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Deep Learning in Image Classification using Residual Network (ResNet) Variants for Detection of Colorectal Cancer

机译:使用残余网络(Resnet)变体进行图像分类的深度学习,用于检测结直肠癌

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This paper investigates a deep learning method in image classification for the detection of colorectal cancer with ResNet architecture. The exceptional performance of a deep learning classification incites scholars to implement them in medical images. In this study, we trained ResNet-18 and ResNet-50 on colon glands images. The models trained to distinguish colorectal cancer into benign and malignant. We assessed our prototypes on three varieties of testing data (20%, 25%, and 40% of whole datasets). The empirical outcomes confirm that the application of ResNet-50 provides the most reliable performance for accuracy, sensitivity, and specificity value than ResNet-18 in three kinds of testing data. Upon three test assortments, we perceive the best performance value on 20% and 25% test sets with a classification accuracy of above 80%, the sensitivity of above 87%, and the specificity of above 83%. In this research, a deep learning method demonstrates the profoundly reliable and reproducible outcomes for biomedical image analysis.
机译:本文研究了与Reset架构检测结直肠癌的图像分类中的深度学习方法。深度学习分类的特殊表现煽动学者在医学图像中实施它们。在这项研究中,我们在冒号腺体上培训了Reset-18和Reset-50。培训模型将结肠直肠癌区分为良性和恶性。我们在测试数据的三种品种(20%,25%和40%的整个数据集)上评估了我们的原型。经验结果证实,Reset-50的应用提供了比Resnet-18在三种测试数据中的准确性,灵敏度和特异性值最可靠的性能。在三种测试分类上,我们在20%和25%的测试集上感知最佳性能值,分类精度高于80%,敏感性高于87%,特异性高于83%。在本研究中,深入学习方法证明了生物医学图像分析的深刻可靠和可重复的结果。

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