School of Electronics, Electrical Engineering and Computer Science, Queen's University Belfast, Belfast, BT39DT, United Kingdom; Department of Electrical and Computer Engineering, Abdullah Gul University, Kayseri, 38080, Turkey.
Department of Electrical and Computer Engineering, Abdullah Gul University, Kayseri, 38080, Turkey; Department of Computer Engineering, Abdullah Gul University, Kayseri, 38080, Turkey.
Comput Methods Programs Biomed. 2023 Apr;232:107441. doi: 10.1016/j.cmpb.2023.107441. Epub 2023 Feb 24.
Early detection of colon adenomatous polyps is critically important because correct detection of it significantly reduces the potential of developing colon cancers in the future. The key challenge in the detection of adenomatous polyps is differentiating it from its visually similar counterpart, non-adenomatous tissues. Currently, it solely depends on the experience of the pathologist. To assist the pathologists, the objective of this work is to provide a novel non-knowledge-based Clinical Decision Support System (CDSS) for improved detection of adenomatous polyps on colon histopathology images.
The domain shift problem arises when the train and test data are coming from different distributions of diverse settings and unequal color levels. This problem, which can be tackled by stain normalization techniques, restricts the machine learning models to attain higher classification accuracies. In this work, the proposed method integrates stain normalization techniques with ensemble of competitively accurate, scalable and robust variants of CNNs, ConvNexts. The improvement is empirically analyzed for five widely employed stain normalization techniques. The classification performance of the proposed method is evaluated on three datasets comprising more than 10k colon histopathology images.
The comprehensive experiments demonstrate that the proposed method outperforms the state-of-the-art deep convolutional neural network based models by attaining 95% classification accuracy on the curated dataset, and 91.1% and 90% on EBHI and UniToPatho public datasets, respectively.
These results show that the proposed method can accurately classify colon adenomatous polyps on histopathology images. It retains remarkable performance scores even for different datasets coming from different distributions. This indicates that the model has a notable generalization ability.
早期发现结肠腺瘤性息肉至关重要,因为正确检测可显著降低未来患结肠癌的可能性。腺瘤性息肉检测的关键挑战是将其与视觉上相似的非腺瘤性组织区分开来。目前,这完全依赖于病理学家的经验。为了帮助病理学家,本研究旨在提供一种新颖的基于知识的临床决策支持系统(CDSS),以提高对结肠组织病理学图像中腺瘤性息肉的检测能力。
当训练和测试数据来自不同分布的不同环境且颜色水平不等时,就会出现域转移问题。这个问题可以通过染色归一化技术来解决,但它限制了机器学习模型达到更高的分类精度。在这项工作中,所提出的方法将染色归一化技术与竞争准确、可扩展和稳健的 CNN 变体的集成相结合。通过广泛使用的五种染色归一化技术对改进效果进行了实证分析。在所提出的方法的分类性能评估中,使用了包含超过 10k 张结肠组织病理学图像的三个数据集。
全面的实验表明,所提出的方法在经过整理的数据集上的分类精度达到 95%,在 EBHI 和 UniToPatho 公共数据集上的分类精度分别达到 91.1%和 90%,优于基于最先进的深度卷积神经网络的模型。
这些结果表明,所提出的方法可以准确地对组织病理学图像中的结肠腺瘤性息肉进行分类。即使对于来自不同分布的不同数据集,它也保持着显著的性能评分。这表明该模型具有显著的泛化能力。