血脑屏障
跨细胞
生物信息学
体内
噬菌体展示
化学
肽
体外
细胞外
肽库
细胞外基质
细胞生物学
生物化学
计算生物学
神经科学
生物
肽序列
中枢神经系统
遗传学
内吞作用
基因
细胞
作者
Xiujuan Peng,Xinquan Liu,Jae You Kim,Alex Nguyen,J. Sánchez Leal,Debadyuti Ghosh
标识
DOI:10.1021/acs.bioconjchem.3c00446
摘要
Systemic delivery of therapeutics into the brain is greatly impaired by multiple biological barriers─the blood–brain barrier (BBB) and the extracellular matrix (ECM) of the extracellular space. To address this problem, we developed a combinatorial approach to identify peptides that can shuttle and transport across both barriers. A cysteine-constrained heptapeptide M13 phage display library was iteratively panned against an established BBB model for three rounds to select for peptides that can transport across the barrier. Using next-generation DNA sequencing and in silico analysis, we identified peptides that were selectively enriched from successive rounds of panning for functional validation in vitro and in vivo. Select peptide-presenting phages exhibited efficient shuttling across the in vitro BBB model. Two clones, Pep-3 and Pep-9, exhibited higher specificity and efficiency of transcytosis than controls. We confirmed that peptides Pep-3 and Pep-9 demonstrated better diffusive transport through the extracellular matrix than gold standard nona-arginine and clinically trialed angiopep-2 peptides. In in vivo studies, we demonstrated that systemically administered Pep-3 and Pep-9 peptide-presenting phages penetrate the BBB and distribute into the brain parenchyma. In addition, free peptides Pep-3 and Pep-9 achieved higher accumulation in the brain than free angiopep-2 and may exhibit brain targeting. In summary, these in vitro and in vivo studies highlight that combinatorial phage display with a designed selection strategy can identify peptides as promising carriers, which are able to overcome the multiple biological barriers of the brain and shuttle different-sized molecules from small fluorophores to large macromolecules for improved delivery into the brain.
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