Immunohistochemistry-Free Enhanced Histopathology of the Rat Spleen Using Deep Learning.

IF 1.4 4区 医学 Q3 PATHOLOGY Toxicologic Pathology Pub Date : 2024-12-26 DOI:10.1177/01926233241303907
Shima Mehrvar, Kevin Maisonave, Wayne Buck, Magali Guffroy, Bhupinder Bawa, Lauren Himmel
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Abstract

Enhanced histopathology of the immune system uses a precise, compartment-specific, and semi-quantitative evaluation of lymphoid organs in toxicology studies. The assessment of lymphocyte populations in tissues is subject to sampling variability and limited distinctive cytologic features of lymphocyte subpopulations as seen with hematoxylin and eosin (H&E) staining. Although immunohistochemistry is necessary for definitive characterization of T- and B-cell compartments, routine toxicologic assessments are based solely on H&E slides. Here, a deep learning (DL) model was developed using normal rats to quantify relevant compartments of the spleen, including periarteriolar lymphoid sheaths, follicles, germinal centers, and marginal zones from H&E slides. Slides were scanned, destained, dual labeled with CD3 and CD79a chromogenic immunohistochemistry, and rescanned to generate exact co-registered images that served as the ground truth for training and validation. The DL model identified individual splenic compartments with high accuracy (97.8% Dice similarity coefficient) directly from H&E-stained tissue. The DL model was utilized to study the normal range of lymphoid compartment area and cellularity. Future implementation of our DL model and expanding this approach to other lymphoid tissues have the potential to improve accuracy and precision in enhanced histopathology evaluation of the immune system with concurrent gains in time efficiency for the pathologist.

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基于深度学习的无免疫组织化学增强大鼠脾脏组织病理学研究。
免疫系统强化组织病理学在毒理学研究中对淋巴器官进行精确的、特定区域的半定量评估。组织中淋巴细胞群的评估受取样变化和淋巴细胞亚群细胞学特征的限制,如苏木精和伊红(H&E)染色。虽然免疫组化是确定 T 细胞和 B 细胞区系特征的必要条件,但常规毒理学评估仅基于 H&E 切片。在此,我们利用正常大鼠开发了一种深度学习(DL)模型,以量化脾脏的相关区段,包括H&E切片中的小动脉周围淋巴鞘、滤泡、生发中心和边缘区。对切片进行扫描、去染色、CD3 和 CD79a 色原免疫组化双重标记并重新扫描,以生成精确的共混图像,作为训练和验证的基本真相。DL 模型能直接从 H&E 染色组织中高精度(97.8% Dice 相似系数)地识别出单个脾脏分区。我们利用 DL 模型研究了淋巴区面积和细胞度的正常范围。未来实施我们的 DL 模型并将这种方法扩展到其他淋巴组织,有可能提高免疫系统组织病理学评估的准确性和精确性,同时提高病理学家的时间效率。
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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.
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