一种支持大鼠甲状腺滤泡细胞肥大评估的深度学习工具的开发。

IF 1.4 4区 医学 Q3 PATHOLOGY Toxicologic Pathology Pub Date : 2025-01-17 DOI:10.1177/01926233241309328
Stuart W Naylor, Elizabeth F McInnes, James Alibhai, Scott Burgess, James Baily
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引用次数: 0

摘要

甲状腺组织对内分泌干扰物质的影响很敏感,这是一个重大的健康问题。大鼠甲状腺组织切片的组织病理学分析仍然是评估农药对甲状腺影响的金标准。然而,大鼠甲状腺的外观存在高度的可变性,毒理学病理学家经常难以确定并一致应用记录低级别甲状腺滤泡肥大的阈值。该研究项目开发了一种深度学习图像分析解决方案,该解决方案基于单个卵泡的形态测量提供定量评分,可集成到标准病理工作流程中。为了实现这一目标,使用了U-Net卷积深度学习神经网络,该网络不仅可以识别各种组织成分,还可以描绘单个卵泡。进一步处理原始个体卵泡数据的步骤是使用经验模型进行优化,以产生甲状腺活动评分,与病理学家的评分相比,该评分显示优于平均上皮面积法。这些评分可用于病理学家决策支持,使用适当的统计方法来评估在组水平上是否存在低级别甲状腺肥大。
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Development of a Deep Learning Tool to Support the Assessment of Thyroid Follicular Cell Hypertrophy in the Rat.

Thyroid tissue is sensitive to the effects of endocrine disrupting substances, and this represents a significant health concern. Histopathological analysis of tissue sections of the rat thyroid gland remains the gold standard for the evaluation for agrochemical effects on the thyroid. However, there is a high degree of variability in the appearance of the rat thyroid gland, and toxicologic pathologists often struggle to decide on and consistently apply a threshold for recording low-grade thyroid follicular hypertrophy. This research project developed a deep learning image analysis solution that provides a quantitative score based on the morphological measurements of individual follicles that can be integrated into the standard pathology workflow. To achieve this, a U-Net convolutional deep learning neural network was used that not just identifies the various tissue components but also delineates individual follicles. Further steps to process the raw individual follicle data were developed using empirical models optimized to produce thyroid activity scores that were shown to be superior to the mean epithelial area approach when compared with pathologists' scores. These scores can be used for pathologist decision support using appropriate statistical methods to assess the presence or absence of low-grade thyroid hypertrophy at the group level.

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来源期刊
Toxicologic Pathology
Toxicologic Pathology 医学-病理学
CiteScore
4.70
自引率
20.00%
发文量
57
审稿时长
6-12 weeks
期刊介绍: Toxicologic Pathology is dedicated to the promotion of human, animal, and environmental health through the dissemination of knowledge, techniques, and guidelines to enhance the understanding and practice of toxicologic pathology. Toxicologic Pathology, the official journal of the Society of Toxicologic Pathology, will publish Original Research Articles, Symposium Articles, Review Articles, Meeting Reports, New Techniques, and Position Papers that are relevant to toxicologic pathology.
期刊最新文献
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