Keywords
sleep - depression - type 1 diabetes mellitus - sleepiness
Introduction
Type 1 Diabetes Mellitus (T1DM) represents < 10% of the universe of patients with
DM.[1] T1DM is commonly diagnosed in childhood and adolescence, although it may occur at
any age. Some forms of T1DM have no known etiology and are therefore considered idiopathic.[2]
Sleep parameters, sleep disorders, chronotypes, and mood variables have been largely
studied in previous studies in patients with type 2 Diabetes Mellitus (T2DM).[3]
[4]
[5] Only one study approached social jetlag and glycemic control in DM1,[6] but none addressed the relation of chronotypes in T1DM.
All biological processes and functions oscillate rhythmically. Circadian rhythms are
controlled by a master clock, located in the suprachiasmatic nucleus in the hypothalamus,
with an oscillatory expression of genes with a period of ∼ 24 hours. Despite its endogenous
rhythmicity, it is influenced by environmental cues, being the most important the
light-dark cycle.[6]
The circadian temporal regulation system also includes the multiple peripheral cellular
or tissue clocks, controlled by the master clock. The interruption or desynchronization
of the circadian clocks are responsible for the pathogenesis of several diseases,
including diabetes.[7]
A person's “preference” pattern of sleep hours relative to the 24-hour clock is called
a chronotype. It is particular for each individual and can vary over the years. This
preference can be assessed using the Hörne and Östberg Morningness-Eveningness Questionnaire
(MEQ), categorizing five chronotypes: extreme evening, moderate evening, intermediate,
moderate morning and extreme morning,[8] or simplified in three chronotypes, “larks” (early risers), “owls” (evening chronotype),
and the group in between.[9]
Previous studies demonstrated that “Owls” have an increased risk of cardiometabolic
diseases.[10]
[11]
[12]
The underlying causes that lead to these disorders have not been clearly defined,
but appear to be related to a circadian misalignment, caused in some cases by chronic
sleep deprivation for example, which leads to the dysregulation of metabolic, immune,
and hormonal processes that govern energy regulation and glycemic control[13]
[14]
[15]
[16] especially in the “owl” chronotype.
Although several studies tend to point the harmful effect of the evening chronotype
in several physiological and affective parameters, we hypothesize that the morning
chronotype (M) would present better sleep quality, less daytime sleepiness, fewer
mood disorders, and fewer altered metabolic parameters related to T1DM.
As objectives, we set ourselves to analyze the different chronotypes, other variables
related to sleep and mood in patients with T1DM and to correlate the different chronotypes
with some metabolic variables.
Material and Methods
An observational, cross-sectional study was done and previously approved by the Ethics
Committee of Research Protocols (C.E.P.I.) of the Hospital Italiano de Buenos Aires.
The period of recruitment ranged from March 2016 to January 2020. The included patients
were those who consulted consecutively in the outpatient Endocrinology Service of
our hospital, during the period previously described.
The present report is based on a sample of 95 individuals > 18 years old. Gender was
reduced to three main categories: female, male, and nonbinary.
Five patients were excluded because they did not fulfill the admission requirements.
The inclusion criteria were: the patient was willing to participate and gave their
consent; the diagnosis of T1DM had to be made by health personnel, at least 6 months
before and with an age between 18 and 75 years old.
Furthermore, we requested the possibility (not exclusive), to have complementary material
laboratory results, made within 6 months prior to the medical consultation, as well
as the glycosylated hemoglobin (HbA1) values, blood glucose values, basal cortisol
values, cortisol 23 hours and vitamin D values if they had been performed previously.
The normal values considered[17]
[18] were:
-
▶ HbA1c: ≤ 7% (53 mmol/mol).
-
▶ Blood glucose: ≤ 126 mg/dl.
-
▶ Basal Cortisol: between 10 to 20 mcg/dl.
-
▶ Cortisol 23 hours: < 5 mcg/dl.
-
▶ Vitamin D: > 30 ng/ml.
The exclusion criteria were: patients who did not consent to participate; age < 18
years old and > 75 years old and those who had a terminal illness. Pregnancy and acute
diabetes related disorder (acute hypoglycemia or diabetic ketoacidosis within the
last 3 months).
