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A combined spatial-spectral method for automated white blood cells segmentation

机译:一种结合空间光谱的白细胞自动分割方法

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摘要

To overcome the shortcomings in the traditional white blood cells (WBCs) identification methods based on the color or gray images captured by light microscopy, a microscopy hyperspectral imaging system was used to analyze the blood smears. The system was developed by coupling an acousto-optic tunable filter (AOTF) adapter to a microscopy and driven by a SPF Model AOTF controller, which can capture hyperspectral images from 550 nm to 1000 nm with the spectral resolution 2-5 nm. Moreover, a combined spatial-spectral algorithm is proposed to segment the nuclei and cytoplasm of WBCs from the microscopy hyperspectral images. The proposed algorithm is based on the pixel-wise improved spectral angle mapper (ISAM) segmentation, followed by the majority voting within the active contour model regions. Experimental results show that the accuracy of the proposed algorithm is 91.06% (nuclei) and 85.59% (cytoplasm), respectively, which is higher than that of the spectral information divergence (SID) algorithm because the new method can jointly use both the spectral and spatial information of blood cells.
机译:为了克服传统白细胞(WBC)识别方法基于光学显微镜捕获的彩色或灰色图像的缺点,使用了显微镜高光谱成像系统来分析血液涂片。该系统是通过将声光可调滤光片(AOTF)适配器耦合至显微镜并由SPF Model AOTF控制器驱动而开发的,该控制器可以捕获550 nm至1000 nm的高光谱图像,光谱分辨率为2-5 nm。此外,提出了一种组合的空间光谱算法,从显微高光谱图像中分割白细胞的细胞核和细胞质。所提出的算法基于逐像素改进的频谱角度映射器(ISAM)分割,然后在活动轮廓模型区域内进行多数表决。实验结果表明,所提算法的准确度分别为91.06%(核)和85.59%(细胞质),高于光谱信息散度(SID)算法,因为新方法可以同时使用光谱和血细胞的空间信息。

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