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Multi-label Detection and Classification of Red Blood Cells in Microscopic Images

机译:微观图像中红细胞的多标签检测和分类

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Cell detection and cell type classification from biomedical images play an important role for high-throughput imaging and various clinical application. While classification of single cell sample can be performed with standard computer vision and machine learning methods, analysis of multi-label samples (region containing congregating cells) is more challenging, as separation of individual cells can be difficult (e.g. touching cells) or even impossible (e.g. overlapping cells). As multi-instance images are common in analyzing Red Blood Cell (RBC) for Sickle Cell Disease (SCD) diagnosis, we develop and implement a multi-instance cell detection and classification framework to address this challenge. The framework firstly trains a region proposal model based on Region-based Convolutional Network (RCNN) to obtain bounding-boxes of regions potentially containing single or multiple cells from input microscopic images, which are extracted as image patches. High-level image features are then calculated from image patches through a pre-trained Convolutional Neural Network (CNN) with ResNet-50 structure. Using these image features inputs, six networks are then trained to make multi-label prediction of whether a given patch contains cells belonging to a specific cell type. As the six networks are trained with image patches consisting of both individual cells and touching/overlapping cells, they can effectively recognize cell types that are presented in multi-instance image samples. Finally, for the purpose of SCD testing, we train another machine learning classifier to predict whether the given image patch contains abnormal cell type based on outputs from the six networks. Testing result of the proposed framework shows that it can achieve good performance in automatic cell detection and classification.
机译:来自生物医学图像的细胞检测和细胞类型分类对高通量成像和各种临床应用起重要作用。虽然可以用标准计算机视觉和机器学习方法进行单电池样本的分类,但是多标签样本(含有聚集细胞的区域)的分析更具挑战性,因为个体细胞的分离可能是困难的(例如触摸细胞)甚至不可能(例如重叠细胞)。由于多实例图像在分析红细胞(RBC)对于镰状细胞疾病(SCD)诊断时,我们开发并实施多实例的单元检测和分类框架来解决这一挑战。该框架首先基于基于区域的卷积网络(RCNN)的区域提出模型,以获得来自输入微观图像的可能包含单个或多个小区的限定盒,其被提取为图像斑块。然后通过具有Reset-50结构的预先训练的卷积神经网络(CNN)从图像贴片计算高级图像特征。使用这些图像特征输入,然后训练六个网络,以使给定修补程序包含属于特定小区类型的单元格的多标签预测。由于六个网络接受了由单个小区和触摸/重叠小区组成的图像补丁,因此可以有效地识别在多实例图像样本中呈现的细胞类型。最后,为SCD测试的目的,我们训练另一台机器学习分类器,以预测给定的图像贴片是否基于六个网络的输出包含异常细胞类型。所提出的框架的测试结果表明,它可以在自动细胞检测和分类中实现良好的性能。

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