Convenience sampling was used. Ninety-five patients agreed to participate. All participants
gave their informed consent asserting to know their privacy would be protected by
the Declaration of Helsinki and national laws.
Questionnaires
A survey was designed to evaluate different variables associated with the sleep and
mood variables. The survey included standardized questionnaires:
-
a) To assess the chronotype of the subjects we used both the Horne and Ostberg version
of the Morningness-Eveningness Questionnarie (MEQ)[8] adapted to Spanish (MEQ-SA) (Versión Castellana del Cuestionario de Matutinidad-Vespertinidad
de Horne y Ostberg).[19] The scores range from 16 to 86 points. The 5 chronotypes categorized include: extreme
evening (scores 16 to 30), moderate evening (31–41), intermediate (42–58), moderate
morning (59–69) and extreme morning (70–86).[8] The categorization into 3 chronotypes includes: evening (scores ≤ 41), morning (scores
≥ 59), and intermediate chronotype (scores between 42 and 58).[19]
-
b) To assess sleep quality, we used the Spanish version of the Pittsburgh Sleep Quality
Index (PSQI).[20]
[21] This is a 24-item self-administered scale, divided into 7 subcomponents (subjective
sleep quality, sleep latency, sleep duration, habitual sleep efficiency, sleep disturbance,
use of sleep medications, and daytime dysfunction). The score for each subcomponent
ranges from 0 to 3 points. The global PSQI score ranges from 0 to 21. Scores ≤ 5 were
considered good sleepers, while a score > 5 categorizes participants as poor sleepers.
-
c) To assess excessive daytime sleepiness, we used the Epworth Sleepiness Scale (ESS).
It is a self-administered questionnaire that explores different daily life situations
where subjects may be prone to fall asleep. The total score ranges from 0 to 24, with
pathological values > 10.[22]
[23]
-
d) To assess depression symptoms, we used the Patient Health Questionnaire - 9 (PHQ-9).[24]
[25] The Spanish version of the PHQ-9 is a self-administered questionnaire designed to
assess depression symptoms. The scores range from 0 to 27 points. The cutoff point
for severity ranges were > 5 for mild cases, 10–14 for moderate cases, and ≥ 15 for
severe depressive symptoms, respectively.
-
e) To assess the self-perception of emotional well-being and depression, we used the
Spanish version of the Emotional Well Being Index (IWHO-5).[26] It consists of a 5-item self-administered scale, used to provide a measure of the
feeling of emotional well-being. Higher scores are related to a greater sense of well-being
and scores < 13 indicate low emotional well-being and have been related to symptoms
of depression.[27]
[28]
The survey also included questions created ad hoc to evaluate variables related to
demographic and some metabolic variables.
Statistical Analysis
The results of qualitative variables were expressed as frequencies and percentages.
The quantitative variables were expressed as mean and standard deviation (SD). Measures
of trend and distribution were used to describe the groups.
The stratification of the characteristics of the participants was made according to
the three or five categories of morning-evening types based on their Morningness-Eveningness
Questionnaire-Spanish Adaptation (MEQ-SA) (Versión Castellana del Cuestionario de
Matutinidad-Vespertinidad de Horne y Ostberg).
We used the Kruskal-Wallis test to compare population means when they had a similar
distribution.
Analysis of variance (ANOVA) was used for comparison of means among the analyzed groups.
Bivariate correlations were performed among the final score of the MEQs and the other
quantitative variables. All data were analyzed with PASW Statistics for Windows, version
18 (SPSS Inc., Chicago, IL, USA). P-values < 0.05 were considered statistically significant.
Results
Ninety-five patients were included. Five were excluded because they did not fulfill
the admission requirements. The mean age was 38 ± 13.6 years old (range 18–70 years
old). The mean body mass index (BMI) was 24.4 Kg/m2 (SD: 4.6). Chronotypes were distributed in morning chronotype: n = 10 (10.5%), intermediate chronotype: n = 28 (29.5%), and evening chronotype: n = 7 (7.4%). We have not been able to calculate the mean/SD of T1DM diagnosis time,
since this variable was not requested in the distributed surveys.
