Literature DB >> 24228724

Prevalence of diabetes complications in people with type 2 diabetes mellitus and its association with baseline characteristics in the multinational A1chieve study.

Leon Litwak1, Su-Yen Goh2, Zanariah Hussein3, Rachid Malek4, Vinay Prusty5, Mohammad E Khamseh6.   

Abstract

BACKGROUND: Current International Diabetes Federation guidelines recommend a target HbA1c <7.0%, but many people with diabetes worldwide find this difficult to achieve, increasing their risk of developing complications. This publication examines the prevalence of diabetes complications and its association with baseline characteristics in people with type 2 diabetes who participated in the A1chieve study.
METHODS: A1chieve was a 24-week, multinational, open-label, observational study of 66,726 people with type 2 diabetes who had begun using biphasic insulin aspart 30, insulin aspart, or insulin detemir in routine clinical care. Participants were enrolled from 28 countries across four continents (Asia, Africa, Europe and South America). Baseline measurements of disease characteristics included: glycated haemoglobin (HbA1c), fasting (FPG) and post-prandial plasma glucose (PPG), high- and low-density lipoprotein cholesterol (H- or LDL-C), systolic blood pressure (SBP), and body mass index (BMI). Data on complications and use of vascular disease preventative drugs were collected.
RESULTS: Complication rates were high (27.2% had macrovascular complications and 53.5% had microvascular complications), particularly in Russia, and use of vascular disease preventative drugs was lower than expected. Age, BMI, diabetes duration, LDL-C, and SBP were positively associated, and HDL-C negatively associated, with macro- and microvascular complications (all p < 0.05). HbA1c and FPG were negatively associated with macrovascular complications (both p < 0.05), which may be linked to the cross-sectional study design.
CONCLUSIONS: These results suggest a worldwide failure to achieve glycaemic targets. Better diabetes management with earlier initiation and optimisation of insulin regimens (e.g., with insulin analogues in the A1chieve population) may reduce the prevalence of vascular complications, improve the lives of people with diabetes and reduce the burden on healthcare systems.

Entities:  

Year:  2013        PMID: 24228724      PMCID: PMC3854020          DOI: 10.1186/1758-5996-5-57

Source DB:  PubMed          Journal:  Diabetol Metab Syndr        ISSN: 1758-5996            Impact factor:   3.320


Introduction

Effective management of diabetes requires sustained glycaemic control over many years to lower the risk of macro- and microvascular complications in people with diabetes. The UK Prospective Diabetes Study (UKPDS) found that every 1% reduction in glycated haemoglobin (HbA1c) was associated with a 37% decrease in microvascular disease and a 14% reduction in myocardial infarction (MI) [1]. Results of a 10-year follow-up study found that people with type 2 diabetes who maintain good glycaemic control experience benefits many years later, including lower rates of MI and diabetes-related death [2]. Accordingly, International Diabetes Federation (IDF) and joint American Diabetes Association (ADA)/European Association for the Study of Diabetes (EASD) guidance recommend a target HbA1c of <7.0% [3,4]. These guidelines highlight the need to review and to modify therapy regimens when HbA1c goals can no longer be maintained [4,5], which may include initiation and intensification of insulin therapy. Current diabetes guidelines also emphasise that cardiovascular disease risk reduction should be a focus of therapy [4-6]. However, most people with diabetes find it difficult to achieve HbA1c levels <7.0% [7-10], with <40% of people with diabetes in a USA national survey reaching this target [9]. Moreover, in developing regions, including Eastern Europe, Asia, Latin America, and Africa, it has been shown that 22% and 36% of people with type 1 diabetes and type 2 diabetes, respectively, have never had their HbA1c measured, and of those with available HbA1c values, only 25% of people with type 1 diabetes and 36% of people with type 2 diabetes had HbA1c levels <7.0% [11]. This may increase the likelihood of progression of diabetes complications and of developing complications in later life. Reasons for the difficulty in achieving target HbA1c levels may include problems adhering to complex oral and injectable therapies, concerns about insulin tolerability, psychological insulin resistance, fears about the risk of hypoglycaemia, and weight gain after insulin initiation [12-16]. More data are needed to evaluate glycaemic control and guideline adherence by physicians in real-life clinical practice in different geographical regions. These data can be used to assess whether glycaemic control, or any other factors, predict the establishment of diabetes-related complications in various ethnic groups. A1chieve was a multinational, open-label, observational study of people with type 2 diabetes to assess clinical safety and effectiveness of biphasic insulin aspart 30 (NovoMix® 30), insulin aspart (NovoRapid®), or insulin detemir (Levemir®) with or without oral glucose-lowering drugs (OGLDs) in routine clinical care [17]. Participants were enrolled from 28 countries in Asia, Africa, South America and Europe [17]. In this report, diabetes complications data at baseline were assessed by geographical region and the relationship of these complications to other variables (e.g., patient and disease characteristics) was assessed by correlation analyses.

