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A Bifocal Classification and Fusion Network for Multimodal Image Analysis in Histopathology

机译:组织病理学多峰图像分析的双焦分类和融合网络

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Recognition of key morphological features in histological slides is crucial for pathological diagnosis and monitoring therapeutic progress. However, the typical routine microscopic workflow is conducted by hand which is time-consuming and has unavoidable intra- and inter-observer variability like all human work. Therefore, we propose a bifocal classification and fusion network for the automated recognition and cross-modality analysis of diagnostic features in whole-slide multimodal images (WSIs). In brief, paired image tiles cropped from digitized tissue sections were fed into a modified dual-path CNN which accepts asymmetric inputs for classification, and then the inference results were converted to feature distribution heatmaps, which permit qualitative as well as quantitative morphological analyses of entire histological sections, even in combination with adjacent sections that have been stained differently. The multimodal heatmaps were aligned using image registration and fused for cross-modality analysis. Our experiments showed that the network achieved high recognition performance (AUCs of 0.985 and 0.988, and accuracies of 94.7% and 96.1% on two WSI modalities, respectively, against expert markings) and outperformed state-of-the-art methods without training on a large cohort or utilizing domain transfer. In addition, the new method involves a self-contained inference and fusion process and thus harbors significant potential for speeding up microscopic analysis workflows.
机译:识别组织学载玻片中的关键形态特征对于病理诊断和监测治疗进展至关重要。然而,典型的常规微观工作流由手动进行,这是耗时的,并且具有与所有人类工作中的任何不可避免的内部和观察者间变异性。因此,我们提出了一种双焦分类和融合网络,用于全幻灯片多峰图像(WSIS)中的诊断特征的自动识别和跨代性分析。简而言之,从数字化组织切片裁剪的配对图像瓦片进入修改的双路CNN,该改进的双路CNN接受用于分类的不对称输入,然后将推断结果转化为特征分布热量,这允许整个定性以及定量的形态分析即使与已染色的相邻部分结合不同的组织学部分。使用图像配准和融合用于跨模态分析的多模式热量进行对齐。我们的实验表明,该网络达到了高识别性能(AUCS 0.985和0.988,分别对两种WSI模式的准确性为94.7%和96.1%,而专家标记,优于现有的方法而不培训大队列或利用域转移。此外,新方法涉及自包含的推理和融合过程,因此提高了微观分析工作流程的显着潜力。

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