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Comparison of Deep-Learning and Conventional Machine-Learning Methods for the Automatic Recognition of the Hepatocellular Carcinoma Areas from Ultrasound Images

Published in Italian National Conference on Sen... (2020-05-29)
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TL

TL;DR

A lightweight multi-resolution Convolutional Neural Network architecture is proposed, suitable for differentiating, within ultrasound images, between the Hepatocellular Carcinoma and the cirrhotic parenchyma on which HCC had evolved, and is compared with other CNN architectures that have been adapted by transfer learning for the ultrasound binary classification task.

Abstract

The emergence of deep-learning methods in different computer vision tasks has proved to offer increased detection, recognition or segmentation accuracy when large annotated image datasets are available. In the case of medical image processing and computer-aided diagnosis within ultrasound images, where the amount of available annotated data is smaller, a natural question arises: are deep-learning methods better than conventional machine-learning methods? How do the conventional machine-learning methods behave in comparison with deep-learning methods on the same dataset? Based on the study of various deep-learning architectures, a lightweight multi-resolution Convolutional Neural Network (CNN) architecture is proposed. It is suitable for differentiating, within ultrasound images, between the Hepatocellular Carcinoma (HCC), respectively the cirrhotic parenchyma (PAR) on which HCC had evolved. The proposed deep-learning model is compared with other CNN architectures that have been adapted by transfer learning for the ultrasound binary classification task, but also with conventional machine-learning (ML) solutions trained on textural features. The achieved results show that the deep-learning approach overcomes classical machine-learning solutions, by providing a higher classification performance.

Authors

R. Brehar

1 Paper

D. Mitrea

1 Paper

F. Vancea

1 Paper

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Research Impact

64

Citations

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References

0

Datasets

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Authors

Field of Study

MedicineComputer Science

Journal Information

Name

Sensors (Basel, Switzerland)

Volume

20

Venue Information

Name

Italian National Conference on Sensors

Type

conference

URL

http://www.e-helvetica.nb.admin.ch/directAccess?callnumber=bel-142001

Alternate Names

  • SENSORS
  • IEEE Sens
  • Ital National Conf Sens
  • IEEE Sensors
  • Sensors