Cross-Sectional Study of Clinical Predictors of Coccidioidomycosis,Arizona, USA |
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Authors: | Ferris A. Ramadan Katherine D. Ellingson Robert A. Canales Edward J. Bedrick John N. Galgiani Fariba M. Donovan |
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Affiliation: | University of Arizona, Tucson, Arizona, USA (F.A. Ramadan, K.D. Ellingson, E.J. Bedrick);George Washington University, Washington, DC, USA (R.A. Canales);University of Arizona College of Medicine–Tucson, Tucson (J.N. Galgiani, F.M. Donovan) |
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Abstract: | ![]() Demographic and clinical indicators have been described to support identification of coccidioidomycosis; however, the interplay of these conditions has not been explored in a clinical setting. In 2019, we enrolled 392 participants in a cross-sectional study for suspected coccidioidomycosis in emergency departments and inpatient units in Coccidioides-endemic regions. We aimed to develop a predictive model among participants with suspected coccidioidomycosis. We applied a least absolute shrinkage and selection operator to specific coccidioidomycosis predictors and developed univariable and multivariable logistic regression models. Univariable models identified elevated eosinophil count as a statistically significant predictive feature of coccidioidomycosis in both inpatient and outpatient settings. Our multivariable outpatient model also identified rash (adjusted odds ratio 9.74 [95% CI 1.03–92.24]; p = 0.047) as a predictor. Our results suggest preliminary support for developing a coccidioidomycosis prediction model for use in clinical settings. |
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Keywords: | coccidioidomycosis Coccidioides fungi respiratory infections Valley fever risk factors prediction model diagnosis Arizona United States |
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