Literature DB >> 15283004

A clinical decision rule to prioritize polysomnography in patients with suspected sleep apnea.

Julvit Rodsutti1, Michael Hensley, Ammarin Thakkinstian, Catherine D'Este, John Attia.   

Abstract

STUDY
OBJECTIVES: To derive and validate a clinical decision rule that can help to prioritize patients who are on waiting lists for polysomnography,
DESIGN: Prospective data collection on consecutive patients referred to a sleep center.
SETTING: The Newcastle Sleep Disorders Centre, University of Newcastle, NSW, Australia. PATIENTS: Consecutive adult patients who had been scheduled for initial diagnostic polysomnography. MEASUREMENTS AND
RESULTS: Eight hundred and thirty-seven patients were used for derivation of the decision rule. An apnea-hypopnoea index of at least 5 was used as the cutoff point to diagnose sleep apnea. Fifteen clinical features were included in the analyses using logistic regression to construct a model from the derivation data set. Only 5 variables--age, sex, body mass index, snoring, and stopping breathing during sleep--were significantly associated with sleep apnea. A scoring scheme based on regression coefficients was developed, and the total score was trichotomized into low-, moderate-, and high-risk groups with prevalence of sleep apnea of 8%, 51%, and 82%, respectively. Color-coded tables were developed for ease of use. The clinical decision rule was validated on a separate set of 243 patients. Receiver operating characteristic analysis confirmed that the decision rule performed well, with the area under the curve being similar for both the derivation and validation sets: 0.81 and 0.79, P =.612.
CONCLUSION: We conclude that this decision rule was able to accurately classify the risk of sleep apnea and will be useful for prioritizing patients with suspected sleep apnea who are on waiting lists for polysomnography.

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Mesh:

Year:  2004        PMID: 15283004     DOI: 10.1093/sleep/27.4.694

Source DB:  PubMed          Journal:  Sleep        ISSN: 0161-8105            Impact factor:   5.849


  10 in total

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2.  Mallampati class is not useful in the clinical assessment of sleep clinic patients.

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3.  Sleep-disordered breathing symptoms among African-Americans in the Jackson Heart Study.

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4.  Prediction of obstructive sleep apnea with craniofacial photographic analysis.

Authors:  Richard W W Lee; Peter Petocz; Tania Prvan; Andrew S L Chan; Ronald R Grunstein; Peter A Cistulli
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5.  An empirical continuous positive airway pressure trial for suspected obstructive sleep apnea.

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6.  Use of Ambulatory Blood Pressure Monitoring for the Screening of Obstructive Sleep Apnea.

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7.  Early diagnosis of sleep related breathing disorders.

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8.  Evaluation of the risk factors of depressive disorders comorbid with obstructive sleep apnea.

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9.  Support vector machine prediction of obstructive sleep apnea in a large-scale Chinese clinical sample.

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Review 10.  Enabling Early Obstructive Sleep Apnea Diagnosis With Machine Learning: Systematic Review.

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  10 in total

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