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Reproducible production and image-based quality evaluation of retinal pigment epithelium sheets from human induced pluripotent stem cells

机译:来自人诱导多能干细胞的再现性生产和基于图像的水性颜料上皮片材的质量评价

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Transplantation of retinal pigment epithelial (RPE) sheets derived from human induced pluripotent cells (hiPSC) is a promising cell therapy for RPE degeneration, such as in age-related macular degeneration. Current RPE replacement therapies, however, face major challenges. They require a tedious manual process of selecting differentiated RPE from hiPSC-derived cells, and despite wide variation in quality of RPE sheets, there exists no efficient process for distinguishing functional RPE sheets from those unsuitable for transplantation. To overcome these issues, we developed methods for the generation of RPE sheets from hiPSC, and image-based evaluation. We found that stepwise treatment with six signaling pathway inhibitors along with nicotinamide increased RPE differentiation efficiency (RPE6iN), enabling the RPE sheet generation at high purity without manual selection. Machine learning models were developed based on cellular morphological features of F-actin-labeled RPE images for predicting transepithelial electrical resistance values, an indicator of RPE sheet function. Our model was effective at identifying low-quality RPE sheets for elimination, even when using label-free images. The RPE6iN-based RPE sheet generation combined with the non-destructive image-based prediction offers a comprehensive new solution for the large-scale production of pure RPE sheets with lot-to-lot variations and should facilitate the further development of RPE replacement therapies.
机译:从人诱导的多能细胞(HIPSC)衍生自人诱导的多能细胞(HIPSC)的视网膜颜料上皮(RPE)片是用于RPE变性的有前途的细胞疗法,例如在年龄相关的黄斑变性。然而,目前的RPE替代疗法面临着重大挑战。它们需要从HIPSC衍生的细胞中选择分化的RPE的繁琐的手动过程,尽管RPE板的质量宽变化,但是没有有效的方法,以区分官能RPE片从不适合移植的那些。为了克服这些问题,我们开发了从HIPSC生成RPE表的方法,以及基于图像的评估。我们发现,用六种信号通路抑制剂以及烟酰胺的逐步处理增加了RPE分化效率(RPE6in),使得在没有手动选择的高纯度下产生RPE板。基于F-actin标记的RPE图像的细胞形态特征开发了机器学习模型,用于预测TRANSEPITHELIEL电阻值,RPE片功能的指示器。即使在使用无标签图像时,我们的模型也有效地识别用于消除的低质量RPE表。基于RPE6IN的RPE表与非破坏性图像的预测相结合,提供了全面的新解决方案,用于大规模生产具有批次到批次变化的纯粹RPE板材,并应促进RPE替代疗法的进一步发展。

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