Literature DB >> 27896451

Transfer Learning with Convolutional Neural Networks for Classification of Abdominal Ultrasound Images.

Phillip M Cheng1,2, Harshawn S Malhi3.   

Abstract

The purpose of this study is to evaluate transfer learning with deep convolutional neural networks for the classification of abdominal ultrasound images. Grayscale images from 185 consecutive clinical abdominal ultrasound studies were categorized into 11 categories based on the text annotation specified by the technologist for the image. Cropped images were rescaled to 256 × 256 resolution and randomized, with 4094 images from 136 studies constituting the training set, and 1423 images from 49 studies constituting the test set. The fully connected layers of two convolutional neural networks based on CaffeNet and VGGNet, previously trained on the 2012 Large Scale Visual Recognition Challenge data set, were retrained on the training set. Weights in the convolutional layers of each network were frozen to serve as fixed feature extractors. Accuracy on the test set was evaluated for each network. A radiologist experienced in abdominal ultrasound also independently classified the images in the test set into the same 11 categories. The CaffeNet network classified 77.3% of the test set images accurately (1100/1423 images), with a top-2 accuracy of 90.4% (1287/1423 images). The larger VGGNet network classified 77.9% of the test set accurately (1109/1423 images), with a top-2 accuracy of VGGNet was 89.7% (1276/1423 images). The radiologist classified 71.7% of the test set images correctly (1020/1423 images). The differences in classification accuracies between both neural networks and the radiologist were statistically significant (p < 0.001). The results demonstrate that transfer learning with convolutional neural networks may be used to construct effective classifiers for abdominal ultrasound images.

Entities:  

Keywords:  Artificial neural networks; Classification; Deep learning; Digital image processing; Machine learning

Mesh:

Year:  2017        PMID: 27896451      PMCID: PMC5359213          DOI: 10.1007/s10278-016-9929-2

Source DB:  PubMed          Journal:  J Digit Imaging        ISSN: 0897-1889            Impact factor:   4.056


  9 in total

1.  Computer-aided diagnosis of hepatic fibrosis: preliminary evaluation of MRI texture analysis using the finite difference method and an artificial neural network.

Authors:  Hiroki Kato; Masayuki Kanematsu; Xuejun Zhang; Masanao Saio; Hiroshi Kondo; Satoshi Goshima; Hiroshi Fujita
Journal:  AJR Am J Roentgenol       Date:  2007-07       Impact factor: 3.959

Review 2.  Deep learning.

Authors:  Yann LeCun; Yoshua Bengio; Geoffrey Hinton
Journal:  Nature       Date:  2015-05-28       Impact factor: 49.962

3.  Convolutional Neural Networks for Medical Image Analysis: Full Training or Fine Tuning?

Authors:  Nima Tajbakhsh; Jae Y Shin; Suryakanth R Gurudu; R Todd Hurst; Christopher B Kendall; Michael B Gotway
Journal:  IEEE Trans Med Imaging       Date:  2016-03-07       Impact factor: 10.048

Review 4.  Trends and Developments Shaping the Future of Diagnostic Medical Imaging: 2015 Annual Oration in Diagnostic Radiology.

Authors:  James H Thrall
Journal:  Radiology       Date:  2016-06       Impact factor: 11.105

5.  Lung Pattern Classification for Interstitial Lung Diseases Using a Deep Convolutional Neural Network.

Authors:  Marios Anthimopoulos; Stergios Christodoulidis; Lukas Ebner; Andreas Christe; Stavroula Mougiakakou
Journal:  IEEE Trans Med Imaging       Date:  2016-02-29       Impact factor: 10.048

6.  Neural network evaluation of PET scans of the liver: a potentially useful adjunct in clinical interpretation.

Authors:  Ori Preis; Michael A Blake; James A Scott
Journal:  Radiology       Date:  2011-03       Impact factor: 11.105

7.  Informatics in radiology: comparison of logistic regression and artificial neural network models in breast cancer risk estimation.

Authors:  Turgay Ayer; Jagpreet Chhatwal; Oguzhan Alagoz; Charles E Kahn; Ryan W Woods; Elizabeth S Burnside
Journal:  Radiographics       Date:  2009-11-09       Impact factor: 5.333

8.  Deep Convolutional Neural Networks for Computer-Aided Detection: CNN Architectures, Dataset Characteristics and Transfer Learning.

