How is the weather? Forecasting inpatient glycemic control.

George E Saulnier, Janna C Castro, Curtiss B Cook, Bithika M Thompson
Author Information
  1. George E Saulnier: Department of Information Technology, Mayo Clinic Hospital, Phoenix, AZ 85054, USA.
  2. Janna C Castro: Department of Information Technology, Mayo Clinic Hospital, Phoenix, AZ 85054, USA.
  3. Curtiss B Cook: Division of Endocrinology, Mayo Clinic Hospital, Phoenix, AZ 85054, USA.
  4. Bithika M Thompson: Division of Endocrinology, Mayo Clinic Hospital, Phoenix, AZ 85054, USA.

Abstract

AIM: Apply methods of damped trend analysis to forecast inpatient glycemic control.
METHOD: Observed and calculated point-of-care blood glucose data trends were determined over 62 weeks. Mean absolute percent error was used to calculate differences between observed and forecasted values. Comparisons were drawn between model results and linear regression forecasting.
RESULTS: The forecasted mean glucose trends observed during the first 24 and 48 weeks of projections compared favorably to the results provided by linear regression forecasting. However, in some scenarios, the damped trend method changed inferences compared with linear regression. In all scenarios, mean absolute percent error values remained below the 10% accepted by demand industries.
CONCLUSION: Results indicate that forecasting methods historically applied within demand industries can project future inpatient glycemic control. Additional study is needed to determine if forecasting is useful in the analyses of other glucometric parameters and, if so, how to apply the techniques to quality improvement.

Keywords

References

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  2. J Diabetes Sci Technol. 2014 May;8(3):560-7 [PMID: 24876620]
  3. Endocr Pract. 2014 Mar;20(3):207-12 [PMID: 24013995]
  4. Diabetes Care. 2016 Jan;39 Suppl 1:S99-104 [PMID: 26696689]
  5. Endocr Pract. 2014 Sep;20(9):876-83 [PMID: 24641927]

Word Cloud

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