Literature DB >> 21766562

A hospital-based observational study of type 2 diabetic subjects from Gujarat, India.

Mayur Patel1, Ina M Patel, Yash M Patel, Suresh K Rathi.   

Abstract

The aim of this observational study was to describe the profile of subjects with type 2 diabetes mellitus from Gujarat, India. The study was performed with newly-diagnosed 622 type 2 diabetic subjects who attended the Department of Diabetology, All India Institute of Diabetes and Research and Yash Diabetes Specialties Centre (Swasthya), Ahmedabad, during August 2006-January 2009. The subjects completed an interviewer-administered questionnaire. The questionnaire included variables, such as sociodemographic factors, presenting symptoms, risk profile (hypertension, obesity, dyslipidaemia, and glycaemic status), family history of diabetes, physical activity, and behavioural profile. Blood pressure, body mass index (BMI), glycosylated haemoglobin levels, and fasting lipid profile were measured. Descriptive and bivariate analyses were carried out using the SPSS software (version 11.5). In total; 622 type 2 diabetes mellitus (T2DM) cases with mean age of 47.7 +/- 10.9 years were studied. Of the 622 subjects, 384 (62%) were male. The majority (68%) of the T2DM subjects were obese, and 67% had a positive family history of diabetes. Renal dysfunctions and vision impairment were, respectively, found in 10% (n=62) and 9% (n=57) of the 622 T2DM subjects. The mean HbAlc level was 9.02 +/- 1.67%, and good glycaemic control (HbAlc level <7%) was achieved only in 7.4% of the T2DM subjects. Results of chi-square analysis showed that higher BMI (> or =25 kg/m2) was significantly associated with hypertension among the T2DM subjects (p < 0.01). There were significant differences (p < 0.05) between male and female subjects with respect to mean age, BMI, waist- and hip-circumference, and mean low-density lipoprotein (LDL) level. The results revealed that many factors, such as obesity, family history of diabetes, dyslipidaemia, uncontrolled glycaemic status, sedentary lifestyles, and hypertension were prevalent among the T2DM subjects. The characterization of this risk profile will contribute to designing more effective and specific strategies for screening and controlling T2DM in Gujarat, India.

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Year:  2011        PMID: 21766562      PMCID: PMC3131127          DOI: 10.3329/jhpn.v29i3.7874

Source DB:  PubMed          Journal:  J Health Popul Nutr        ISSN: 1606-0997            Impact factor:   2.000


INTRODUCTION

Type 2 diabetes mellitus (T2DM) is a chronic, debilitating disease characterized by insulin resistance, impaired insulin secretion, and hyperglycaemia. It is the most prevalent metabolic condition and one of the major health and socioeconomic problems worldwide (1-3). It represents more than 90% of the whole diabetic population in the world (4) and is responsible for 9% of global mortality corresponding to four million deaths per year. Since the beginning is insidious, there is an average delay of 3-5 years in diagnosis. By the time the condition is diagnosed, minimal changes responsible for microvascular and macrovascular complications are already present. This issue is further compounded by untreated diabetes because of ignorance or inaccessibility to treatment. Untreated diabetes may result in limb amputation, blindness, kidney failure, and neuropathy. T2DM is also associated with four-fold increased risk of cardiovascular events and is a risk factor for doubling the risk of cardiovascular death (5-7). The prevalence of T2DM has been rising worldwide, and globally, more than 180 million people are suffering from it. In particular, epidemics of this disorder have taken place in developing societies (8-9). Global diabetic load mostly comes from India and China where more than 75% of diabetic subjects will live in 2025 (4). India, like many other developing countries, has witnessed a rapid epidemiological transition in the last two decades. Coupled with this, there has been a dramatic improvement of the Indian economy in terms of per-capita income. These dramatic changes have had a great impact on urbanization and lifestyle of the Indians. As a result, diabetes mellitus has become the main public-health problem and amenable to change through early recognition at the individual level and surveillance at the population level. Results of studies showed that India is facing three-fold rise in the prevalence of diabetes in urban (5-15%) and in rural (2-6%) areas (10-11). India tops in the world with the largest number of diabetic subjects (31.7 million cases of T2DM) (3,12). This is further compounded by the epidemic of obesity and doubling the cost of diabetes management (13). Therefore, prevention is important from monetary and from lifestyle modification point of view. Increasingawareness of risk factors and how to prevent these should be emphasized in the population (14). Apart from this, the lifestyle modifications (physical exercise, diet control, etc.) are appropriate measures in the prevention of diabetes. Furthermore, to control and prevent the T2DM epidemic, it must be approached in an appropriate, socioeconomically and culturally-relevant manner but very little data are available from Gujarat to support this, and for the prevention of diabetes, it is also vital to know the profile of diabetics. This paper reports the profile of type 2 diabetic subjects from Gujarat, India.

