化学
部分
核酸
二价(发动机)
DNA
组合化学
结合
化学物理
混合动力系统
纳米技术
分子
生物物理学
定义明确
A-DNA
固相合成
生物系统
肽
分离法
相(物质)
氨基酸
化学稳定性
生物分子
计算化学
作者
Sara Scalia,Marco Cappa,Lorenzo Rovigatti,Erica Del Grosso,Francesco Ricci
摘要
We report here the combined use of Watson-Crick and antibody-antigen interactions to induce phase separation of antibody-DNA hybrid condensates. To achieve this, we have used an antigen-conjugated star-shaped DNA motif (nanostar) in which three arms terminate with single-stranded DNA sticky ends while the fourth arm is end-conjugated with a moiety (i.e., an antigen) that can be recognized by a specific bivalent antibody. Through the concerted action of selective Watson-Crick base-pairing between the sticky ends and bivalent antibody-antigen binding, such antigen-conjugated nanostars phase-separate to form micron-scale hybrid condensates with structural stability provided by both nucleic acids and antibodies. We have demonstrated the specific and orthogonal antibody-induced phase separation of four different antigen-conjugated nanostars (biotin, DIG, DNP and MUC1), each with their corresponding antibody. By adding increasing concentrations of the specific antibody to a fixed concentration of antigen-conjugated nanostars (300 nM), we observe concentration-dependent formation of antibody-DNA condensates, starting at low nanomolar levels of the antibody. The antibody-DNA hybrid condensates are also reversible and can be cyclically formed/dissolved by the cyclic degradation/addition of the specific antibody. We qualitatively (and in some cases quantitatively) reproduce these results with an approach that conjugates theory and simulations of a phase-field model. The introduction of antibody-antigen interactions into the phase separation process of DNA brings these systems closer to natural cellular systems that rely on intricate networks of protein-protein or protein-nucleic acid interactions and allows for greater programmability and versatility that could have applications in sensing and drug delivery.
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