<p>Neural network and logistic regression diagnostic prediction models for giant cell arteritis: development and validation</p>
Clinical ophthalmology2019Vol. Volume 13, pp. 421–430
Citations Over TimeTop 10% of 2019 papers
Edsel Ing, Neil R. Miller, Angeline Nguyen, Wanhua Su, Lulu Bursztyn, Meredith Poole, Vinay Kansal, Andrew Toren, Dana Albreiki, Jack Mouhanna, Alla Muladzanov, Mikaël Bernier, Mark Gans, Dong-Ho Lee, Colten Wendel, Claire A. Sheldon, Marc Shields, Lorne Bellan, Matthew Lee-Wing, Yasaman Mohadjer, Navdeep Nijhawan, Felix Tyndel, Arun Sundaram, Martin ten Hove, John J. Chen, Amadeo R. Rodriguez, Angela Hu, Nader Khalidi, Royce Ing, Samuel W. K. Wong, Nurhan Torun
Abstract
Statistical models can aid in the triage of patients with suspected GCA. Misclassification remains a concern, but cutoff values for 95% and 99% sensitivities are provided (https://goo.gl/THCnuU).
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