Demographic and other variables data are shown in [Table 1]. The intermediate chronotype was predominant in our sample (58.9%). We found a very
high prevalence of poor sleep (PSQI > 5) in the whole T1DM population (67.4%). Excessive
daytime sleepiness was found in 14.7% of the sample. Depressive symptoms by PHQ9 were
seen in 6.3%, and 16.8% scored < 13 in the IWHO-5 (indicating low emotional well-being
and depression).
Table 1
Variables data outcomes.
Demographic Variables
|
|
Age (years old)
|
38 ± 13.6
|
Male
|
50 (52.6%)
|
Female
|
45 (47.4%)
|
Questionnaires
|
Epworth Sleepiness Scale
|
6,7 ± 3,9
|
ESS > 10 = excessive daytime sleepiness
|
14 (14.7%)
|
Pittsburgh Quality of Sleep Index
|
6,9 ± 3,2
|
PSQI > 5 (poor sleep quality)
|
64 (67.4%)
|
PHQ9
|
3.8 ± 3.8
|
PHQ9 ≥ 10 (depressive symptoms)
|
6 (6.3%)
|
IWHO5
|
15,8 ± 4,8
|
IWHO5 < 13 (depression)
|
16 (16.8%)
|
Chronotypes (MEQ)
|
Extreme Morning
|
2 (2.1%)
|
Moderate Morning
|
21 (22.1%)
|
Intermediate
|
55 (57.9%)
|
Moderate Evening
|
14 (14.7%)
|
Extreme Evening
|
3 (3.2%)
|
Simplified Chronotypes (MEQs)
|
Morning
|
17 (17.9%)
|
Intermediate
|
56 (58.9%)
|
Evening
|
22 (23.2%)
|
Abbreviations: ESS, Epworth Sleepiness Scale; IWHO-5, Emotional Well-Being Index;
MEQ, Horne and Östberg Questionnaire; PHQ-9, Patient Health Questionnaire; PSQI, Pittsburgh
Sleep Quality Index.
Values expressed as mean ± SD or frequencies (percentages).
[Table 2] shows the analysis of the different components of PSQI by the chi-squared test.
The components were more altered in the intermediate group, followed by the evening
group. In the case of the analysis of component 1, we showed the number and percentage
of those patients who reported poor or quite poor sleep quality. Component 2: we showed
those who had a sleep onset latency > 30 minutes, once or twice a week. Component
3: we expressed those who reported sleeping < 6 hours. Component 4: we showed those
in which sleep efficiency was < 75%. Component 6: we showed those who used sleep medication
one or more times per week. Component 7: we showed those who reported dysfunction
the next day at least once a week and that it caused them a moderate problem. We found
no significant differences among the groups analyzed.
Table 2
Analysis of the different components of the PSQI using the chi- squared test.
|
Chronotypes
|
Morning
|
Intermediate
|
Evening
|
p-value
|
n
|
%
|
n
|
%
|
n
|
%
|
PSQI > 5
|
13
|
13.7
|
37
|
38.9
|
14
|
14.7
|
0.292
|
PSQI - Latency > 30
|
4
|
4.3
|
15
|
15.8
|
7
|
7.4
|
0.276
|
PSQI - Duration < 6 hour
|
8
|
8.4
|
19
|
20
|
2
|
2.1
|
0.175
|
Component 1: Subjective Sleep Quality
|
7
|
7.4
|
25
|
26.3
|
11
|
11.6
|
0.122
|
Component 2: Sleep latency
|
6
|
6.3
|
23
|
24.2
|
11
|
11.6
|
0.062
|
Component 3: Sleep duration
|
8
|
8.4
|
19
|
20.0
|
2
|
2.1
|
0.175
|
Component 4: Usual Sleep Efficiency
|
0
|
0
|
7
|
7.4
|
1
|
1.1
|
0.185
|
Component 5: Sleep disturbances
|
11
|
11.6
|
19
|
20.0
|
6
|
6.3
|
0.408
|
Component 6: Use of sleep medication
|
0
|
0.0
|
4
|
4.2
|
1
|
1.1
|
0.442
|
Component 7: Dysfunction during the day
|
6
|
6.3
|
11
|
11.6
|
7
|
7.4
|
0.196
|
[Table 3] shows that there were no significant differences using univariate ANOVA among the
5 chronotypes and poor sleep quality (PSQI > 5) and other variables related to sleep,
daytime sleepiness (ESS >10) and variables related to mood (depression): PHQ9 ≥ 10
and IWHO-5 < 13.
