Hongbin Zhang, Ya Feng, Jin Zhang, Guangli Li, Jianguo Wu, Donghong Ji
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引用次数: 0
摘要
经典的多实例学习(MIL)范式被用于弱监督全切片图像(WSI)分类。由于阳性组织在数十亿像素中所占比例较小,因此位于阳性组织之间的空间位置关系对这项任务至关重要,而大多数研究都忽略了这一点。因此,我们提出了一个名为 TDT-MIL 的框架。我们首先将卷积神经网络和变压器串联起来,进行基本的特征提取。然后,我们设计了一个新颖的双通道空间位置编码器(DCSPE)模块,以同时捕捉实例之间互补的局部和全局位置信息。为了进一步补充空间位置关系,我们构建了一个卷积三重关注(CTA)模块来关注通道间信息。因此,我们的模型可以充分挖掘空间位置和信道间信息,从而描述 WSI 中的关键病理语义。我们在两个公开数据集(包括 CAMELYON16 和 TCGA-NSCLC)上对 TDT-MIL 进行了评估,其相应的分类准确率和 AUC 分别高达 91.54%、94.96% 和 90.21%、94.36%,优于最先进的基线模型。更重要的是,我们的模型具有令人满意的能力,能利用巧妙而可解释的结构解决不平衡的 WSI 分类任务。
TDT-MIL: a framework with a dual-channel spatial positional encoder for weakly-supervised whole slide image classification.
The classic multiple instance learning (MIL) paradigm is harnessed for weakly-supervised whole slide image (WSI) classification. The spatial position relationship located between positive tissues is crucial for this task due to the small percentage of these tissues in billions of pixels, which has been overlooked by most studies. Therefore, we propose a framework called TDT-MIL. We first serially connect a convolutional neural network and transformer for basic feature extraction. Then, a novel dual-channel spatial positional encoder (DCSPE) module is designed to simultaneously capture the complementary local and global positional information between instances. To further supplement the spatial position relationship, we construct a convolutional triple-attention (CTA) module to attend to the inter-channel information. Thus, the spatial positional and inter-channel information is fully mined by our model to characterize the key pathological semantics in WSI. We evaluated TDT-MIL on two publicly available datasets, including CAMELYON16 and TCGA-NSCLC, with the corresponding classification accuracy and AUC up to 91.54%, 94.96%, and 90.21%, 94.36%, respectively, outperforming state-of-the-art baselines. More importantly, our model possesses a satisfactory capability in solving the imbalanced WSI classification task using an ingenious but interpretable structure.
期刊介绍:
The journal''s scope encompasses fundamental research, technology development, biomedical studies and clinical applications. BOEx focuses on the leading edge topics in the field, including:
Tissue optics and spectroscopy
Novel microscopies
Optical coherence tomography
Diffuse and fluorescence tomography
Photoacoustic and multimodal imaging
Molecular imaging and therapies
Nanophotonic biosensing
Optical biophysics/photobiology
Microfluidic optical devices
Vision research.