Methods

This was a 24-week international prospective, multi-centre, open-label, non-interventional study in people with type 2 diabetes mellitus who had started biphasic insulin aspart 30, basal insulin detemir or bolus insulin aspart. These study drugs could be given alone or in combination with other medications that the participants were already taking. Baseline data, before participants received any of these insulin analogues or within 4 weeks of receiving insulin analogues, are reported in this analysis. Participants were evaluated by general physicians or diabetes specialists at the baseline visit, an interim visit approximately 12 weeks after the baseline visit, and a final visit approximately 24 weeks after the baseline visit. The participants were enrolled in the study between January 2009 and June 2010. The 28 countries were grouped into seven geographical regions: China; South Asia (Bangladesh, India, and Pakistan); East Asia (Indonesia, Korea, Malaysia, Philippines, Singapore, and Taiwan); North Africa (Algeria, Morocco, Tunisia, and Libya); Middle East/Gulf (Egypt, Iran, Jordan, Turkey, Bahrain, Kuwait, Oman, Qatar, Saudi Arabia, United Arab Emirates, and Yemen); South America (Argentina and Mexico); and Europe (Russia). Inclusion and exclusion criteria were kept to a minimum in order to reflect routine clinical practice as closely as possible. Selection of patients and choice of insulin regimen were at the discretion of the physician based on their clinical judgement. Exclusion criteria were: patients treated with biphasic insulin aspart 30, insulin detemir or insulin aspart (alone or in combination) for more than 4 weeks before enrolment in the study; patients previously enrolled in the study; patients with hypersensitivity to biphasic insulin aspart 30, insulin detemir or insulin aspart or to any of its excipients; and women who were pregnant, breast-feeding or had the intention of becoming pregnant within the next six months. All local requirements for Health Authorities and Ethics Committee approvals were obtained, if applicable. The study was conducted in accordance with the Declaration of Helsinki [18] and the Guidelines for Good Pharmacoepidemiology Practice [19].

Assessments

Only baseline measurements are reported in this publication, which included patient characteristics, disease characteristics (metabolic control), diabetic macro- and microvascular complications, and use of vascular disease preventative drugs. These data were tabulated by total study population and by geographical region. Patient characteristics assessed at baseline included: age, sex, diabetes duration, and body mass index (BMI). Disease-related characteristics assessed at baseline included: HbA1c, fasting plasma glucose (FPG) before breakfast, post-prandial plasma glucose (PPG) after breakfast, total cholesterol (TC), triglycerides (TG), creatinine, high-density lipoprotein cholesterol (HDL-C), low-density lipoprotein cholesterol (LDL-C), systolic blood pressure (SBP), and quality of life (QoL). QoL was assessed using the standardised EQ-5D™ where 100 = best imaginable health and 0 = worst imaginable health [20]. Since this is an open label, observational study, all complications data were collected from available medical records or memory, with no additional clinical assessments performed. Data were collected for the following macrovascular complications based on the physician’s clinical judgement: MI, angina, peripheral vascular disease, stroke, heart failure, atrial fibrillation, and left ventricular hypertrophy. Data were collected for the following microvascular complications: renal disease (microalbuminuria, gross proteinuria, end-stage renal disease), eye problems (background diabetic retinopathy, proliferative diabetic retinopathy, severe vision loss, macular oedema, and cataract), foot ulcer (uninfected ulcer, infected ulcer, healed ulcer, and history of amputation), and diabetic neuropathy. Data collected on use of vascular disease preventative drugs included use of renin-angiotensin system (RAS) blockers, aspirin and statins.

Statistical analysis

The sample size calculation was based on the number of patients (20,000) required to detect, with at least 95% confidence, serious adverse drug reactions (SADRs) including major hypoglycaemia events, with an incidence of 15 events 100,000 (0.015%) for a single modern insulin during the 6 months of the study. Assuming equal distribution of patients among the three modern insulins, the estimated sample size was 60,000 patients. The influence of variables on vascular complications was evaluated using a univariate logistical regression model as a first step, run separately for macrovascular and microvascular complications. Patient and disease characteristics were included as variables in the model if, based on the literature, they were considered to be medically-related to vascular complications. These included: geographic region, age, sex, diabetes duration, BMI, HbA1c, FPG before breakfast, PPG after breakfast, TC, TG, creatinine (microvascular complications model only), HDL-C, LDL-C and SBP. Any significant correlates from this univariate logistical regression were subsequently entered into a stepwise multivariate logistical regression and only statistically significant correlates remained in the model. The statistical significance level employed was α = 0.05 (two tailed). P-values, odds ratio (OR) and 95% confidence intervals (CIs) were calculated.

