Literature DB >> 36268232

Automated liver tumor detection in abdominal ultrasonography with a modified faster region-based convolutional neural networks (Faster R-CNN) architecture.

Kenji Karako1,2, Yuichiro Mihara2, Junichi Arita2, Akihiko Ichida2, Sung Kwan Bae2, Yoshikuni Kawaguchi2, Takeaki Ishizawa2, Nobuhisa Akamatsu2, Junichi Kaneko2, Kiyoshi Hasegawa2, Yu Chen1.   

Abstract

Background: Although diagnostic ultrasound can non-invasively capture the image of abdominal viscera, diagnosis of the continuous ultrasound liver images to detect a liver tumor effectively and to determine whether the detected is benign or malignant is nontrivial. In order to minimize the gaps in diagnostic accuracy depending on doctor's proficiency, we built an automated system to support the ultrasonography of liver tumors by employing deep learning technologies.
Methods: We constructed a neural network model for the automated detection of tumor tissues and blood vessels from the sequential liver ultrasound images. Faster region-based convolutional neural networks (Faster R-CNN) is employed as a base model for the object detection, which can output the detection results in 4 frames per second and enable the system to be particularly suitable for the real time ultrasonography. Moreover, we proposed a new neural network architecture feeding both the current and previous images into Faster R-CNN. For training the models, intraoperative ultrasound images obtained from one hepatocellular carcinoma (HCC) patient were used. The obtained image was a multifaceted observation of the liver and includes one HCC and some blood vessels. We labeled 91 images with the help of a liver specialist. We compared the tumor detection performance of the plain Faster R-CNN model with that of the proposed model.
Results: We find that both the models performed well in detecting HCC and blood vessels, after training with 400 epochs using Adam. However, the mean precision of our model reaches 0.549, which is 0.019 better than that of the plain Faster R-CNN, and the mean sensitivity of our model about HCC reaches 0.623±0.385 for 30 scenes of sequential liver ultrasound images, which is also 0.146 better than that of the plain Faster R-CNN model. Conclusions: The comparison between the proposed model and the plain Faster R-CNN model shows that we achieved better accuracy in tumor detection, in terms of the mean precision as well as the mean sensitivity, with the proposed model. 2022 Hepatobiliary Surgery and Nutrition. All rights reserved.

Entities:  

Keywords:  Liver; deep learning; hepatocellular carcinoma (HCC); object detection; ultrasonography

Year:  2022        PMID: 36268232      PMCID: PMC9577977          DOI: 10.21037/hbsn-21-43

Source DB:  PubMed          Journal:  Hepatobiliary Surg Nutr        ISSN: 2304-3881            Impact factor:   8.265


  13 in total

1.  Spatial Pyramid Pooling in Deep Convolutional Networks for Visual Recognition.

Authors:  Kaiming He; Xiangyu Zhang; Shaoqing Ren; Jian Sun
Journal:  IEEE Trans Pattern Anal Mach Intell       Date:  2015-09       Impact factor: 6.226

2.  Automatic detection of erosions and ulcerations in wireless capsule endoscopy images based on a deep convolutional neural network.

Authors:  Tomonori Aoki; Atsuo Yamada; Kazuharu Aoyama; Hiroaki Saito; Akiyoshi Tsuboi; Ayako Nakada; Ryota Niikura; Mitsuhiro Fujishiro; Shiro Oka; Soichiro Ishihara; Tomoki Matsuda; Shinji Tanaka; Kazuhiko Koike; Tomohiro Tada
Journal:  Gastrointest Endosc       Date:  2018-10-25       Impact factor: 9.427

3.  Computer-aided diagnosis system for breast ultrasound images using deep learning.

Authors:  Hiroki Tanaka; Shih-Wei Chiu; Takanori Watanabe; Setsuko Kaoku; Takuhiro Yamaguchi
Journal:  Phys Med Biol       Date:  2019-12-05       Impact factor: 3.609

4.  Inter- and Intraobserver Agreement in the Assessment of Thyroid Nodule Ultrasound Features and Classification Systems: A Blinded Multicenter Study.

Authors:  Agnese Persichetti; Enrico Di Stasio; Carmela Coccaro; Filomena Graziano; Antonio Bianchini; Vincenzo Di Donna; Salvatore Corsello; Dario Valle; Giancarlo Bizzarri; Andrea Frasoldati; Alfredo Pontecorvi; Enrico Papini; Rinaldo Guglielmi
Journal:  Thyroid       Date:  2020-02       Impact factor: 6.568

5.  Deep learning with ultrasonography: automated classification of liver fibrosis using a deep convolutional neural network.

Authors:  Jeong Hyun Lee; Ijin Joo; Tae Wook Kang; Yong Han Paik; Dong Hyun Sinn; Sang Yun Ha; Kyunga Kim; Choonghwan Choi; Gunwoo Lee; Jonghyon Yi; Won-Chul Bang
Journal:  Eur Radiol       Date:  2019-09-02       Impact factor: 5.315

6.  Medical breast ultrasound image segmentation by machine learning.

Authors:  Yuan Xu; Yuxin Wang; Jie Yuan; Qian Cheng; Xueding Wang; Paul L Carson
Journal:  Ultrasonics       Date:  2018-07-18       Impact factor: 2.890

7.  Brain Tumor Segmentation Using Convolutional Neural Networks in MRI Images.

Authors:  Sergio Pereira; Adriano Pinto; Victor Alves; Carlos A Silva
Journal:  IEEE Trans Med Imaging       Date:  2016-03-04       Impact factor: 10.048

8.  Multimodal Neuroimaging Feature Learning With Multimodal Stacked Deep Polynomial Networks for Diagnosis of Alzheimer's Disease.

Authors:  Jun Shi; Xiao Zheng; Yan Li; Qi Zhang; Shihui Ying
Journal:  IEEE J Biomed Health Inform       Date:  2017-01-19       Impact factor: 5.772

9.  Dynamic Facial Expression Generation on Hilbert Hypersphere With Conditional Wasserstein Generative Adversarial Nets.

Authors:  Naima Otberdout; Mohamed Daoudi; Anis Kacem; Lahoucine Ballihi; Stefano Berretti
Journal:  IEEE Trans Pattern Anal Mach Intell       Date:  2022-01-07       Impact factor: 6.226

10.  Thyroid Nodule Classification in Ultrasound Images by Fine-Tuning Deep Convolutional Neural Network.

Authors:  Jianning Chi; Ekta Walia; Paul Babyn; Jimmy Wang; Gary Groot; Mark Eramian
Journal:  J Digit Imaging       Date:  2017-08       Impact factor: 4.056

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