使用原型模式和变压器引导的多实例学习在整个幻灯片图像中检测淋巴结转移

Thomas Wittenberg, Lukas Heinlein, Michaela Benz, Petr Kuritcyn, Volker Bruns, Arndt Hartmann, Carol Geppert, Felix Keil, Katja Evert
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引用次数: 0

摘要

背景:肿瘤转移淋巴结的检查对肿瘤患者的分期至关重要,是诊断和适当治疗选择的必要条件。数字病理学的进步,利用全幻灯片图像(WSIs)和卷积神经网络(cnn),为这一过程的自动化提供了新的机会,从而减少了病理学家的工作量,同时提高了转移检测的准确性。目的:为解决淋巴结转移检测的任务,应用弱监督变压器对淋巴结转移进行分析。方法,材料:由于wsi太大,无法作为一个整体进行处理,因此将其划分为不重叠的patch,使用CNN网络将其转换为特征向量,并对he染色的结肠癌切除术进行预训练。这些斑块的子集作为变压器的输入,用于预测LN是否包含转移。因此,选择具有代表性的子集是管道的重要组成部分。为此,采用了基于原型的聚类方法,并对不同的采样策略进行了测试。最后,将选择的特征向量馈送到基于转换器的多实例学习(MIL)架构中,将LNs分类为健康/阴性(即不包含转移)或转移/阳性(即包含转移)。该模型仅在Camelyon16训练数据(来自乳腺癌患者的LNs)上进行训练,并在Camelyon16测试集上进行评估。结果:训练后的模型在测试数据(来自乳腺ln)上达到了高达92.3%的准确率。虽然该模型与较小的转移瘤作斗争,但可以实现高达96.9%的高特异性。此外,该模型对来自不同原发肿瘤(结肠)的LNs进行了评估,准确率在62.3%至95.9%之间。结论:所研究的变压器模型对来自公共LN乳腺数据的LN数据表现良好,但从结肠到LN的域转移需要更多的研究。
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Lymph node metastases detection in Whole Slide Images using prototypical patterns and transformer-guided multiple instance learning
Abstract Background: The examination of lymph nodes (LNs) regarding metastases is vital for the staging of cancer patients, which is necessary for diagnosis and adequate treatment selection. Advancements in digital pathology, utilizing Whole-Slide Images (WSIs) and convolutional neural networks (CNNs), pose new opportunities to automate this procedure, thus reducing pathologists’ workload while simultaneously increasing the accuracy in metastases detection. Objective: To address the task of LN-metastases detection, the use of weakly supervised transformers are applied for the analysis of WSIs. Methods & Materials: As WSIs are too large to be processed as a whole, they are divided into non-overlapping patches, which are converted to feature vectors using a CNN network, pre-trained on HE-stained colon cancer resections. A subset of these patches serves as input for a transformer to predict if a LN contains a metastasis. Hence, selecting a representative subset is an important part of the pipeline. Hereby, a prototype based clustering is employed and different sampling strategies are tested. Finally, the chosen feature vectors are fed into a transformer-based multiple instance learning (MIL) architecture, classifying the LNs into healthy/negative (that is, containing no metastases), or metastatic/positive (that is, containing metastases). The proposed model is trained only on the Camelyon16 training data (LNs from breast cancer patients), and evaluated on the Camelyon16 test set. Results: The trained model achieves accuracies of up to 92.3% on the test data (from breast LNs). While the model struggles with smaller metastases, high specificities of up to 96.9% can be accomplished. Additionally, the model is evaluated on LNs from a different primary tumor (colon), where accuracies between 62.3% and 95.9% could be obtained. Conclusion: The investigated transformer-model performs very good on LN data from the public LN breast data, but the domain transfer to LNs from the colon needs more research.
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来源期刊
Current Directions in Biomedical Engineering
Current Directions in Biomedical Engineering Engineering-Biomedical Engineering
CiteScore
0.90
自引率
0.00%
发文量
239
审稿时长
14 weeks
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