Not seeing the trees for the forest. The impact of neighbours on graph-based configurations in histopathology.

IF 2.9 3区 生物学 Q2 BIOCHEMICAL RESEARCH METHODS BMC Bioinformatics Pub Date : 2025-01-11 DOI:10.1186/s12859-024-06007-x
Olga Fourkioti, Matt De Vries, Reed Naidoo, Chris Bakal
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Abstract

Background: Deep learning (DL) has set new standards in cancer diagnosis, significantly enhancing the accuracy of automated classification of whole slide images (WSIs) derived from biopsied tissue samples. To enable DL models to process these large images, WSIs are typically divided into thousands of smaller tiles, each containing 10-50 cells. Multiple Instance Learning (MIL) is a commonly used approach, where WSIs are treated as bags comprising numerous tiles (instances) and only bag-level labels are provided during training. The model learns from these broad labels to extract more detailed, instance-level insights. However, biopsied sections often exhibit high intra- and inter-phenotypic heterogeneity, presenting a significant challenge for classification. To address this, many graph-based methods have been proposed, where each WSI is represented as a graph with tiles as nodes and edges defined by specific spatial relationships.

Results: In this study, we investigate how different graph configurations, varying in connectivity and neighborhood structure, affect the performance of MIL models. We developed a novel pipeline, K-MIL, to evaluate the impact of contextual information on cell classification performance. By incorporating neighboring tiles into the analysis, we examined whether contextual information improves or impairs the network's ability to identify patterns and features critical for accurate classification. Our experiments were conducted on two datasets: COLON cancer and UCSB datasets.

Conclusions: Our results indicate that while incorporating more spatial context information generally improves model accuracy at both the bag and tile levels, the improvement at the tile level is not linear. In some instances, increasing spatial context leads to misclassification, suggesting that more context is not always beneficial. This finding highlights the need for careful consideration when incorporating spatial context information in digital pathology classification tasks.

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只见树木不见森林。组织病理学中邻域对基于图的构型的影响。
背景:深度学习(DL)为癌症诊断设定了新的标准,显著提高了来自活检组织样本的全切片图像(wsi)自动分类的准确性。为了使深度学习模型能够处理这些大型图像,通常将wsi划分为数千个较小的块,每个块包含10-50个单元格。多实例学习(Multiple Instance Learning, MIL)是一种常用的方法,其中wsi被视为包含许多块(实例)的包,并且在训练期间只提供包级标签。模型从这些广泛的标签中学习,以提取更详细的实例级洞察。然而,活检切片通常表现出高度的表型内和表型间异质性,这对分类提出了重大挑战。为了解决这个问题,已经提出了许多基于图的方法,其中每个WSI都表示为一个图,其中瓦片作为节点和由特定空间关系定义的边。结果:在本研究中,我们研究了不同的图配置,不同的连通性和邻域结构,如何影响MIL模型的性能。我们开发了一种新的管道,K-MIL,来评估上下文信息对细胞分类性能的影响。通过将相邻的块合并到分析中,我们检查了上下文信息是提高还是削弱了网络识别模式和特征的能力,这些模式和特征对准确分类至关重要。我们的实验在两个数据集上进行:结肠癌和UCSB数据集。结论:我们的研究结果表明,虽然纳入更多的空间上下文信息通常会提高袋子和瓷砖层面的模型精度,但瓷砖层面的提高不是线性的。在某些情况下,增加空间背景会导致错误分类,这表明更多的背景并不总是有益的。这一发现强调了在数字病理分类任务中纳入空间上下文信息时需要仔细考虑。
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来源期刊
BMC Bioinformatics
BMC Bioinformatics 生物-生化研究方法
CiteScore
5.70
自引率
3.30%
发文量
506
审稿时长
4.3 months
期刊介绍: BMC Bioinformatics is an open access, peer-reviewed journal that considers articles on all aspects of the development, testing and novel application of computational and statistical methods for the modeling and analysis of all kinds of biological data, as well as other areas of computational biology. BMC Bioinformatics is part of the BMC series which publishes subject-specific journals focused on the needs of individual research communities across all areas of biology and medicine. We offer an efficient, fair and friendly peer review service, and are committed to publishing all sound science, provided that there is some advance in knowledge presented by the work.
期刊最新文献
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