首页> 外文会议>Conference on Imaging, Manipulation, and Analysis of Biomolecules, Cells, and Tissues II; 20040127-20040128; San Jose,CA; US >A recursive spectral selection scheme for unsupervised segmentation of multispectral Pap smear image sets
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A recursive spectral selection scheme for unsupervised segmentation of multispectral Pap smear image sets

机译:多光谱子宫颈抹片涂片图像集无监督分割的递归光谱选择方案

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Efficient computer-aided cervical cancer detection can improve both the accuracy and the productivity of cytotechnologists and pathologists. Nuclear segmentation is essential to automated screening, and is still a challenge. We propose and demonstrate a novel approach to improving segmentation performance by multispectral imaging followed by unsupervised nuclear segmentation relying on selecting a useful subset of spectral or derived image features. In the absence of prior knowledge, feature selection can be negatively affected by the bias, present in most unsupervised segmentation, to erroneously segment out small objects, yielding ill-balanced class samples. To address this issue, we first introduce a new measurement, Criterion Vector (CV), measuring the distances between the segmentation result and the original data. This efficiently reduces the bias generated by feature selection. Second, we apply a novel recursive feature selection scheme, to generate a new feature subset based on the corresponding CV, ensuring that the correct part of the initial segmentation results is used to obtain better feature subsets. We studied the speed and accuracy of our two-step algorithm in analyzing a number of multispectral Pap smear image sets. The results show high accuracy of segmentation, as well as great reduction of spectral redundancy. The nuclear segmentation accuracy can reach over 90%, by selecting as few as 4 distinct spectra out of 30.
机译:高效的计算机辅助宫颈癌检测可以提高细胞技术人员和病理学家的准确性和生产率。核分割对于自动筛选至关重要,仍然是一个挑战。我们提出并演示了一种新颖的方法,可通过选择依赖光谱或派生图像特征的有用子集的多光谱成像,然后进行无监督的核分割来提高分割性能。在没有先验知识的情况下,特征选择可能会受到大多数无监督分割中存在的偏差的不利影响,该偏差会错误地分割出小对象,从而产生不平衡的类样本。为了解决这个问题,我们首先引入了一种新的度量标准:标准向量(CV),用于测量分割结果与原始数据之间的距离。这有效地减少了由特征选择产生的偏差。其次,我们应用一种新颖的递归特征选择方案,基于相应的CV生成新的特征子集,确保使用初始分割结果的正确部分来获得更好的特征子集。在分析许多多光谱巴氏涂片图像集时,我们研究了两步算法的速度和准确性。结果表明分割的准确性很高,并且频谱冗余度大大降低。通过在30个光谱中选择少至4个不同的光谱,核分割精度可以达到90%以上。

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