Comment on Gerbaud et al. Glycemic Variability Is a Powerful Independent Predictive Factor of Midterm Major Adverse Cardiac Events in Patients With Diabetes With Acute Coronary Syndrome. Diabetes Care 2019;42:674–681
Diabetes Care Volume 42, October 2019
e168
COMMENT ON GERBAUD ET AL.
Glycemic Variability Is a Powerful
Independent Predictive Factor of Midterm
Major Adverse Cardiac Events in Patients
With Diabetes With Acute Coronary
Syndrome. Diabetes Care 2019;42:674–681
You Yang and Yunzhao Hu
e-LETTERS – COMMENTS AND RESPONSES
Diabetes Care 2019;42:e168–e169 | https://doi.org/10.2337/dc19-1159
In their recently published article in Diabetes Care, Gerbaud et al. (1) reported
that in a total of 327 patients with diabetes and acute coronary syndrome
(ACS), glycemic variability (GV) defined
as SD .2.70 mmol/L during initial hospitalization was the strongest independent predictive factor for midterm major
cardiovascular events (MACE). This study
was interesting and further supported
the opinion that GV should be regarded
as a risk factor for cardiovascular disease
(2). However, there are several views
that should be discussed.
First, the authors reported that the
multivariate logistic regression analysis
was performed to ascertain the contributions of GV for MACE and that the odds
ratios were calculated. It should be noted
that odds ratios are commonly used in
cross-sectional or case-control studies
but not in cohort studies, as this would
lead to overestimation of the real risks.
According to the prospective design of
the study by Gerbaud et al., hazard ratios
should be calculated.
Second, many different metrics of
GV, including SD, coefficient of variation,
variability independent of mean, average
successive variability, etc., had been defined in prior studies. While there is no
agreement on which is the “best” GV
metric, currently the preferred GV metric
for research work is the coefficient of
variation (defined as SD/mean of the
observation), which is the least influenced by mean glucose level (3). It should
be noted that SD does not consider mean
levels of glycemia, which are particularly
important in a study with intensive antihyperglycemic treatment. In the study by
Gerbaud et al., multiple glycemia parameters, including admission glycemia and
mean glycemia, were correlated with SD,
and these parameters were analyzed in
separate statistical models. This method
failed to demonstrate whether the increased risks were independently caused
by the fluctuation of blood glucose (“variability”) or mediated by mean glycemia
levels and, again, would lead to overestimation of real risk for GV.
Third, continuous insulin administration was initiated when blood glucose
on admission was $10.0 mmol/L and/
or when premeal glycemia was $7.7
mmol/L in the study by Gerbaud et al.
However, it is still controversial as
to whether intensive insulin administration is beneficial in patients with ACS;
one of the most important considerations is that such treatment may
cause severe hypoglycemia, which has
been documented as an independent
risk factor for cardiovascular mortality
(4). Therefore, to assess whether severe
hypoglycemia may account for the effects of GV on prognosis of ACS, the
relative risks should adjust for status of
hypoglycemia in multivariable adjusted
models (5). Although only 0.6% of glycemic values detected were ,3 mmol/L,
and considering that glycemia status was
not detected by continuous monitoring,
the incidence of hypoglycemia may be
underestimated in the study by Gerbaud
et al.
In conclusion, the study by Gerbaud
et al. is interesting and has important
clinical implications (1). This study emphasizes that efforts for glucose control
in patients with diabetes and ACS may
need to consider how these strategies influence the glucose fluctuation.
However, due to the limitations of unsuited statistical analysis, unadjusted factors such as mean glycemia levels, and
undetected hypoglycemia, the results
should be interpreted with caution and
the question is still open.
Funding. Y.H. received scientific support from
Scientific Research Fund of Foshan, Guangdong,
China (no. 2018AB000783) and the Science and
Technology Innovation Project of Foshan, Guangdong (FS0AA-KJ218-1301-0010).
Duality of Interest. No potential conflicts of
interest relevant to this article were reported.
References
1. Gerbaud E, Darier R, Montaudon M, et al.
Glycemic variability is a powerful independent
predictive factor of midterm major adverse cardiac
events in patients with diabetes with acute coronary syndrome. Diabetes Care 2019;42:674–681
2. Takahashi H, Iwahashi N, Kirigaya J, et al.
Glycemic variability determined with a continuous glucose monitoring system can predict
prognosis after acute coronary syndrome. Cardiovasc Diabetol 2018;17:116
3. Bergenstal RM. Glycemic variability and diabetes complications: does it matter? simply put,
there are better glycemic markers! Diabetes
Care 2015;38:1615–1621
Department of Cardiology, The Affiliated Chencun Hospital of Shunde Hospital, Southern Medical University, Foshan, China
Corresponding author: Yunzhao Hu,
© 2019 by the American Diabetes Association. Readers may use this article as long as the work is properly cited, the use is educational and not for profit,
and the work is not altered. More information is available at http://www.diabetesjournals.org/content/license.
care.diabetesjournals.org
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Yang and Hu
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Society of Cardiology (ESC). Eur Heart J 2016;
37:267–315
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