Results

Baseline patient characteristics

Baseline patient characteristics are summarised in Table 1. Of the 66,726 patients enrolled in A1chieve: 17,806 had macrovascular complications and 38,670 had no macrovascular complications at baseline; 35,078 had microvascular complications and 21,190 had no microvascular complications at baseline; and 18,420 had no macrovascular or microvascular complications at baseline. South Asia had the youngest patients with macrovascular complications (mean 56.3 years) and Latin America the oldest (mean 65.1 years). The Middle East had the youngest patients with microvascular complications (mean 54.6 years) and Latin America the oldest (mean 61.0 years; Table 1). The highest BMI among patients with macrovascular complications was recorded in Russia and the lowest in China (Table 1). The same pattern was seen in patients with microvascular complications, with the highest in Russia and the lowest in China (Table 1). In patients with macrovascular complications, the longest mean diabetes duration was in Latin America and North Africa and the shortest in South Asia. Mean diabetes duration in patients with microvascular complications was longest in Latin America and North Africa and the shortest in South Asia (Table 1).
Table 1

Baseline patient characteristics by geographical region

 AllChinaSouth AsiaEast AsiaNorth AfricaMiddle EastLatin AmericaRussia
All patients
 
 
 
 
 
 
 
 
Age, yr
 
 
 
 
 
 
 
 
  n
65,381
10,889
21,775
9,966
4,011
14,549
1,126
3,065
  mean (SD)
54.0 (12.0)
54.9 (14.7)
51.7 (10.2)
56.5 (12.1)
58.1 (11.8)
52.5 (11.4)
59.5 (12.9)
59.2 (9.2)
Sex
 
 
 
 
 
 
 
 
  n
66,656
11,019
22,436
10,030
4,032
14,927
1,138
3,074
  male (%)
37,033 (55.6)
6,300 (57.2)
13,908 (62.0)
5,092 (50.8)
1,717 (42.6)
8,636 (57.9)
485 (42.6)
895 (29.1)
BMI, kg/m2
 
 
 
 
 
 
 
 
  n
59,115
10,817
19,292
8,664
3,611
12,571
1,092
3,068
  mean (SD)
27.1 (5.0)
24.7 (3.4)
26.3 (3.8)
24.8 (4.3)
28.0 (5.0)
30.4 (5.5)
29.4 (5.6)
31.1 (5.3)
Diabetes duration, yr
 
 
 
 
 
 
 
 
  n
65,786
10,814
22,316
9,776
4,016
14,658
1,135
3,071
  mean (SD)
8.0 (6.2)
6.3 (6.3)
6.4 (4.7)
8.6 (6.9)
11.5 (7.2)
9.8 (6.0)
12.0 (8.3)
8.4 (5.4)
Patients with macrovascular complications
 
 
 
 
 
 
 
 
Age, yr
 
 
 
 
 
 
 
 
  n
17,506
2,318
4,806
2,662
972
4,195
333
2,220
  mean (SD)
59.3 (10.6)
61.7 (14.1)
56.3 (8.9)
61.5 (10.6)
63.6 (9.5)
57.7 (10.1)
65.1 (9.9)
61.0 (8.5)
Sex
 
 
 
 
 
 
 
 
  n
17,786
2,342
4,943
2,684
978
4,278
335
2,226
  male (%)
9,618 (54.1)
1,271 (54.3)
3,178 (64.3)
1,350 (50.3)
488 (49.9)
2,567 (60.0)
156 (46.6)
608 (27.3)
BMI, kg/m2
 
 
 
 
 
 
 
 
  n
16,271
2,306
4,645
2,310
867
3,603
317
2,223
  mean (SD)
27.9 (5.3)
25.1 (3.4)
26.2 (3.6)
25.3 (4.3)
28.8 (5.1)
31.1 (5.5)
30.4 (6.0)
31.6 (5.3)
Diabetes duration, yr
 
 
 
 
 
 
 
 
  n
17,653
2,297
4,938
2,635
973
4,251
335
2,224
  mean (SD)
10.3 (6.6)
9.4 (7.0)
8.4 (5.1)
10.5 (7.3)
14.2 (7.9)
12.4 (6.4)
14.6 (8.6)
9.2 (5.4)
Patients with microvascular complications
 
 
 
 
 
 
 
 
Age, yr
 
 
 
 
 
 
 
 
  n
34,518
5,399
8,103
5,582
2,386
9,602
710
2,736
  mean (SD)
56.9 (11.2)
57.9 (14.1)
54.8 (9.7)
59.0 (11.2)
60.9 (10.5)
54.6 (10.4)
61.0 (12.1)
59.8 (8.9)
Sex
 
 
 
 
 
