A New Automated Method for Microscopy Image Analysis: Curvelet Paradigm as a Framework for Sperm Detection

Q3 Health Professions
P. Taheri, S. V. Shojaedini
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引用次数: 0

Abstract

Analyzing sperm behavior in semen microscopy images is a modern approach for infertility treatment. distinguishing low contrast sperms from other parts of semen specimen is the major bottleneck of this technique. Machine vision approaches are fitting solutions for detection of sperms but they are challenging. In this article a new method is introduced which utilizes nonlinear mapping in curvelet framework to detect sperms in microscopy images. The proposed method may detect sperms despite of their poor contrasts and vague distribution, thanks to its better sparse representation and more directionality feature than existing approaches. Furthermore, adapting the parameters of the nonlinear mapping due to curvelet components is effective for reinforcement weak ridges as well as better compatibility with different microscopy images. The obtained results show the proposed method achieves the detection rate minimally 4 and maximally 17 percent better than its alternatives, in presence of zero false detection. Furthermore, it is shown that better detection of sperms by proposed method not only does not lead to extract more false objects but also may improve false positive rate by extent of [3-33] percent compared to other examined algorithms.
一种新的显微镜图像分析自动化方法:曲波范式作为精子检测的框架
分析精液显微镜图像中的精子行为是治疗不孕症的一种现代方法。将低对比精子与精液标本的其他部分区分开来是该技术的主要瓶颈。机器视觉方法是检测精子的合适解决方案,但它们具有挑战性。本文介绍了一种利用曲线框架中的非线性映射来检测显微镜图像中的精子的新方法。与现有方法相比,该方法具有更好的稀疏表示和更多的方向性特征,尽管精子的对比度较差且分布模糊,但仍可以检测到精子。此外,由于曲线分量的非线性映射参数的适应,可以有效地增强弱脊,并与不同的显微图像有更好的兼容性。结果表明,在零误检的情况下,该方法的检出率比其他方法低4%,高17%。此外,研究表明,与其他已研究的算法相比,该方法对精子的更好检测不仅不会导致提取更多的假对象,而且可以将假阳性率提高[3-33]%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Iranian Journal of Medical Physics
Iranian Journal of Medical Physics Health Professions-Radiological and Ultrasound Technology
CiteScore
1.00
自引率
0.00%
发文量
0
审稿时长
8 weeks
期刊介绍: Iranian Journal of Medical Physics (IJMP) is the official scientific bimonthly publication of the Iranian Association of Medical Physicists. IJMP is an international and multidisciplinary journal, peer review, free of charge publication and open access. This journal devoted to publish Original Papers, Review Articles, Short Communications, Technical Notes, Editorial and Letters to the Editor in the field of “Medical Physics” involving both basic and clinical research. Submissions of manuscript from all countries are welcome and will be reviewed by at least two expert reviewers.
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