Table 3
Relationship between the chronotypes and different questionnaires evaluating sleep
and mood in DM1.
|
Chronotypes
|
p-value
|
Extreme
Morning
|
Moderate
Morning
|
Intermediate
|
Moderate
Evening
|
Extreme
Evening
|
Sex (Female)
|
2 (2.1%)
|
9 (9.6%)
|
26 (27.7%)
|
7 (7.4%)
|
3 (3.1%)
|
0.27
|
PSQI > 5
|
0
|
14 (14.9%)
|
35 (37.2%)
|
11 (11.7%)
|
3 (3.2%)
|
0.16
|
SSOL (> 30 minute)
|
0
|
5 (5.3%)
|
14 (14.9%)
|
4 (4.3%)
|
3 (3.2%)
|
0.06
|
TST (< 6hs)
|
0
|
9 (9.6%)
|
17 (18.1%)
|
2 (2.1%)
|
0
|
0.24
|
ESS > 10
|
0
|
3 (3.2%)
|
10 (10.6%)
|
1 (1.1%)
|
0
|
0.91
|
PHQ-9 ≥ 10
|
0
|
1 (1.1%)
|
4 (4.3%)
|
1 (1.1%)
|
0
|
0.98
|
IWHO-5 < 13
|
0
|
3 (3.2%)
|
8 (8.5%)
|
5 (5.3%)
|
0
|
0.62
|
Abbreviations: ESS, Epworth Sleepiness Scale; IWHO-5, Emotional Well-Being; PHQ-9,
Patient's Health Questionnaire; PSQI, Pittsburgh Sleep Quality Index; SSOL, Subjective
Sleep Onset Latency; TST, Total Sleep Time.
Values expressed as frequencies (percentages).
[Table 4] shows the relationship among the three simplified chronotypes, and variables related
to sleep and mood questionnaires using univariate ANOVA. As expected, the E chronotype
had a significative difference with respect to other chronotypes in the mean bedtime
and wake up time. The evening Chronotype scored higher in the PSQI (worse sleep quality)
and lower in emotional well-being by the IWHO-5.
Table 4
Relationship among different chronotypes and different questionnaires using univariate
ANOVA.
|
Chronotypes
|
Morning
(n = 22)
|
Intermediate
(n= 56)
|
Evening
(n = 17)
|
p-value
|
MEQ
|
64.2 ± 4
|
49.6 ± 4.4
|
35.3 ± 5.4
|
0.00
|
PSQI
|
5.9 ± 2.7
|
6.8 ± 3.2
|
8.4 ± 3.1
|
0.05
|
PQSI #1 (Bedtime)
|
22:58 (0:55)
|
23:44 (1:04)
|
01:04 (1:04)
|
0.00
|
PQSI #3 (Time to wake up)
|
06:30 (1:11)
|
07:28 (1:12)
|
09:28 (0:58)
|
0.00
|
ESS
|
6.4 ± 3.7
|
6.7 ± 4
|
7.1 ± 3.8
|
0.85
|
PHQ-9
|
2.9 ± 3
|
4.1 ± 4
|
4.3 ± 4.4
|
0.42
|
IWHO-5
|
18 ± 6.1
|
15.4 ± 4
|
14.2 ± 4.5
|
0.03
|
Abbreviations: ESS, Epworth Sleepiness Scale; IWHO-5, Emotional Well-Being Index;
MEQs, Horne and Östberg Questionnaire; PHQ-9, Patient Health Questionnaire; PSQI,
Pittsburgh Sleep Quality Index.
Values expressed as mean ± SD.
[Table 5] shows Pearson bivariate correlations made among the M chronotype and other questionnaires,
such as the PSQI, the ESS, the PHQ9, and the IWHO5. We found that the M chronotype
correlated with a lower score in the PSQI (good sleep); they go to bed earlier (p = 0.038; correlation coefficient R = - 0.2); and get up earlier (p = 0.000; correlation coefficient R = - 0.5) with a higher value of the R coefficient
in the IWHO-5 (lower depression).
