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首页> 外文期刊>Computers in Biology and Medicine >Automatic differential diagnosis of pancreatic serous and mucinous cystadenomas based on morphological features
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Automatic differential diagnosis of pancreatic serous and mucinous cystadenomas based on morphological features

机译:基于形态学特征的胰腺浆液性和黏液性囊腺瘤自动鉴别诊断

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Generally, pathological diagnosis using an electron microscope is time-consuming and likely to result in a subjective judgment, because pathologists perform manual screening of tissue slides at high magnifications. Recently, the advent of digital pathology technology has provided the basis for convenient screening and quantitative analysis by digitizing tissue slides through a computer system. However, a screening process with high magnification still takes quite a long time. To solve these problems, recently the use of computer-aided design techniques for performing pathologic diagnosis has been increasing in digital pathology. For pathological diagnosis, we need different diagnostic methods for different regions with different characteristics. Therefore, in order to effectively diagnose different lesions and types of diseases, a quantitative method for extracting specific features is required in computerized pathologic diagnosis. This study is about an automated differential diagnosis system to differentiate between benign serous cystadenoma and possibly-malignant mucinous cystadenoma. In order to diagnose cystic tumors, the first step is identifying a cystic region and inspecting its epithelial cells. First, we identify the lumen boundary of a cyst using the Direction Cumulative Map considering 8-ways. Then, the Epithelial Nuclei Identification algorithm is used to discern epithelial nuclei. After that, three morphological features for the differential diagnosis of mucinous and serous cystadenomas are extracted. To demonstrate the superiority of the proposed features, the experiments compared performance of the classifiers learned by using the proposed morphological features and the classical morphological features based on nuclei. The classifiers in the simulations are as follows; Bayesian Classifier, k-Nearest Neighbors, Support Vector Machine, and Artificial Neural Network. The results show that all classifiers using the proposed features have the best classification performance.
机译:通常,使用电子显微镜进行病理学诊断非常耗时,并且可能导致主观判断,因为病理学家会以高放大倍数手动检查组织玻片。最近,数字病理技术的出现为通过计算机系统对组织玻片进行数字化提供了方便的筛选和定量分析的基础。但是,高倍率的筛选过程仍然需要相当长的时间。为了解决这些问题,近来在数字病理学中越来越多地使用计算机辅助设计技术来进行病理学诊断。对于病理诊断,我们需要针对具有不同特征的不同区域使用不同的诊断方法。因此,为了有效地诊断不同的病变和疾病类型,在计算机病理诊断中需要用于提取特定特征的定量方法。这项研究是关于一种自动的鉴别诊断系统,以区分良性浆液性囊腺瘤和可能恶性的黏液性囊腺瘤。为了诊断囊性肿瘤,第一步是确定囊性区域并检查其上皮细胞。首先,我们使用考虑8向的方向累积图来确定囊肿的管腔边界。然后,使用上皮细胞核识别算法来识别上皮细胞核。之后,提取了三种形态学特征,用于鉴别粘液性和浆液性囊腺瘤。为了证明所提出的特征的优越性,实验比较了通过使用所提出的形态特征和基于核的经典形态特征所学习的分类器的性能。模拟中的分类器如下:贝叶斯分类器,k最近邻,支持向量机和人工神经网络。结果表明,使用所提出特征的所有分类器均具有最佳分类性能。

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