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An efficient SOM and EM-based intravascular ultrasound blood vessel image segmentation approach

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International Journal of System Assurance Engineering and Management Aims and scope Submit manuscript

Abstract

Intravascular ultrasound (IVUS) is a catheter-based imaging method used in the study of atherosclerotic disease. IVUS produces cross-sectional images of the blood vessels that enable quantitative assessment of the plaque. Automatic segmentation of the anatomical structures in the IVUS image is a really challenging task due to the presence of noise and catheter artifacts. Hence, this paper presents an efficient self-organizing map (SOM) and expectation-maximization (EM)-based approach for the segmentation of cross-sectional view of the IVUS blood vessel image. In our proposed work, the directional filtering is used to improve the signal to noise ratio of the blood vessel image. The Hough transform is used for predicting the circle in the image. Segmentation of the image is performed using the SOM and EM algorithm. After the segmentation process, extraction of the common pixels is performed. Gray-level co-occurrence matrix is applied for extracting features from the image. Fuzzy-relevance vector machine based classification of the image is performed. From the comparison results, it is clearly observed that the proposed approach is highly efficient than the existing techniques.

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References

  • Balocco S, Gatta C, Ciompi F, Wahle A, Radeva P, Carlier S et al (2014) Standardized evaluation methodology and reference database for evaluating IVUS image segmentation. Comput Med Imaging Graph 38:70–90

    Article  Google Scholar 

  • Borman S (2004) The expectation maximization algorithm—a short tutorial. In: Submitted for publication, pp 1–9, 2004

  • Bourantas C, Plissiti M, Fotiadis D, Protopappas V, Mpozios G, Katsouras C et al. (2014) In vivo validation of a novel semi-automated method for border detection in intravascular ultrasound images. Br J Radiol 78(926):122–129

    Article  Google Scholar 

  • Destrempes F, Cardinal M-HR, Allard L, Tardif J-C, Cloutier G (2014) Segmentation method of intravascular ultrasound images of human coronary arteries. Comput Med Imaging Graph 38:91–103

    Article  Google Scholar 

  • Ding Y, Bai L (2014) Experimental comparison of vasculature segmentation methods. In: International conference on computer vision theory and applications (VISAPP), 2014, pp 425–432

  • Hong Q, Li Q, Wang B, Li Y, Yao J, Liu K et al (2014) 3D vasculature segmentation using localized hybrid level-set method. Biomed Eng Online 13:169

    Article  Google Scholar 

  • Klooster RVT (2014) Automated image segmentation and registration of vessel wall MRI for quantitative assessment of carotid artery vessel wall dimensions and plaque composition. Division of Image Processing (LKEB), Radiology, Faculty of Medicine, Leiden University Medical Center (LUMC), Leiden University, 2014

  • Kohonen T (1998) The self-organizing map. Neurocomputing 21:1–6

    Article  MATH  Google Scholar 

  • Koli VY, Andurkar AG, Jain HS (2014) Automatic blood vessel segmentation in retinal image based on mathematical morphology. Int J Inven Eng Sci 12:33–37

    Google Scholar 

  • Kumar RP, Albregtsen F, Reimers M, Edwin B, Langø T, Elle OJ (2015) Blood vessel segmentation and centerline tracking using local structure analysis. In: 6th European conference of the international federation for medical and biological engineering, 2015, pp 122–125

  • Kumar RP, Albregtsen F, Reimers M, Edwin B, Langø T, Elle OJ (2015b) Three-dimensional blood vessel segmentation and centerline extraction based on two-dimensional cross-section analysis. Ann Biomed Eng 43:1223–1234

    Article  Google Scholar 

  • Kwee-Seong L (2006) Image segmentation methods for detecting blood vessels in angiography. In: Conference control, automation, robotics and vision Singapore, 2006

  • Lasso W, Morales Y, Torres C (2014) Image segmentation blood vessel of retinal using conventional filters, Gabor transform and skeletonization. In: XIX symposium on image, signal processing and artificial vision (STSIVA), 2014, pp 1–4

  • Li D-F, Hu W-C, Xiong W, Yang J-B (2008) Fuzzy relevance vector machine for learning from unbalanced data and noise. Pattern Recogn Lett 29:1175–1181

    Article  Google Scholar 

  • Luo T, Wischgoll T, Kwon Koo B, Huo Y, Kassab GS (2014) IVUS validation of patient coronary artery lumen area obtained from CT images. PloS One 9(1):e86949. doi:10.1371/journal.pone.0086949

    Article  Google Scholar 

  • Pelapur R, Surya Prasath V, Bunyak F, Glinskii OV, Glinsky VV, Huxley VH et al (2014) Multi-focus image fusion using epifluorescence microscopy for robust vascular segmentation. In: 36th annual international conference of the IEEE engineering in medicine and biology society (EMBC), 2014, pp 4735–4738

  • Pellegrini E, Robertson G, Trucco E, MacGillivray TJ, Lupascu C, van Hemert J et al (2014) Blood vessel segmentation and width estimation in ultra-wide field scanning laser ophthalmoscopy. Biomed Opt Express 5:4329–4337

    Article  Google Scholar 

  • Ravindraiah R, Tejaswini K (2013) Methods for segmentation of IVUS atherosclerosis images. Int J Comput Sci Mobile Comput 2:356–364

    Google Scholar 

  • Seabra J, Ciompi F, Pujol O, Mauri J, Radeva P, Sanches J (2011a) Rayleigh mixture model for plaque characterization in intravascular ultrasound. IEEE Trans Biomed Eng 58:1314–1324

    Article  Google Scholar 

  • Seabra J, Ciompi F, Pujol O, Mauri J, Radeva P, Sanches J (2011b) Rayleigh mixture model for plaque characterization in intravascular ultrasound. IEEE Trans Biomed Eng 58:1314–1324

    Article  Google Scholar 

  • Sofian H, Than J, Mohd Noor N, Dao H (2015) Segmentation and detection of media adventitia coronary artery boundary in medical imaging intravascular ultrasound using otsu thresholding. In: International conference on biosignal analysis, processing and systems (ICBAPS), 2015, pp 72–76

  • Widynski N, Porée J, Cardinal M-HR, Ohayon J, Cloutier G, Garcia D (2014) A sequential Bayesian based method for tracking and strain palpography estimation of arteries in intravascular ultrasound images. In: IEEE international ultrasonics symposium (IUS), 2014, pp 515–518

  • Wu S, Chow TW (2004) Clustering of the self-organizing map using a clustering validity index based on inter-cluster and intra-cluster density. Pattern Recogn 37:175–188

    Article  MATH  Google Scholar 

  • Yousefi S, Liu T, Wang RK (2015) Segmentation and quantification of blood vessels for OCT-based micro-angiograms using hybrid shape/intensity compounding. Microvasc Res 97:37–46

    Article  Google Scholar 

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Correspondence to Arti Taneja.

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Taneja, A., Ranjan, P. & Ujlayan, A. An efficient SOM and EM-based intravascular ultrasound blood vessel image segmentation approach. Int J Syst Assur Eng Manag 7, 442–449 (2016). https://doi.org/10.1007/s13198-016-0482-7

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  • DOI: https://doi.org/10.1007/s13198-016-0482-7

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