Literature DB >> 29486877

Use of transfer learning to detect diffuse degenerative hepatic diseases from ultrasound images in dogs: A methodological study.

T Banzato1, F Bonsembiante2, L Aresu2, M E Gelain2, S Burti1, A Zotti3.   

Abstract

The aim of this methodological study was to develop a deep convolutional neural network (DNN) to detect degenerative hepatic disease from ultrasound images of the liver in dogs and to compare the diagnostic accuracy of the newly developed DNN with that of serum biochemistry and cytology on the same samples, using histopathology as a standard. Dogs with suspected hepatic disease that had no prior history of neoplastic disease, no hepatic nodular pathology, no ascites and ultrasonography performed 24h prior to death were included in the study (n=52). Ultrasonography and serum biochemistry were performed as part of the routine clinical evaluation. On the basis of histopathology, dogs were categorised as 'normal' (n=8), or having 'vascular abnormalities'(n=8), or 'inflammatory'(n=0), 'neoplastic' (n=4) or 'degenerative'(n=32) disease; dogs with 'neoplastic' disease were excluded from further analysis. On cytological evaluation, dogs were categorised as 'normal' (n=11), or having 'inflammatory' (n=0), 'neoplastic' (n=4) or 'degenerative' (n=37) disease. Dogs were categorised as having 'degenerative' (n=32) or 'non-degenerative' (n=16) liver disease for analysis due to the limited sample size. The DNN was developed using a transfer learning methodology on a pre-trained neural network that was retrained and fine-tuned to our data set. The resultant DNN had a high diagnostic accuracy for degenerative liver disease (area under the curve 0.91; sensitivity 100%; specificity 82.8%). Cytology and serum biochemical markers (alanine transaminase and aspartate transaminase) had poor diagnostic accuracy in the detection of degenerative liver disease. The DNN outperformed all the other non-invasive diagnostic tests in the detection of degenerative liver disease.
Copyright © 2018 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Canine; Convolutional deep neural network; Cytology; Diagnosis; Histopathology; Liver; Ultrasound

Mesh:

Substances:

Year:  2018        PMID: 29486877     DOI: 10.1016/j.tvjl.2017.12.026

Source DB:  PubMed          Journal:  Vet J        ISSN: 1090-0233            Impact factor:   2.688


  9 in total

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Review 4.  Transfer learning for medical image classification: a literature review.

Authors:  Mate E Maros; Thomas Ganslandt; Hee E Kim; Alejandro Cosa-Linan; Nandhini Santhanam; Mahboubeh Jannesari
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Review 8.  Veterinary informatics: forging the future between veterinary medicine, human medicine, and One Health initiatives-a joint paper by the Association for Veterinary Informatics (AVI) and the CTSA One Health Alliance (COHA).

Authors:  Jonathan L Lustgarten; Ashley Zehnder; Wayde Shipman; Elizabeth Gancher; Tracy L Webb
Journal:  JAMIA Open       Date:  2020-04-11

9.  A methodological approach for deep learning to distinguish between meningiomas and gliomas on canine MR-images.

Authors:  Tommaso Banzato; Marco Bernardini; Giunio B Cherubini; Alessandro Zotti
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  9 in total

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