Institute of Fundamental Technological Research
Polish Academy of Sciences

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William D. O’Brien Jr


Recent publications
1.  Byra M., Han A., Boehringer A.S., Zhang Y.N., O'Brien Jr W.D., Erdman Jr J.W., Loomba R., Sirlin C.B., Andre M., Liver fat assessment in multiview sonography using transfer learning with convolutional neural networks, Journal of Ultrasound in Medicine, ISSN: 0278-4297, DOI: 10.1002/jum.15693, pp.1-10, 2021

Abstract:
Objectives - To develop and evaluate deep learning models devised for liver fat assessment based on ultrasound (US) images acquired from four different liver views: transverse plane (hepatic veins at the confluence with the inferior vena cava, right portal vein, right posterior portal vein) and sagittal plane (liver/kidney). Methods - US images (four separate views) were acquired from 135 participants with known or suspected nonalcoholic fatty liver disease. Proton density fat fraction (PDFF) values derived from chemical shift-encoded magnetic resonance imaging served as ground truth. Transfer learning with a deep convolutional neural network (CNN) was applied to develop models for diagnosis of fatty liver (PDFF ≥ 5%), diagnosis of advanced steatosis (PDFF ≥ 10%), and PDFF quantification for each liver view separately. In addition, an ensemble model based on all four liver view models was investigated. Diagnostic performance was assessed using the area under the receiver operating characteristics curve (AUC), and quantification was assessed using the Spearman correlation coefficient (SCC). Results - The most accurate single view was the right posterior portal vein, with an SCC of 0.78 for quantifying PDFF and AUC values of 0.90 (PDFF ≥ 5%) and 0.79 (PDFF ≥ 10%). The ensemble of models achieved an SCC of 0.81 and AUCs of 0.91 (PDFF ≥ 5%) and 0.86 (PDFF ≥ 10%). Conclusion - Deep learning-based analysis of US images from different liver views can help assess liver fat.

Keywords:
attention mechanism, convolutional neural networks, deep learning, nonalcoholic fatty liver disease, proton density fat fraction, ultrasound images

Affiliations:
Byra M. - IPPT PAN
Han A. - University of Illinois at Urbana-Champaign (US)
Boehringer A.S. - University of California (US)
Zhang Y.N. - University of California (US)
O'Brien Jr W.D. - other affiliation
Erdman Jr J.W. - University of Illinois at Urbana-Champaign (US)
Loomba R. - University of California (US)
Sirlin C.B. - University of California (US)
Andre M. - University of California (US)

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