MATERIALS AND METHODS

Study setting

A hospital-based observational study was conducted during August 2006–January 2009 in Ahmedabad district of Gujarat state, India. Ahmedabad is the largest district of Gujarat with an approximate population of five million. The city is famous for medical tourism because of its wide network of cost-effective tertiary-care hospitals catering to the need of population of not only from Gujarat but also from neighbouring states and even from abroad.

Study population

The study population comprised diabetic subjects. To be included in this study, it was a must for subjects to be newly diagnosed for diabetes mellitus (diagnosed within the last 6 months), attending the Department of Diabetology, All India Institute of Diabetes and Research and Yash Diabetes Specialties Centre (Swasthya) during the study period for the first time and willing to participate in the study.

Sample-size

A sample-size of 660 was decided on the basis of review of data of the Department of Diabetology which revealed that at least 100 subjects (newly-diagnosed) were presented every month. Hence, there would be 3,000 subjects during the study period. Of the 3,000 newly-diagnosed cases, at least 20% were selected for this study. The calculated minimum sample-size was inflated by 10% to account for anticipated drop-outs.

Procedure for data collection

After satisfying the case definition and obtaining informed consent (written consent from literate subjects and verbally informed consent from illiterate subjects), 709 subjects were enrolled through simple random-sampling method. After explaining the details of the study, a comprehensive case history was recorded on a semi-structured, close-ended proforma. Basic data on age, sex, education, occupation, smoking and tobacco-chewing status, alcohol consumption, diet, and physical activity were collected from all the subjects. All the subjects were also interviewed regarding history of hypertension and other co-morbid conditions. A general physical examination was performed. For analysis, the current smokers and ex-smokers were categorized in the ‘ever-smoker’ group. imilarly, the current tobacco chewers and ex-tobacco chewers were categorized in the ‘ever-tobacco chewer’ group. Both ever-smoker group and ever-tobacco chewer group were considered tobacco users. Current alcohol users were defined as subjects who have consumed alcohol at least once in the last one month. Mode of onset of diabetes was defined based on the duration of symptoms of diabetes present in the subjects and categorized as acute (symptoms present for up to one month), sub-acute (symptoms present from one to three months), and insidious (symptoms present from three to six months). The main occupational level was divided into three categories: low (e.g. skilled workers, household workers, and retired persons), medium (e.g. desk-jobs), and high (e.g. professionals and businessmen). Physical activity was categorized as sedentary (sitting, standing, and driving for most of the day, cooking, light cleaning, light yard work, slow walking, and other major activities that involve sitting), moderate (an occupation that includes lifting, lots of walking, or other activities that keep you moving for several hours qualified as moderately active), and heavy (heavy manual labour, a very active lifestyle, dancer, or very active sports played for several hours almost daily, an elite athlete in training, or an extremely active lifestyle―both at work and at play and sport or activi-ty last for several hours, almost daily).

Anthropometric, clinical and biochemical measurements

All anthropometric measurements were recorded using standardized procedures. The study subjects also underwent various clinical tests, such as urinalysis (first-morning urine sample for evaluation of micro-albuminuria), blood tests for complete haemogram, plasma glucose, glycosylated haemoglobin (HbA1c), renal function tests, and lipid levels. Blood samples were collected after ensuring 12 hours of overnight fasting. Total cholesterol (TC), triglycerides (TG), and high-density lipoprotein-cholesterol (HDL-C) levels were estimated in serum. Low-density lipoprotein-cholesterol (LDL-C) was calculated using the Friedewald formula [LDL-C (mg/dL)=non-HDL-C-TG/5] (15). Blood pressure was recorded after the subjects had rested for at least five minutes. Two readings were taken five minutes apart, and mean of the two was considered the actual blood pressure. Hypertension was diagnosed based on drug treatment for hypertension or if the blood pressure was >130/80 mmHg according to the Joint National Committee-7 (JNC-VII) criteria (16-17). The diagnosis of diabetes mellitus was made using the criteria established by the American Diabetes Association (18), i.e. a medical record indicating either a fasting plasma glucose (FPG) level of >7.0 mmol/L or ≥126 mg/dL after a minimum 12-hour fasting, or two-hour post glucose level (oral glucose tolerance test) of >11.1 mmol/L or ≥200 mg/dL on more than one occasion, with symptoms of diabetes. In the absence of information from the medical records, confirmation was done on self-reported case by establishing the criteria of regular treatment with anti-diabetic drugs or by performing a two-hour oral glucose tolerance test (OGTT). Impaired glucose tolerance (IGT) was defined as the FPG level of 100 mg/dL (5.6 mmol/L) but <126 mg/dL (7.0 mmol/L) or two-hour OGTT of ≥140 mg/dL (7.8 mmol/L) but <200 mg/dL (11.1 mmol/L). The guidelines of the National Cholesterol Education Programme were used for defining dyslipidaemia (19). It was defined by presence of one or more than one abnormal serum lipid concentration, such as hypercholesterolaemia, high LDL-C, hypertriglyceridaemia, and low HDL-C. Body mass index (BMI) values were defined according to the recommendations of the Indian Council of Medical Research for Indians. A study subject was considered to be obese if BMI was ≥25 kg/m2 and overweight when BMI was 23-24.9 kg/m2 (20). The criterion for glycaemic status was <7% (good control), 7-8% (sub-optimal control), 8-9% (inadequate control), and >9% (uncontrolled) (21).

