A deep learning approach to predict differentiation outcomes in hypothalamic-pituitary organoids.

利用深度学习方法预测下丘脑-垂体类器官的分化结果

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作者:Asano Tomoyoshi, Suga Hidetaka, Niioka Hirohiko, Yukawa Hiroshi, Sakakibara Mayu, Taga Shiori, Soen Mika, Miwata Tsutomu, Sasaki Hiroo, Seki Tomomi, Hasegawa Saki, Murakami Sou, Abe Masatoshi, Yasuda Yoshinori, Miyata Takashi, Kobayashi Tomoko, Sugiyama Mariko, Onoue Takeshi, Hagiwara Daisuke, Iwama Shintaro, Baba Yoshinobu, Arima Hiroshi
We use three-dimensional culture systems of human pluripotent stem cells for differentiation into pituitary organoids. Three-dimensional culture is inherently characterized by its ability to induce heterogeneous cell populations, making it difficult to maintain constant differentiation efficiency. That is why the culture process involves empirical aspects. In this study, we use deep-learning technology to create a model that can predict from images of organoids whether differentiation is progressing appropriately. Our models using EfficientNetV2-S or Vision Transformer, employing VENUS-coupled RAX expression, predictively class bright-field images of organoids into three categories with 70% accuracy, superior to expert-observer predictions. Furthermore, the model obtained by ensemble learning with the two algorithms can predict RAX expression in cells without RAX::VENUS, suggesting that our model can be deployed in clinical applications such as transplantation.

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