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题名Online variational learning of finite inverted Beta-Liouville mixture model for biomedical analysis
作者
发表日期2020-09-01
发表期刊International Journal of Imaging Systems and Technology
ISSN/eISSN0899-9457
卷号30期号:3页码:794-814
摘要

Image segmentation is widely applied for biomedical image analysis. However, segmentation of medical images is challenging due to many image modalities, such as, CT, X-ray, MRI, microscopy among others. An additional challenge to this is the high variability, inconsistent regions with missing edges, absence of texture contrast, and high noise in the background of biomedical images. Thus, many segmentation approaches have been investigated to address these issues and to transform medical images into meaningful information. During the past decade, finite mixture models have been revealed to be one of the most flexible and popular approaches in data clustering. In this article, we propose a statistical framework for online variational learning of finite inverted Beta-Liouville mixture model for clustering medical images. The online variational learning framework is used to estimate the parameters and the number of mixture components simultaneously, thus decreasing the computational complexity of the model. To this end, we evaluated our proposed algorithm on five different biomedical image data sets including optic disc detection and localization in diabetic retinopathy, digital imaging in melanoma lesion detection and segmentation, brain tumor detection, colon cancer detection and computer aid detection (CAD) of Malaria. Furthermore, we compared the proposed algorithm with three other popular algorithms. In our results, we analyze that the proposed online variational learning of finite IBL mixture model algorithm performs accurately on multiple modalities of medical images. It detects the disease patterns with high confidence. Computational and statistical approaches like the one presented in this article hold a significant impact on medical image analysis and interpretation in both clinical applications and scientific research. We believe that the proposed algorithm has the capacity to address multi modal biomedical image data sets and can be further applied by researchers to analyze correct disease patterns.

关键词biomedical images brain tumor detection CAD of malaria colon cancer diabetic retinopathy feature extraction finite inverted Beta-Liouville image segmentation mixture model optic disc localization and detection skin melanoma
DOI10.1002/ima.22421
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收录类别SCIE
语种英语English
WOS研究方向Engineering ; Optics ; Imaging Science & Photographic Technology
WOS类目Engineering, Electrical & Electronic ; Optics ; Imaging Science & Photographic Technology
WOS记录号WOS:000558552300001
Scopus入藏号2-s2.0-85082953641
引用统计
被引频次:3[WOS]   [WOS记录]     [WOS相关记录]
文献类型期刊论文
条目标识符https://repository.uic.edu.cn/handle/39GCC9TT/13044
专题个人在本单位外知识产出
理工科技学院
通讯作者Kalra, Meeta
作者单位
1.Concordia Institute for Information Systems Engineering,Concordia University,Montreal,Canada
2.Department of Computer Science and Technology,Huaqiao University,Xiamen,China
推荐引用方式
GB/T 7714
Kalra, Meeta,Bouguila, Nizar,Fan, Wentao. Online variational learning of finite inverted Beta-Liouville mixture model for biomedical analysis[J]. International Journal of Imaging Systems and Technology, 2020, 30(3): 794-814.
APA Kalra, Meeta, Bouguila, Nizar, & Fan, Wentao. (2020). Online variational learning of finite inverted Beta-Liouville mixture model for biomedical analysis. International Journal of Imaging Systems and Technology, 30(3), 794-814.
MLA Kalra, Meeta,et al."Online variational learning of finite inverted Beta-Liouville mixture model for biomedical analysis". International Journal of Imaging Systems and Technology 30.3(2020): 794-814.
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