A machine-learning algorithm for diagnosis of multisystem inflammatory syndrome in children and Kawasaki disease in the USA: a retrospective model development and validation study

Autor: Lam, Jonathan Y, Shimizu, Chisato, Tremoulet, Adriana H, Bainto, Emelia, Roberts, Samantha C, Sivilay, Nipha, Gardiner, Michael A, Kanegaye, John T, Hogan, Alexander H, Salazar, Juan C, Mohandas, Sindhu, Szmuszkovicz, Jacqueline R, Mahanta, Simran, Dionne, Audrey, Newburger, Jane W, Ansusinha, Emily, DeBiasi, Roberta L, Hao, Shiying, Ling, Xuefeng B, Cohen, Harvey J, Nemati, Shamim, Burns, Jane C, Abe, Naomi, Austin-Page, Lukas R., Bryl, Amy W., Donofrio-Odmann, J Joelle, Ekpenyong, Atim, Gutglass, David J., Nguyen, Margaret B., Schwartz, Kristy, Ulrich, Stacey, Vayngortin, Tatyana, Zimmerman, Elise, Anderson, Marsha, Ang, Jocelyn Y., Ashouri, Negar, Bocchini, Joseph, D'Addese, Laura, Dominguez, Samuel, Gutierrez, Maria Pila, Harahsheh, Ashraf S., Hite, Michelle, Jone, Pei-Ni, Kumar, Madan, Manaloor, John J., Melish, Marian, Morgan, Lerraughn, Natale, JoAnne E., Rometo, Allison, Rosenkranz, Margalit, Rowley, Anne H., Samuy, Nichole, Scalici, Paul, Sykes, Michelle
Zdroj: The Lancet Digital Health; October 2022, Vol. 4 Issue: 10 pe717-e726, 10p
Abstrakt: Multisystem inflammatory syndrome in children (MIS-C) is a novel disease that was identified during the COVID-19 pandemic and is characterised by systemic inflammation following SARS-CoV-2 infection. Early detection of MIS-C is a challenge given its clinical similarities to Kawasaki disease and other acute febrile childhood illnesses. We aimed to develop and validate an artificial intelligence algorithm that can distinguish among MIS-C, Kawasaki disease, and other similar febrile illnesses and aid in the diagnosis of patients in the emergency department and acute care setting.
Databáze: Supplemental Index