基于Inception的尿路上皮细胞分类网络用于从尿细胞学显微镜图像中检测膀胱癌

A. Np, Pournami P.N., J. P. B.
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引用次数: 0

摘要

医学图像诊断现在从深度卷积神经网络的使用中受益匪浅。基于cnn的深度神经网络广泛应用于医学分类任务中。尽管深度学习算法在解释整个幻灯片图像以检测肿瘤方面取得了与病理学家相当的性能,但很少有研究人员探索从显微镜图像检测尿路上皮癌的可能性。在这项研究中,我们提出了一种新的深度学习模型,用于基于尿细胞学涂片检测尿路上皮细胞癌(UCC)。该网络基于Inception架构,可以有效地学习图像中不同大小细胞的特征,与最先进的技术相比,产生了相对较高的准确性。所提出的技术使用包括115个人细胞学样本的数据集进行评估,其中59人患有组织学证实的UCC病例,其余56例良性病例通过常规细胞学样本确定。该方法在参数较少的情况下具有98.63%的准确率。该方法在精度和参数数量方面的性能非常令人鼓舞。
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An Inception based Urothelial Cell Classification Network for the detection of Bladder Carcinoma from Urine Cytology Microscopic Images
Medical image diagnostics now benefit greatly from the use of deep convolutional neural networks. The CNN-based deep neural networks are extensively used in the medical classification tasks. Although deep learning algorithms have gained performance comparable to pathologists in interpreting whole slide images for the detection of tumours, very few researchers have explored the possibility of detecting urothelial carcinoma from microscopic images. In this study, we propose a novel deep learning model for urine cytology smear-based detection of urothelial cell cancer (UCC). The network is based on Inception architecture that can efficiently learn the features of varied size cells in the image and produced relatively high accuracy when compared to state-of-the-art techniques. The proposed technique is evaluated using a dataset that includes the cytology samples of 115 individuals, 59 of whom had UCC instances that were histologically confirmed and the remaining 56 benign cases were identified through routine cytology samples. The suggested approach offers 98.63% accuracy with fewer parameters. The method’s performance in terms of accuracy and parameter count is highly encouraging.
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