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Classification of Histology Sections via Multispectral Convolutional Sparse Coding

机译:通过多谱卷积稀疏编码对组织学切片进行分类

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摘要

Image-based classification of histology sections plays an important role in predicting clinical outcomes. However this task is very challenging due to the presence of large technical variations (e.g., fixation, staining) and biological heterogeneities (e.g., cell type, cell state). In the field of biomedical imaging, for the purposes of visualization and/or quantification, different stains are typically used for different targets of interest (e.g., cellular/subcellular events), which generates multi-spectrum data (images) through various types of microscopes and, as a result, provides the possibility of learning biological-component-specific features by exploiting multispectral information. We propose a multispectral feature learning model that automatically learns a set of convolution filter banks from separate spectra to efficiently discover the intrinsic tissue morphometric signatures, based on convolutional sparse coding (CSC). The learned feature representations are then aggregated through the spatial pyramid matching framework (SPM) and finally classified using a linear SVM. The proposed system has been evaluated using two large-scale tumor cohorts, collected from The Cancer Genome Atlas (TCGA). Experimental results show that the proposed model 1) outperforms systems utilizing sparse coding for unsupervised feature learning (e.g., PSD-SPM []); 2) is competitive with systems built upon features with biological prior knowledge (e.g., SMLSPM []).
机译:基于图像的组织学切片分类在预测临床结果中起重要作用。然而,由于存在较大的技术变化(例如,固定,染色)和生物学异质性(例如,细胞类型,细胞状态),因此该任务是非常具有挑战性的。在生物医学成像领域,出于可视化和/或定量的目的,通常将不同的染色剂用于不同的目标靶标(例如,细胞/亚细胞事件),其通过各种类型的显微镜生成多光谱数据(图像)因此,提供了通过利用多光谱信息来学习生物成分特定特征的可能性。我们提出了一种多光谱特征学习模型,该模型可基于卷积稀疏编码(CSC)自动从单独的光谱中学习一组卷积滤波器组,以有效发现内在的组织形态特征。然后,通过空间金字塔匹配框架(SPM)汇总学习到的特征表示,最后使用线性SVM对其进行分类。使用从癌症基因组图谱(TCGA)收集的两个大规模肿瘤队列对拟议系统进行了评估。实验结果表明,所提出的模型1)优于使用稀疏编码进行无监督特征学习的系统(例如PSD-SPM []); 2)与具有生物学先验知识的功能(例如SMLSPM [])建立的系统相比具有竞争力。

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