Literature DB >> 31695456

Prevalence and identification of type 1 diabetes in Chinese adults with newly diagnosed diabetes.

Xiaohan Tang1,2,3, Xiang Yan1,2,3, Houde Zhou1,3,4, Xilin Yang5, Xiaohong Niu6, Jing Liu7, Qiuhe Ji8, Linong Ji9, Xia Li1,2,3, Zhiguang Zhou1,2,3.   

Abstract

AIM: This study aimed to estimate the prevalence of latent autoimmune diabetes of adults (LADA) and classic type 1 diabetes mellitus (T1DM) in newly diagnosed adult diabetes in China.
METHOD: This cross-sectional study involved 17,349 newly diagnosed diabetes in adults aged ≥30 years from 46 hospitals within 31 months. Demographic characteristics, clinical features, and medical history were collected by trained researchers. T1DM as a whole was comprised of classic T1DM and LADA. Classic T1DM was identified based on the clinical phenotype of insulin-dependency, and LADA was differentiated from patients with initially an undefined diabetes type with standardized glutamic acid decarboxylase autoantibody testing at the core laboratory. The age and sex distributions from a large national survey of diabetes in China conducted in 2010 were used to standardize the prevalence of classic T1DM and LADA.
RESULTS: Among 17,349 adult patients, the prevalence of T1DM was 5.49% (95% CI: 4.90-6.08%) (5.14% [95% CI: 4.36-5.92%] in males and 6.16% [95% CI: 5.30-7.02%] in females), with 65% of these having LADA. The prevalence of classic T1DM decreased with increasing age (p<0.05), while that of LADA was stable (p>0.05). The prevalence of T1DM in overweight or obese patients was 3.42% (95% CI: 3.20-3.64%) and 2.42% (95% CI: 1.83-3.01%), respectively, and LADA accounted for 76.5% and 79.2% in these two groups.
CONCLUSION: We draw the conclusion that T1DM, especially LADA, was prevalent in newly diagnosed adult-onset diabetes in China, which highlights the importance of routine islet autoantibodies testing in clinical practice.
© 2019 Tang et al.

Entities:  

Keywords:  autoimmune; diabetes; differentiation; metabolism

Year:  2019        PMID: 31695456      PMCID: PMC6718056          DOI: 10.2147/DMSO.S202193

Source DB:  PubMed          Journal:  Diabetes Metab Syndr Obes        ISSN: 1178-7007            Impact factor:   3.168


Introduction

Type 1 diabetes mellitus (T1DM) occurs when autoimmune T cells specifically attack pancreatic β-cells, resulting in lifelong insulin-dependency. Although China remains among the countries with the lowest incidence of T1DM in the world, the incidence has witnessed a rapid increase in children (eg, from 0.51 per 10,0000 person years in the 1984–1994 period to 1.93 per 10,0000 person years in the 2010–2013 period).1,2 However, the rising number of adults affected by diabetes has also garnered recent attention. In this regard, The T1D China Project reported that about 65% of the new onset T1DM cases occurred in adults as opposed to children.2 It is worth noting that the aforementioned survey was confined to the classic T1DM subtype (insulin-dependent) patients and few studies have been conducted to date to estimate the prevalence of T1DM in adults, likely due to the difficulties associated with differentiation of classic T1DM, latent autoimmune diabetes of adults (LADA), and type 2 diabetes mellitus (T2DM), the latter of which is the most common type of diabetes diagnosed in adults. LADA is classified as a subtype of T1DM because of its autoimmune etiology, but it is more likely to affect adults and shares many clinical and immunogenetic characteristics with T2DM.3 Timely initiation of insulin therapy is essential to maintain good glycemic control and consequently, to reduce patients’ risk of micro- and macrovascular complications in LADA patients. Therefore, it is critically important to know the prevalence of T1DM and in particular, LADA in Chinese adults with newly diagnosed diabetes, to differentiate LADA from classic T1DM and to systematically investigate the determinants of LADA in China. To our knowledge, no such studies have been conducted to date. To address this, we carried out a nationwide, multicenter, and clinic-based study of adult-onset diabetes.

