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Pediatric Endocrinology Diabetes and Metabolism
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Glycaemic control and factors affecting it in type 1 diabetes in children: experience from a tertiary care centre in India

Devi Dayal
1
,
Jaivinder Yadav
1
,
Rakesh Kumar
1
,
Saniya Gupta
1
,
Arti Yadav
1
,
Pamali M. Nanda
1

  1. Department of Pediatrics, Postgraduate Institute of Medical Education and Research, Chandigarh, India
Pediatr Endocrinol Diabetes Metab 2022; 28 (4): 281–286
Data publikacji online: 2022/07/27
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Introduction

The famous Diabetes Control and Complication Trial (DCCT) unequivocally demonstrated the importance of prolonged reason able glycaemic control to reduce the risk of microvascular and macrovascular complications in patients with type 1 diabetes [1]. According to the International Diabetes Federation (IDF) atlas, India has the highest number of children and adolescents living with diabetes in the age group 0–19 years (229,400), and 24,000 new cases are recognised in this pool annually [2]. Besides several management tools and diabetes education advancements, glycaemic control in a large population remains suboptimal [3]. Poor glycaemic control in the early years of disease adversely affects neurodevelopment and raises the risk for long-term complications [1, 4]. Standard of care, patient’s age, disease duration, type of insulin, insulin delivery method, and personal and social factors could affect glycaemic control in paediatric TID [5]. Identifying and correcting modifiable factors will improve the delivery of diabetes care and glycaemic control. This study assessed glycaemic control and factors affecting it at our tertiary care hospital in Northern India.

Material and methods

This was a retrospective study of T1D children attending a tertiary care hospital in Northwest India between 2015 and 2018. The patients who had a follow-up of at least one year after registration in the clinic and one clinic visit in the year preceding the survey were eligible for inclusion in the study. The diagnosis of type T1D (symptoms suggestive of diabetes plus random plasma glucose ≥ 200 mg/dl (11.1 mmol/l) or fasting plasma glucose ≥ 126 mg/dl (7.0 mmol/l) or presenting with complications) was per ISPAD guidelines [6]. The data on age, sex, disease duration, insulin regimen, comorbidities, parental education, glycated haemoglobin (HbA1c), frequency of diabetes ketoacidosis (DKA) in the last year, and severe hypoglycaemic episodes were extracted from the clinic records for the year preceding the survey. The insulin regimen is intensive if the patient receives insulin injections 3 or more times a day. The weight, height, and body mass index (BMI) Z scores were calculated according to national growth reference charts (IAP 2015) [7]. The pubertal status was assessed with Tanner staging. HbA1c was assessed with the HPLC method. Glycaemic control was categorized into adequate control (HbA1c < 7.0%), suboptimal control (7.0% ≤ HbA1c < 9.0%), and poor control (HbA1c ≥ 9.0%) groups. Dyslipidaemia was defined as fasting low-density lipoprotein (LDL) cholesterol of more than 100 mg/dl and triglyceride level greater than 170 mg/dl [8]. A severe hypoglycaemic episode was defined as a hypoglycaemic episode associated with severe cognitive impairment requiring external assistance for recovery. The parental education was categorised into illiterate, secondary, senior secondary, graduate, and postgraduate. The information on associated autoimmune diseases was also collected. The thyroid status was classified according to thyroid function test, and celiac disease was diagnosed based on duodenal biopsy. In total, 500 patients were screened during this period, and complete information was available for 281 patients. The patients were categorised and compared according to factors affecting glycaemic control such as age, sex, duration of diabetes, caregiver education, history of DKA or severe hypoglycaemic episodes in the last one year, and presence of an autoimmune condition. The continuous variables are reported as mean ±SD, and categorical variables are expressed as percentages. The normality of data was assessed with the Shapiro-Wilk test and visual inspection of the histogram. The various categories were compared with the t-test, ANOVA, and Kruskal-Wallis Test. After adjusting for other variables, multivariate and logistic regression were conducted to assess the significant factors, influencing glycaemic control. The data were analysed with IBM SPSS Statistics for Windows, Armonk, NY: IBM Corp. The departmental review board gave ethical clearance for the study.

