Amin Muhammad Sadiq, Ahn Hyunsik
Department of Robot System Engineering, Tongmyong University, Busan 48520, Republic of Korea.
Cancers (Basel). 2023 Feb 5;15(4):1013. doi: 10.3390/cancers15041013.
The definitive diagnosis of histology specimen images is largely based on the radiologist's comprehensive experience; however, due to the fine to the coarse visual appearance of such images, experts often disagree with their assessments. Sophisticated deep learning approaches can help to automate the diagnosis process of the images and reduce the analysis duration. More efficient and accurate automated systems can also increase the diagnostic impartiality by reducing the difference between the operators. We propose a FabNet model that can learn the fine-to-coarse structural and textural features of multi-scale histopathological images by using accretive network architecture that agglomerate hierarchical feature maps to acquire significant classification accuracy. We expand on a contemporary design by incorporating deep and close integration to finely combine features across layers. Our deep layer accretive model structure combines the feature hierarchy in an iterative and hierarchically manner that infers higher accuracy and fewer parameters. The FabNet can identify malignant tumors from images and patches from histopathology images. We assessed the efficiency of our suggested model standard cancer datasets, which included breast cancer as well as colon cancer histopathology images. Our proposed avant garde model significantly outperforms existing state-of-the-art models in respect of the accuracy, F1 score, precision, and sensitivity, with fewer parameters.
组织学标本图像的最终诊断在很大程度上基于放射科医生的综合经验;然而,由于此类图像从精细到粗糙的视觉外观,专家们对其评估往往存在分歧。复杂的深度学习方法有助于实现图像诊断过程的自动化并缩短分析时间。更高效、准确的自动化系统还可以通过减少操作人员之间的差异来提高诊断公正性。我们提出了一种FabNet模型,该模型可以通过使用聚合网络架构来学习多尺度组织病理学图像从精细到粗糙的结构和纹理特征,该架构聚合分层特征图以获得显著的分类准确率。我们通过纳入深度且紧密的集成来扩展当代设计,以便在各层之间精细地组合特征。我们的深层聚合模型结构以迭代和分层的方式组合特征层次结构,从而推断出更高的准确率和更少的参数。FabNet可以从组织病理学图像的图像和切片中识别恶性肿瘤。我们使用标准癌症数据集评估了我们提出的模型的效率,这些数据集包括乳腺癌以及结肠癌组织病理学图像。我们提出的前沿模型在准确率、F1分数、精确率和敏感度方面显著优于现有的最先进模型,且参数更少。