 
 
 
  n
35,033
5,467
8,288
5,614
2,395
9,810
715
2,744
  male (%)
18,542 (52.9)
2,957 (54.1)
5,067 (61.1)
2,752 (49.0)
994 (41.5)
5,703 (58.1)
293 (41.0)
776 (28.3)
BMI, kg/m2
 
 
 
 
 
 
 
 
  n
31,894
5,364
7,644
4,946
2,154
8,361
686
2,739
  mean (SD)
27.6 (5.3)
24.7 (3.4)
26.1 (3.7)
25.0 (4.3)
28.4 (5.0)
30.9 (5.5)
29.4 (5.7)
31.2 (5.3)
Diabetes duration, yr
 
 
 
 
 
 
 
 
  n
34,666
5,371
8,281
5,514
2,379
9,667
712
2,742
  mean (SD)9.9 (6.4)8.4 (6.7)8.2 (4.9)10.4 (7.2)13.6 (7.3)11.2 (6.0)13.7 (8.3)8.9 (5.4)

Note: due to the observational nature of this study, not all baseline data were recorded.

BMI = body mass index.

Baseline patient characteristics by geographical region Note: due to the observational nature of this study, not all baseline data were recorded. BMI = body mass index.

Metabolic control and QoL by geographical region

Baseline HbA1c and FPG values were similarly high across the different regions and in patients with macrovascular complications or microvascular complications (Table 2). Mean baseline HbA1c values were ≥9.1% (≥76 mmol/mol) in patients with macrovascular complications across all regions and ≥9.4% (≥79 mmol/mol) across all regions in patients with microvascular complications. The baseline data for other measurements related to metabolic control and QoL are also displayed in Table 2.
Table 2

Baseline metabolic control and quality of life by geographical region

 AllChinaSouth AsiaEast AsiaNorth AfricaMiddle EastLatin AmericaRussia
Patients with macrovascular complications
 
 
 
 
 
 
 
 
HbA1c, %
 
 
 
 
 
 
 
 
  n
12,727
1,332
4,002
1,170
620
3,426
147
2,030
  mean (SD)
9.5 (1.7)
9.1 (2.1)
9.3 (1.2)
9.7 (2.0)
9.6 (1.8)
9.7 (1.7)
9.6 (2.4)
9.6 (1.7)
HbA1c, mmol/mol
 
 
 
 
 
 
 
 
  n
12,727
1,332
4,002
1,170
620
3,426
147
2,030
  mean (SD)
80.3 (18.6)
76.0 (23.0)
78.2 (13.1)
82.5 (21.9)
81.4 (19.7)
82.5 (18.6)
81.4 (26.2)
81.4 (18.6)
FPG before breakfast
 
 
 
 
 
 
 
 
  n
13,603
1,859
4,064
1,431
715
3,143
204
2,187
  mmol/l, mean (SD)
10.7 (3.3)
9.8 (3.6)
10.8 (2.8)
11.2 (4.2)
11.2 (4.2)
11.0 (3.3)
10.7 (4.2)
10.4 (2.6)
  mg/dl, mean (SD)
192.8 (59.6)
176.5 (64.0)
194.2 (50.5)
202.4 (74.9)
201.3 (75.7)
198.0 (60.1)
191.9 (76.5)
187.7 (46.9)
PPG after breakfast
 
 
 
 
 
 
 
 
  n
9,704
1,451
2,984
784
376
2,254
30
1,825
  mmol/l, mean (SD)
14.5 (4.3)
14.0 (4.7)
15.3 (3.7)
15.4 (4.9)
14.7 (5.2)
15.4 (4.4)
13.1 (5.9)
12.2 (3.1)
  mg/dl, mean (SD)
262.0 (77.0)
252.1 (85.4)
275.9 (65.9)
277.0 (87.6)
265.5 (94.0)
278.1 (78.9)
235.1 (105.6)
220.3 (55.6)
Total cholesterol, mmol/l
 
 
 
 
 
 
 
 
  n
7,176
851
466
744
378
2,530
136
2,071
  mean (SD)
5.5 (1.3)
5.1 (1.2)
5.2 (0.8)
5.3 (1.5)
4.6 (1.3)
5.4 (1.2)
5.6 (1.7)
6.1 (1.3)
Triglycerides, mmol/l
 
 
 
 
 
 
 
 
  n
6,732
844
703
637
402
2,524
116
1,506
  mean (SD)
2.1 (1.0)
2.0 (1.3)
2.2 (0.7)
2.0 (1.0)
1.6 (0.9)
2.3 (1.0)
2.4 (1.2)
2.1 (1.0)
Creatinine, μmol/l
 
 
 
 
 
 
 
 
  n
6,865
724
776
627
350
2,370
103
1,915
  mean (SD)
87.7 (32.9)
48.7 (43.6)
96.2 (30.3)
97.6 (35.1)
89.5 (29.6)
95.7 (29.4)
94.5 (28.6)
85.2 (19.5)
HDL-C, mmol/l
 
