Repository: Freie Universität Berlin, Math Department

Linking digital surveillance and in-depth virology to study clinical patterns of viral respiratory infections in vulnerable patient populations

Obermeier, P. and Heim, A. and Biere, B. and Hage, E. and Alchikh, M. and Conrad, T. O. F. and Schweiger, B. and Rath, B. (2022) Linking digital surveillance and in-depth virology to study clinical patterns of viral respiratory infections in vulnerable patient populations. iScience, 25 (5). ISSN 25890042

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Official URL: https://www.sciencedirect.com/science/article/pii/...

Abstract

To improve the identification and management of viral respiratory infections, we established a clinical and virologic surveillance program for pediatric patients fulfilling pre-defined case criteria of influenza-like illness and viral respiratory infections. The program resulted in a cohort comprising 6,073 patients (56% male, median age 1.6 years, range 0–18.8 years), where every patient was assessed with a validated disease severity score at the point-of-care using the ViVI ScoreApp. We used machine learning and agnostic feature selection to identify characteristic clinical patterns. We tested all patients for human adenoviruses, 571 (9%) were positive. Adenovirus infections were particularly common and mild in children ≥1 month of age but rare and potentially severe in neonates: with lower airway involvement, disseminated disease, and a 50% mortality rate (n = 2/4). In one fatal case, we discovered a novel virus: HAdV-80. Standardized surveillance leveraging digital technology helps to identify characteristic clinical patterns, risk factors, and emerging pathogens.

Item Type:Article
Subjects:Medicine and Dentistry > Clinical Medicine
Biological Sciences > Microbiology > Virology
Mathematical and Computer Sciences > Statistics > Applied Statistics > Medical Statistics
Divisions:Department of Mathematics and Computer Science > Institute of Mathematics
Department of Mathematics and Computer Science > Institute of Mathematics > BioComputing Group
Department of Mathematics and Computer Science > Institute of Mathematics > Comp. Proteomics Group
ID Code:2250
Deposited By: Admin Administrator
Deposited On:13 May 2018 17:17
Last Modified:13 May 2022 10:54

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