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A novel scheme for abnormal cell detection in Pap smear images

机译:子宫颈抹片检查中异常细胞检测的新方案

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Finding malignant cells in Pap smear images is a "needle in a haystack"-type problem, tedious, labor-intensive and error-prone. It is therefore desirable to have an automatic screening tool in order that human experts can concentrate on the evaluation of the more difficult cases. Most research on automatic cervical screening tries to extract morphometric and texture features at the cell level, in accordance with the NIH "The Bethesda System" rules. Due to variances in image quality and features, such as brightness, magnification and focus, morphometric and texture analysis is insufficient to provide robust cervical cancer detection. Using a microscopic spectral imaging system, we have produced a set of multispectral Pap smear images with wavelengths from 400 nm to 690 nm, containing both spectral signatures and spatial attributes. We describe a novel scheme that combines spatial information (including texture and morphometric features) with spectral information to significantly improve abnormal cell detection. Three kinds of wavelet features, orthogonal, bi-orthogonal and non-orthogonal, are carefully chosen to optimize recognition performance. Multispectral feature sets are then extracted in the wavelet domain. Using a Back-Propagation Neural Network classifier that greatly decreases the influence of spurious events, we obtain a classification error rate of 5%. Cell morphometric features, such as area and shape, are then used to eliminate most remaining small artifacts. We report initial results from 149 cells from 40 separate image sets, in which only one abnormal cell was missed (TPR = 97.6%) and one normal cell was falsely classified as cancerous (FPR = 1%).
机译:在子宫颈抹片检查图像中发现恶性细胞是一个“大海捞针”型的问题,繁琐,费力且容易出错。因此,期望具有一种自动筛选工具,以便人类专家可以专注于对更困难病例的评估。关于自动宫颈筛查的大多数研究都试图根据NIH“贝塞斯达系统”(Bethesda System)规则在细胞水平上提取形态和纹理特征。由于图像质量和功能(例如亮度,放大倍率和焦点)的差异,形态分析和纹理分析不足以提供可靠的宫颈癌检测。使用显微光谱成像系统,我们制作了一组多光谱巴氏涂片图像,其波长从400 nm到690 nm,既包含光谱特征,又包含空间属性。我们描述了一种新颖的方案,该方案将空间信息(包括纹理和形态特征)与光谱信息结合在一起,可以显着改善异常细胞的检测。仔细选择三种小波特征(正交,双正交和非正交)以优化识别性能。然后在小波域中提取多光谱特征集。使用反向传播神经网络分类器可以大大减少虚假事件的影响,我们得到的分类错误率为5%。然后使用细胞形态特征(例如面积和形状)来消除大多数剩余的小伪像。我们报告了来自40个不同图像集的149个细胞的初步结果,其中仅遗漏了一个异常细胞(TPR = 97.6%),而一个正常细胞被错误地分类为癌性(FPR = 1%)。

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