Literature DB >> 34246070

Autoencoder based self-supervised test-time adaptation for medical image analysis.

Yufan He1, Aaron Carass2, Lianrui Zuo3, Blake E Dewey2, Jerry L Prince2.   

Abstract

Deep neural networks have been successfully applied to medical image analysis tasks like segmentation and synthesis. However, even if a network is trained on a large dataset from the source domain, its performance on unseen test domains is not guaranteed. The performance drop on data obtained differently from the network's training data is a major problem (known as domain shift) in deploying deep learning in clinical practice. Existing work focuses on retraining the model with data from the test domain, or harmonizing the test domain's data to the network training data. A common practice is to distribute a carefully-trained model to multiple users (e.g., clinical centers), and then each user uses the model to process their own data, which may have a domain shift (e.g., varying imaging parameters and machines). However, the lack of availability of the source training data and the cost of training a new model often prevents the use of known methods to solve user-specific domain shifts. Here, we ask whether we can design a model that, once distributed to users, can quickly adapt itself to each new site without expensive retraining or access to the source training data? In this paper, we propose a model that can adapt based on a single test subject during inference. The model consists of three parts, which are all neural networks: a task model (T) which performs the image analysis task like segmentation; a set of autoencoders (AEs); and a set of adaptors (As). The task model and autoencoders are trained on the source dataset and can be computationally expensive. In the deployment stage, the adaptors are trained to transform the test image and its features to minimize the domain shift as measured by the autoencoders' reconstruction loss. Only the adaptors are optimized during the testing stage with a single test subject thus is computationally efficient. The method was validated on both retinal optical coherence tomography (OCT) image segmentation and magnetic resonance imaging (MRI) T1-weighted to T2-weighted image synthesis. Our method, with its short optimization time for the adaptors (10 iterations on a single test subject) and its additional required disk space for the autoencoders (around 15 MB), can achieve significant performance improvement. Our code is publicly available at: https://github.com/YufanHe/self-domain-adapted-network.
Copyright © 2021 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Medical image analysis; Self supervised learning; Test time adaptation; Unsupervised domain adaptation

Mesh:

Year:  2021        PMID: 34246070      PMCID: PMC8316425          DOI: 10.1016/j.media.2021.102136

Source DB:  PubMed          Journal:  Med Image Anal        ISSN: 1361-8415            Impact factor:   13.828


  16 in total

1.  Image quality assessment: from error visibility to structural similarity.

Authors:  Zhou Wang; Alan Conrad Bovik; Hamid Rahim Sheikh; Eero P Simoncelli
Journal:  IEEE Trans Image Process       Date:  2004-04       Impact factor: 10.856

2.  Generalizing Deep Learning for Medical Image Segmentation to Unseen Domains via Deep Stacked Transformation.

Authors:  Ling Zhang; Xiaosong Wang; Dong Yang; Thomas Sanford; Stephanie Harmon; Baris Turkbey; Bradford J Wood; Holger Roth; Andriy Myronenko; Daguang Xu; Ziyue Xu
Journal:  IEEE Trans Med Imaging       Date:  2020-02-12       Impact factor: 10.048

3.  CHAOS Challenge - combined (CT-MR) healthy abdominal organ segmentation.

Authors:  A Emre Kavur; N Sinem Gezer; Mustafa Barış; Sinem Aslan; Pierre-Henri Conze; Vladimir Groza; Duc Duy Pham; Soumick Chatterjee; Philipp Ernst; Savaş Özkan; Bora Baydar; Dmitry Lachinov; Shuo Han; Josef Pauli; Fabian Isensee; Matthias Perkonigg; Rachana Sathish; Ronnie Rajan; Debdoot Sheet; Gurbandurdy Dovletov; Oliver Speck; Andreas Nürnberger; Klaus H Maier-Hein; Gözde Bozdağı Akar; Gözde Ünal; Oğuz Dicle; M Alper Selver
Journal:  Med Image Anal       Date:  2020-12-25       Impact factor: 8.545

4.  Test-time adaptable neural networks for robust medical image segmentation.

Authors:  Neerav Karani; Ertunc Erdil; Krishna Chaitanya; Ender Konukoglu
Journal:  Med Image Anal       Date:  2020-11-19       Impact factor: 8.545

5.  Fully Convolutional Boundary Regression for Retina OCT Segmentation.

Authors:  Yufan He; Aaron Carass; Yihao Liu; Bruno M Jedynak; Sharon D Solomon; Shiv Saidha; Peter A Calabresi; Jerry L Prince
Journal:  Med Image Comput Comput Assist Interv       Date:  2019-10-10

6.  Unsupervised MR-to-CT Synthesis Using Structure-Constrained CycleGAN.

Authors:  Heran Yang; Jian Sun; Aaron Carass; Can Zhao; Junghoon Lee; Jerry L Prince; Zongben Xu
Journal:  IEEE Trans Med Imaging       Date:  2020-11-30       Impact factor: 10.048

7.  Missing MRI Pulse Sequence Synthesis Using Multi-Modal Generative Adversarial Network.

Authors:  Anmol Sharma; Ghassan Hamarneh
Journal:  IEEE Trans Med Imaging       Date:  2019-10-04       Impact factor: 10.048

8.  N4ITK: improved N3 bias correction.

Authors:  Nicholas J Tustison; Brian B Avants; Philip A Cook; Yuanjie Zheng; Alexander Egan; Paul A Yushkevich; James C Gee
Journal:  IEEE Trans Med Imaging       Date:  2010-04-08       Impact factor: 10.048

9.  Multimodal MRI segmentation of ischemic stroke lesions.

Authors:  Y Kabir; M Dojat; B Scherrer; F Forbes; C Garbay
Journal:  Annu Int Conf IEEE Eng Med Biol Soc       Date:  2007

10.  Structured layer surface segmentation for retina OCT using fully convolutional regression networks.

Authors:  Yufan He; Aaron Carass; Yihao Liu; Bruno M Jedynak; Sharon D Solomon; Shiv Saidha; Peter A Calabresi; Jerry L Prince
Journal:  Med Image Anal       Date:  2020-10-14       Impact factor: 8.545

View more
  1 in total

Review 1.  Artificial intelligence promotes the diagnosis and screening of diabetic retinopathy.

Authors:  Xuan Huang; Hui Wang; Chongyang She; Jing Feng; Xuhui Liu; Xiaofeng Hu; Li Chen; Yong Tao
Journal:  Front Endocrinol (Lausanne)       Date:  2022-09-29       Impact factor: 6.055

  1 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.