Taishi Shimazaki, Ameya Deshpande, Anindya Hajra, Tijo Thomas, Kyotaka Muta, Naohito Yamada, Y. Yasui, T. Shoda
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引用次数: 0
Abstract
Artificial intelligence (AI)-based image analysis is increasingly being used for preclinical safety-assessment studies in the pharmaceutical industry. In this paper, we present an AI-based solution for preclinical toxicology studies. We trained a set of algorithms to learn and quantify multiple typical histopathological findings in whole slide images (WSIs) of the livers of young Sprague Dawley rats by using a U-Net-based deep learning network. The trained algorithms were validated using 255 liver WSIs to detect, classify, and quantify seven types of histopathological findings (including vacuolation, bile duct hyperplasia, and single-cell necrosis) in the liver. The algorithms showed consistently good performance in detecting abnormal areas. Approximately 75% of all specimens could be classified as true positive or true negative. In general, findings with clear boundaries with the surrounding normal structures, such as vacuolation and single-cell necrosis, were accurately detected with high statistical scores. The results of quantitative analyses and classification of the diagnosis based on the threshold values between “no findings” and “abnormal findings” correlated well with diagnoses made by professional pathologists. However, the scores for findings ambiguous boundaries, such as hepatocellular hypertrophy, were poor. These results suggest that deep learning-based algorithms can detect, classify, and quantify multiple findings simultaneously on rat liver WSIs. Thus, it can be a useful supportive tool for a histopathological evaluation, especially for primary screening in rat toxicity studies.
期刊介绍:
JTP is a scientific journal that publishes original studies in the field of toxicological pathology and in a wide variety of other related fields. The main scope of the journal is listed below.
Administrative Opinions of Policymakers and Regulatory Agencies
Adverse Events
Carcinogenesis
Data of A Predominantly Negative Nature
Drug-Induced Hematologic Toxicity
Embryological Pathology
High Throughput Pathology
Historical Data of Experimental Animals
Immunohistochemical Analysis
Molecular Pathology
Nomenclature of Lesions
Non-mammal Toxicity Study
Result or Lesion Induced by Chemicals of Which Names Hidden on Account of the Authors
Technology and Methodology Related to Toxicological Pathology
Tumor Pathology; Neoplasia and Hyperplasia
Ultrastructural Analysis
Use of Animal Models.