Diabetes affects 8.3% of the US population, and lead to costly adverse healthcare outcomes. Unfortunately, there may be a quality gap in the care of complex diabetes patients, that is, older patients (age>65 years) and those with comorbid conditions. Current practices, relying primarily on the presence of several factors, are not effective in capturing the risk of poor prognosis, i.e., multiple hospitalization and/or emergency department visits, and death. Hence, little evidence exists so far to help prioritize care for thes patients. The diabetes guidelines recognize that tight control of glycosylated hemoglobin (A1c) may not be appropriate for complex patients, and recommend individualizations in tight A1c control. However, neither the outcomes of tight A1c control, nor the effects of the typical treatment regimens used to achieve tight A1c control can be evaluated in clinical trials, with minimal, if any, enrollment of complex diabetes patients due to either their restrictive inclusion criteria or lack of encouragement of the patient and/or clinical investigator to consider the RCT. In order to deliver more effective, efficient and accountable health cares, it is important to helpclinicians to examine the relationship between patient complexity and patients' A1c control level, and to modify guideline appropriately with an evidence base. The proposed research will analyze a cohort of 8,304 Medicare beneficiaries with diabetes who were cared for by one of the country's 10 largest physician group practices, the University of Wisconsin Medical Foundation during 2003-2011 to address the following aims: (1) to conduct risk prediction incorporating longitudinal outcomes, (2) to inform guidelines for complex diabetes patients, and (3) to create a patient-centered surveillance tool for detecting short-term negative outcomes. Our analytic approach involves the use of state- of-the-art statistics and machine learning methods to take advantage of the large electronic health records data. The proposed methods and results will help clinicians to identify and quantify risks of tight A1c control in complex diabetes patients an potentially lead to improved patient experiences, and reduce medical expenditures from excess adverse events.

Public Health Relevance

Sub-optimal glycosylated hemoglobin (A1c) control recommendations and treatment recommendations for diabetes patients can result in adverse events; and increased health care utilization. Unfortunately; current guidelines on the care for complex and/or older patients with diabetes are inadequate. We propose to develop an effective and patient-centered health care delivery system for complex diabetes patients; focusing on accurate prediction of adverse events; development of potential guidelines on targeting tight control of A1c and treatment regimens; and real-time monitoring of health conditions.

Agency
National Institute of Health (NIH)
Institute
National Institute of Diabetes and Digestive and Kidney Diseases (NIDDK)
Type
Research Project (R01)
Project #
1R01DK108073-01
Application #
9010509
Study Section
Biostatistical Methods and Research Design Study Section (BMRD)
Program Officer
Bremer, Andrew
Project Start
2015-09-17
Project End
2020-08-31
Budget Start
2015-09-17
Budget End
2016-08-31
Support Year
1
Fiscal Year
2015
Total Cost
$332,459
Indirect Cost
$107,459
Name
University of Wisconsin Madison
Department
Biostatistics & Other Math Sci
Type
Schools of Medicine
DUNS #
161202122
City
Madison
State
WI
Country
United States
Zip Code
53715
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