Multimodal Label-Free Nanosensor for Single Virus Characterization and Content Analysis

NIH RePORTER · NIH · R01 · $403,348 · view on reporter.nih.gov ↗

Abstract

PROJECT SUMMARY Recently virus particles have gained immense attention for their potential as transformative therapeutic carriers. For example, the FDA-approved biologic Luxturna is an adeno-associated virus (AAV) used to carry genetic materials to treat hereditary blindness. In drug delivery, quality control is very important and the percentage of empty and part-filled capsids in such a sample needs to be determined accurately to avoid possible catastrophic effects of overdosing. While there are existing techniques like ELISA and qPCR that are used for this purpose, blind studies have shown alarmingly high intra-sample standard deviations. We propose a simpler yet more effective technique to discriminate AAVs depending on their cargo content – a plasmonic nanopore sensor with automated recapture capability for electrical sensing, aligned to operate in tandem with an optical trapping system. Viruses are soft nanoparticles and the deformability of AAV capsids depends on their cargo content. We will implement our bimodal virus characterization platform through our three Specific Aims: (1a) Characterize deformation dynamics of single AAVs during translocations through solid-state nanopores; (1b) Recapture each virus after translocation and automate a recapture protocol; (2) Capture single AAVs by self-induced back-action (SIBA) actuated nanopore electrophoresis (SANE) optical trapping in tandem with electrical recapturing; (3) Achieve robust classification of AAVs based on their cargo load by applying machine learning to optical-electrical signals that depend on virus deforamability during experiments. First, we will track the voltage-induced deformability of three AAV samples of different cargo contents: filled with ssDNA (AAVssDNA), dsDNA (AAVdsDNA), and empty capsids (AAVempty) through a range of voltages. Each type of AAV is expected to induce a unique and reproducible change in relative translocation current versus applied voltage. A narrow voltage range that shows the best discrimination will be applied on different percentage mixtures of AAVssDNA+AAVempty and AAVdsDNA+AAVempty. Conditions will be optimized to get the best discrimination between cargo-filled AAVs and the empty/part-filled capsid populations. Once this step is successful, we will incorporate single/multiple recapture capability to the platform to gain statistically sound data per AAV particle. Next, a gold double nanohole structure will be fabricated on top of the nanopore to optically trap AAVs by SIBA force, which will further deform AAVs and slow down their translocation. Importantly, optical-electrical tandem sensing will allow characterization of single AAV size deformations decoupled from charge effects. For automatic classification of viruses, we will develop a probabilistic (Bayesian) machine learning model with multiple data segments from optical-electrical signals of single AAVs for very high accuracy predictions. The proposed machine leanring assisted electrical- opt...

Key facts

NIH application ID
10933401
Project number
5R01GM149949-02
Recipient
SOUTHERN METHODIST UNIVERSITY
Principal Investigator
MinJun Kim
Activity code
R01
Funding institute
NIH
Fiscal year
2024
Award amount
$403,348
Award type
5
Project period
2023-09-25 → 2027-08-31