Sheikh Taimoor Shakeel, Lee Yonghee, Cho Migyung
Department of Computer & Media Engineering, Tongmyong University, Busan 48520, Korea.
Department of Pathology, Ajou University School of Medicine, Ajou University Medical Center, Suwon 16499, Korea.
Cancers (Basel). 2020 Jul 24;12(8):2031. doi: 10.3390/cancers12082031.
Diagnosis of pathologies using histopathological images can be time-consuming when many images with different magnification levels need to be analyzed. State-of-the-art computer vision and machine learning methods can help automate the diagnostic pathology workflow and thus reduce the analysis time. Automated systems can also be more efficient and accurate, and can increase the objectivity of diagnosis by reducing operator variability. We propose a multi-scale input and multi-feature network (MSI-MFNet) model, which can learn the overall structures and texture features of different scale tissues by fusing multi-resolution hierarchical feature maps from the network's dense connectivity structure. The MSI-MFNet predicts the probability of a disease on the patch and image levels. We evaluated the performance of our proposed model on two public benchmark datasets. Furthermore, through ablation studies of the model, we found that multi-scale input and multi-feature maps play an important role in improving the performance of the model. Our proposed model outperformed the existing state-of-the-art models by demonstrating better accuracy, sensitivity, and specificity.
当需要分析许多具有不同放大倍数水平的图像时,使用组织病理学图像进行病理学诊断可能会很耗时。先进的计算机视觉和机器学习方法可以帮助实现诊断病理学工作流程的自动化,从而减少分析时间。自动化系统也可以更高效、准确,并且可以通过减少操作员的变异性来提高诊断的客观性。我们提出了一种多尺度输入和多特征网络(MSI-MFNet)模型,该模型可以通过融合来自网络密集连接结构的多分辨率分层特征图来学习不同尺度组织的整体结构和纹理特征。MSI-MFNet在补丁和图像级别预测疾病的概率。我们在两个公共基准数据集上评估了我们提出的模型的性能。此外,通过对模型的消融研究,我们发现多尺度输入和多特征图在提高模型性能方面发挥着重要作用。我们提出的模型通过展示更好的准确性、敏感性和特异性,优于现有的先进模型。