New approaches to enhance the accuracy of the diagnosis of reflux disease

The accuracy of symptoms in diagnosing gastro-oesophageal reflux disease (GORD) is complicated by the lack of a gold standard test. Statistical techniques such as latent class and Bayesian analyses can estimate accuracy of symptoms without a gold standard. Both techniques require three independent diagnostic tests. Latent class analysis makes no assumptions about the performance of the tests. Bayesian analysis is useful when the accuracy of the other tests is known. These statistical techniques should be used in the future to validate GORD symptom questionnaires comparing them with endoscopy, oesophageal pH monitoring, and response to proton pump inhibitor therapy. Studies that evaluate GORD symptoms are usually done in secondary care. The prevalence of GORD in primary care will be lower and this reduces the positive predictive value of symptoms. There will be some bias in the type of patient referred for diagnosis and this usually decreases the specificity of symptom diagnosis.

[1]  M S Pepe,et al.  Using a combination of reference tests to assess the accuracy of a new diagnostic test. , 1999, Statistics in medicine.

[2]  C B Begg,et al.  Biases in the assessment of diagnostic tests. , 1987, Statistics in medicine.

[3]  Els Goetghebeur,et al.  Diagnostic test analyses in search of their gold standard: latent class analyses with random effects , 2000, Statistical methods in medical research.

[4]  David R. Jones,et al.  An introduction to bayesian methods in health technology assessment , 1999, BMJ.

[5]  P. Leffers,et al.  The influence of referral patterns on the characteristics of diagnostic tests. , 1992, Journal of clinical epidemiology.

[6]  L. Joseph,et al.  Bayesian estimation of disease prevalence and the parameters of diagnostic tests in the absence of a gold standard. , 1995, American journal of epidemiology.

[7]  D. Sackett,et al.  The architecture of diagnostic research , 2002, BMJ : British Medical Journal.

[8]  A. Hadgu,et al.  A biomedical application of latent class models with random effects , 2002 .

[9]  J Hilden,et al.  Observer homogeneity in the histologic diagnosis of Helicobacter pylori. Latent class analysis, kappa coefficient, and repeat frequency. , 1992, Scandinavian journal of gastroenterology.

[10]  P. Moayyedi,et al.  Any role left for invasive tests? Histology in clinical practice , 1998, Gut.

[11]  T. Kohlmann,et al.  Latent class analysis in medical research , 1996, Statistical methods in medical research.

[12]  S. Faraone,et al.  Measuring diagnostic accuracy in the absence of a "gold standard". , 1994, The American journal of psychiatry.

[13]  A. Axon,et al.  The usefulness of the likelihood ratio in the diagnosis of dyspepsia and gastroesophageal reflux disease , 1999, American Journal of Gastroenterology.

[14]  M. Ferraz,et al.  Sensitivity and specificity of different diagnostic criteria for Behçet's disease according to the latent class approach. , 1995, British journal of rheumatology.

[15]  Paul F. Lazarsfeld,et al.  Latent Structure Analysis. , 1969 .

[16]  R. Lilford Formal measurement of clinical uncertainty: prelude to a trial in perinatal medicine , 1994, BMJ.

[17]  Neil Henry Latent structure analysis , 1969 .

[18]  Roger L Holder,et al.  A Comparison of Bayesian and Maximum Likelihood Methods to Determine the Performance of a Point of Care Test for Helicobacter pylori in the Office Setting , 2003, Medical decision making : an international journal of the Society for Medical Decision Making.

[19]  D. Rindskopf,et al.  The value of latent class analysis in medical diagnosis. , 1986, Statistics in medicine.

[20]  D G Altman,et al.  Bayesians and frequentists , 1998, BMJ.

[21]  F. Krauss Latent Structure Analysis , 1980 .

[22]  A. Feinstein,et al.  Problems of spectrum and bias in evaluating the efficacy of diagnostic tests. , 1978, The New England journal of medicine.