Results

The mean age at the time of evaluation was 10.43 ±4.04 years (2–21 years), and the mean disease duration was 3.88 ±2.37 years (1.33–11.75 years). The mean height (1.04 ±1.180) and BMI Z scores (0.03 ±1.05) of the cohort were normal, but 19 patients (6.7%) were stunted (height < –2Z), and 6.8% were obese (BMI > 27 kg/m2 adult equivalent according to IAP 2015 charts). The mean HbA1c of the study cohort was 7.96 ±1.46%. Adequate control was found in 75 (24%) patients, while 159 (50.8%) had optimal and 79 (25.2%) were poorly controlled. The prevalence of hypothyroidism, hyperthyroidism, and celiac disease was 22 (7.2%), 6 (2%) and 46/263 (17.5%), respectively. Forty-six patients suffered one or more micro-macrovascular (dyslipidaemia 22, microalbuminuria 11, retinopathy 9, cataract 3, autoimmune hepatitis 1) complications, and dyslipidaemia was the most common complication. Most patients received a basal-bolus regimen with a mean insulin dose of 1.10 ±0.52 U/kg (basal 39%, bolus 61%; Table I). The mean HbA1c was similar between males and females in different age groups and insulin regimens. The child’s pubertal status, severe hypoglycaemic episodes, and comorbidities like hypothyroidism and celiac disease did not affect the mean HbA1c values. However, the HbA1c values were significantly higher in children with a longer duration of disease (8.39 ±1.42% vs. 7.59 ±1.65%, p-value 0.04), who had an episode of DKA within a year of evaluation (9.19 ±2.54% vs. 7.93 ±1.39% p-value < 0.01), and lower maternal education status (8.22 ±1.37% vs. 7.56 ±1.45%, p-value 0.01) and paternal education (8.26 ±1.67 vs. 7.78 ±1.30, p-value < 0.01) and hyperthyroid state (9.43 ±2.28 vs. 7.91 ±1.45, p-value 0.03; Table II) On multiple regression analysis, disease duration (β = 0.39, p-value = 0.007) was a significant predictor of HbA1c after adjusting for age, age at diagnosis, gender, insulin regimen, and pubertal, thyroid, and celiac disease status. On multiple logistic regression analysis, the hyperthyroid status was associated with poor glycaemic control (HbA1c > 9%; p-value = 0.028, β = 16.45) after adjusting for age, gender, disease duration, insulin regimen, pubertal status, and thyroid and celiac disease status.

Table I

Clinical and demographic characteristics of the study cohort

Age (in years) 10.43 ±4.04
Sex
Male163 (52%)
Female150 (48%)
Age at diagnosis (years)7.00 ±6.6
Duration of disease (years)3.88 ±2.37
Parents’ educationMother (n = 304)Father (n = 305)
Illiterate17 (5.6%)13 (4.3%)
Secondary126 (41.3%)111 (36.4%)
Senior secondary64 (21%)72 (23.6%)
Undergraduate48 (15.8%)83 (27.2%)
Postgraduate49 (16.1%)26 (8.5%)
Parents’ occupationMother (n = 304)Father (n = 297)
Govt Job27 (8.9%)57 (19.2%)
Pvt Job18 (5.9%)78 (26.3%)
Business4 (1.3%)66 (22.2%)
Farmer7 (2.3%)34 (11.4%)
Labourer56 (18.9%)
Housewife243(79.9%)
Height, height Z score#138 (34.4) – 0.18 (1.78), 19 stunted (10 male, 9 females)
BMI Z core#–0.06 (1.04) (6.8% obese, 19.5% overweight) Pubertal
Pubertal status
Prepubertal129 (41.2%)
Pubertal54 (17.3%)
Post pubertal58(18.5%)
Not recorded71 (22.7%)
Insulin regimen
Basal bolus255 (81.5%)
Mixed split51 (16.3%)
Pump7 (2.2%)
Insulin requirement (IU/kg/day)1.10 ±0.52
Basal dose (%)38.87 ±13.79
Bolus dose(%)61.55 ±13.44
Mean HbA1c at diagnosis (%)11.99 ±2.73
Best HbA1c during the year (%), range7.15 ±1.42 (4.20–16.60)
Worst HbA1c (%)8.87 ±1.85 (5.80–16.20)
Mean HbA1c (%)7.96 ±1.46
Glycaemic control
(25.2%)
Adequate – 75 (24%), optimal – 159 (50.8%), poor – 79
Frequency of HbA1c in last one year1 (6.7%), 2 (17.8%), 3 (26.2%), 4 (40.9%)
Number of visits during last year1 (3.8%), 2 (10.2%), 3 or more (80.2%)
DKA at presentation17 (5.4%)
Thyroid status
Euthyroid271
Hypothyroid22
Hyperthyroid6
Celiac disease46 (14.7%)
Microvascular and macrovascular
complications
Cataract – 3, microalbuminuria – 11, autoimmune hepatitis– 1,retinopathy – 9, dyslipidaemia – 22
Severe hypoglycaemia episodes60 (19.2%)
Serious infection3 (1%)
Lipodystrophy63 (20.1%)

[i] # Median (interquartile range)