 
 
 
 
 
 
 
  n
5,602
777
714
539
255
2,283
98
936
  mean (SD)
1.1 (0.4)
1.2 (0.4)
1.0 (0.2)
1.2 (0.5)
1.1 (0.4)
1.0 (0.3)
1.0 (0.3)
1.4 (0.6)
LDL-C, mmol/l
 
 
 
 
 
 
 
 
  n
5,711
794
713
545
238
2,364
94
963
  mean (SD)
3.2 (1.1)
3.0 (1.0)
3.4 (1.0)
3.4 (1.3)
2.8 (1.4)
3.2 (1.0)
3.2 (1.1)
3.4 (1.2)
SBP, mmHg
 
 
 
 
 
 
 
 
  n
13,744
1,552
3,376
1,969
755
3,619
274
2,199
  mean (SD)
141.0 (19.5)
137.2 (18.3)
145.2 (21.0)
133.3 (18.7)
137.8 (20.0)
141.4 (18.9)
131.8 (16.5)
145.7 (16.5)
QoL*
 
 
 
 
 
 
 
 
  n
11,329
1,712
3,611
2,156
676
865
261
2,048
  mean (SD)
60.2 (16.5)
74.4 (13.9)
52.7 (10.6)
66.7 (15.7)
59.4 (17.8)
62.1 (14.9)
63.7 (17.8)
53.5 (16.9)
Patients with microvascular complications
 
 
 
 
 
 
 
 
HbA1c, %
 
 
 
 
 
 
 
 
  n
24,352
3,128
6,673
2,385
1,545
7,726
378
2,517
  mean (SD)
9.6 (1.7)
9.4 (2.3)
9.4 (1.3)
9.7 (2.0)
9.5 (1.8)
9.7 (1.7)
10.1 (2.2)
9.6 (1.7)
HbA1c, mmol/mol
 
 
 
 
 
 
 
 
  n
24,352
3,128
6,673
2,385
1,545
7,726
378
2,517
  mean (SD)
81.4 (18.6)
79.2 (25.1)
79.2 (14.2)
82.5 (21.9)
80.3 (19.7)
82.5 (18.6)
86.9 (24.0)
81.4 (18.6)
FPG before breakfast
 
 
 
 
 
 
 
 
  n
25,986
4,239
6,655
3,015
1,744
7,162
480
2,691
  mmol/l, mean (SD)
10.8 (3.5)
10.0 (3.5)
10.7 (3.0)
11.3 (4.2)
11.1 (4.1)
11.2 (3.5)
11.7 (4.6)
10.4 (2.7)
  mg/dl, mean (SD)
194.5 (62.9)
179.4 (63.6)
193.3 (54.3)
202.8 (75.5)
200.4 (74.5)
201.5 (62.4)
210.5 (83.3)
186.9 (47.7)
PPG after breakfast
 
 
 
 
 
 
 
 
  n
18,300
3,297
4,762
1,657
1,025
5,183
110
2,266
  mmol/l, mean (SD)
14.8 (4.5)
13.8 (4.8)
15.5 (3.9)
15.6 (5.0)
14.8 (4.7)
15.5 (4.4)
15.6 (6.0)
12.1 (3.0)
  mg/dl, mean (SD)
265.8 (80.3)
249.4 (86.7)
279.0 (69.7)
281.5 (89.3)
265.7 (84.6)
279.6 (80.1)
281.4 (107.3)
218.3 (54.9)
Total cholesterol, mmol/l
 
 
 
 
 
 
 
 
  n
13,795
2,005
812
1,509
993
5,590
334
2,552
  mean (SD)
5.4 (1.3)
5.1 (1.3)
5.1 (0.8)
5.3 (1.4)
4.7 (1.3)
5.3 (1.2)
5.8 (1.6)
6.0 (1.3)
Triglycerides, mmol/l
 
 
 
 
 
 
 
 
  n
13,356
1,970
1,371
1,257
1,030
5,572
290
1,866
  mean (SD)
2.1 (1.1)
2.1 (1.3)
2.1 (0.8)
2.0 (1.1)
1.6 (0.9)
2.2 (1.0)
2.5 (1.3)
2.1 (1.0)
Creatinine, μmol/l
 
 
 
 
 
 
 
 
  n
13,399
1,779
1,482
1,185
893
5,440
261
2,359
  mean (SD)
83.5 (32.7)
52.3 (42.3)
89.9 (27.9)
95.8 (37.9)
85.0 (28.2)
88.2 (28.6)
89.2 (26.4)
84.8 (19.1)
HDL-C, mmol/l
 
 
 
 
 
