Automatic differentiation of human induced pluripotent stem cells toward synchronous neural networks on an arrayed monolayer of nanofiber membrane

Huang, Boxin and He, Yong and Rofaani, Elrade and Liang, Feng and Huang, Xiaochen and Shi, Jian and Wang, Li and Yamada, Ayako and Peng, Juan and Chen, Yong (2022) Automatic differentiation of human induced pluripotent stem cells toward synchronous neural networks on an arrayed monolayer of nanofiber membrane. Acta Biomaterialia, 150. pp. 168-180. ISSN 17427061

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Abstract

Automatic differentiation of human-induced pluripotent stem cells (hiPSCs) facilitates the generation of cortical neural networks and studies of brain functions. Here, we present a method of directed differ- entiation of hiPSCs with a substrate made of a honeycomb microframe and a monolayer of crosslinked gelatin nanofibers in the form of an array of nanofiber membranes. Neural precursor cells (NPCs) were f irstly derived from hiPSCs and then placed on the nanofiber membranes for automatically controlled neural differentiation over a long period. Due to the strong modulation of the substrate stiffness and permeability, most cells were found in the center area of the honeycomb compartments, giving rise to regular and inter-connected cortical neural clusters. More importantly, the neural activities of the clusters were synchronized proving the reliability of the method. Our results showed that the self-organization, as well as the neural activities of differentiating neural cells, were more efficient in the nanofiber mem- brane compared to the types of the substrate such as glass and nanofiber-covered glass. In addition to the inherent advantages such as manpower saving and fewer risks of contamination and human error, automatic differentiation avoided undesired shaking which might have critical effects on the formation of synchronous neural clusters.

Item Type: Article
Uncontrolled Keywords: hiPSCs; Cortical neural networks; Self-organization; Automatic differentiation
Subjects: Biomedical Technology & Human Factors Engineering
Depositing User: Mrs Titi Herawati
Date Deposited: 29 Dec 2025 06:53
Last Modified: 29 Dec 2025 06:53
URI: https://karya.brin.go.id/id/eprint/57215

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