Table 5
Pearson bivariate correlations between morningness and different questionnaires in
DM1.
|
MEQ ≥ 59
|
p-value
|
R
|
Total PSQI
|
0.02
|
−0.237
|
PQSI #1 (Bedtime)
|
0.04
|
−0.213
|
PQSI #3 (Time to wake up)
|
0.00
|
−0.540
|
ESS
|
0.47
|
−0.076
|
PHQ-9
|
0.36
|
−0.096
|
IWHO-5
|
0.04
|
0.214
|
Abbreviations: ESS, Epworth Sleepiness Scale; IWHO-5, Emotional Well-Being Index;
MEQs, Horne and Östberg Questionnaire; PHQ-9, Patient's Health Questionnaire; PSQI,
Pittsburgh Sleep Quality Index; R, Pearson correlation coefficient.
[Table 6] shows the relationship among the 3 different chronotypes and metabolic variables
by ANOVA. We found a lower baseline cortisol value in the M and E chronotypes compared
with the I chronotype. The intermediate chronotype had higher basal cortisol values.
Table 6
Relationship among different chronotypes and metabolic variables by ANOVA in DM1.
|
Chronotypes
|
Morning
(n = 22)
|
Intermediate
(n = 56)
|
Evening
(n = 17)
|
p-value
|
Age
|
41.6 ± 15.4 (22)
|
38.3 ± 13.5 (56)
|
32.7 ± 10 (17)
|
0.12
|
Height (m)
|
1.65 ± 0.1 (22)
|
1.67 ± 0.1 (53)
|
1.68 ± 0.1 (14)
|
0.61
|
Weight (k)
|
68.4.2 ± 13.7 (20)
|
68.4 ± 19.4 (53)
|
66.3 ± 11.8 (15)
|
0.91
|
BMI (k/m2)
|
25.1 ± 4.2 (20)
|
24.4 ± 5.2 (52)
|
23.1 ± 2.4 (14)
|
0.44
|
Blood glucose (mg/dL)
|
127 ± 32 (8)
|
135 ± 65 (25)
|
110.8 ± 32 (5)
|
0.83
|
HbA1c (%)
|
8.46 ± 1.7 (20)
|
8.54 ± 1.5 (44)
|
8.23 ± 1.9 (14)
|
0.42
|
Basal Cortisol (μg/dl)
|
9.9 ± 4.8 (14)
|
15 ± 8.1 (37)
|
9.9 ± 9.2 (14)
|
0.04
|
Cortisol 23h (μg/dl)
|
2.6 ± 1.5 (9)
|
3.7 ± 2.4 (26)
|
5.3 ± 6.1 (8)
|
0.17
|
Vitamin D (ng/mL)
|
32.9 ± 24.2 (10)
|
24.2 ± 8.7 (26)
|
27.8 ± 9.9 (8)
|
0.05
|
Abbreviations: BMI, Body Mass Index; HBA 1C, glycosylated hemoglobin.
Values expressed as mean ± SD (frequencies).
[Table 7] shows Pearson bivariate correlations, among the M chronotype and other quantitative
variables such as age, weight, height, BMI, and different metabolic variables as blood
glucose, HbA1c, basal cortisol, and vitamin D values. We found that the M chronotype
correlated with lower height (p = 0.043; correlation coefficient R = - 0.2). We did not find differences in the analyses
of other metabolic variabilities.
Table 7
Pearson bivariate correlations between morningness and metabolic variables in DM1.
|
MEQ ≥ 59
|
n3
|
p-value
|
R
|
Age
|
95
|
0.07
|
0.188
|
Height (m)
|
89
|
0.04
|
−0.215
|
Weight (k)
|
88
|
0.61
|
−0.055
|
BMI (k/m2)
|
86
|
0.40
|
0.091
|
Blood glucose (mg/dL)
|
38
|
0.53
|
0.105
|
HbA1c (%)
|
78
|
0.25
|
0.133
|
Basal Cortisol (μg/dl)
|
65
|
0.76
|
0.038
|
Cortisol 23h (μg/dl)
|
43
|
0.29
|
−0.165
|
Vitamin D (ng/mL)
|
44
|
0.10
|
0.252
|
Abbreviations: BMI, Body Mass Index; HBA 1C, glycosylated hemoglobin; R, Pearson correlation
coefficient.