Materials and methods

Research setting and participants

In a cross-sectional study, a survey was administered enumerating patients ≥30 years of age with newly diagnosed diabetes. Tertiary care centers are the only institutions equipped with adequate instruments and staff to perform key tests such as islet autoantibodies and C-peptide, which are essential for the precise classification of diabetes; hence, we invited 46 tertiary care hospitals from 20 provincial administration areas and four cities directly under the administration of the central government to participate in this survey. The 46 participating hospitals were distributed across all of the seven geographic regions of China (4 Northeast, 8 North, 3 Northwest, 9 Central, 3 Southwest, 7 South, and 12 East) and thereby, represent the diversity in climates, cultures, and ethnicities of the Chinese population. The inclusion criteria were as follows: 1) diagnosis of diabetes at ≥30 years of age; 2) diabetes duration being <1 year; and 3) outpatients attending clinics within the department of endocrinology of the participating hospitals. The exclusion criteria were as follows: 1) being pregnant at the time of diagnosis of diabetes or having gestational diabetes mellitus (GDM) and 2) co-existing acute diseases that could influence the glucose metabolism, such as infectious diseases and acute myocardial infarction. From April 2015 to October 2017, research nurses consecutively recruited 18,153 eligible outpatients from the clinics of the 46 tertiary care hospitals with an overall response rate of 95.4%. After exclusion of 460 patients with missing age or sex, 142 patients who did not have a glutamic acid decarboxylase autoantibody (GADA) result, and 202 patients who were pregnant or diagnosed with GDM, the remaining 17,349 patients with diabetes were included in this analysis (Figure 1). The ethics review committee/institutional review board of each of the participating hospitals approved the study protocol. Written informed consent was obtained from all the participants before data collection.
Figure 1

Flow diagram and classification of 18,153 newly diagnosed patients with diabetes at 30 years of age or older in China.

Abbreviations: GDM, gestational diabetes mellitus; GADA, glutamic acid decarboxylase autoantibody; T1DM, type 1 diabetes mellitus; T2DM, type 2 diabetes mellitus; LADA, latent autoimmune diabetes of adults.

Flow diagram and classification of 18,153 newly diagnosed patients with diabetes at 30 years of age or older in China. Abbreviations: GDM, gestational diabetes mellitus; GADA, glutamic acid decarboxylase autoantibody; T1DM, type 1 diabetes mellitus; T2DM, type 2 diabetes mellitus; LADA, latent autoimmune diabetes of adults.

Classification of T1DM, T2DM, LADA, and other types of diabetes

The diagnosis of diabetes was based on the 1999 World Health Organization (WHO) criteria.4 Clinical characteristics and diabetes-related biochemical measurement results, including fasting and 2 hrs postprandial blood glucose and C-peptide, blood lipids, HbA1c, and GADA serum levels, were used to classify diabetes into T1DM, T2DM, and other specific types of diabetes. T1DM was further divided into classic T1DM and LADA. Classic T1DM was defined according to the classification of diabetes by the American Diabetes Association and WHO, as acute onset insulin-dependent diabetes due to pancreatic islet β-cell destruction and prone to ketoacidosis.4 Classic T1DM includes autoimmune type 1 (type 1A) diabetes and idiopathic (type 1B) diabetes determined according to the status of islet autoantibodies. LADA was defined as GADA positivity in patients with non-insulin requiring diabetes for at least the first six months. Autoimmune diabetes was considered as the combination of type 1A diabetes and LADA. Specific types of diabetes due to other causes (eg, monogenic diabetes, such as maturity-onset diabetes of the young), diseases of the exocrine pancreas (eg, cystic fibrosis), and drug- or chemical-induced diabetes (eg, in the treatment of HIV/AIDS or after organ transplantation) were collectively considered non-T1DM. This analysis classified diabetes as T1DM including classic T1DM and LADA, and non-T1DM.

