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Combined Detection and Segmentation of Cell Nuclei in Microscopy Images Using Deep Learning

机译:使用深度学习的显微镜图像中细胞核的联合检测和分割

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We propose a 3D convolutional neural network to simultaneously segment and detect cell nuclei in confocal microscopy images. Mirroring the co-dependency of these tasks, our proposed model consists of two serial components: the first part computes a segmentation of cell bodies, while the second module identifies the centers of these cells. Our model is trained end-to-end from scratch on a mouse parotid salivary gland stem cell nuclei dataset comprising 107 3D images from three independent cell preparations, each containing several hundred individual cell nuclei in 3D. In our experiments, we conduct a thorough evaluation of both detection accuracy and segmentation quality, on two different datasets. The results show that the proposed method provides significantly improved detection and segmentation accuracy compared to existing algorithms. Finally, we use a previously described test-time drop-out strategy to obtain uncertainty estimates on our predictions and validate these estimates by demonstrating that they are strongly correlated with accuracy.
机译:我们提出了一个3D卷积神经网络,以同时分割和检测共聚焦显微镜图像中的细胞核。为了反映这些任务的相互依赖性,我们提出的模型由两个串行组件组成:第一部分计算细胞体的分段,而第二个模块识别这些细胞的中心。我们的模型从头到尾在小鼠腮腺唾液腺干细胞核数据集中进行了从头到尾的训练,该数据集包含来自三个独立细胞制备物的107个3D图像,每个图像都包含数百个3D单个细胞核。在我们的实验中,我们对两个不同的数据集进行了检测准确性和分割质量的全面评估。结果表明,与现有算法相比,该方法可显着提高检测和分割精度。最后,我们使用先前描述的测试时间退出策略来获得关于我们的预测的不确定性估计,并通过证明它们与准确性密切相关来验证这些估计。

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