| Literature DB >> 33231239 |
Buddini Iroshika Karawdeniya1, Y M Nuwan D Y Bandara, Aminul Islam Khan, Wei Tong Chen, Hoang-Anh Vu, Adnan Morshed, Junghae Suh, Prashanta Dutta, Min Jun Kim.
Abstract
Solid-state nanopore (SSN)-based analytical methods have found abundant use in genomics and proteomics with fledgling contributions to virology - a clinically critical field with emphasis on both infectious and designer-drug carriers. Here we demonstrate the ability of SSN to successfully discriminate adeno-associated viruses (AAVs) based on their genetic cargo [double-stranded DNA (AAVdsDNA), single-stranded DNA (AAVssDNA) or none (AAVempty)], devoid of digestion steps, through nanopore-induced electro-deformation (characterized by relative current change; ΔI/I0). The deformation order was found to be AAVempty > AAVssDNA > AAVdsDNA. A deep learning algorithm was developed by integrating support vector machine with an existing neural network, which successfully classified AAVs from SSN resistive-pulses (characteristic of genetic cargo) with >95% accuracy - a potential tool for clinical and biomedical applications. Subsequently, the presence of AAVempty in spiked AAVdsDNA was flagged using the ΔI/I0 distribution characteristics of the two types for mixtures composed of ∼75 : 25% and ∼40 : 60% (in concentration) AAVempty : AAVdsDNA.Entities:
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Year: 2020 PMID: 33231239 PMCID: PMC7735471 DOI: 10.1039/d0nr05605g
Source DB: PubMed Journal: Nanoscale ISSN: 2040-3364 Impact factor: 7.790