Deep neural network for the determination of transformed foci in Bhas 42 cell transformation assay

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作者
Minami Masumoto
Ittetsu Fukuda
Suguru Furihata
Takahiro Arai
Tatsuto Kageyama
Kiyomi Ohmori
Shinichi Shirakawa
Junji Fukuda
机构
[1] Yokohama National University,Faculty of Engineering
[2] Yokohama National University,Graduate School of Environment and Information Sciences
[3] Kanagawa Institute of Industrial Science and Technology,undefined
[4] Kanagawa Prefectural Institute of Public Health,undefined
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Scientific Reports | / 11卷
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摘要
Bhas 42 cell transformation assay (CTA) has been used to estimate the carcinogenic potential of chemicals by exposing Bhas 42 cells to carcinogenic stimuli to form colonies, referred to as transformed foci, on the confluent monolayer. Transformed foci are classified and quantified by trained experts using morphological criteria. Although the assay has been certified by international validation studies and issued as a guidance document by OECD, this classification process is laborious, time consuming, and subjective. We propose using deep neural network to classify foci more rapidly and objectively. To obtain datasets, Bhas 42 CTA was conducted with a potent tumor promotor, 12-O-tetradecanoylphorbol-13-acetate, and focus images were classified by experts (1405 images in total). The labeled focus images were augmented with random image processing and used to train a convolutional neural network (CNN). The trained CNN exhibited an area under the curve score of 0.95 on a test dataset significantly outperforming conventional classifiers by beginners of focus judgment. The generalization performance of unknown chemicals was assessed by applying CNN to other tumor promotors exhibiting an area under the curve score of 0.87. The CNN-based approach could support the assay for carcinogenicity as a fundamental tool in focus scoring.
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