item: http://hdl.handle.net/2445/188898
Title: Using Interpretable Machine Learning to Identify Baseline Predictive Factors of Remission and Drug Durability in Crohn’s Disease Patients on Ustekinumab
Author: Chaparro, María
Baston Rey, Iria
Fernández Salgado, Estela
González García, Javier
Ramos, Laura
Diz Lois Palomares, María Teresa
Argüelles Arias, Federico
Iglesias Flores, Eva
Cabello, Mercedes
Rubio Iturria, Saioa
Núñez Ortiz, Andrea
Charro, Mara
Ginard, Daniel
Dueñas Sadornil, Carmen
Merino Ochoa, Olga
Busquets, David
Iyo, Eduardo
Gutiérrez Casbas, Ana
Ramírez de la Piscina, Patricia
Boscá Watts, Marta Maia
Arroyo, Maite
García, María José
Hinojosa, Esther
Gordillo, Jordi
Martínez Montiel, Pilar
Velayos Jiménez, Benito
Quílez Ivorra, Cristina
Vázquez Morón, Juan María
Huguet, José María
González Lama, Yago
Muñagorri Santos, Ana Isabel
Amo, Víctor Manuel
Martín Arranz, María Dolores
Bermejo, Fernando
Martínez Cadilla, Jesús
Rubín de Célix, Cristina
Fradejas Salazar, Paola
López San Román, Antonio
Jiménez, Nuria
García López, Santiago
Figuerola, Anna
Jiménez, Itxaso
Martínez Cerezo, Francisco José
Taxonera, Carlos
Varela, Pilar
Francisco, Ruth de
Monfort, David
Molina Arriero, Gema
Hernández Camba, Alejandro
García Alonso, Francisco Javier
Van Domselaar, Manuel
Pajares Villarroya, Ramón
Núñez, Alejandro
Rodríguez Moranta, Francisco
Marín Jiménez, Ignacio
Robles Alonso, Virginia
Martín Rodríguez, María Del Mar
Camo Monterde, Patricia
García Tercero, Iván
Navarro Llavat, Mercedes
García, Lara Arias
Hervías Cruz, Daniel
Kloss, Sebastian
Passey, Alun
Novella, Cynthia
Vispo, Eugenia
Barreiro de Acosta, Manuel
Gisbert, Javier P.
Keywords: Malaltia de Crohn
Factors de risc en les malalties
Crohn's disease
Risk factors in diseases
Issue Date: 3-Aug-2022
Publisher: MDPI AG
Abstract: Ustekinumab has shown efficacy in Crohn's Disease (CD) patients. To identify patient profiles of those who benefit the most from this treatment would help to position this drug in the therapeutic paradigm of CD and generate hypotheses for future trials. The objective of this analysis was to determine whether baseline patient characteristics are predictive of remission and the drug durability of ustekinumab, and whether its positioning with respect to prior use of biologics has a significant effect after correcting for disease severity and phenotype at baseline using interpretable machine learning. Patients' data from SUSTAIN, a retrospective multicenter single-arm cohort study, were used. Disease phenotype, baseline laboratory data, and prior treatment characteristics were documented. Clinical remission was defined as the Harvey Bradshaw Index <= 4 and was tracked longitudinally. Drug durability was defined as the time until a patient discontinued treatment. A total of 439 participants from 60 centers were included and a total of 20 baseline covariates considered. Less exposure to previous biologics had a positive effect on remission, even after controlling for baseline disease severity using a non-linear, additive, multivariable model. Additionally, age, body mass index, and fecal calprotectin at baseline were found to be statistically significant as independent negative risk factors for both remission and drug survival, with further risk factors identified for remission.
Note: Reproducció del document publicat a: https://doi.org/10.3390/jcm11154518
It is part of: Journal of Clinical Medicine, 2022, vol. 11, num. 15, p. 4518
URI: http://hdl.handle.net/2445/188898
Related resource: https://doi.org/10.3390/jcm11154518
ISSN: 2077-0383
Appears in Collections:Articles publicats en revistes (Institut d'lnvestigació Biomèdica de Bellvitge (IDIBELL))

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