Analysis of data

Data were processed in Excel-sheet and analyzed using the SPSS software (version 11.5). Quantitative variables were summarized using mean and standard deviation while categorical variables were tabulated using frequencies and percentages. Student's t-test was used for testing the significance of differences between the mean values of two continuous variables. Chi-square test was carried out to test the difference between two or more groups. The probability (p) level of less than 0.05 was considered significant.

Ehical approval

The Institutional Review Board of the All India Institute of Diabetes and Research approved the study protocol.

RESULTS

A sample of 709 diabetic subjects was enrolled. Of the 709 subjects, 622 (88%) had T2DM. Hence, further analysis was performed on the 622 T2DM subjects.

Sociodemographic characteristics

Sociodemographic characteristics of the study subjects are shown in Table 1. The type 2 diabetic subjects were evenly distributed in four quartiles of age with mean of 47.70±10.94 years. Of the study samples (n=622), 384 (62%) were male, and 238 (38%) were female. Eighty-four percent (n=521) of the subjects were following religion of Hinduism, and most (99%) study subjects were literate. Thirty-seven percent of the subjects had high level of occupation.
Table 1.

Sociodemographic characteristics of type 2 diabetic subjects from Gujarat, India

CharacteristicsNo. (n=622)%*
Age (years) (mean±SD)47.70±10.94
  Up to 4016427
  41-4817027
  49-5515024
  >5513822
Sex
  Male38462
  Female23838
Marital status
  Never married224
  Ever-married60096
Religion
  Hinduism52184
  Islam518
  Christianity193
  Others315
Education
  No education031
  Primary school183
  Secondary school10517
  College42067
  Professional (MBA, CA, MBBS, etc.)7612
Occupation level
  Low28145
  Medium11218
  High22937

*All percentages rounded to whole numbers

Sociodemographic characteristics of type 2 diabetic subjects from Gujarat, India *All percentages rounded to whole numbers

Presenting complaints/symptoms

The subjects had classic diabetic symptoms. Of the 622 subjects, 273 (44%) had nocturia, 192 (31%) had polyuria, and 145 (23%) had polydypsia. However, 57 (9%) subjects presented with vision impairment (Table 2).
Table 2.

Presenting symptoms of type 2 diabetic subjects from Gujarat, India

Manifestation of symptomsNo.(n=622)%*
Nocturia27344
Polyuria19231
Polydipsia14523
Vision impairment579
Itching of private parts508
Tingling13622
Weight loss16527
Weakness36559
Leg pain15525
Burning micturation6811
Skin complaint5910
Numbness396
Impotence285

*All percentages rounded to whole numbers

Presenting symptoms of type 2 diabetic subjects from Gujarat, India *All percentages rounded to whole numbers

Behavioural profile

The findings of the study showed that 173 (28%) of the 622 subjects had some form of habits. For example, 56 (9%) were smokers, 121 (20%) were tobacco chewers, and 51 (8%) were consuming alcohol. Most (84%) study subjects reported sedentary lifestyle (Table 3).
Table 3.