Clinical measurements and data collection

Research nurses at each of the 46 participating hospitals participated in a series of training programs to standardize all procedures and methods of data collection. Patients self-reported demographic characteristics (ie, age, race, sex), clinical features, medical history, and lifestyle risk factors (ie, exercise habits, diet, smoking, alcohol consumption). Patient height, weight, waist circumference, hip circumference, and blood pressure (BP) were measured by research nurses using standard procedures. Drug use information was retrieved from medical notes. Completed questionnaires were checked by a second trained nurse for errors and missing values, and data were double-entered by a specially assigned staff member. The completed databases were uploaded onto a centralized database periodically.

Definitions of clinical and biochemical characteristics

Hyperglycemia, high BP, and dyslipidemia were defined using the ADA’s treatment targets (ie, HbA1c ≥7.0% (53 mmol/mol), BP ≥130/80 mmHg, low-density lipoprotein cholesterol (LDL-C) ≥2.6 mmol/L, triglycerides ≥1.7 mmol/L, and high-density lipoprotein cholesterol (HDL-C) <1.0 mmol/L in men and <1.3 mmol/L in women).5 Body mass index (BMI) was calculated as weight in kilograms divided by squared height in meters. Chinese Diabetes Association’s criteria were used to define obesity (BMI ≥28 kg/m2) and overweight (BMI ≥24–<28 kg/m2) as well as central obesity (waist circumference ≥90 cm in males and 85 cm in females).6 Metabolic syndrome was defined according to advised National Cholesterol Education Program-Adult Treatment Panal III criteria.7Preserved β-cell function is defined as fasting C-peptide >0.2 nmol/L or postprandial C-peptide>0.4 nmol/L. GADA titers of 18 U/mL or higher were defined as positive and confirmed by a repeated assay. North and South of China were divided by the line formed by the Huai River and Qinling Mountains. Intensive insulin is defined as long-acting insulin associated with short-acting insulin therapy, premixed insulin is defined as premixed insulin therapy, basal insulin is defined as long-acting insulin treatment including Neutral Protamine Hagedorn insulin therapy.

Laboratory assays

Serum glucose and C-peptide levels, as well as plasma HbA1c, were assayed at the study sites by standard methods. Serum samples for GADA assays were shipped with transportation on ice within 1 day. Serum samples were stored at −80°C before analysis. GADA was assayed from serum at the core laboratory (Central South University) by a standardized radioligand assay as previously reported.8 Intra- and inter-assay coefficients of variation were 8.9% and 11.2%, respectively. The sensitivity and specificity were 82% and 98%, respectively. The assay was validated by Islet Autoantibody Standardization Program 2012 sponsored by the Immunology of Diabetes Society.

Statistical analysis

Data were analyzed using the Statistical Analysis System Release 9.4, (SAS Institute, Cary, NC), unless specified. Q–Q plots were used to check the normality of all the continuous variables, which were expressed as mean (standard deviation, SD) or median (interquartile range) where appropriate. Log-transformation was performed if normal distribution was rejected. Categorical variables were expressed as percentages (number, n). Frequency differences were compared using Chi-square test. Differences among groups were compared using analysis of variance (ANOVA), and Dunnett’s test with LADA as the reference group was used to perform multiple comparisons. For analysis of categorical variables, z-test was used to compare differences between any two groups. General linear model was used to conduct ANOVA. Trend differences were compared using the Mantel-Haenszel Chi-square test. Sex differences were compared using logistic regression. We calculated the sex-specific prevalence of LADA, classic T1DM, and total T1DM by age groups and then, standardized the rates using the age and sex distributions of newly diagnosed diabetes in China in 2010 (Table S1).9 The generalized logit model was used to obtain odds ratios (OR) and their 95% confidence intervals (CIs) of clinical and biochemical factors for LADA and classic T1DM in a simultaneous manner. First, we performed univariable analysis to obtain unadjusted ORs of clinical and biochemical factors for LADA and classic T1DM. Then, we entered all the significant clinical and biochemical factors either for LADA or for classic T1DM in multivariable analysis to obtain the multivariable adjusted ORs. Because of the nature of a cross-sectional survey, our study could not be used to address the effect of drug treatments, but it may be adequate to adjust for confounding effects of certain drugs.10 Therefore, we included antihypertensive drugs, lipid-lowering drugs, insulin, alpha-glucosidase inhibitor, metformin, sulphonylurea, and glucagon-like peptide-1-based drugs in the multivariable analysis. A p-value <0.05 was considered to be statistically significant.
Table S1