Table II

Comparison of the factors affecting glycaemic control in type 1 diabetes

VariableMean HbA1c(%)p-value
Age group*0.103
0-6 years (n = 48)7.78 ±1.21
6-12 years (n = 139)7.84 ±1.43
> 12 years (n = 94)8.21 ±1.59
Duration of illness*0.04
0-24 months (n = 67)7.59 ±1.65
25-60 months (n = 140)7.90 ±1.33
> 60 months (n = 74)8.39 ±1.42
Sex**0.590
Male (n = 163)7.91 ±1.38
Female (n = 117)8.01 ±1.57
Thyroid status*0.03
Euthyroid (n = 250)7.91 ±1.45
Hypothyroid (n = 19)8.14 ±1.04
Hyperthyroid (n = 6)9.43 ±2.28
Celiac status**0.92
Yes (n = 44)7.94 ±1.29
No (n = 204)7.90 ±1.41
Insulin regimen*0.153
Basal bolus (n = 231)7.92 ±1.45
Mixed split (n = 40)8.20 ±1.56
Insulin pump (n = 6)7.86 ±1.07
VariableMean HbA1c
(%)
p-value
Pubertal status at last visit#0.13
Prepubertal (n = 129)7.84 ±1.31.
Pubertal (n = 54)8.33 ±1.45
Post pubertal (n = 58)8.14 ±1.57
Father's education**0.008
Below secondary level (n = 102)8.26 ±1.67
Above secondary level (n = 179)7.78 ±1.30
Mother's education**0.01
Below secondary level (n = 120)8.21 ±1.45
Above secondary level (n = 161)7.76 ±1.44
Diabetes ketoacidosis in last year**0.007
Yes (n = 10)9.19 ±2.54
No (n = 267)7.93 ±1.39
Severe hypoglycaemia**0.85
Yes (n = 46)0.85
No (n = 231)7.97
Visit to physician**0.24
< 3 (n = 32)8.25 ±1.76
> 3 (n = 249)7.92 ±1.42

* ANOVA, ** t-test, # Kruskal-Wallis test

Discussion

Optimal glycaemic control is essential to decrease the risk of future microvascular complications in T1D. The recent multi-country study attainment of adequate glycaemic control according to guidelines is achievable in only a small proportion of patients. The SEARCH (USA) and YDR (India) registries study showed that only 45–50% of patients achieved adequate control in the USA with different insulin regimens, while the numbers dropped to 8.5–12% in the Indian registry [9]. A similar trend was observed in other countries also. The median HbA1c in the cohort varied from 7.2 to 9.4%. Various factors influence diabetic control including age, gender, duration of disease, rural status, access to insurance and health care, and associated autoimmune diseases. However, the data on predictors affecting glycaemic control are scarce and variable [5, 10, 11].

Most of our patients used analogue insulins with insulin pens and had adequate control comparable to that seen in developed countries [9]. Most Indian patients are still using insulin syringes and older insulin, and the mean HbA1c in these studies varied from 8.2 to 11% [9, 12, 13]. Our study participants had lower HbA1c than previous Indian studies and reports from other developing countries due to better insulins and frequent blood sugar monitoring (4 times/day).

The duration of diabetes also affects glycaemic control. As the age and duration of the disease increase, the glycaemic control worsens, as shown by the recent study [10, 11]. The honeymoon phase and supervised parental care in the early years of diagnosis are factors associated with better glycaemic control in the early years after diagnosis. The present study showed significantly lower HbA1c in the first 2 years of diagnosis. Similar results have been reported by Yazidi et al. [14].

The present study did not show any difference in glycaemic control in boys versus girls, but females had higher HbA1c, similar to the observations in a cohort of Scottish T1D children [5]. The glycaemic control was identical in different age groups. Similar results have been reported by previous Indian field studies [3, 12]. In contrast, Noorani et al. reported better control in younger children due to supervised care by parents [15]. However, larger cohorts have shown poorer control in the female sex and older age groups (after 15 years of age) [10].The mother is the primary caregiver for T1D in most countries, and maternal education status is an essential determinant of glycaemic control in these children. We observed a better glycaemic control in children with mothers who had higher education, and the results were consistent with the study results of Husref et al. [16]. As in a previous Iranian study, we also found a positive impact on the father’s education status in our cohort [17]. Our study showed that better compliance and parental education for a better understanding of diabetes and its management are more important than the insulin regimen used by the patient.

The children who suffered an episode of DKA in the year preceding the survey had higher HbA1c, depicting better glycaemic control in this subgroup. Puberty is also associated with increased insulin resistance and poor glycaemic control [14]; we also found higher HbA1c in pubertal children, but the difference was non-significant, probably due to the smaller sample size.

Autoimmune diseases are often associated with T1DM and usually worsen the glycaemic control in children. Hyperthyroid children in our study had significantly higher HbA1c due to the metabolic effects of thyroid hormones on glucose metabolism. Celiac disease has also been reported to affect glycaemic control. Children with celiac disease had poorer control in our cohort, but the difference was non-significant [1820].

Poor glycaemic control is associated with long-term complications. 11/69 (15.9%) and 9/67 (13.4%) of the eligible screened patients suffered from microalbuminuria and diabetic retinopathy in our cohort. This prevalence is higher than the previous recent reports. Inadequate control and possible glycaemic variability in our cohort might be responsible for these higher rates [21].

Conclusions

Parental education, disease duration, hyperthyroid state, and a DKA episode in the year preceding the survey are significant factors influencing HbA1c in our study. Better diabetes education focusing on parents with lower education strata and children with longer disease duration and poor compliance can help improve glycaemic control in developing countries like India.

Conflict of interests

none declared.

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