A Spatiotemporal and Machine-Learning Platform Accelerates the Manufacturing of hPSC-derived Esophageal Mucosa

时空和机器学习平台加速 hPSC 衍生食管粘膜的制造

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作者:Ying Yang, Carmel Grace McCullough, Lucas Seninge, Lihao Guo, Woo-Joo Kwon, Yongchun Zhang, Nancy Yanzhe Li, Sadhana Gaddam, Cory Pan, Hanson Zhen, Jessica Torkelson, Ian A Glass; Birth Defects Research Laboratory; Greg Charville, Jianwen Que, Joshua Stuart, Hongxu Ding, Anthony Oro

Abstract

Human pluripotent stem cell-derived tissue engineering offers great promise in designer cell-based personalized therapeutics. To harness such potential, a broader approach requires a deeper understanding of tissue-level interactions. We previously developed a manufacturing system for the ectoderm-derived skin epithelium for cell replacement therapy. However, it remains challenging to manufacture the endoderm-derived esophageal epithelium, despite both possessing similar stratified structure. Here we employ single cell and spatial technologies to generate a spatiotemporal multi-omics cell atlas for human esophageal development. We illuminate the cellular diversity, dynamics and signal communications for the developing esophageal epithelium and stroma. Using the machine-learning based Manatee, we prioritize the combinations of candidate human developmental signals for in vitro derivation of esophageal basal cells. Functional validation of the Manatee predictions leads to a clinically-compatible system for manufacturing human esophageal mucosa. Our approach creates a versatile platform to accelerate human tissue manufacturing for future cell replacement therapies to treat human genetic defects and wounds.

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