Literature DB >> 34772768

A Systematic Review of Clinical Prediction Rules for the Diagnosis of Influenza.

Mark H Ebell1, Ivan Rahmatullah2, Xinyan Cai2, Michelle Bentivegna2, Cassie Hulme2, Matthew Thompson2, Barry Lutz2.   

Abstract

BACKGROUND: Clinical prediction rules (CPRs) can assist clinicians by focusing their clinical evaluation on the most important signs and symptoms, and if used properly can reduce the need for diagnostic testing. This study aims to perform an updated systematic review of clinical prediction rules and classification and regression tree (CART) models for the diagnosis of influenza.
METHODS: We searched PubMed, CINAHL, and EMBASE databases. We identified prospective studies of patients presenting with suspected influenza or respiratory infection and that reported a CPR in the form of a risk score or CART-based algorithm. Studies had to report at a minimum the percentage of patients in each risk group with influenza. Studies were evaluated for inclusion and data were extracted by reviewers working in parallel. Accuracy was summarized descriptively; where not reported by the authors the area under the receiver operating characteristic curve (AUROCC), predictive values, and likelihood ratios were calculated.
RESULTS: We identified 10 studies that presented 14 CPRs. The most commonly included predictor variables were cough, fever, chills and/or sweats, myalgias, and acute onset, all which can be ascertained by phone or telehealth visit. Most CPRs had an AUROCC between 0.7 and 0.8, indicating good discrimination. However, only 1 rule has undergone prospective external validation, with limited success. Data reporting by the original studies was in some cases inadequate to determine measures of accuracy.
CONCLUSIONS: Well-designed validation studies, studies of interrater reliability between telehealth an in-person assessment, and studies using novel data mining and artificial intelligence strategies are needed to improve diagnosis of this common and important infection. © Copyright 2021 by the American Board of Family Medicine.

Entities:  

Keywords:  Clinical Decision Rules; Clinical Medicine; Influenza; Physical Examination; Prospective Studies; Respiratory Diseases; Systematic Reviews

Mesh:

Year:  2021        PMID: 34772768     DOI: 10.3122/jabfm.2021.06.210110

Source DB:  PubMed          Journal:  J Am Board Fam Med        ISSN: 1557-2625            Impact factor:   2.657


  2 in total

1.  Prediction of Influenza Complications: Development and Validation of a Machine Learning Prediction Model to Improve and Expand the Identification of Vaccine-Hesitant Patients at Risk of Severe Influenza Complications.

Authors:  Donna M Wolk; Alon Lanyado; Ann Marie Tice; Maheen Shermohammed; Yaron Kinar; Amir Goren; Christopher F Chabris; Michelle N Meyer; Avi Shoshan; Vida Abedi
Journal:  J Clin Med       Date:  2022-07-26       Impact factor: 4.964

Review 2.  Flu@home: the Comparative Accuracy of an At-Home Influenza Rapid Diagnostic Test Using a Prepositioned Test Kit, Mobile App, Mail-in Reference Sample, and Symptom-Based Testing Trigger.

Authors:  Jack Henry Kotnik; Shawna Cooper; Sam Smedinghoff; Piyusha Gade; Kelly Scherer; Mitchell Maier; Jessie Juusola; Ernesto Ramirez; Pejman Naraghi-Arani; Victoria Lyon; Barry Lutz; Matthew Thompson
Journal:  J Clin Microbiol       Date:  2022-02-02       Impact factor: 5.948

  2 in total

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