Authors:  Hoo-Chang Shin; Holger R Roth; Mingchen Gao; Le Lu; Ziyue Xu; Isabella Nogues; Jianhua Yao; Daniel Mollura; Ronald M Summers
Journal:  IEEE Trans Med Imaging       Date:  2016-02-11       Impact factor: 10.048

9.  High-Throughput Classification of Radiographs Using Deep Convolutional Neural Networks.

Authors:  Alvin Rajkomar; Sneha Lingam; Andrew G Taylor; Michael Blum; John Mongan
Journal:  J Digit Imaging       Date:  2017-02       Impact factor: 4.056

  9 in total
  37 in total

1.  Automated semantic labeling of pediatric musculoskeletal radiographs using deep learning.

Authors:  Paul H Yi; Tae Kyung Kim; Jinchi Wei; Jiwon Shin; Ferdinand K Hui; Haris I Sair; Gregory D Hager; Jan Fritz
Journal:  Pediatr Radiol       Date:  2019-04-30

2.  Computer-aided diagnosis of congenital abnormalities of the kidney and urinary tract in children based on ultrasound imaging data by integrating texture image features and deep transfer learning image features.

Authors:  Q Zheng; S L Furth; G E Tasian; Y Fan
Journal:  J Pediatr Urol       Date:  2018-10-31       Impact factor: 1.830

3.  Artificial intelligence using neural network architecture for radiology (AINNAR): classification of MR imaging sequences.

Authors:  Tomoyuki Noguchi; Daichi Higa; Takashi Asada; Yusuke Kawata; Akihiro Machitori; Yoshitaka Shida; Takashi Okafuji; Kota Yokoyama; Fumiya Uchiyama; Tsuyoshi Tajima
Journal:  Jpn J Radiol       Date:  2018-09-19       Impact factor: 2.374

4.  Deep Learning Method for Automated Classification of Anteroposterior and Posteroanterior Chest Radiographs.

Authors:  Tae Kyung Kim; Paul H Yi; Jinchi Wei; Ji Won Shin; Gregory Hager; Ferdinand K Hui; Haris I Sair; Cheng Ting Lin
Journal:  J Digit Imaging       Date:  2019-12       Impact factor: 4.056

5.  Generalizable fully automated multi-label segmentation of four-chamber view echocardiograms based on deep convolutional adversarial networks.

Authors:  Arghavan Arafati; Daisuke Morisawa; Michael R Avendi; M Reza Amini; Ramin A Assadi; Hamid Jafarkhani; Arash Kheradvar
Journal:  J R Soc Interface       Date:  2020-08-19       Impact factor: 4.118

6.  Hybrid Transfer Learning for Classification of Uterine Cervix Images for Cervical Cancer Screening.

Authors:  Vidya Kudva; Keerthana Prasad; Shyamala Guruvare
Journal:  J Digit Imaging       Date:  2020-06       Impact factor: 4.056

7.  Automated detection and classification of shoulder arthroplasty models using deep learning.

Authors:  Paul H Yi; Tae Kyung Kim; Jinchi Wei; Xinning Li; Gregory D Hager; Haris I Sair; Jan Fritz
Journal:  Skeletal Radiol       Date:  2020-05-15       Impact factor: 2.199

Review 8.  Machine learning for medical ultrasound: status, methods, and future opportunities.

Authors:  Laura J Brattain; Brian A Telfer; Manish Dhyani; Joseph R Grajo; Anthony E Samir
Journal:  Abdom Radiol (NY)       Date:  2018-04

9.  Optimize Transfer Learning for Lung Diseases in Bronchoscopy Using a New Concept: Sequential Fine-Tuning.

Authors:  Tao Tan; Zhang Li; Haixia Liu; Farhad G Zanjani; Quchang Ouyang; Yuling Tang; Zheyu Hu; Qiang Li
Journal:  IEEE J Transl Eng Health Med       Date:  2018-08-16       Impact factor: 3.316

10.  TRANSFER LEARNING FOR DIAGNOSIS OF CONGENITAL ABNORMALITIES OF THE KIDNEY AND URINARY TRACT IN CHILDREN BASED ON ULTRASOUND IMAGING DATA.

Authors:  Qiang Zheng; Gregory Tasian; Yong Fan
Journal:  Proc IEEE Int Symp Biomed Imaging       Date:  2018-05-24
View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.