Literature DB >> 33907347

Outlier Guided Optimization of Abdominal Segmentation.

Yuchen Xu1, Olivia Tang1, Yucheng Tang1, Ho Hin Lee1, Yunqiang Chen2, Dashan Gao2, Shizhong Han2, Riqiang Gao1, Michael R Savona3, Richard G Abramson4, Yuankai Huo1, Bennett A Landman1,4.   

Abstract

Abdominal multi-organ segmentation of computed tomography (CT) images has been the subject of extensive research interest. It presents a substantial challenge in medical image processing, as the shape and distribution of abdominal organs can vary greatly among the population and within an individual over time. While continuous integration of novel datasets into the training set provides potential for better segmentation performance, collection of data at scale is not only costly, but also impractical in some contexts. Moreover, it remains unclear what marginal value additional data have to offer. Herein, we propose a single-pass active learning method through human quality assurance (QA). We built on a pre-trained 3D U-Net model for abdominal multi-organ segmentation and augmented the dataset either with outlier data (e.g., exemplars for which the baseline algorithm failed) or inliers (e.g., exemplars for which the baseline algorithm worked). The new models were trained using the augmented datasets with 5-fold cross-validation (for outlier data) and withheld outlier samples (for inlier data). Manual labeling of outliers increased Dice scores with outliers by 0.130, compared to an increase of 0.067 with inliers (p<0.001, two-tailed paired t-test). By adding 5 to 37 inliers or outliers to training, we find that the marginal value of adding outliers is higher than that of adding inliers. In summary, improvement on single-organ performance was obtained without diminishing multi-organ performance or significantly increasing training time. Hence, identification and correction of baseline failure cases present an effective and efficient method of selecting training data to improve algorithm performance.

Entities:  

Keywords:  abdomen segmentation; active learning; computed tomography; deep convolutional neural networks; multi-organ segmentation

Year:  2020        PMID: 33907347      PMCID: PMC8074641          DOI: 10.1117/12.2549365

Source DB:  PubMed          Journal:  Proc SPIE Int Soc Opt Eng        ISSN: 0277-786X


  4 in total

1.  Automated abdominal multi-organ segmentation with subject-specific atlas generation.

Authors:  Robin Wolz; Chengwen Chu; Kazunari Misawa; Michitaka Fujiwara; Kensaku Mori; Daniel Rueckert
Journal:  IEEE Trans Med Imaging       Date:  2013-06-03       Impact factor: 10.048

2.  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

3.  Splenomegaly Segmentation on Multi-Modal MRI Using Deep Convolutional Networks.

Authors:  Yuankai Huo; Zhoubing Xu; Shunxing Bao; Camilo Bermudez; Hyeonsoo Moon; Prasanna Parvathaneni; Tamara K Moyo; Michael R Savona; Albert Assad; Richard G Abramson; Bennett A Landman
Journal:  IEEE Trans Med Imaging       Date:  2018-11-13       Impact factor: 10.048

4.  Applying active learning to high-throughput phenotyping algorithms for electronic health records data.

Authors:  Yukun Chen; Robert J Carroll; Eugenia R McPeek Hinz; Anushi Shah; Anne E Eyler; Joshua C Denny; Hua Xu
Journal:  J Am Med Inform Assoc       Date:  2013-07-13       Impact factor: 4.497

  4 in total

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