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Multi-Scale and Shape Constrained Localized Region-Based Active Contour Segmentation of Uterine Fibroid Ultrasound Images in HIFU Therapy

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  • Xiangyun Liao
  • Zhiyong Yuan
  • Qi Zheng
  • Qian Yin
  • Dong Zhang
  • Jianhui Zhao

Abstract

Purpose: To overcome the severe intensity inhomogeneity and blurry boundaries in HIFU (High Intensity Focused Ultrasound) ultrasound images, an accurate and efficient multi-scale and shape constrained localized region-based active contour model (MSLCV), was developed to accurately and efficiently segment the target region in HIFU ultrasound images of uterine fibroids. Methods: We incorporated a new shape constraint into the localized region-based active contour, which constrained the active contour to obtain the desired, accurate segmentation, avoiding boundary leakage and excessive contraction. Localized region-based active contour modeling is suitable for ultrasound images, but it still cannot acquire satisfactory segmentation for HIFU ultrasound images of uterine fibroids. We improved the localized region-based active contour model by incorporating a shape constraint into region-based level set framework to increase segmentation accuracy. Some improvement measures were proposed to overcome the sensitivity of initialization, and a multi-scale segmentation method was proposed to improve segmentation efficiency. We also designed an adaptive localizing radius size selection function to acquire better segmentation results. Results: Experimental results demonstrated that the MSLCV model was significantly more accurate and efficient than conventional methods. The MSLCV model has been quantitatively validated via experiments, obtaining an average of 0.94 for the DSC (Dice similarity coefficient) and 25.16 for the MSSD (mean sum of square distance). Moreover, by using the multi-scale segmentation method, the MSLCV model’s average segmentation time was decreased to approximately 1/8 that of the localized region-based active contour model (the LCV model). Conclusions: An accurate and efficient multi-scale and shape constrained localized region-based active contour model was designed for the semi-automatic segmentation of uterine fibroid ultrasound (UFUS) images in HIFU therapy. Compared with other methods, it provided more accurate and more efficient segmentation results that are very close to those obtained from manual segmentation by a specialist.

Suggested Citation

  • Xiangyun Liao & Zhiyong Yuan & Qi Zheng & Qian Yin & Dong Zhang & Jianhui Zhao, 2014. "Multi-Scale and Shape Constrained Localized Region-Based Active Contour Segmentation of Uterine Fibroid Ultrasound Images in HIFU Therapy," PLOS ONE, Public Library of Science, vol. 9(7), pages 1-13, July.
  • Handle: RePEc:plo:pone00:0103334
    DOI: 10.1371/journal.pone.0103334
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    Cited by:

    1. Bo-I Chuang & Li-Chieh Kuo & Tai-Hua Yang & Fong-Chin Su & I-Ming Jou & Wei-Jr Lin & Yung-Nien Sun, 2017. "A medical imaging analysis system for trigger finger using an adaptive texture-based active shape model (ATASM) in ultrasound images," PLOS ONE, Public Library of Science, vol. 12(10), pages 1-21, October.

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