Age and sex distribution of the population census data of the general population in China in 2010

Age, yearsMaleFemale
nn
30–3413594
35–39227181
40–44340299
45–49450384
50–54412396
55–59419472
60–64362391
65–69255259
≥70389467
Total number29892943

Results

Characteristics of surveyed patients

The mean age of the 17,349 patients was 52.6 (SD: ±11.5) years, and 10,342 (59.6%) of them were male. 2650 (15.3%) and 6687 (38.5%) of enrolled patients were obese or overweight, respectively. As expected, patients with LADA had older age, higher BMI, higher rates of overweight and obesity, higher waist circumference and higher rates of central obesity, higher BP and SBP/DBP ≥130/80 mmHg than those patients with classic T1DM while all these variables or rates were lower than those patients with non-T1DM (Table 1). As expected, patients with LADA were more likely to have good glycemic control and preserved β-cell function than T1DM while these variables were poorer than in those patients with non-T1DM. Lifestyle factors like diet treatment and physical activity were more frequent in non-T1DM and less frequent in classic T1DM than in LADA while current smoking was similar in three groups. Patients with LADA were more likely to use antihypertensive drugs, metformin, and sulfonylurea than patients with classic T1DM while these LADA patients were less likely to use intensive and basal insulin treatment (Table 1).
Table 1

