An Innovative Approach for Predicting Severe Hypoglycemia
The investigators in this trial have a long history in the study of hypoglycemia and in identifying methods for early detection and treatment. They previously demonstrated that the LBGI, a measure of the frequency and extent of low SMBG readings, accounts for as much as 40–55% of future SH episodes. Here, they nicely drew on their work with the LBGI and used it as a methodology in this study of SH.
Because SH can result in a number of debilitating outcomes such as cognitive dysfunction, accidents, seizures, coma, and death, it has been associated with patient fear and is identified as a barrier to glycemic control in diabetes. Strategies that offer patients an opportunity for early detection and immediate treatment have the potential to alleviate fears and this significant barrier to meeting treatment goals.
Determining ways to alleviate the risk of hypoglycemia is crucially important because the risk for hypoglycemia has been posed as one reason for clinical inertia (the failure to intensify diabetes management in a timely manner). The complexity of diabetes management requires health professionals to be able to support their patients with the appropriate amount of time, education, and long-term support strategies necessary for effective self-management. This is particularly true in areas related to treatment intensification and to identification and treatment of hypoglycemia.
The majority of patients with diabetes are seen in a primary care setting, which presents interesting challenges for the facilitation of intensified therapies. Team-based care has been shown to be the best predictor of improved glycemia. However, primary care practices are often ill-equipped to manage intensive regimens because they may not have the necessary access to team and support services.
The decision to delay therapy in many cases may be related to fears about inadequate educational resources and added workload. One can appreciate the reluctance of busy practitioners who avoid the potential for hypoglycemia in their patients, particularly in those who are vulnerable to SH.
Diabetes is a complex disease that requires patients to be knowledgeable and able to make daily decisions that affect their own health. Thus, the onus is on patients to be responsible for hypoglycemia management. The authors of this study present an evidence-based, practical hypoglycemia-prevention tool for clinicians and educators to use with their patients who are at high risk for SH.
Objective. Research demonstrates the importance of achieving near-normal glycemia in the prevention of diabetes-related complications.1 However, in an effort to attain euglycemia, one runs the risk for hypoglycemia.2 Severe hypoglycemia (SH), a low blood glucose resulting in stupor, seizure, or unconsciousness, prohibits self-treatment. To prevent SH, one must be able to anticipate when an event may occur to initiate treatment steps or identify warning signs and take action to stop further progression. The objective of this study was to test methods for predicting SH by using blood glucose meter readings.
Design and methods. One hundred adults with type 1 diabetes and 79 insulin-using adults with type 2 diabetes participated in this study. Their self-monitoring of blood glucose (SMBG) readings were stored on memory meters, and the patients were asked biweekly about the occurrence of SH.
Results. Relative risk (RR) for SH, quantified by the ratio of an individual’s low blood glucose index (LBGI) based on the previous 150 SMBG readings to the LBGI based on recent SMBG readings, increased significantly in the 24-hour period before SH episodes in individuals with either type 1 or type 2 diabetes. An algorithm detected 58% of impending SH episodes when three SMBG readings were available in the 24 hours before an event. Detection increased if five SMBG readings were available in the 24 hours before an episode.
Conclusion. The investigators concluded that SH often follows a specific blood glucose pattern that is identifiable with SMBG. Thus, partial prediction of impending SH is possible, offering an opportunity for self-management in the prevention of significant hypoglycemia episodes.
The benefits of SMBG have been shown to be of limited value if patients are not taught how to respond appropriately to the results they get through testing. This study demonstrated that patients can use their SMBG results to identify patterns and prevent SH, the most feared outcome of insulin therapy.
When more SMBG readings were done, the accuracy of SH prediction appeared to increase. This finding offers a unique opportunity for clinicians and educators to help patients, particularly those experiencing SH events, avoid future events by recommending and supporting increased SMBG and pattern observation. Offering this life-saving strategy has the potential to alleviate fears and reluctance to aggressively achieve glycemic control for both patients and providers.