通过基于深度学习的模型确定小鼠发情周期阶段的一致有效方法

IF 3.4 3区 医学 Q2 ENDOCRINOLOGY & METABOLISM Journal of Endocrinology Pub Date : 2024-04-01 DOI:10.1530/joe-23-0204
Leena Strauss, Arttu Junnila, Anni Wärri, Maria Manti, Yiwen Jiang, Eliisa Löyttyniemi, Elisabet Stener-Victorin, Marie K Lagerquist, Krisztina Kukoricza, Taija Heinosalo, Sami Blom, Matti Poutanen
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引用次数: 0

摘要

小鼠的发情周期分为四个阶段:前期(P)、发情期(E)、后期(M)和绝经期(D)。发情周期会影响多种组织中的生殖激素水平。因此,要从雌性小鼠身上获得可靠的结果,必须在采样时了解发情周期的阶段。可以在显微镜下通过阴道涂片分析发情周期。然而,这种方法耗时较长,而且不同的评估者得出的结果也不尽相同。在此,我们提出了一种准确且可重复的方法,用于对阴道涂片的数字全玻片图像(WSI)中的小鼠发情周期进行分期。我们利用云平台 Aiforia Create 中的深度卷积神经网络(CNN)开发了一个模型。通过对 171 份苏木精染色样本的图像特征进行有监督的像素级多类语义分割,对 CNN 进行了训练。通过比较 CNN 获得的结果和四位独立研究人员的结果,对模型进行了验证。验证数据包括三项独立研究,共 148 张切片。验证者与 CNN 之间的弗莱斯卡帕值(Fleiss kappa value)显示,两者之间的总体一致性非常好(0.75),如果分别分析 D、E 和 P 阶段,卡帕值分别为 0.89、0.79 和 0.74。M 阶段较短,研究人员对其定义不清。因此,由于缺乏适当的基本事实,CNN 对 M 阶段的识别具有挑战性,卡帕值为 0.26。我们的结论是,我们的模型对雌性小鼠发情周期阶段的分类是可靠和有效的。
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Consistent and effective method to define the mouse estrous cycle stage by deep learning based model

The mouse estrous cycle is divided into four stages: proestrus (P), estrus (E), metestrus (M) and diestrus (D). The estrous cycle affects reproductive hormone levels in a wide variety of tissues. Therefore, to obtain reliable results from female mice, it is important to know the estrous cycle stage during sampling. The stage can be analyzed from a vaginal smear under a microscope. However, it is time-consuming, and the results vary between evaluators. Here, we present an accurate and reproducible method for staging the mouse estrous cycle in digital whole slide images (WSIs) of vaginal smears. We developed a model using a deep convolutional neural network (CNN) in a cloud-based platform, Aiforia Create. The CNN was trained by supervised pixel-level multiclass semantic segmentation of image features from 171 hematoxylin-stained samples. The model was validated by comparing the results obtained by CNN with those of four independent researchers. The validation data included three separate studies comprising altogether 148 slides. The total agreement attested by the Fleiss kappa value between the validators and the CNN was excellent (0.75), and when D, E and P were analyzed separately, the kappa values were 0.89, 0.79 and 0.74, respectively. The M stage is short and not well defined by the researchers. Thus, identification of the M stage by the CNN was challenging due to the lack of proper ground truth, and the kappa value was 0.26. We conclude that our model is reliable and effective for classifying the estrous cycle stages in female mice.

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来源期刊
Journal of Endocrinology
Journal of Endocrinology 医学-内分泌学与代谢
CiteScore
7.90
自引率
2.50%
发文量
113
审稿时长
4-8 weeks
期刊介绍: Journal of Endocrinology is a leading global journal that publishes original research articles, reviews and science guidelines. Its focus is on endocrine physiology and metabolism, including hormone secretion; hormone action; biological effects. The journal publishes basic and translational studies at the organ, tissue and whole organism level.
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