 
 
 
  n
11,472
1,823
1,398
1,083
678
5,067
234
1,189
  mean (SD)
1.1 (0.4)
1.2 (0.4)
1.0 (0.2)
1.2 (0.4)
1.1 (0.4)
1.1 (0.3)
1.0 (0.3)
1.4 (0.6)
LDL-C, mmol/l
 
 
 
 
 
 
 
 
  n
11,580
1,852
1,379
1,090
646
5,185
217
1,211
  mean (SD)
3.2 (1.1)
3.1 (1.1)
3.1 (0.9)
3.2 (1.2)
2.9 (1.4)
3.2 (1.0)
3.2 (1.1)
3.3 (1.1)
SBP, mmHg
 
 
 
 
 
 
 
 
  n
26,661
3,487
5,656
4,022
1,899
8,282
614
2,701
  mean (SD)
137.3 (18.7)
134.9 (17.5)
141.4 (21.0)
132.0 (17.9)
135.2 (18.8)
137.1 (17.4)
131.5 (17.2)
143.1 (16.8)
QoL*
 
 
 
 
 
 
 
 
  n
21,166
3,947
6,103
4,489
1,741
1,805
555
2,526
  mean (SD)62.3 (16.9)75.2 (13.8)52.8 (11.1)67.9 (16.0)61.1 (17.5)64.1 (15.5)64.8 (18.3)54.3 (17.0)

Note: due to the observational nature of this study, not all baseline data were recorded.

*EQ-5D™ (100 = best imaginable health; 0 = worst imaginable health) [20].

Baseline metabolic control and quality of life by geographical region Note: due to the observational nature of this study, not all baseline data were recorded. *EQ-5D™ (100 = best imaginable health; 0 = worst imaginable health) [20].

Complications by geographical region

There were 17,806 patients with reported macrovascular complications and 35,078 with microvascular complications (Table 3). Macrovascular complications were reported in 27% of participants overall, with Russia having the highest percentage (72%) and China the lowest (21%) (Table 3). Microvascular complications were reported in 37 to 89% of participants, with Russia having the highest percentage and South Asia the lowest. Neuropathy was the highest reported microvascular complication in all regions, ranging from 25% in South Asia to 83% in Russia.
Table 3

Baseline patient complications by geographical region

 AllChinaSouth AsiaEast AsiaNorth AfricaMiddle EastLatin AmericaRussia
Patients with macrovascular complications, n (%)
17,806 (27.2)
2,342 (21.3)
4,946 (23.3)
2,685 (26.8)
979 (24.2)
4,293 (28.7)
335 (29.4)
2,226 (72.4)
Patients with microvascular complications, n (%)
35,078 (53.5)
5,467 (49.6)
8,293 (39.0)
5,615 (56.0)
2,397 (59.4)
9,847 (65.8)
715 (62.8)
2,744 (89.3)
Renal disease, n (%)
18,271 (27.9)
2,455 (22.3)
4,321 (20.3)
2,845 (28.4)
1,077 (26.7)
6,108 (40.8)
376 (33.0)
1,089 (35.4)
Eye problems, n (%)
17,198 (26.3)
2,430 (22.1)
3,464 (16.3)
2,380 (23.7)
1,354 (33.5)
5,081 (33.9)
368 (32.3)
2,121 (69.0)
Foot ulcer, n (%)
3,538 (5.4)
274 (2.5)
1,046 (4.9)
536 (5.3)
147 (3.6)
1,289 (8.6)
85 (7.5)
161 (5.2)
Neuropathy, n (%)25,179 (38.4)3,671 (33.3)5,234 (24.6)3,706 (36.9)1,530 (37.9)7,995 (53.4)491 (43.1)2,552 (83.0)

Note: due to the observational nature of this study, not all baseline data were recorded.

Baseline patient complications by geographical region Note: due to the observational nature of this study, not all baseline data were recorded.

Regression analysis

The univariate logistical regression revealed that all correlates entered into both models were statistically significant (all p < 0.05). Subsequently, all correlates were entered into a stepwise multivariate logistical regression, and only statistically significant association remained in the models. After adjusting for regional differences, age, BMI, diabetes duration, TC, TG, LDL-C and SBP were positively correlated with macrovascular complications (all p < 0.05; Figure 1a). Female gender, HDL-C, FPG and HbA1c were negatively correlated with macrovascular complications (all p < 0.05; Figure 1a). Age, BMI, diabetes duration, HbA1c, LDL-C, creatinine, and SBP were positively correlated with microvascular complications (all p < 0.01; Figure 1b). HDL-C levels were negatively correlated with microvascular complications (p < 0.001; Figure 1b).
Figure 1

Complication predictor analysis. a) Macrovascular complications. b) Microvascular complications. OR = odds ratio; CI = confidence interval.