Profile of clinical and other associated factors of type 2 diabetic subjects from Gujarat, India

CharacteristicsNo. (n=622)%*
Glycosylated haemoglobin(HbA1c) (mean±SD)9.02±1.67
Glycaemic status (%)
  <7 (good control)467
  7-8 (sub-optimal control)15926
  8-9 (sub-optimal control)16326
  >9 (uncontrolled)25441
Family history of diabetes
  Present41767
BMI group
  Underweight (<18.5 kg/m2)111
  Normal (18.5-22.9 kg/m2)9916
  Overweight (23.0-24.9 kg/m2)9215
  Obese (≥25.0 kg/m2)42068
Microalbuminuria6210
Lipid
  Dyslipidaemia48778
Hypertension
  Present28947
Mode of onset
  Acute44672
  Sub-acute14523
  Insidious315
Physical activity
  Sedentary52584
  Moderate8914
  Heavy81
  Diet control10317
Other diabetic treatments (excluding diet)
  Yes21935
Past history (of any medical/surgical condition)
  Yes29147
Smoking
  Yes569
Years of tobacco smoking
  (mean±SD)11.46±9.27
Tobacco chewing
  Yes12120
Years of tobacco chewing
  (mean±SD)12.37±8.61
Alcohol
  Yes518
Years of alcohol drinking
  (mean±SD)9.68±7.64

*All percentages rounded to whole numbers;

SD=Standard deviation

Risk profile

A very few (7%) study subjects had good glycaemic control (HbA1c ≤7%). Two-thirds had positive family history of diabetes. The findings showed a mean BMI of 27.06±4.57. According to BMI, only 16% of the sample subjects had normal weight; the majority was either overweight (BMI 23.0-24.9 kg/m2) or obese (BMI ≥25 kg/m2). Microalbuminuria was found among 10% (n=62) of the subjects. Of the T2DM patients, 78% had dyslipidaemia, and 47% had hypertension (Table 3). Profile of clinical and other associated factors of type 2 diabetic subjects from Gujarat, India *All percentages rounded to whole numbers; SD=Standard deviation There was a significant (p<0.05) difference between the male and the female subjects with respect to mean age (male=46.93±11.11 years, female=48.95±10.53 years), mean BMI (male=26.47±4.34, female=28.02±4.78), mean waist-circumference (male=93.12±10.47 cm, female=88.96±9.53 cm), mean hip-circumference (male=98.46±8.83 cm, female=101.69±12.52 cm) and mean LDL level (male=119.20±31.23, female=127.73±38.15) (Table 4). BMI was significantly (p<0.001) associated with hypertension (Table 5).
Table 4.

Characteristics of study population, clinical and laboratory findings by sex among type 2 diabetic subjects from Gujarat, India

CharacteristicsMean±SDp value
MaleFemale
Age46.93±11.1148.95±10.530.026
Body mass index26.47±4.3428.02±4.78<0.001
Waist-circumference (cm)93.12±10.4788.96±9.53<0.001
Hip-circumference (cm)98.46±8.83101.69±12.52<0.001
Blood pressure
  Systolic (mmHg)128.30±16.43129.60±17.540.354
  Diastolic (mmHg)84.87±9.1383.41±9.190.054
HBA1c9.07±1.748.93±1.550.333
Lipid profile
Cholesterol (mg/dL)194.82±39.24201.00±46.980.079
HDL (mg/dL)41.17±5.2840.91±6.100.575
LDL (mg/dL)119.20±31.23127.73±38.150.003
Triglycerides (mg/dL)182.49±123.31169.87±140.230.242
VLDL (mg/dL)36.04±18.4632.03±12.620.004

HDL=High-density lipoprotein;

LDL=Low-density lipoprotein;

SD=Standard deviation;

VLDL=Very low-density lipoprotein

Table 5.

Factors associated with hypertension among T2DM subjects from Gujarat, India

FactorHypertensionχ2p value
YesNo
Age (years)
  Up to 4067976.860.076
  41-487397
  49-557476
  >557563
Body mass index
  ≥25 kg/m222219821.25<0.001
  <25 kg/m267135
Physical activity
  Sedentary2462790.210.659
  Moderate to heavy4354
Lipid profile
  Dyslipidaemia2202671.40.242
  Normal6966
Family history
  Positive2052123.70.054
  Negative84121
Glycaemic status (%)
  <7 (good control)24225.4490.142
  7-86594
  8-98677
  >9114140
Characteristics of study population, clinical and laboratory findings by sex among type 2 diabetic subjects from Gujarat, India HDL=High-density lipoprotein; LDL=Low-density lipoprotein; SD=Standard deviation; VLDL=Very low-density lipoprotein Factors associated with hypertension among T2DM subjects from Gujarat, India

