Clinical performance of AI-integrated risk assessment pooling reveals cost savings even at high prevalence of COVID-19

Individual testing of samples is time- and cost-intensive, particularly during an ongoing pandemic. Better practical alternatives to individual testing can significantly decrease the burden of disease on the healthcare system. Herein, we presented the clinical validation of Segtnan™ on 3929 patients...

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Veröffentlicht in:Scientific reports 2024-04, Vol.14 (1), p.8853-8853, Article 8853
Hauptverfasser: Kamari, Farzin, Eller, Esben, Bøgebjerg, Mathias Emil, Capella, Ignacio Martínez, Galende, Borja Arroyo, Korim, Tomas, Øland, Pernille, Borup, Martin Lysbjerg, Frederiksen, Anja Rådberg, Ranjouriheravi, Amir, Al-Jwadi, Ahmed Faris, Mansour, Mostafa, Hansen, Sara, Diethelm, Isabella, Burek, Marta, Alvarez, Federico, Buch, Anders Glent, Mojtahedi, Nima, Röttger, Richard, Segtnan, Eivind Antonsen
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Sprache:eng
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Zusammenfassung:Individual testing of samples is time- and cost-intensive, particularly during an ongoing pandemic. Better practical alternatives to individual testing can significantly decrease the burden of disease on the healthcare system. Herein, we presented the clinical validation of Segtnan™ on 3929 patients. Segtnan™ is available as a mobile application entailing an AI-integrated personalized risk assessment approach with a novel data-driven equation for pooling of biological samples. The AI was selected from a comparison between 15 machine learning classifiers (highest accuracy = 80.14%) and a feed-forward neural network with an accuracy of 81.38% in predicting the rRT-PCR test results based on a designed survey with minimal clinical questions. Furthermore, we derived a novel pool-size equation from the pooling data of 54 published original studies. The results demonstrated testing capacity increase of 750%, 60%, and 5% at prevalence rates of 0.05%, 22%, and 50%, respectively. Compared to Dorfman’s method, our novel equation saved more tests significantly at high prevalence, i.e., 28% ( p  = 0.006), 40% ( p  = 0.00001), and 66% ( p  = 0.02). Lastly, we illustrated the feasibility of the Segtnan™ usage in clinically complex settings like emergency and psychiatric departments.
ISSN:2045-2322
2045-2322
DOI:10.1038/s41598-024-59068-6