Automatic construction of filter tree by genetic programming for ultrasound guidance image segmentation
Created by W.Langdon from
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- @Article{YUAN:2022:bspc,
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author = "Dalong Yuan and Dong Zhang and Yan Yang and
Shuang Yang",
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title = "Automatic construction of filter tree by genetic
programming for ultrasound guidance image
segmentation",
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journal = "Biomedical Signal Processing and Control",
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volume = "76",
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pages = "103641",
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year = "2022",
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ISSN = "1746-8094",
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DOI = "doi:10.1016/j.bspc.2022.103641",
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URL = "https://www.sciencedirect.com/science/article/pii/S174680942200163X",
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keywords = "genetic algorithms, genetic programming, Ultrasound
guidance image, Segmentation, End-to-end, Small
dataset",
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abstract = "Segmentation of ultrasound guidance images (UGIs) is a
critical step in ultrasound-guided high intensity
focused ultrasound (HIFU) therapy. However, the low
signal-to-noise ratio characteristic of UGIs makes it
difficult to acquire enough annotations. This paper
proposes a novel genetic programming-based approach to
achieve automatic construction of an image filter tree
(IFT) for UGI segmentation since genetic programming
has a natural advantage in training on small datasets.
In the new approach, a set of predefined functions are
adapted with better anti-noise performance to deal with
noise interference. Moreover, a position-determined
function is designed for incorporating preoperative
information in each IFT to form a closed-loop system
thereby facilitating the segmentation process. The
optimal IFT evolved by genetic programming, along with
a preprocessing step and a postprocessing step,
constructs the pipeline for the segmentation of UGIs.
The quantitative evaluation of the segmentation results
shows the mean true positive rate, the mean false
positive rate, the mean intersection over union, the
mean norm Hausdorff distance and the mean norm maximum
average distance are found to be 94.86percent,
6.72percent, 89.14percent, 3.20percent and 0.83percent,
respectively, outperforming the popular convolutional
neural network-based segmentation methods. The
segmentation results reveal that the evolved IFT can
achieve accurate segmentation of UGIs and indicate that
the proposed approach can be a promising option for
medical image segmentation when there are only a few
training samples available",
- }
Genetic Programming entries for
Dalong Yuan
Dong Zhang
Yan Yang
Shuang Yang
Citations