Complication predictor analysis. a) Macrovascular complications. b) Microvascular complications. OR = odds ratio; CI = confidence interval.

Use of vascular disease preventative drugs by geographical region

Among participants with macrovascular complications overall, 67% reported taking statins, while the proportion was 56% among participants with microvascular complications. For participants with macrovascular complications and those with microvascular complications, the highest statin use was in the Middle East (86% and 74%, respectively) and the lowest was in China (49% and 34%, respectively). Use of vascular disease preventative drugs was higher among participants with macrovascular complications (statins 67%, aspirin 79%, RAS blocker 78%) than those with microvascular complications (statins 56%, aspirin 64%, RAS blocker 63%) (Table 4).
Table 4

Use of vascular disease preventative drugs by geographical region

 AllChinaSouth AsiaEast AsiaNorth AfricaMiddle EastLatin AmericaRussia
Patients with macrovascular complications
 
 
 
 
 
 
 
 
RAS blocker, n (%)
13,910 (78.1)
1,303 (55.6)
3,771 (76.3)
1,992 (74.2)
778 (79.5)
3,719 (86.6)
285 (85.1)
2,062 (92.6)
Aspirin, n (%)
13,995 (78.6)
1,644 (70.2)
3,784 (76.6)
1,866 (69.5)
801 (81.8)
3,973 (92.5)
252 (75.2)
1,675 (75.2)
Statins, n (%)
11,958 (67.2)
1,139 (48.6)
3,057 (61.9)
1,846 (68.8)
715 (73.0)
3,710 (86.4)
189 (56.4)
1,302 (58.5)
Patients with microvascular complications
 
 
 
 
 
 
 
 
RAS blocker, n (%)
21,884 (62.6)
2,268 (41.5)
4,792 (58.5)
3,465 (61.7)
1,557 (65.0)
6,907 (70.1)
499 (69.8)
2,396 (87.3)
Aspirin, n (%)
22,207 (63.5)
2,704 (49.5)
4,958 (60.6)
2,698 (48.0)
1,598 (66.7)
7,922 (80.5)
427 (59.7)
1,900 (69.2)
Statins, n (%)19,709 (56.4)1,856 (33.9)4,325 (52.8)3,133 (55.8)1,288 (53.7)7,323 (74.4)312 (43.6)1,472 (53.6)

Note: due to the observational nature of this study, not all baseline data were recorded.

RAS = renin-angiotensin system.

Use of vascular disease preventative drugs by geographical region Note: due to the observational nature of this study, not all baseline data were recorded. RAS = renin-angiotensin system. In all regions, aspirin use was higher in participants with macrovascular complications than those with microvascular complications (Table 4). In addition, aspirin use was higher than statin use in all regions except East Asia, where usage levels of the two drugs were similar among participants with macrovascular complications, and statin use was higher than aspirin use among participants with microvascular complications (Table 4). A higher proportion of participants with macrovascular complications used a RAS blocker than those with microvascular complications in all regions apart from Russia, where usage was similar for the two groups. Russia also had the highest use of RAS blocker, both among participants with macrovascular complications (93%) and those with microvascular complications (87%). In contrast, use of RAS blocker was lowest in China for both participant groups (56% of participants with macrovascular complications and 42% of participants with microvascular complications).

