Artificial Intelligence-Based Imaging Transcoding System for Multiplex Screening of Viable Foodborne Pathogens
摘要
Multiplexdetection of viable foodborne pathogens is critical forfood safety and public health, yet current assays suffer trade-offsbetween cost, assay complexity, sensitivities, and the specificitybetween live and dead bacteria. We herein developed a sensing methodusing artificial intelligence transcoding (SMART) for rapid, sensitive,and multiplex profiling of foodborne pathogens. The assay utilizesthe programmable polystyrene (PS) microspheres to encode differentpathogens, inducing subsequent visible signals under conventionalmicroscopy that can be analyzed using a customized, artificial intelligence-computervision, which was trained to decode the intrinsic properties of PSmicrospheres to reveal the numbers and types of pathogens. Our approachenabled the rapid and simultaneous detection of multiple bacteriafrom egg samples of <10(2) CFU/mL without DNA amplificationand showed strong consistency with the standard microbiologic andgenotypic methods. We adopted our assay through phage-guided targetingto enable the discrimination between live and dead bacteria.
