Literature DB >> 32775501

Learning from dispersed manual annotations with an optimized data weighting policy.

Yucheng Tang1, Riqiang Gao1, Yunqiang Chen2, Dashan Gao2, Michael R Savona3, Richard G Abramson3, Shunxing Bao1, Yuankai Huo1, Bennett A Landman1,3.   

Abstract

Purpose: Deep learning methods have become essential tools for quantitative interpretation of medical imaging data, but training these approaches is highly sensitive to biases and class imbalance in the available data. There is an opportunity to increase the available training data by combining across different data sources (e.g., distinct public projects); however, data collected under different scopes tend to have differences in class balance, label availability, and subject demographics. Recent work has shown that importance sampling can be used to guide training selection. To date, these approaches have not considered imbalanced data sources with distinct labeling protocols. Approach: We propose a sampling policy, known as adaptive stochastic policy (ASP), inspired by reinforcement learning to adapt training based on subject, data source, and dynamic use criteria. We apply ASP in the context of multiorgan abdominal computed tomography segmentation. Training was performed with cross validation on 840 subjects from 10 data sources. External validation was performed with 20 subjects from 1 data source.
Results: Four alternative strategies were evaluated with the state-of-the-art baseline as upper confident bound (UCB). ASP achieves average Dice of 0.8261 compared to 0.8135 UCB ( p < 0.01 , paired t -test) across fivefold cross validation. On withheld testing datasets, the proposed ASP achieved 0.8265 mean Dice versus 0.8077 UCB ( p < 0.01 , paired t -test). Conclusions: ASP provides a flexible reweighting technique for training deep learning models. We conclude that the proposed method adapts the sample importance, which leverages the performance on a challenging multisite, multiorgan, and multisize segmentation task.
© 2020 Society of Photo-Optical Instrumentation Engineers (SPIE).

Entities:  

Keywords:  abdominal organ segmentation; computed tomography; data weighting; reinforcement learning

Year:  2020        PMID: 32775501      PMCID: PMC7394463          DOI: 10.1117/1.JMI.7.4.044002

Source DB:  PubMed          Journal:  J Med Imaging (Bellingham)        ISSN: 2329-4302


  7 in total

1.  Computer-aided measurement of liver volumes in CT by means of geodesic active contour segmentation coupled with level-set algorithms.

Authors:  Kenji Suzuki; Ryan Kohlbrenner; Mark L Epstein; Ademola M Obajuluwa; Jianwu Xu; Masatoshi Hori
Journal:  Med Phys       Date:  2010-05       Impact factor: 4.071

2.  Improving Splenomegaly Segmentation by Learning from Heterogeneous Multi-Source Labels.

Authors:  Yucheng Tang; Yuankai Huo; Yunxi Xiong; Hyeonsoo Moon; Albert Assad; Tamara K Moyo; Michael R Savona; Richard Abramson; Bennett A Landman
Journal:  Proc SPIE Int Soc Opt Eng       Date:  2019-03-15

3.  Efficient multi-atlas abdominal segmentation on clinically acquired CT with SIMPLE context learning.

Authors:  Zhoubing Xu; Ryan P Burke; Christopher P Lee; Rebeccah B Baucom; Benjamin K Poulose; Richard G Abramson; Bennett A Landman
Journal:  Med Image Anal       Date:  2015-05-21       Impact factor: 8.545

4.  Multi-organ segmentation based on spatially-divided probabilistic atlas from 3D abdominal CT images.

Authors:  Chengwen Chu; Masahiro Oda; Takayuki Kitasaka; Kazunari Misawa; Michitaka Fujiwara; Yuichiro Hayashi; Yukitaka Nimura; Daniel Rueckert; Kensaku Mori
Journal:  Med Image Comput Comput Assist Interv       Date:  2013

Review 5.  Splenomegaly, hypersplenism and coagulation abnormalities in liver disease.

Authors:  P A McCormick; K M Murphy
Journal:  Baillieres Best Pract Res Clin Gastroenterol       Date:  2000-12

6.  Learning to Compose Domain-Specific Transformations for Data Augmentation.

Authors:  Alexander J Ratner; Henry R Ehrenberg; Zeshan Hussain; Jared Dunnmon; Christopher Ré
Journal:  Adv Neural Inf Process Syst       Date:  2017-12

7.  SynSeg-Net: Synthetic Segmentation Without Target Modality Ground Truth.

Authors:  Yuankai Huo; Zhoubing Xu; Hyeonsoo Moon; Shunxing Bao; Albert Assad; Tamara K Moyo; Michael R Savona; Richard G Abramson; Bennett A Landman
Journal:  IEEE Trans Med Imaging       Date:  2018-10-17       Impact factor: 10.048

  7 in total
  1 in total

1.  External Attention Assisted Multi-Phase Splenic Vascular Injury Segmentation With Limited Data.

Authors:  Yuyin Zhou; David Dreizin; Yan Wang; Fengze Liu; Wei Shen; Alan L Yuille
Journal:  IEEE Trans Med Imaging       Date:  2022-06-01       Impact factor: 11.037

  1 in total

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