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毒理病理学中的人工智能:大鼠化合物诱导的肝细胞肥大的定量评估

Artificial Intelligence in Toxicologic Pathology: Quantitative Evaluation of Compound-Induced Hepatocellular Hypertrophy in Rats.

作者信息

Pischon Hannah, Mason David, Lawrenz Bettina, Blanck Olivier, Frisk Anna-Lena, Schorsch Frederic, Bertani Valeria

机构信息

483305Nuvisan Pharma Grafing GmbH, Bayer AG, Berlin, Germany.

Nuvisan ICB GmbH, Berlin, Germany.

出版信息

Toxicol Pathol. 2021 Jun;49(4):928-937. doi: 10.1177/0192623320983244. Epub 2021 Jan 5.

Abstract

Digital pathology evolved rapidly, enabling more systematic usage of image analysis and development of artificial intelligence (AI) applications. Here, combined AI models were developed to evaluate hepatocellular hypertrophy in rat liver, using commercial AI-based software on hematoxylin and eosin-stained whole slide images. In a first approach, deep learning-based identification of critical tissue zones (centrilobular, midzonal, and periportal) enabled evaluation of region-specific cell size. Mean cytoplasmic area of hepatocytes was calculated via several sequential algorithms including segmentation in microanatomical structures (separation of sinusoids and vessels from hepatocytes), nuclear detection, and area measurements. An increase in mean cytoplasmic area could be shown in groups given phenobarbital, known to induce hepatocellular hypertrophy when compared to control groups, in multiple studies. Quantitative results correlated with the gold standard: observation and grading performed by board-certified veterinary pathologists, liver weights, and gene expression. Furthermore, as a second approach, we introduce for the first time deep learning-based direct detection of hepatocellular hypertrophy with similar results. Cell hypertrophy is challenging to pick up, particularly in milder cases. Additional evaluation of mean cytoplasmic area or direct detection of hypertrophy, combined with histopathological observations and liver weights, is expected to increase accuracy and repeatability of diagnoses and grading by pathologists.

摘要

数字病理学发展迅速,使得图像分析的使用更加系统,人工智能(AI)应用得以发展。在此,我们开发了联合AI模型,使用基于商业AI的软件对苏木精和伊红染色的全切片图像进行分析,以评估大鼠肝脏中的肝细胞肥大情况。在第一种方法中,基于深度学习对关键组织区域(中央小叶、中间带和门周)进行识别,从而能够评估特定区域的细胞大小。通过几种连续算法计算肝细胞的平均细胞质面积,包括在微观解剖结构中进行分割(将肝血窦和血管与肝细胞分离)、细胞核检测和面积测量。在多项研究中,与对照组相比,给予苯巴比妥(已知可诱导肝细胞肥大)的组中可显示平均细胞质面积增加。定量结果与金标准相关:由具备委员会认证的兽医病理学家进行的观察和分级、肝脏重量以及基因表达。此外,作为第二种方法,我们首次引入基于深度学习的肝细胞肥大直接检测方法,结果相似。细胞肥大很难被发现,尤其是在较轻的病例中。对平均细胞质面积进行额外评估或直接检测肥大情况,再结合组织病理学观察和肝脏重量,有望提高病理学家诊断和分级的准确性及可重复性。

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