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Enhanced Artificial Intelligence Methods for Liver Steatosis Assessment Using Machine Learning and Color Image Processing: Liver Color Project.

Authors :
Gómez‐Gavara, Concepción
Bilbao, Itxarone
Piella, Gemma
Vazquez‐Corral, Javier
Benet‐Cugat, Berta
Pando, Elizabeth
Molino, José Andrés
Salcedo, María Teresa
Dalmau, Mar
Vidal, Laura
Esono, Daniel
Cordobés, Miguel Ángel
Bilbao, Ángela
Prats, Josa
Moya, Mar
Dopazo, Cristina
Mazo, Christopher
Caralt, Mireia
Hidalgo, Ernest
Charco, Ramon
Source :
Clinical Transplantation. Oct2024, Vol. 38 Issue 10, p1-8. 8p.
Publication Year :
2024

Abstract

Background: The use of livers with significant steatosis is associated with worse transplantation outcomes. Brain death donor liver acceptance is mostly based on subjective surgeon assessment of liver appearance, since steatotic livers acquire a yellowish tone. The aim of this study was to develop a rapid, robust, accurate, and cost‐effective method to assess liver steatosis. Methods: From June 1, 2018, to November 30, 2023, photographs and tru‐cut needle biopsies were taken from adult brain death donor livers at a single university hospital for the study. All the liver photographs were taken by smartphones then color calibrated, segmented, and divided into patches. Color and texture features were then extracted and used as input, and the machine learning method was applied. This is a collaborative project between Vall d'Hebron University Hospital and Barcelona MedTech, Pompeu Fabra University, and is referred to as LiverColor. Results: A total of 192 livers (362 photographs and 7240 patches) were included. When setting a macrosteatosis threshold of 30%, the best results were obtained using the random forest classifier, achieving an AUROC = 0.74, with 85% accuracy. Conclusion: Machine learning coupled with liver texture and color analysis of photographs taken with smartphones provides excellent accuracy for determining liver steatosis. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
09020063
Volume :
38
Issue :
10
Database :
Academic Search Index
Journal :
Clinical Transplantation
Publication Type :
Academic Journal
Accession number :
180503897
Full Text :
https://doi.org/10.1111/ctr.15465