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Co-localization of fluorescent signals using deep learning with Manders overlapping coefficient

机译:使用深层学习与伪造系数的荧光信号共定位

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Object-based co-localization of fluorescent signals allows the assessment of interactions between two (or more) biological entities using spatial information. It relies on object identification with high accuracy to separate fluorescent signals from the background. Object detectors using convolutional neural networks (CNN) with annotated training samples could facilitate the process by detecting and counting fluorescent-labeled cells from fluorescence photomicrographs. However, datasets containing segmented annotations of colocalized cells are generally not available, and creating a new dataset with delineated masks is label-intensive. Also, the co-localization coefficient is often not used as a component during training with the CNN model. Yet, it may aid with localizing and detecting objects during training and testing. In this work, we propose to address these issues by using a quantification coefficient for co-localization called Manders overlapping coefficient (MOC) as a single-layer branch in a CNN. Fully convolutional one-state (FCOS) with a Resnet101 backbone served as the network to evaluate the effectiveness of the novel branch to assist with bounding box prediction. Training data were sourced from lab curated fluorescence images of neurons from the rat hippocampus, piriform cortex, somatosensory cortex, and amygdala. Results suggest that using modified FCOS with MOC outperformed the original FCOS model for accuracy in detecting fluorescence signals by 1.1% in mean average precision (mAP).
机译:荧光信号的基于对象的共定位允许使用空间信息评估两个(或更多)生物实体之间的相互作用。它依赖于对象识别,以高精度地分离来自背景的荧光信号。使用带注释的训练样品的使用卷积神经网络(CNN)的对象探测器可以通过检测和计数来自荧光显微照片的荧光标记的细胞来促进过程。但是,通常不可用包含分段注释的数据集通常不可用,并创建具有删除掩码的新数据集是标签密集型。而且,共定位系数通常不会用作CNN模型训练期间的组件。然而,它可能有助于在训练和测试期间定位和检测物体。在这项工作中,我们建议通过使用称为伪装系数(MOC)作为CNN中的单层分支来解决这些问题的解决方案。完全卷积的单态(FCO)与Reset101骨干,作为网络,以评估新颖分支的有效性,以帮助边界盒预测。培训数据来自大鼠海马,梨状皮层,躯体感官皮质和杏仁症的神经元的实验室策划荧光图像。结果表明,使用具有MOC的修改的FCO优于原始FCOS模型,以便在平均平均精度(MAP)中检测荧光信号的准确性为1.1%。

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