posted on 2024-05-22, 07:33authored byZahra Aminiranjbar, Caglanaz Akin Gultakti, Mashari Nasser Alangari, Yiren Wang, Busra Demir, Zeynep Koker, Arindam K. Das, M. P. Anantram, Ersin Emre Oren, Joshua Hihath
The global COVID-19 pandemic has highlighted the need
for rapid,
reliable, and efficient detection of biological agents and the necessity
of tracking changes in genetic material as new SARS-CoV-2 variants
emerge. Here, we demonstrate that RNA-based, single-molecule conductance
experiments can be used to identify specific variants of SARS-CoV-2.
To this end, we (i) select target sequences of interest for specific
variants, (ii) utilize single-molecule break junction measurements
to obtain conductance histograms for each sequence and its potential
mutations, and (iii) employ the XGBoost machine learning classifier
to rapidly identify the presence of target molecules in solution with
a limited number of conductance traces. This approach allows high-specificity
and high-sensitivity detection of RNA target sequences less than 20
base pairs in length by utilizing a complementary DNA probe capable
of binding to the specific target. We use this approach to directly
detect SARS-CoV-2 variants of concerns B.1.1.7 (Alpha), B.1.351 (Beta),
B.1.617.2 (Delta), and B.1.1.529 (Omicron) and further demonstrate
that the specific sequence conductance is sensitive to nucleotide
mismatches, thus broadening the identification capabilities of the
system. Thus, our experimental methodology detects specific SARS-CoV-2
variants, as well as recognizes the emergence of new variants as they
arise.