Discussion
The present study analyzed, in addition to the various chronotypes, variables associated
with sleep and mood in the T1DM population.
Regarding the first objective, we used the MEQ-SA to categorize the different chronotypes
in T1DM, finding that, in our population, the intermediate chronotype was predominant.
As you know, the MEQ has been used in research of biological rhythms in different
types of populations, but not in T1DM patients.
In our study, the mean age was 38 years old. In the adult age, according to the literature,
the M chronotype is predominant, perhaps due to lower temperature amplitude and an
advance phase of the peak of body temperature.[29] The adult population also tends to wake up earlier due to work, social, and family
duties.
Besides, we evaluated various subjective sleep-related parameters through the PSQI
and we found that 67% of the population studied, more than a half, reported having
poor quality of sleep. In the I chronotype, all the components of PSQI were altered.
The M chronotype showed less altered components than the rest.
The literature reported that adult subjects with T1DM with poor sleep quality (mean
PSQI > 5) had significantly greater nocturnal glycemic variability and fear of hypoglycemia.
Nocturnal glycemic variability and fear of hypoglycemia were significantly associated
with poor sleep quality.[30]
A relationship between glycemic control and sleep has been reported in people with
T1DM. Subjects with higher mean glucose and higher glycemic variability had shorter
duration of sleep in the same study.[31]
It is known that the deprivation of hours of sleep, even partial, induced behavioral
changes in the general population.[32] The deprivation of hours of sleep can affect glycemic control causing insulin resistance
and glucose intolerance, as well as learning, memory, and attention disorders, causing
alterations in immune response, cardiovascular function and neurohumoral regulation.
We found that 18.9% of I chronotype reported sleeping < 6 hours (fewer hours than
those considered normal for adult patients), although the difference was not significant
in relation to the other chronotypes.
When analyzing the delay in terms of bedtime and getting up, a positive correlation
was observed with the E chronotypes which is consistent with observations made in
other chronotype studies in the nondiabetic population. In our sample, the mean bedtime
in the M chronotype was at 11:00 pm and in chronotype E at 1:00 am It has been suggested that a prolonged sleep onset latency (insomnia) in T1DM could
be due to greater glycemic variability.[32]
To analyze the chronotypes with prolonged sleep onset latency, we found that the M
and I chronotypes manifested mild insomnia but the E chronotypes reported moderate
insomnia. Good sleep quality is considered a key feature in metabolic health, since
it was shown that poor quality in T2DM is negatively correlated with HbA1controls.
It is known that having a good night's sleep, with an adequate duration and of good
quality, can help regulate the metabolism and the activity of the sympathetic-adrenal
system, improving glycemic control.[32]
When considering the daytime sleepiness assessed by the ESS, already studied in several
T1DM populations,[32] but not in the population of our country, we found that 14% of the respondents presented
pathological sleepiness. Barone et al. found that the scores of ESS in the DM1 patients
were higher than those of the control group, without becoming pathological. We have
not found a significant difference among the different chronotypes, but those of the
I chronotype had a higher score in the ESS.
When analyzing variables related to mood, using the PHQ9, 6.3% reported symptoms of
depression. Previous studies reported doubled prevalence of depression in patients
with any type of diabetes.[33]
When evaluating the different chronotypes with respect to the PHQ9, we did not find
significant differences. When using the IWHO-5, the M chronotype reported greater
well-being compared with the E chronotype, which had scores near the cutoff point
for depression. Gaspar-Barba et al.[34] suggested that the depressive symptoms are influenced by chronotypes, where the
E chronotype has more suicidal thoughts, more problems at work, more paranoid symptoms,
higher scores of anxieties, while the M chronotype shows a lower proportion of melancholic
symptoms. Therefore, the M chronotype may have a protective factor for depression.
