染色体图像增强用于高效核型分析

R. Remya, H. Prasad, S. Hariharan, C. Gopakumar
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引用次数: 1

摘要

染色体图像容易受到传感器和染色噪声、不均匀性和模糊的影响,从而妨碍有效的核型。本研究系统地扩展了染色体图像预处理的图像处理方法,提出了一种新的染色体图像去噪和增强方法。提出的方法是数学建模和评价与主观和客观的措施。从预处理后的输入图像中对分割后的染色体进行后分类,得到了令人满意的结果。该方法的性能通过MSE(均方误差)、PSNR(峰值信噪比)、SSIM(结构相似指数度量)、FSIM(特征相似指数度量)、SAM(光谱角映射器)和SRE(信号重构误差比)进行量化。对一组10张经过高斯噪声和高斯模糊处理的测试图像,平均得到MSE为8.164,PSNR为39.037,SSIM为0.9654,SAM为81.729,SRE为63.842,FSIM为0.6128。当提出的预处理后进行分类任务时,分类后准确率从88%提高到95%。
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Chromosome Image Enhancement for Efficient Karyotyping
Chromosome images are susceptible to sensor and staining noises, inhomogeneity, and blurring which prevent efficient karyotyping. In this research work, image processing methods are systematically extended for the preprocessing of chromosome images, and a novel approach for denoising and enhancing the chromosome images is proposed. The proposed approach is mathematically modeled and evaluated with subjective and objective measures. Promising results are obtained which are further substantiated with the post-classification of the segmented chromosomes from the preprocessed input image. Performance of the proposed method is quantified in terms of MSE (Mean Squared Error), PSNR (Peak Signal to Noise Ratio), SSIM (Structural Similarity Index Measure), FSIM(Features Similarity Index Measure), SAM(Spectral Angle Mapper), and SRE(Signal to Reconstruction Error ratio). An MSE of 8.164, PSNR of 39.037, SSIM of 0.9654, SAM of 81.729, SRE of 63.842, and FSIM of 0.6128 are obtained, on average for a set of 10 test images which were previously degraded with Gaussian noise and Gaussian blur. Post-classification accuracy improved from 88% to 95% as and when the proposed preprocessing is followed by the classification task.
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