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FUZZY-NEURAL MACHINE WITH IMAGE FEATURE EXTRACTION FOR COLORECTAL CANCER DIAGNOSIS

机译:图像特征提取的模糊神经机器在大肠癌诊断中的应用

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An automated algorithmic approach, based on quantitative measurements, is a valuable tool to a Pathologist for fast verification of colon cancer image abnormalities for effective treatment. In this paper a novel method which automatically locates differences in colon cell images and classifies the colon cells into normal and malignant cells is presented. The system fuzzifies image feature descriptors and incorporates a clustering paradigm with neural network to classify images. The novelty of the algorithm is that it is independent of the feature extraction procedure adopted and overcomes the sharpness of class characteristics associated with other classifiers. It incorporates feature analysis and selection and differs markedly from other approaches which either ignore them or perform them as separate tasks prior to classification. The innovative method has been evaluated using 116 cancerous and 88 normal colon cell images and resulted in a very high classification rate of 96.435%. The percentage error rate of 2.6% is primarily due to preprocessing anomalies. The proposed system was evaluated using 116 cancer and 88 normal colon cell images and shown to be more efficient, simple to implement and yields better accuracy than other methods.
机译:基于定量测量的自动化算法方法对病理学家而言是宝贵的工具,可用于快速验证结肠癌图像异常以进行有效治疗。在本文中,提出了一种自动定位结肠细胞图像中的差异并将结肠细胞分为正常细胞和恶性细胞的新方法。该系统对图像特征描述符进行模糊处理,并将聚类范例与神经网络结合起来对图像进行分类。该算法的新颖性在于它独立于所采用的特征提取过程,并且克服了与其他分类器关联的分类特征的尖锐性。它结合了特征分析和选择功能,与其他方法明显不同,这些方法要么忽略它们,要么在分类之前将它们作为单独的任务执行。该创新方法已通过116例癌性和88例正常结肠细胞图像进行了评估,分类率高达96.435%。误差率为2.6%的主要原因是预处理异常。拟议的系统使用116例癌症和88例正常结肠细胞图像进行了评估,显示出比其他方法更有效,更易于实施且具有更高的准确性。

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