There is also a bidirectional relationship between poor sleep and depression.[35]
Moreover, literature reports that depressed mood is worse in the morning but improves
throughout the day.[36]
Both the diurnal variation of the mood and the alteration of the sleep-wake cycle
indicate a possible alteration of the circadian rhythm.[37]
[38]
The explanation would be due to a decrease in the amplitude of the temperature rhythm
throughout the day, which has been related to the pathophysiology of both sleep disorders
and mood disorders, specifically depression.[39]
Also, the alteration of the rhythm of secretion of some hormones has been related
to the pathophysiology of depression. For example, several attempts have been made
to associate different chronotypes in perimenopausal women with depressive mood changes,
but no differences were found among them.[40]
Besides, we must consider that the neurotransmitters that regulate mood also regulate
sleep, and the vast majority of patients with depressive disorders have sleep disturbances.
In the literature, it is recommended to reinforce the action of external zeitgebers,
such as promoting physical activity,[41]
[42] promoting exposure to light, maintaining regular times for sleeping and eating[43]; all would help improve mood swings in these patients. In our study, the M chronotype
had better mood and sleep quality compared with the E chronotype, perhaps because
waking up earlier, they had more time of exposure of external zeitgebers.
On the other hand, as a second objective, we proposed to correlate the different chronotypes
with some metabolic variables. In our T1DM population, we did not find differences
in HbA1c values in the different chronotypes, but the mean values were altered in
all chronotypes.
We found a lower baseline cortisol value in the M and E chronotypes compared with
the I chronotype. Cortisol is an adrenocorticoid hormone that presents a typical circadian
profile with values that rise hours before waking up and values that are much lower
throughout the day, reaching its minimum 2 hours after we begin to sleep.[44]
Cortisol increase consists in the preparation of the body to start the day, increases
the blood pressure, the concentration of glucose and the cardiac output. It is considered
a good marker of the circadian system. It can be affected by external factors such
as stress situations, light exposure at certain times of the day, hyperprotein meals,
aging, deprivation of sleep, a predominance of light sleep, nocturnal awakenings,
which lead to increased cortisol levels. Interestingly in nocturnal experimental animals,
it is corticosterone and not cortisol, and the profile of this hormone is inverse
to that of daytime species, so the maximum value occurs at the beginning of the night,
coinciding with the onset of nocturnal activity.[45]
Another interesting finding was that the I and E chronotypes presented low vitamin
D values. The difference was nonsignificant among chronotypes. Vitamin D is the “vitamin
of the sun,” with light being one of the most important external zeitgebers for the
circadian rhythm.[46]
We did not find that hypovitaminosis D in T1DM has been analyzed in relation to circadian
rhythm and sleep in other studies.
We found that the M chronotype had a significant correlation regarding height (shorter
height) when correlating with the rest of the chronotypes, but no other correlation
was found regarding other evaluated parameters related to metabolic variables in the
present study, as it was the only parameter (within the metabolic variables) found,
we cannot issue conclusions about it.
Limitations and Strength
As biases, we must say that we have used subjective measures to assess circadian rhythm,
sleep quality/disorders, and mood disturbances, but we were unable to make objective
assessments of chronotypes or sleep disorders. However, the costs of these studies,
the required technology and logistics, would be impossible to cover in our country
for the required sample size. In addition, it is known that the subjective perception
of chronotypes, and especially the subjective appreciation of sleep disorders and
mood swings does not always correlate with objective evaluations.
As this was a cross-sectional study and we had a small sample of laboratory parameters,
we were unable to carry out an exhaustive analysis of the metabolic aspects of T1DM
that could be pathophysiologically associated with poor quality of sleep.
However, as a strength of the present study, we must say that according to our review
of the literature, it was the first to examine the distribution of chronotypes in
a sample of patients with T1DM
In conclusion, we found that the I chronotype was predominant in our population with
T1DM; more than half of the patients reported being poor sleepers, and the I chronotype
had a greater tendency to present all the components of the PSQI altered. The M chronotype
showed the least altered components.
We also found that < 15% in this population of T1DM reported excessive daytime sleepiness.
Depressive symptoms were found in a small percentage, but > 16% reported a decreased
well-being score.
Although it is necessary to increase the sample, we found that the morning chronotype
(M), had a significant correlation with a better sleep quality and a lower risk of
depression (higher scores in emotional well-being), partly corroborating our study
hypothesis.