OoCount:基于机器学习的小鼠卵泡计数和分类方法

IF 3.1 2区 生物学 Q2 REPRODUCTIVE BIOLOGY Biology of Reproduction Pub Date : 2025-02-04 DOI:10.1093/biolre/ioaf023
Lillian Folts, Anthony S Martinez, Jaelyn A Williams, Corey Bunce, Blanche Capel, Jennifer McKey
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引用次数: 0

摘要

卵泡在每个生长阶段的数量和分布情况是卵巢健康和功能的可靠读数。利用卵巢整体三维成像技术有可能发现准确的卵泡总数。由于这些图像的尺寸和整体性,卵母细胞计数既耗时又困难。机器学习算法的出现使得超快速自动显微镜图像分析方法得以发展。近年来,非专业人员越来越容易使用这些管道。我们利用这些工具创建了 OoCount,这是一种基于深度学习卷积神经网络(CNN)的高通量开源方法,用于从整个小鼠卵巢的荧光三维显微图像中自动进行卵母细胞分割和分类。我们开发了一种快速组织清理和成像方案,以获得整装小鼠卵巢的三维图像。在 Napari 中对三维图像中荧光标记的卵母细胞进行人工标注,以开发训练数据集。该数据集用于使用 DL4MicEverywhere 中的 CNN 重新训练 StarDist,以自动标记卵巢中的所有卵母细胞。在第二阶段,我们利用 Napari 插件 "加速像素和对象分类 "将卵母细胞按生长阶段分类。在这里,我们提供了一个端到端的管道,用于生成高质量的小鼠卵巢三维图像,并获得卵泡计数和分期。我们演示了如何定制 OoCount 以适应任何实验室生成的图像。利用 OoCount,我们可以从围产期和成年卵巢的每个生长阶段获得准确的卵母细胞计数,从而提高我们研究卵巢功能和生育能力的能力。
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OoCount: A Machine-Learning Based Approach to Mouse Ovarian Follicle Counting and Classification.

The number and distribution of follicles in each growth stage provides a reliable readout of ovarian health and function. Leveraging techniques for three-dimensional imaging of ovaries in toto has the potential to uncover total, accurate ovarian follicle counts. Due to the size and holistic nature of these images, counting oocytes is time consuming and difficult. The advent of machine-learning algorithms has allowed for the development of ultra-fast, automated methods to analyze microscopy images. In recent years, these pipelines have become more accessible to non-specialists. We used these tools to create OoCount, a high-throughput, open-source method for automatic oocyte segmentation and classification from fluorescent 3D microscopy images of whole mouse ovaries using a deep-learning convolutional neural network (CNN) based approach. We developed a fast tissue-clearing and imaging protocol to obtain 3D images of whole mount mouse ovaries. Fluorescently labeled oocytes from 3D images were manually annotated in Napari to develop a training dataset. This dataset was used to retrain StarDist using a CNN within DL4MicEverywhere to automatically label all oocytes in the ovary. In a second phase, we utilize Accelerated Pixel and Object Classification, a Napari plugin, to sort oocytes into growth stages. Here, we provide an end-to-end pipeline for producing high-quality 3D images of mouse ovaries and obtaining follicle counts and staging. We demonstrate how to customize OoCount to fit images produced in any lab. Using OoCount, we obtain accurate oocyte counts from each growth stage in the perinatal and adult ovary, improving our ability to study ovarian function and fertility.

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来源期刊
Biology of Reproduction
Biology of Reproduction 生物-生殖生物学
CiteScore
6.30
自引率
5.60%
发文量
214
审稿时长
1 months
期刊介绍: Biology of Reproduction (BOR) is the official journal of the Society for the Study of Reproduction and publishes original research on a broad range of topics in the field of reproductive biology, as well as reviews on topics of current importance or controversy. BOR is consistently one of the most highly cited journals publishing original research in the field of reproductive biology.
期刊最新文献
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