Morning serum cortisol role in the adrenal insufficiency diagnosis with modern cortisol assays
Purpose To investigate the accuracy of cutoff values of the morning serum cortisol (MSC) using the cortisol stimulus test (CST) insulin tolerance test (ITT) and 250 mcg short Synacthen test (SST) as the reference standard tests, to better define its clinical role as a tool in the diagnostic investig...
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Veröffentlicht in: | Journal of endocrinological investigation 2023-10, Vol.46 (10), p.2115-2124 |
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Sprache: | eng |
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Zusammenfassung: | Purpose
To investigate the accuracy of cutoff values of the morning serum cortisol (MSC) using the cortisol stimulus test (CST) insulin tolerance test (ITT) and 250 mcg short Synacthen test (SST) as the reference standard tests, to better define its clinical role as a tool in the diagnostic investigation of adrenal insufficiency (AI) AI.
Methods
An observational study was conducted with a retrospective analysis of MSC in adult patients who had been submitted to a CST to investigate AI between January 2014 and December 2020. The normal cortisol response (NR) to stimulation was defined based on the cortisol assay.
Results
371 patients underwent CST for suspected AI, 121/371 patients (32.6%) were diagnosed with AI. ROC curve analysis showed an area under the curve (AUC) for MSC of 0.75 (95% CI 0.69 – 0.80). The best MSC cutoff values to confirm AI were 14.5 mcg/dL had sensitivity of 98%, 99%, and 100%, respectively, being the best cutoff values to exclude AI. Almost 25% of patients undergoing CST for possible AI had MSC values between 12.35 mcg/dL (17.5% of patients), making the formal CST testing unnecessary if we consider these cutoff values.
Conclusion
With the most modern cortisol assays, MSC could be used as a diagnostic tool, with high accuracy to confirm or exclude AI, avoiding unnecessary CST; thus, reducing expenses and safety risks during AI investigation. |
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ISSN: | 1720-8386 0391-4097 1720-8386 |
DOI: | 10.1007/s40618-023-02062-y |