Machine-learning modeL based on computed tomography body composition analysis for the estimation of resting energy expenditure: A pilot study

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Institut Català de la Salut
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[Palmas F] Servei d’Endocrinologia i Nutrició, Vall d’Hebron Hospital Universitari, Barcelona, Spain. Grup de Recerca en Diabetis i Metabolisme, Vall d’Hebron Institut De Recerca (VHIR), Barcelona, Spain. [Ciudin A, Hernández C, Simó R] Servei d’Endocrinologia i Nutrició, Vall d’Hebron Hospital Universitari, Barcelona, Spain. Grup de Recerca en Diabetis i Metabolisme, Vall d’Hebron Institut De Recerca (VHIR), Barcelona, Spain. Departament de Medicina, Universitat Autònoma de Barcelona, Bellaterra, Spain. Centro De Investigación Biomédica En Red De Diabetes y Enfermedades Metabólicas Asociadas (CIBERDEM), Instituto De Salud Carlos III (ISCIII), Madrid, Spain. [Melian J, Guerra R] ARTIS Development, Las Palmas, Spain. [Zabalegui A, Cárdenas G, Mucarzel F] Servei d’Endocrinologia i Nutrició, Vall d’Hebron Hospital Universitari, Barcelona, Spain. [Rodriguez A, Roson N] Institut De Diagnòstic Per La Imatge (IDI), Barcelona, Spain. Servei de Radiodiagnòstic, Vall d’Hebron Hospital Universitari, Barcelona, Spain. [Burgos B] Servei d’Endocrinologia i Nutrició, Vall d’Hebron Hospital Universitari, Barcelona, Spain. Departament de Medicina, Universitat Autònoma de Barcelona, Bellaterra, Spain
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Vall d'Hebron Barcelona Hospital Campus
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Melian, Jose
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Zabalegui Eguinoa, Alba
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Cardenas Lagranja, Guillermo
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Mucarzel Suarez, Fernanda
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RODRÍGUEZ-MARTÍNEZ, AITOR
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Hernández Pascual, Cristina
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Palmas, Fiorella
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Ciudin Mihai, Andreea
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Guerra, Raul
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Roson Gradaille, Nuria
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Burgos Peláez, Rosa
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Simó Canonge, Rafael
dc.date.accessioned
2025-10-01T01:24:17Z
dc.date.available
2025-10-01T01:24:17Z
dc.date.issued
2025-08-27T06:20:51Z
dc.date.issued
2025-08-27T06:20:51Z
dc.date.issued
2025-08
dc.identifier
Palmas F, Ciudin A, Melian J, Guerra R, Zabalegui A, Cárdenas G, et al. Machine-learning modeL based on computed tomography body composition analysis for the estimation of resting energy expenditure: A pilot study. Clin Nutr ESPEN. 2025 Aug;68:494-500.