Clinical characteristics of the study patients

nLADAClassic T1DMNon-T1DMp-Value
65835616,335
Age, years50.84±11.74†,‡45.44±11.23†52.82±11.47‡<0.0001
Age at diagnosis, years50.75±11.79†,‡45.34±11.28†52.82±11.47‡<0.0001
Male, %368(55.9)215(60.4)9759(59.7)0.141
BMI22.87±3.66†,‡21.38±3.47†24.80±3.49‡<0.0001
 Overweight175(27.8)†,‡54(16.2)†6458(41.3)‡<0.0001
 Obesity50(7.9) ‡14(4.2)2586(16.5)‡<0.0001
Waist circumference, cm83.64±11.11†,‡80.76±10.09†88.35±10.40‡<0.0001
Central obesity, %191(33.5)†,‡73(23.2)†7496(52.6)‡<0.0001
Family history of diabetes149(23.2)‡79(22.9)4414(28.1)‡<0.0001
Systolic BP123.86±15.89†,‡119.76±16.08†128.20±16.40‡<0.0001
Diastolic BP78.17±10.42†,‡75.56±11.11†80.29±10.48‡<0.0001
SBP/DBP≥130/80 mmHg233(37.4) ‡112(33.0)7651(49.9)‡<0.0001
LDL-C, mmol/L2.83±1.00†2.64±1.06†2.87±1.00<0.0001
LDL-C≥2.6 mmol/L349(56.1)†160(47.9)†9115(59.7)<0.0001
Triglyceride, mmol/L1.73±1.44‡1.54±1.362.25±1.69 ‡<0.0001
Triglyceride≥1.70 mmol/L206(33.2) ‡93(27.7)7810(51.3)‡<0.0001
HDL-C, mmol/L1.26±0.41‡1.24±0.421.18±0.38‡<0.0001
HDL-C≤1.0 mmol/L in male or ≤1.3 mmol in female277(44.7)‡141(42.2)7790(51.5)‡<0.0001
Abnormal lipid profile389(62.3)‡203(60.2)11,907(76.9)‡<0.0001
HbA1c, %10.09±2.94†,‡11.17±3.049.27±2.70<0.0001
HbA1c <7.0% (53 mmol/mol)103(16.5)†,‡36(10.5)3750(24.3)<0.0001
HbA1c ≥7.0% (53 mmol/mol)521(83.5)†,‡308(89.5)11,710(75.7)<0.0001
Fasting C-peptide, nmol/L0.37(0.19–0.60)†,‡0.09(0.03–0.18)0.57(0.37–0.82)<0.0001
Postprandial C-peptide, nmol/L0.80(0.39–1.62)†,‡0.16(0.05–0.34)1.46(0.90–2.28)<0.0001
Preserved β-cell function497(81.2)†,‡88(25.5)14,628(96.4)<0.0001
Metabolic syndrome280(64.2)†,‡117(51.3)10,260(85.5)<0.0001
Lifestyle
Current smoking191(29.8)116(33.6)4872(30.7)0.454
Current drinking87(13.7)57(16.6)2918(18.5)0.006
Diet treatment302(56.4)†,‡171(53.4)7174(61.2)0.002
Physical activity253(47.3)†,‡142(44.4)6075(51.8)0.005
Location of residence
South vs North440(66.9) vs 218(33.1)243(68.3) vs 113(31.7)11,120(68.1) vs 5215(31.9)0.806
Rural vs Urban115(24.2) vs 361(75.8)70(27.7) vs 183(72.3)2798(23.9) vs 8899(76.1)0.384
Use of medications
Antihypertensive drugs94(14.4)†,‡24(6.8)3594(22.1) <0.0001
Lipid lowering drugs42(6.4)28(7.9)1759(10.8)<0.0001
Insulin231(35.3)†,‡235(66.4)3457(21.2)<0.0001
 Intensive99(15.1)†,‡164(46.3)1100(6.8)<0.0001
 Premixed90(13.7)52(14.7)1293(7.9)‡<0.0001
 Basal148(22.6)†,‡191(54.0)2240(13.8)<0.0001
Metformin211(32.2)66(18.6)5313(32.7)<0.0001
Sulphonylurea89(13.6)17(4.8)2105(12.9)<0.0001
Alpha-glucosidase inhibitor143(21.8)61(17.2)2643(16.2)0.001
GLP-1 based drugs5(0.8)1(0.3)148(0.9)0.434

Notes: Data were presented as median and their interquartile ranges or means and standard deviations or % and their numbers where appropriate; Obesity is defined as BMI≥28.0 kg/m2 and overweight defined as BMI<28.0 kg/m2 but ≥24 kg/m2; Central obesity is defined as waist circumference ≥85 cm in female and 90 cm in male; Preserved β-cell function is defined as fasting C-peptide >0.2 nmol/L or postprandial C-peptide>0.4 nmol/L; Intensive insulin is defined as long-acting insulin associated with short-acting insulin therapy; Premixed insulin is defined as premixed insulin therapy; Basal insulin is defined as long-acting insulin treatment including Neutral Protamine Hagedorn (NPH) insulin therapy; p-values were derived from Kruskal–Wallis test (or Chi-square test) or analysis of variance; For analysis of continuous variables, Dennett’s test with LADA as the reference group was used to perform multiple comparisons with identical marks (†,‡) indicating statistically significant differences between two means. For analysis of categorical variables, z-test was used to compare differences between any two groups.

Abbreviations: LADA, latent autoimmune diabetes of adults; T1DM, type 1 diabetes mellitus; LDL-C, low-density lipoprotein cholesterol; HDL-C, high-density lipoprotein cholesterol; BP, blood pressure; TC, total cholesterol; GLP, glucagon-like peptide.

