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

Journal: Scientific reports
Published Date:

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.

Authors

  • Julian A Luetkens
    Department of Radiology, University Hospital Bonn, Sigmund-Freud-Str. 25, 53127, Bonn, Germany.
  • Sebastian Nowak
    From the Quantitative Imaging Lab, Department of Radiology.
  • Narine Mesropyan
    Department of Diagnostic and Interventional Radiology, Quantitative Imaging Lab Bonn (QILaB), University Hospital Bonn (Universitätsklinikum Bonn), Venusberg-Campus 1, 53127, Bonn, Germany.
  • Wolfgang Block
    From the Quantitative Imaging Lab, Department of Radiology.
  • Michael Praktiknjo
    Department of Internal Medicine I, University of Bonn, Venusberg-Campus, Bonn, Germany.
  • Johannes Chang
    Department of Internal Medicine I, Center for Cirrhosis and Portal Hypertension Bonn (CCB), University Hospital Bonn, Venusberg-Campus 1, 53127, Bonn, Germany.
  • Christian Bauckhage
    Institute for Computer Science, University of Bonn, Endenicher Allee 19C, 53113, Bonn, Germany.
  • Rafet Sifa
    Media Engineering Department, Fraunhofer IAIS, Schloss Birlinghoven 1, 53757, Sankt Augustin, Germany.
  • Alois Martin Sprinkart
    Department of Diagnostic and Interventional Radiology, Quantitative Imaging Lab Bonn (QILaB), University Hospital Bonn, Venusberg-Campus 1, 53127, Bonn, Germany. Sprinkart@uni-bonn.de.
  • Anton Faron
    Department of Radiology, University Hospital Bonn, Sigmund-Freud-Str. 25, 53127, Bonn, Germany. Anton.Faron@ukbonn.de.
  • Ulrike Attenberger
    Universitätsklinik für Radiologie, Universitätsklinikum Bonn, Bonn, Deutschland.