应用尺度不变ResNet 18与空间监督技术对乳腺癌的组织学诊断

S. U. K. Bukhari, Syed Azeemuddin, S. S. Khalid, S. Shah
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引用次数: 0

摘要

背景:乳腺癌是全世界妇女发病率和死亡率最高的疾病之一。组织病理学诊断是乳腺癌治疗的重要组成部分。人工智能的应用正在为更好的患者护理带来有希望的结果。目的:本研究项目的主要目的是探索空间监督技术发展乳腺癌组织学诊断的尺度不变系统的潜力。材料与方法:数据集的苏木精和伊红染色切片的匿名图像,从网站获取。这些载玻片是在不同的放大倍率下拍摄的。利用空间监督学习构造尺度不变系统。我们使用400x和40x来生成结果。对于400x,我们在200x、100x和40x图像的数据集上训练我们的网络。数据集被分为训练集和验证集。训练集包含80%的尊重数据集的数字幻灯片,验证集包含20%的尊重数据集的数字幻灯片。将400x的数据集拆分为训练数据集和测试数据集生成最终结果。训练集包含50%的数字幻灯片,测试集也包含50%的数字幻灯片。这种不寻常的分裂是为了展示空间监督学习的效果。同样,对于40x,我们在400x、200x和100x的数据集上训练我们的网络。同样的步骤得到了40倍的结果。结果:结果分析表明,在40x数据集上进行空间监督学习的ResNet 18的F-1得分为1.0,而仅进行监督学习的ResNet 18在40x数据集上的F-1得分为0.9823。在400x数据集上进行空间监督学习的ResNet 18的F-1得分为0.9957,而仅进行监督学习的ResNet 18在400x数据集上的F-1得分为0.9591。对于监督学习,数据集被分为训练(80%)和测试(20%)。结论:运用空间监督学习的卷积神经网络Resnet - 18架构对数字化病理图像进行分析,取得了优异的效果,F-1得分高达1.0。应用空间监督技术开发的尺度不变系统解决了变放大图像的问题。这一发现将进一步为深度学习应用于病理病变的组织学诊断铺平道路。
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The histological diagnosis of breast cancer by employing scale invariant ResNet 18 with spatial supervised technique
Background: Breast cancer is one of the most prevalent cause of morbidity and mortality in women all over the world. Histopathological diagnosis is a vital component in the management of breast cancer. The application of artificial intelligence is yielding promising results for the better patientcare. Aim: The main aim of the present research project is to explore the potential of spatial supervised technique to develop scale invariant system for the histological diagnosis of breast cancer. Materials and Methods: The anonymized images of hematoxylin and eosin stained section of the dataset, which has been acquired from the website. The slides were taken at different zoom (magnification) levels. Spatial supervised learning has been employed to make a scale invariant system. We used 400x and 40x to generate the results. For the 400x, we trained our network on a dataset of 200x, 100x, and 40x images. The datasets were split into training and validation sets. The training set contained 80% digital slides of the respected dataset, and the validation set contained 20% digital slides of the respected dataset. The final result was generated by splitting the dataset of 400x into the training and test dataset. The training set contained 50% digital slides, and the test set also contained 50% digital slides. This unusual split is done to show how good spatial supervised learning works. Similarly, for 40x, we trained our networks on a dataset of 400x, 200x, and 100x. The same steps were followed to obtain the 40x results. Results: The result analysis revealed that the ResNet 18 with spatial supervised learning on dataset of 40x yielded the F-1 score of 1.0, while ResNet 18 with supervised learning only, on dataset of 40x yielded F-1 score of 0.9823. ResNet 18 with spatial supervised learning on dataset of 400x revealed F-1 score of 0.9957, and ResNet 18 with supervised learning only, on dataset of 400x showed the F-1 score of 0.9591. For supervised learning dataset is spited into training (80%) and testing (20% of dataset). Conclusion: The analysis of digitized pathology images with the application of convolutional neural network Resnet - 18 architecture with spatial supervised learning revealed excellent results, which is demonstrated by a very high F-1 score of 1.0. The development of scale invariant system with application of spatial supervised technique solved the problem of images with variable magnifications. The finding would further pave the pathway for application of deep learning for the histological diagnosis of pathological lesions.
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