4.2 Article

Combinatorial Polycation Synthesis and Causal Machine Learning Reveal Divergent Polymer Design Rules for Effective pDNA and Ribonucleoprotein Delivery

Journal

JACS AU
Volume 2, Issue 2, Pages 428-442

Publisher

AMER CHEMICAL SOC
DOI: 10.1021/jacsau.1c00467

Keywords

nonviral gene therapy; polymeric vehicles; CRISPR; pDNA delivery; ribonucleoprotein delivery; combinatorial design; machine learning; structure-activity relationships

Funding

  1. Defense Advanced Research Projects Agency (DARPA) [N660011824041]
  2. Nanite, Inc.

Ask authors/readers for more resources

Despite advances in polymer synthesis, the development of polymers to replace engineered viral vectors in clinical gene therapy has been challenging. Through systematic screening of a combinatorially designed library, a highly efficient polycationic vehicle (P38) was identified for delivering plasmids and ribonucleoproteins. Machine learning methods were used to uncover the physicochemical drivers of P38's gene delivery performance and provide payload-specific design guidelines.
The development of polymers that can replace engineered viral vectors in clinical gene therapy has proven elusive despite the vast portfolios of multifunctional polymers generated by advances in polymer synthesis. Functional delivery of payloads such as plasmids (pDNA) and ribonucleoproteins (RNP) to various cellular populations and tissue types requires design precision. Herein, we systematically screen a combinatorially designed library of 43 well-defined polymers, ultimately identifying a lead polycationic vehicle (P38) for efficient pDNA delivery. Further, we demonstrate the versatility of P38 in codelivering spCas9 RNP and pDNA payloads to mediate homology-directed repair as well as in facilitating efficient pDNA delivery in ARPE-19 cells. P38 achieves nuclear import of pDNA and eludes lysosomal processing far more effectively than a structural analogue that does not deliver pDNA as efficiently. To reveal the physicochemical drivers of P38's gene delivery performance, SHapley Additive exPlanations (SHAP) are computed for nine polyplex features, and a causal model is applied to evaluate the average treatment effect of the most important features selected by SHAP. Our machine learning interpretability and causal inference approach derives structure-function relationships underlying delivery efficiency, polyplex uptake, and cellular viability and probes the overlap in polymer design criteria between RNP and pDNA payloads. Together, combinatorial polymer synthesis, parallelized biological screening, and machine learning establish that pDNA delivery demands careful tuning of polycation protonation equilibria while RNP payloads are delivered most efficaciously by polymers that deprotonate cooperatively via hydrophobic interactions. These payload-specific design guidelines will inform further design of bespoke polymers for specific therapeutic contexts.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.2
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available