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  4. Deep learning supports the differentiation of alcoholic and other-than-alcoholic cirrhosis based on MRI
 
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2022
Journal Article
Titel

Deep learning supports the differentiation of alcoholic and other-than-alcoholic cirrhosis based on MRI

Abstract
Although CT and MRI are standard procedures in cirrhosis diagnosis, differentiation of etiology based on imaging is not established. This proof-of-concept study explores the potential of deep learning (DL) to support imaging-based differentiation of the etiology of liver cirrhosis. This retrospective, monocentric study included 465 patients with confirmed diagnosis of (a) alcoholic (n = 221) and (b) other-than-alcoholic (n = 244) cirrhosis. Standard T2-weighted single-slice images at the caudate lobe level were randomly split for training with fivefold cross-validation (85%) and testing (15%), balanced for (a) and (b). After automated upstream liver segmentation, two different ImageNet pre-trained convolutional neural network (CNN) architectures (ResNet50, DenseNet121) were evaluated for classification of alcohol-related versus non-alcohol-related cirrhosis. The highest classification performance on test data was observed for ResNet50 with unfrozen pre-trained parameters, yielding an area under the receiver operating characteristic curve of 0.82 (95% confidence interval (CI) 0.71–0.91) and an accuracy of 0.75 (95% CI 0.64–0.85). An ensemble of both models did not lead to significant improvement in classification performance. This proof-of-principle study shows that deep-learning classifiers have the potential to aid in discriminating liver cirrhosis etiology based on standard MRI.
Author(s)
Luetkens, J.A.
Universitätsklinikum Bonn
Nowak, S.
Universitätsklinikum Bonn
Mesropyan, N.
Universitätsklinikum Bonn
Block, W.
Universitätsklinikum Bonn
Praktiknjo, M.
Universitätsklinikum Bonn
Chang, J.
Universitätsklinikum Bonn
Bauckhage, C.
Universität Bonn
Sifa, Rafet
Fraunhofer-Institut für Intelligente Analyse- und Informationssysteme IAIS
Sprinkart, A.M.
Universitätsklinikum Bonn
Faron, A.
Universitätsklinikum Bonn
Attenberger, U.
Universitätsklinikum Bonn
Zeitschrift
Scientific Reports
Thumbnail Image
DOI
10.1038/s41598-022-12410-2
Language
English
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