Memorial Sloan Kettering Cancer Center, New York, NY, USA.
Faculty of Biomedical Engineering, Technion-Israel Institute of Technology, Haifa, Israel.
Nat Mater. 2018 Apr;17(4):361-368. doi: 10.1038/s41563-017-0007-z. Epub 2018 Feb 5.
Development of targeted nanoparticle drug carriers often requires complex synthetic schemes involving both supramolecular self-assembly and chemical modification. These processes are generally difficult to predict, execute, and control. We describe herein a targeted drug delivery system that is accurately and quantitatively predicted to self-assemble into nanoparticles based on the molecular structures of precursor molecules, which are the drugs themselves. The drugs assemble with the aid of sulfated indocyanines into particles with ultrahigh drug loadings of up to 90%. We devised quantitative structure-nanoparticle assembly prediction (QSNAP) models to identify and validate electrotopological molecular descriptors as highly predictive indicators of nano-assembly and nanoparticle size. The resulting nanoparticles selectively targeted kinase inhibitors to caveolin-1-expressing human colon cancer and autochthonous liver cancer models to yield striking therapeutic effects while avoiding pERK inhibition in healthy skin. This finding enables the computational design of nanomedicines based on quantitative models for drug payload selection.
靶向纳米药物载体的开发通常需要复杂的合成方案,涉及超分子自组装和化学修饰。这些过程通常难以预测、执行和控制。本文描述了一种基于前体分子(即药物本身)的分子结构来精确和定量预测自组装成纳米颗粒的靶向药物输送系统。这些药物在磺酸吲哚菁的辅助下组装成具有超高药物载量(高达 90%)的颗粒。我们设计了定量结构-纳米颗粒组装预测(QSNAP)模型,以识别和验证电拓扑分子描述符作为纳米组装和纳米颗粒尺寸的高度预测指标。所得的纳米颗粒选择性地将激酶抑制剂靶向到 caveolin-1 表达的人结肠癌和自发肝癌模型,从而产生显著的治疗效果,同时避免在健康皮肤中抑制 pERK。这一发现使得能够基于药物有效负载选择的定量模型进行纳米药物的计算设计。