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AI Estimation of Gestational Age from Blind Ultrasound Sweeps in Low-Resource Settings
60
Zitationen
20
Autoren
2022
Jahr
Abstract
When provided blindly obtained ultrasound sweeps of the gravid abdomen, our AI model estimated gestational age with accuracy similar to that of trained sonographers conducting standard fetal biometry. Model performance appears to extend to blind sweeps collected by untrained providers in Zambia using low-cost devices. (Funded by the Bill and Melinda Gates Foundation.).
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Autoren
- Teeranan Pokaprakarn
- Juan Carlos Prieto
- Joan T. Price
- Margaret P. Kasaro
- Ntazana Sindano
- Hina Shah
- Marc Peterson
- Mutinta M. Akapelwa
- Filson M. Kapilya
- Yuri V. Sebastião
- William Goodnight
- Elizabeth M. Stringer
- Bethany L. Freeman
- Lina Montoya
- H. Benjamin
- Dwight J. Rouse
- Stephen R. Cole
- Bellington Vwalika
- Michael R. Kosorok
- Jeffrey S. A. Stringer