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    Phenotype-Driven Variability in Longitudinal Body Composition Changes After a Very Low-Calorie Ketogenic Intervention: A Machine Learning Cluster Approach

    Autor: 
    de la O, Victor
    ;
    de Cuevillas, Begoña
    ;
    Henkrich, Miksa
    ;
    Vizmanos, Barbara
    ;
    Nuñez-Garcia, Maitane
    ;
    Sajoux, Ignacio
    ;
    de Luis, Daniel
    ;
    Martínez, J Alfredo
    Fecha: 
    2025
    Palabra clave: 
    body composition; machine learning; very-low ketogenic diet
    Revista / editorial: 
    Journal of Personalized Medicine
    Citación: 
    de la O V, de Cuevillas B, Henkrich M, Vizmanos B, Nuñez-Garcia M, Sajoux I, de Luis D, Martínez JA. Phenotype-Driven Variability in Longitudinal Body Composition Changes After a Very Low-Calorie Ketogenic Intervention: A Machine Learning Cluster Approach. J Pers Med. 2025 Jun 14;15(6):251. doi: 10.3390/jpm15060251. PMID: 40559113; PMCID: PMC12193932.
    Tipo de Ítem: 
    article
    URI: 
    https://reunir.unir.net/handle/123456789/19516
    DOI: 
    https://doi.org/10.3390/jpm15060251
    Dirección web: 
    https://www.mdpi.com/2075-4426/15/6/251
    Open Access
    Resumen:
    Background: Obesity is a major global public health issue with no fully satisfactory solutions. Most nutritional interventions rely on caloric restriction, with varying degrees of success. Very low-calorie ketogenic diets (VLCKD) have demonstrated rapid and sustained weight loss by inducing ketone bodies through lipolysis, reducing appetite, and preserving lean mass while maintaining metabolic health. Methods: A prospective clinical study analyzed sociodemographic, anthropometric, and adherence data from 7775 patients undergoing a multidisciplinary nutritional single-arm intervention based on a commercial weight-loss program. This method, using protein preparations with a specific balanced nutritional profile, aimed to identify key predictors of weight-loss success and classify population phenotypes with shared baseline characteristics and weight-loss patterns to optimize treatment personalization. Results: Statistical and machine learning analyses revealed that male gender (-9.2 kg vs. -5.9 kg) and higher initial body weight (-8.9 kg vs. -4.0 kg) strongly predict greater weight loss on a VLCKD, while age has a lesser impact. Two distinct population clusters emerged, differing in age, sex, follow-up duration, and medical visits, demonstrating unique weight-loss success patterns. These clusters help define individualized strategies for optimizing outcomes. Conclusions: These findings translationally support associations with the efficacy of a multidisciplinary VLCK weight-loss program and highlight predictors of success. Recognizing variables such as sex, age, and initial weight enhances the potential for a precision-based approach in obesity management, enabling more tailored and effective treatments for diverse patient profiles and prescribe weight loss personalized recommendations.
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    Nombre: jpm-15-00251.pdf
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