A fast, easy-to-implement,
highly sensitive, and point-of-care
(POC) detection system for frog virus 3 (FV3) is proposed. Combining
recombinase polymerase amplification (RPA) and CRISPR/Cas12a, a limit
of detection (LoD) of 100 aM (60.2 copies/μL) is achieved by
optimizing RPA primers and CRISPR RNAs (crRNAs). For POC detection,
smartphone microscopy is implemented, and an LoD of 10 aM is achieved
in 40 min. The proposed system detects four positive animal-derived
samples with a quantitation cycle (Cq) value of quantitative PCR (qPCR)
in the range of 13 to 32. In addition, deep learning models are deployed
for binary classification (positive or negative samples) and multiclass
classification (different concentrations of FV3 and negative samples),
achieving 100 and 98.75% accuracy, respectively. Without temperature
regulation and expensive equipment, the proposed RPA-CRISPR/Cas12a
combined with smartphone readouts and artificial-intelligence-assisted
classification showcases the great potential for FV3 detection, specifically
POC detection of DNA virus