Author:
Kanda Genki N.,Tsuzuki Taku,Terada Motoki,Sakai Noriko,Motozawa Naohiro,Masuda Tomohiro,Nishida Mitsuhiro,Watanabe Chihaya T.,Higashi Tatsuki,Horiguchi Shuhei A.,Kudo Taku,Kamei Motohisa,Sunagawa Genshiro A.,Matsukuma Kenji,Sakurada Takeshi,Ozawa Yosuke,Takahashi Masayo,Takahashi Koichi,Natsume Tohru
Abstract
ABSTRACTInduced differentiation is one of the most experience- and skill-dependent experimental processes in regenerative medicine, and establishing optimal conditions often takes years. We developed a robotic AI system with a batch Bayesian optimization algorithm that autonomously induces the differentiation of induced pluripotent stem cell-derived retinal pigment epithelial (iPSC-RPE) cells. The system performed 216 forty-day cell culture experiments, with a total experimentation time of 8,640 days. From 200 million possible parameter combinations, the system performed cell culture in 143 different conditions in 111 days, resulting in 88% better iPSC-RPE production than that by the pre-optimized culture in terms of pigmented scores. Our work demonstrates that the use of autonomous robotic AI systems drastically accelerates systematic and unbiased exploration of experimental search space, suggesting immense use in medicine and research.
Publisher
Cold Spring Harbor Laboratory
Cited by
4 articles.
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