Computer-aided histopathological image analysis for cancer detection is a major research challenge in the medical domain. Automatic detection and classification of nuclei for cancer diagnosis impose a lot of challenges in developing state of the art algorithms due to the heterogeneity of cell nuclei and data set variability. Recently, a multitude of classification algorithms has used complex deep learning models for their dataset. However, most of these methods are rigid and their architectural arrangement suffers from inflexibility and non-interpretability. In this research article, we have proposed a hybrid and flexible deep learning architecture OLConvNet that integrates the interpretability of traditional object-level features and generalization of deep learning features by using a shallower Convolutional Neural Network (CNN) named as $CNN_{3L}$. $CNN_{3L}$ reduces the training time by training fewer parameters and hence eliminating space constraints imposed by deeper algorithms. We used F1-score and multiclass Area Under the Curve (AUC) performance parameters to compare the results. To further strengthen the viability of our architectural approach, we tested our proposed methodology with state of the art deep learning architectures AlexNet, VGG16, VGG19, ResNet50, InceptionV3, and DenseNet121 as backbone networks. After a comprehensive analysis of classification results from all four architectures, we observed that our proposed model works well and perform better than contemporary complex algorithms.
翻译:用于癌症检测的计算机辅助组织病理学图像分析是医学领域的一大研究挑战。癌症诊断核心的自动检测和分类在开发先进的算法方面带来了许多挑战,因为细胞核心和数据集变异性各异。最近,大量分类算法在其数据集中使用了复杂的深层次学习模型。然而,这些方法大多是僵硬的,其建筑安排具有不灵活和非可解释性。在本研究文章中,我们提出了一个混合和灵活的深层次学习结构OLConvNet,该结构将传统目标层面特征的解释性和深层次学习特征的概括化结合起来,通过使用称为$CNN ⁇ 3L}的浅层神经网络(CNNNN)来发展先进的算法。由于培训参数较少,从而减少了培训时间,从而消除了更深层次算法带来的空间限制。我们在Curve(AUC)下提出了一种混合和灵活的深层次的深层次学习结构。为了进一步加强我们建筑方法的可行性,我们测试了亚历克斯网络的拟议结构、VGIS基础分析。