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Deep Learning Approach for Quantification of Fluorescently Labeled Blood Cells in Danio rerio (Zebrafish)

机译:Danio Rerio(斑马鱼)中荧光标记血细胞量化的深度学习方法

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摘要

Neutrophils are a type of white blood cell essential for the function of the innate immune system. To elucidate mechanisms of neutrophil biology, many studies are performed in vertebrate animal model systems. In Danio rerio (zebrafish), in vivo imaging of neutrophils is possible due to transgenic strains that possess fluorescently labeled leukocytes. However, due to the relative abundance of neutrophils, the counting process is laborious and subjective. In this article, we propose the use of a custom trained “you only look once” (YOLO) machine learning algorithm to automate the identification and counting of fluorescently labeled neutrophils in zebrafish. Using this model, we found the correlation coefficient between human counting and the model equals r = 0.8207 with an 8.65% percent error, while variation among human counters was 5% to 12%. Importantly, the model was able to correctly validate results of a previously published article that quantitated neutrophils manually. While the accuracy can be further improved, this model notably achieves these results in mere minutes compared with hours via standard manual counting protocols and can be performed by anyone with basic programming knowledge. It further supports the use of deep learning models for high throughput analysis of fluorescently labeled blood cells in the zebrafish model system.
机译:中性粒细胞是一种白色血细胞,对于先天免疫系统的功能是必不可少的。为了阐明中性粒细胞生物学的机制,许多研究是在脊椎动物动物模型系统中进行的。在Danio Rerio(斑马鱼)中,由于具有具有荧光标记的白细胞的转基因菌株,可以体内成像中性粒细胞。然而,由于嗜中性粒细胞的相对丰度,计数过程是费力和主观的。在本文中,我们建议使用自定义训练的“您只有一次”(YOLO)机器学习算法,以自动化斑马鱼中荧光标记的中性粒细胞的鉴定和计数。使用该模型,我们发现人数之间的相关系数,模型等于r = 0.8207,误差8.65%,而人类计数器的变化为5%至12%。重要的是,该模型能够正确地验证先前公布的物品的结果,即手动定量中性粒细胞。虽然可以进一步提高精度,但是,与通过标准手动计数协议相比,该模型仅在几分钟内实现了这些结果,并且可以由具有基本编程知识的任何人执行。它还支持在斑马鱼模型系统中对荧光标记血细胞的高通量分析使用深度学习模型。

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