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Machine learning approaches to enhance diagnosis and staging of patients with MASLD using routinely available clinical information.
McTeer, Matthew; Applegate, Douglas; Mesenbrink, Peter; Ratziu, Vlad; Schattenberg, Jörn M; Bugianesi, Elisabetta; Geier, Andreas; Romero Gomez, Manuel; Dufour, Jean-Francois; Ekstedt, Mattias; Francque, Sven; Yki-Jarvinen, Hannele; Allison, Michael; Valenti, Luca; Miele, Luca; Pavlides, Michael; Cobbold, Jeremy; Papatheodoridis, Georgios; Holleboom, Adriaan G; Tiniakos, Dina; Brass, Clifford; Anstee, Quentin M; Missier, Paolo.
Afiliación
  • McTeer M; Newcastle University, Newcastle upon Tyne, United Kingdom.
  • Applegate D; Novartis Institute for Biomedical Research, Cambridge, Massachusetts, United States of America.
  • Mesenbrink P; Novartis Pharmaceuticals, East Hanover, New Jersey, United States of America.
  • Ratziu V; Institute of Cardiometabolism and Nutrition, Paris, France.
  • Schattenberg JM; Department of Medicine II, University Medical Center Homburg and Saarland University, Homburg, Germany.
  • Bugianesi E; University of Torino, Turin, Italy.
  • Geier A; University Hospital Würzburg, Würzburg, Germany.
  • Romero Gomez M; Servicio Andaluz de Salud, Seville, Spain.
  • Dufour JF; University of Bern, Bern, Switzerland.
  • Ekstedt M; Linköping University, Linköping, Sweden.
  • Francque S; Antwerp University Hospital, Antwerp, Belgium.
  • Yki-Jarvinen H; University of Helsinki, Helsinki, Finland.
  • Allison M; University of Cambridge, Cambridge, United Kingdom.
  • Valenti L; Università degli Studi di Milano, Milan, Italy.
  • Miele L; Università Cattolica del Sacro Cuore, Rome, Italy.
  • Pavlides M; University of Oxford, Oxford, United Kingdom.
  • Cobbold J; University of Oxford, Oxford, United Kingdom.
  • Papatheodoridis G; Medical School of National & Kapodistrian University of Athens, Athens, Greece.
  • Holleboom AG; AMC Amsterdam, Amsterdam, The Netherlands.
  • Tiniakos D; Medical School of National & Kapodistrian University of Athens, Athens, Greece.
  • Brass C; Translational & Clinical Research Institute, Faculty of Medical Sciences, Newcastle University, Newcastle upon Tyne, United Kingdom.
  • Anstee QM; Novartis Institute for Biomedical Research, Cambridge, Massachusetts, United States of America.
  • Missier P; Translational & Clinical Research Institute, Faculty of Medical Sciences, Newcastle University, Newcastle upon Tyne, United Kingdom.
PLoS One ; 19(2): e0299487, 2024.
Article en En | MEDLINE | ID: mdl-38421999
ABSTRACT

AIMS:

Metabolic dysfunction Associated Steatotic Liver Disease (MASLD) outcomes such as MASH (metabolic dysfunction associated steatohepatitis), fibrosis and cirrhosis are ordinarily determined by resource-intensive and invasive biopsies. We aim to show that routine clinical tests offer sufficient information to predict these endpoints.

METHODS:

Using the LITMUS Metacohort derived from the European NAFLD Registry, the largest MASLD dataset in Europe, we create three combinations of features which vary in degree of procurement including a 19-variable feature set that are attained through a routine clinical appointment or blood test. This data was used to train predictive models using supervised machine learning (ML) algorithm XGBoost, alongside missing imputation technique MICE and class balancing algorithm SMOTE. Shapley Additive exPlanations (SHAP) were added to determine relative importance for each clinical variable.

RESULTS:

Analysing nine biopsy-derived MASLD outcomes of cohort size ranging between 5385 and 6673 subjects, we were able to predict individuals at training set AUCs ranging from 0.719-0.994, including classifying individuals who are At-Risk MASH at an AUC = 0.899. Using two further feature combinations of 26-variables and 35-variables, which included composite scores known to be good indicators for MASLD endpoints and advanced specialist tests, we found predictive performance did not sufficiently improve. We are also able to present local and global explanations for each ML model, offering clinicians interpretability without the expense of worsening predictive performance.

CONCLUSIONS:

This study developed a series of ML models of accuracy ranging from 71.9-99.4% using only easily extractable and readily available information in predicting MASLD outcomes which are usually determined through highly invasive means.
Asunto(s)

Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Asunto principal: Enfermedad del Hígado Graso no Alcohólico / Enfermedades Metabólicas Límite: Humans Idioma: En Revista: PLoS One Asunto de la revista: CIENCIA / MEDICINA Año: 2024 Tipo del documento: Article País de afiliación: Reino Unido Pais de publicación: Estados Unidos

Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Asunto principal: Enfermedad del Hígado Graso no Alcohólico / Enfermedades Metabólicas Límite: Humans Idioma: En Revista: PLoS One Asunto de la revista: CIENCIA / MEDICINA Año: 2024 Tipo del documento: Article País de afiliación: Reino Unido Pais de publicación: Estados Unidos