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Prospective Multi-Site Validation of AI to Detect Tuberculosis and Chest X-Ray Abnormalities
11
Zitationen
24
Autoren
2024
Jahr
Abstract
The CXR TB AI was noninferior to radiologists for active pulmonary TB triaging in a population with a high TB and HIV burden. Neither the TB AI nor the radiologists met WHO recommendations for sensitivity in the study population. AI can also be used to detect other CXR abnormalities in the same population.
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Autoren
- Sahar Kazemzadeh
- Atilla P. Kiraly
- Zaid Nabulsi
- Nsala Sanjase
- Minyoi M. Maimbolwa
- Brian Shuma
- Shahar Jamshy
- Christina Chen
- Arnav Agharwal
- Charles T. Lau
- Andrew Sellergren
- D. I. Golden
- Jin Yu
- E H Wu
- Yossi Matias
- Katherine Chou
- Greg S. Corrado
- Shravya Shetty
- Daniel Tse
- Krishnan Eswaran
- Yun Liu
- Rory Pilgrim
- Monde Muyoyeta
- Shruthi Prabhakara