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Clinical performance of AI-integrated risk assessment pooling reveals cost savings even at high prevalence of COVID-19
3
Zitationen
20
Autoren
2024
Jahr
Abstract
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.
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Autoren
- Farzin Kamari
- Esben Eller
- Mathias Emil Bøgebjerg
- Ignacio Martínez Capella
- Borja Arroyo Galende
- Tomas Korim
- Pernille Øland
- Martin Lysbjerg Borup
- Anja Rådberg Frederiksen
- Amir Ranjouriheravi
- Ahmed Faris Al-Jwadi
- Mostafa A. Mansour
- Sara Hansen
- Isabella Glans Diethelm
- Marta Burek
- Federico Castillo Álvarez
- Anders Glent Buch
- Nima Mojtahedi
- Richard Röttger
- Eivind Antonsen Segtnan
Institutionen
- University of Tübingen(DE)
- Odense Municipality(DK)
- University of Southern Denmark(DK)
- Instituto de Investigación Sanitaria del Hospital Clínico San Carlos(ES)
- Hospital Clínico San Carlos(ES)
- Universidad Politécnica de Madrid(ES)
- Odense University Hospital(DK)
- Koç University(TR)
- Maersk (Denmark)(DK)
- Synaptic Research (United States)(US)