Machine learning powered detection of biological toxins in association with confined lateral flow immunoassay (c-LFA)

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dc.contributor.authorS Choi-
dc.contributor.authorS Ha-
dc.contributor.authorC Kim-
dc.contributor.authorC Nie-
dc.contributor.authorJu-Hong Jang-
dc.contributor.authorJieun Jang-
dc.contributor.authorDo Hyung Kwon-
dc.contributor.authorNam-Kyung Lee-
dc.contributor.authorJangwook Lee-
dc.contributor.authorJ H Jeong-
dc.contributor.authorWonjun Yang-
dc.contributor.authorH I Jung-
dc.date.accessioned2024-09-11T16:33:13Z-
dc.date.available2024-09-11T16:33:13Z-
dc.date.issued2024-
dc.identifier.issn0003-2654-
dc.identifier.urihttps://oak.kribb.re.kr/handle/201005/35832-
dc.description.abstractBiological weapons, primarily dispersed as aerosols, can spread not only to the targeted area but also to adjacent regions following the movement of air driven by wind. Thus, there is a growing demand for toxin analysis because biological weapons are among the most influential and destructive. Specifically, such a technique should be hand-held, rapid, and easy to use because current methods require more time and well-trained personnel. Our study demonstrates the use of a novel lateral flow immunoassay, which has a confined structure like a double barbell in the detection area (so called c-LFA) for toxin detection such as staphylococcal enterotoxin B (SEB), ricinus communis (Ricin), and botulinum neurotoxin type A (BoNT-A). Additionally, we have explored the integration of machine learning (ML), specifically, a toxin chip boosting (TOCBoost) hybrid algorithm for improved sensitivity and specificity. Consequently, the ML powered c-LFA concurrently categorized three biological toxin types with an average accuracy as high as 95.5%. To our knowledge, the sensor proposed in this study is the first attempt to utilize ML for the assessment of toxins. The advent of the c-LFA orchestrated a paradigm shift by furnishing a versatile and robust platform for the rapid, on-site detection of various toxins, including SEB, Ricin, and BoNT-A. Our platform enables accessible and on-site toxin monitoring for non-experts and can potentially be applied to biosecurity.-
dc.publisherRoyal Soc Chem-
dc.titleMachine learning powered detection of biological toxins in association with confined lateral flow immunoassay (c-LFA)-
dc.title.alternativeMachine learning powered detection of biological toxins in association with confined lateral flow immunoassay (c-LFA)-
dc.typeArticle-
dc.citation.titleAnalyst-
dc.citation.number18-
dc.citation.endPage4713-
dc.citation.startPage4702-
dc.citation.volume149-
dc.contributor.affiliatedAuthorJu-Hong Jang-
dc.contributor.affiliatedAuthorJieun Jang-
dc.contributor.affiliatedAuthorDo Hyung Kwon-
dc.contributor.affiliatedAuthorNam-Kyung Lee-
dc.contributor.affiliatedAuthorJangwook Lee-
dc.contributor.affiliatedAuthorWonjun Yang-
dc.contributor.alternativeName최세연-
dc.contributor.alternativeName하성민-
dc.contributor.alternativeName김찬미-
dc.contributor.alternativeNameNie-
dc.contributor.alternativeName장주홍-
dc.contributor.alternativeName장지은-
dc.contributor.alternativeName권도형-
dc.contributor.alternativeName이남경-
dc.contributor.alternativeName이장욱-
dc.contributor.alternativeName정주환-
dc.contributor.alternativeName양원준-
dc.contributor.alternativeName정효일-
dc.identifier.bibliographicCitationAnalyst, vol. 149, no. 18, pp. 4702-4713-
dc.identifier.doi10.1039/d4an00593g-
dc.description.journalClassY-
Appears in Collections:
Division of A.I. & Biomedical Research > Biotherapeutics Translational Research Center > 1. Journal Articles
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