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ORIGINAL ARTICLE

Developing a predictive model for vertigo using demographic and laboratory data: An evidence-based medicine approach

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Pages 20-24 | Received 20 Oct 2004, Published online: 08 Jul 2009
 

Abstract

Conclusion. The approach described in this paper may be helpful in establishing an early-warning, evidence-based mechanism for diagnosing vertigo, which can be utilized in medical education to reduce medical uncertainty. Objective. To use an evidence-based medicine approach to evaluate the probability of having vertigo using laboratory and demographic data. Material and methods. The study was conducted on 22 working days during July 2002. Targeted cases who visited a general hospital in southern Taiwan for routine physical examinations were asked to participate in the study and agreed to take additional tests during their visits. A total of 200 subjects were systematically and randomly selected from this data pool. We ran binary logistic regression on all these cases. Results. The logistic regression model explained 71.3% of the variance in having vertigo or not. The equation for having vertigo was as follows: −21.855+(1.132×male gender)+(0.071×age)+(−0.023×systolic blood pressure)+(0.057×diastolic blood pressure)+(0.048×fasting glucose)+(0.051×cholesterol)+(−0.005×triglycerides)+(−0.361×presence of cardiovascular diseases).

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