dc.identifier
2405-4577
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http://hdl.handle.net/11351/13580
dc.identifier
10.1016/j.clnesp.2025.05.031
dc.identifier
40436367
dc.identifier
001509551400001
dc.identifier.uri
http://hdl.handle.net/11351/13580
dc.description.abstract
Body composition; Computed tomography; Resting energy expenditure
dc.description.abstract
Composición corporal; Tomografía computarizada; Gasto energético en reposo
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Composició corporal; Tomografia computada; Despesa energètica en repòs
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Background & aims The assessment of resting energy expenditure (REE) is a challenging task with the current existing methods. The reference method, indirect calorimetry (IC), is not widely available, and other surrogates, such as equations and bioimpedance (BIA) show poor agreement with IC. Body composition (BC), in particular muscle mass, plays an important role in REE. In recent years, computed tomography (CT) has emerged as a reliable tool for BC assessment, but its usefulness for the REE evaluation has not been examined. In the present study we have explored the usefulness of CT-scan imaging to assess the REE using AI machine-learning models. Methods Single-centre observational cross-sectional pilot study from January to June 2022, including 90 fasting, clinically stable adults (≥18 years) with no contraindications for indirect calorimetry (IC), bioimpedance (BIA), or abdominal CT-scan. REE was measured using classical predictive equations, IC, BIA and skeletal CT-scan. The proposed model was based on a second-order linear regression with different input parameters, and the output corresponds to the estimated REE. The model was trained and tested using a cross-validation one-vs-all strategy including subjects with different characteristics. Results Data from 90 subjects were included in the final analysis. Bland–Altman plots showed that the CT-based estimation model had a mean bias of 0 kcal/day (LoA: −508.4 to 508.4) compared with IC, indicating better agreement than most predictive equations and similar agreement to BIA (bias 53.4 kcal/day, LoA: −475.7 to 582.4). Surprisingly, gender and BMI, ones of the mains variables included in all the BIA algorithms and mathematical equations were not relevant variables for REE calculated by means of AI coupled to skeletal CT scan. These findings were consistent with the results of other performance metrics, including mean absolute error (MAE), root mean square error (RMSE), and Lin's concordance correlation coefficient (CCC), which also favored the CT-based method over conventional equations. Conclusions Our results suggest that the analysis of a CT-scan image by means of machine learning model is a reliable tool for the REE estimation. These findings have the potential to significantly change the paradigm and guidelines for nutritional assessment.
dc.description.abstract
This study was supported by grants from the Agencia Estatal de Investigación I Convocatoria publico-privada (CPP2023-010524). The funders had no role in study design, data collection and analysis, decision 356 to publish, or preparation of the manuscript.
dc.format
application/pdf
dc.language
eng
dc.publisher
Elsevier
dc.relation
Clinical Nutrition ESPEN;68
dc.relation
https://doi.org/10.1016/j.clnesp.2025.05.031
dc.rights
Attribution-NonCommercial-NoDerivatives 4.0 International
dc.rights
http://creativecommons.org/licenses/by-nc-nd/4.0/
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info:eu-repo/semantics/openAccess
dc.source
Scientia
dc.subject
Tomografia
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Aprenentatge automàtic
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Calorimetria indirecta
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Cos - Composició
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Metabolisme basal
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ANALYTICAL, DIAGNOSTIC AND THERAPEUTIC TECHNIQUES, AND EQUIPMENT::Investigative Techniques::Chemistry Techniques, Analytical::Calorimetry::Calorimetry, Indirect
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PHENOMENA AND PROCESSES::Mathematical Concepts::Algorithms::Artificial Intelligence::Machine Learning
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ANALYTICAL, DIAGNOSTIC AND THERAPEUTIC TECHNIQUES, AND EQUIPMENT::Diagnosis::Diagnostic Techniques and Procedures::Diagnostic Imaging::Image Interpretation, Computer-Assisted::Tomography, X-Ray Computed
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PHENOMENA AND PROCESSES::Chemical Phenomena::Biochemical Phenomena::Body Composition
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PHENOMENA AND PROCESSES::Metabolism::Energy Metabolism::Basal Metabolism
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TÉCNICAS Y EQUIPOS ANALÍTICOS, DIAGNÓSTICOS Y TERAPÉUTICOS::técnicas de investigación::técnicas de química analítica::calorimetría::calorimetría indirecta
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FENÓMENOS Y PROCESOS::conceptos matemáticos::algoritmos::inteligencia artificial::aprendizaje automático
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TÉCNICAS Y EQUIPOS ANALÍTICOS, DIAGNÓSTICOS Y TERAPÉUTICOS::diagnóstico::técnicas y procedimientos diagnósticos::diagnóstico por imagen::interpretación de imágenes asistida por ordenador::tomografía computarizada por rayos X
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FENÓMENOS Y PROCESOS::fenómenos químicos::fenómenos bioquímicos::composición corporal
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FENÓMENOS Y PROCESOS::metabolismo::metabolismo energético::metabolismo basal
dc.title
Machine-learning modeL based on computed tomography body composition analysis for the estimation of resting energy expenditure: A pilot study
dc.type
info:eu-repo/semantics/article
dc.type
info:eu-repo/semantics/publishedVersion


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