DISCUSSION

Diabetes mellitus is a major public-health problem worldwide. Its prevalence is rising in many parts of the developing world, and India is no exception to this. It will become diabetes capital of the world in near future. Individuals with T2DM are considered on high priority as they are potential candidates for rapid evaluation to prevent and halt the progression of complications. This study presented observational data from a large number of subjects with diabetes attending the Department of Diabetology, All India Institute of Diabetes and Research and Yash Diabetes Specialties Centre. To the best of our knowledge, no such type of profiles has been reported from Gujarat. Nonetheless, literature on the prevalence of diabetes is available from South and North India (22-24). Our main motivation for this analysis was to obtain the risk profile so that we can prevent or decrease the burden of T2DM in Gujarat. The present study found that T2DM is a major burden in Gujarat, which is consistent with findings of Simon (4). The main findings of the study were: only 7% of the study population had good glycaemic control (HbA1c ≤7%), 68% of the subjects with T2DM were obese, and BMI was significantly (p<0.001) associated with hypertension. Our study population had a negligible proportion of illiterate T2DM subjects. This finding was expected, given that our sample was drawn from an urban tertiary-care hospital. Achieving good glycaemic control in diabetic subjects has proven a real challenge to healthcare providers. Studies have documented that self-care among T2DM subjects improved glycaemic control and reduced complications (25-26). In the present study, only 7% of the subjects had good glycaemic control, which is different from various studies. A Swedish survey found that 34% of type 2 diabetes subjects had good glycaemic control (27). Al-Maskari F et al. found that 38% of T2DM subjects had good glycaemic control (28), and the study by Al-Kaabi J et al. reported that 31% of subjects had good glycaemic control (21). The possible explanation may be that our study sample consisted of newly-diagnosed T2DM subjects drawn from a tertiary-care hospital, and non-adherence to interventions may contribute to uncontrolled glycaemic status (29). These subjects may have T2DM for many years as evident from complications, such as renal dysfunction in 9% and vision impairment in 10% of the T2DM subjects. In the present study, the majority (68%) of the subjects with T2DM were obese. This is consistent with the findings of various studies (30-33). Obesity was also associated with family history of diabetes among the Indian population (34). Dyslipidaemia and hypertension were also related with the family history of diabetes through its link to BMI (32,35). The role of BMI as predictor for hypertension has been previously des-cribed (36), and the present study also confirmed the same among the T2DM subjects. Our study could not demonstrate any significant association among physical activity, dyslipidaemia, and controlled glycaemic status with hypertension among the T2DM subjects. However, the age and family history of diabetes were marginally significant. Although diet control is the cornerstone in the management of T2DM, only 17% of the study sample was on diet therapy.

Limitations

Several potential limitations should be considered in interpreting the results of the present study. First, the study is limited by cross-sectional design; so, temporality (cause-and-effect relationships) cannot be established. It can, however, provide a clear snapshot of the current situation and may help improve the management and design of future studies to explore further. Second, this is a hospital-based study in an urban set-up, which may not be representative and applicable to general population. However, this could provide a reasonably precise and reliable estimate of the risk profile of T2DM in Gujarat. Third, we tried to include newly-diagnosed subjects but we are not sure that all subjects are newly diagnosed because we have relied on the subjects.

Conclusions

The present study directed at providing the profile of the T2DM subjects from Gujarat, India, as an impetus for further exploration of the sociocultural and subject-related factors affecting the outcomes of T2DM care that, in turn, will lead to redefine the diabetes control and preventive strategies. The findings of the study revealed that a high proportion of factors, such as obesity, family history of diabetes, dyslipidaemia, uncontrolled glycaemic status, sedentary lifestyles, and hypertension, were prevalent in the T2DM subjects. The findings also provide an early indication for development of T2DM-related complications. Based on the findings of the study, we recommend the following steps for the appropriate management of T2DM subject: Uncontrolled glycaemic status, dyslipidaemia, and vision impairment should be taken care of by conducting early screening for complications, frequent check-ups, and follow-ups. Prevention of T2DM needs to have lifestyle modification interventions, i.e. body-weight control through diet and exercise should be emphasized.

ACKNOWLEDGEMENTS

The study was supported by All India Institute of Diabetes and Research, Ahmedabad, India. The authors thank all the study subjects and Dr. B.D. Mankad especially for expert opinion. They also thank Dr. Saeed Akhtar, Dr. Prakash J Shah, and Dr. W.Q. Shaikh for reviewing the earlier version of the manuscript. The authors are indebted to Mr. Diwakar Sharma for statistical assistance. They also thank the anonymous referees of the journal for their thoughtful comments that have improved the presentation of the manuscript.
  35 in total

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