Discussion

Baseline HbA1c was high across all geographical regions, and vascular complication rates were generally high. In addition, the use of vascular protective therapies, even in those patients with vascular complications, was sub-optimal. The particularly low reported use of vascular protective therapies in patients from China is commensurate with previous findings [21]. The findings suggest poor glycaemic control and suboptimal diabetes management across many geographical regions, which may be due to poor adherence to treatment regimens, lack of access to therapy, poor diet, and delay in initiating, or failure to adequately optimise, insulin therapy [12-14,16,22]. For example, significant numbers of people with diabetes have poor psychological well-being and these psychological problems can adversely affect adherence to treatment [22]. Some of the variation seen in the prevalence of complications in different geographical regions may have been due to variations in clinical care, healthcare resources, diagnostic criteria, and definitions used in routine clinical practice, among other reasons. In particular, the high rates of complications among participants from Russia may have been due to a variety of factors, such as late diagnoses of diabetes, late initiation of treatment, or lifestyle factors. Without large-scale epidemiological studies, it is difficult to ascertain the extent to which clinical practice may impact on the rate of complications in people with diabetes in Russia or other regions. Results of the correlation analysis revealed relationships between vascular complications and various disease characteristics. Age, BMI, diabetes duration, LDL-C, and SBP were positively associated with macrovascular and microvascular complications, while TC and TG were positively correlated with macrovascular complications and creatinine with microvascular complications. These findings are consistent with the large evidence base showing that the risk of developing these complications is positively associated with these variables [23-27]. The negative association between HDL-C values and macrovascular and microvascular complications would also be expected given the documented inverse relationship between blood levels of HDL-C and cardiovascular disease risk [28]. The profile of cholesterol levels is important in people with type 2 diabetes as it reflects atherogenic dyslipidaemia, which is characterised by small dense LDL-C, low HDL-C and high TG levels [29]. Regarding the result suggesting female gender was associated with a lower frequency of macrovascular complications, past research in this area has shown mixed results [30-32]. In contrast, the finding that HbA1c and FPG values were negatively associated with establishment of macrovascular complications was surprising. The correlation coefficient between HbA1c and FPG values was r = 0.44, and therefore, colineairty is not likely to have distorted the model and explain this finding. One possible explanation for this surprising result is the study design. The A1chieve study was a cross-sectional study and as such, the present baseline HbA1c and FPG values were used to predict the establishment of diabetes complications which had developed over the course of the disease. However, there may not be a clear association between the present value and the value several years prior to this. In addition, complications (especially macrovascular complications) usually take several years to develop in the presence of high HbA1c levels, and so an association would become apparent in a cohort study rather than a cross-sectional study. The temporal relationships between HbA1c levels and establishment of macrovascular and/or microvascular complications must be further established before fully understanding the power of current HbA1c levels to predict complications. Alternative explanations for this unusual finding could be the fact that the study population included a very heterogenous group ranging across four continents, leading to genetic variability, dietary variability and risk factor variability. Minimising these confounding factors may have provided a clearer picture of the relationships between the various disease parameters and vascular complications and this could be an area for future research. In addition, there were no specific or defined measurements of the macrovascular and microvascular complications reported in this study, and these were classified based on clinical judgement of the physicians. Other limitations of this observational study include potential bias and lack of a control group; however, an advantage of this observational study was that it had less stringent inclusion and exclusion criteria, allowing very large numbers of people to be assessed in many different geographical regions, something that is virtually impossible with randomised controlled trials.

Conclusions

Across all the geographical regions, patients showed poor glycaemic control at the point of commencing on insulin analogues, vascular complication rates were generally high, and use of vascular disease preventative therapies was generally sub-optimal. Many of the disease characteristics were statistically significantly associated with macrovascular and/or microvascular complications at baseline. These findings suggest that suboptimal diabetes therapy is contributing to the burden of type 2 diabetes worldwide. Closer adherence to diabetes guidelines, which may include earlier initiation and optimisation of insulin regimens (e.g., with insulin analogues in the A1chieve population), may reduce the prevalence of vascular complications, improve the lives of people with diabetes and reduce the burden on healthcare systems.

Consent

Participants gave written informed consent for the results of the study to be published in a scientific or medical journal.

Abbreviations

ADA: American Diabetes Association; BMI: Body mass index; CIs: 95% confidence intervals; EASD: European Association for the Study of Diabetes; EQ-5D: European questionnaire – 5 dimensions; FPG: Fasting plasma glucose; HbA1c: Glycated haemoglobin; HDL-C: High-density lipoprotein-cholesterol; IDF: International Diabetes Federation; LDL-C: Low-density lipoprotein-cholesterol; mg/dl: Milligram per decilitre; mm/Hg: Millimetres of mercury; mmol/l: Millimoles per litre; MI: Myocardial infarction; n: Number; OR: Odds ratio; OGLDs: Oral glucose-lowering drugs; P: Probability; PPG: Post-prandial plasma glucose; QoL: Quality of life; RAS: Renin-angiotensin system; SADRs: Serious adverse drug reactions; SD: Standard deviation; SBP: Systolic blood pressure; TC: Total cholesterol; TG: Triglycerides; UKPDS: United Kingdom Prospective Diabetes Study.

Competing interests

LL is a speaker and member of the Latin American Board of Eli Lilly, and the Argentinean Boards of Novo Nordisk, Novartis, Sanofi, BMS, and Astra Zeneca. He is also a principal investigator of clinical trials run by Eli Lilly, Novo Nordisk, and Astra Zeneca. SYG and her affiliated institution have received funding from Novo Nordisk and Sanofi for research, advisory and educational activities. ZH has received funding from Novo Nordisk, Eli Lilly and Sanofi for research, advisory and education activities. RM has participated in several advisory boards for Novo Nordisk and has participated in studies sponsored by Novo Nordisk. He has also participated in symposia run by Novo Nordisk, Sanofi, Eli Lilly, Merck, and Pfizer. VP is an employee of Novo Nordisk A/S. MEK is a principal investigator of a clinical trial in Iran run by Novo Nordisk A/S and also an observational study supported by Sanofi.

Authors’ contributions

LL, SYG, ZH, RM, VP and MEK were all involved in the interpretation of data, involved in drafting the manuscript or revising it critically for important intellectual content and have given final approval of the version of the manuscript to be published.
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