Clinical characteristics of the study patients Notes: Data were presented as median and their interquartile ranges or means and standard deviations or % and their numbers where appropriate; Obesity is defined as BMI≥28.0 kg/m2 and overweight defined as BMI<28.0 kg/m2 but ≥24 kg/m2; Central obesity is defined as waist circumference ≥85 cm in female and 90 cm in male; Preserved β-cell function is defined as fasting C-peptide >0.2 nmol/L or postprandial C-peptide>0.4 nmol/L; Intensive insulin is defined as long-acting insulin associated with short-acting insulin therapy; Premixed insulin is defined as premixed insulin therapy; Basal insulin is defined as long-acting insulin treatment including Neutral Protamine Hagedorn (NPH) insulin therapy; p-values were derived from Kruskal–Wallis test (or Chi-square test) or analysis of variance; For analysis of continuous variables, Dennett’s test with LADA as the reference group was used to perform multiple comparisons with identical marks (†,‡) indicating statistically significant differences between two means. For analysis of categorical variables, z-test was used to compare differences between any two groups. Abbreviations: LADA, latent autoimmune diabetes of adults; T1DM, type 1 diabetes mellitus; LDL-C, low-density lipoprotein cholesterol; HDL-C, high-density lipoprotein cholesterol; BP, blood pressure; TC, total cholesterol; GLP, glucagon-like peptide.

Distribution of diabetes types in newly diagnosed patients

The rates of classic T1DM tended to decrease with increased age in both sexes, from 7.10% in the 30–34 years group, to 4.13% in the 35–39 years group, to 2.04% in the 40–44 years group, and further to 1.33% in the ≥45 years group, while the rate of LADA was relatively stable in all age groups, from 4.90% in patients at 30–34 years of age to 3.72% in patients >70 years of age (Table 2).
Table 2

Age-standardized sex-specific prevalence of T1DM among those with newly diagnosed diabetes

Age, yMaleFemaleLADAClassic T1DMT1DM
MaleFemaleMaleFemaleMaleFemale
nnn(%)n(%)n(%)n(%)n(%)n(%)
30–3488529838(4.29)20(6.71)56(6.33)28(9.40)94(10.62)48(16.11)
35–39110639446(4.16)28(7.11)39(3.53)23(5.84)85(7.69)51(12.94)
40–44142957670(4.90)23(3.99)23(1.61)18(3.13)93(6.51)41(7.12)
45–49160795557(3.55)46(4.82)32(1.99)15(1.57)89(5.54)61(6.39)
50–541705144253(3.11)53(3.68)27(1.58)22(1.53)80(4.69)75(5.20)
55–591227107631(2.53)41(3.81)20(1.63)14(1.30)51(4.16)55(5.11)
60–641052105533(3.14)35(3.32)6(0.57)11(1.04)39(3.71)46(4.36)
65–6967565720(2.96)19(2.89)9(1.33)4(0.61)29(4.30)23(3.50)
≥7065655420(3.05)25(4.51)3(0.46)6(1.08)23(3.51)31(5.60)
p for trend0.00200.0019<0.0001<0.0001<0.0001<0.0001
Crude rate10,3427007368(3.56)290(4.14)215(2.08)141(2.01)583(5.64)431(6.15)
Standardized3.40(2.75–4.05)4.20(3.47–4.93)1.72(1.25–2.19)1.96(1.45–2.47)5.14(4.36–5.92)6.16(5.30–7.02)
p for sex difference0.00390.05200.0004

Notes: Data are expressed as n (%). Standardized prevalence was expressed as p (95% CI). p for trend was derived from the Mantel-Haenszel Chi-square test and p for sex difference was derived from logistic regression; †The prevalence was standardized to the patient population with newly diagnosed diabetes in China National Survey of Diabetes in 2010 and only those aged 30 years and above were included in the standardization, so the standardized prevalence was only for those aged 30 years and above.

Abbreviations: LADA, latent autoimmune diabetes in adults and including latent autoimmune diabetes in youth; T1DM, type 1 diabetes, including LADA and classic type 1 diabetes.

Age-standardized sex-specific prevalence of T1DM among those with newly diagnosed diabetes Notes: Data are expressed as n (%). Standardized prevalence was expressed as p (95% CI). p for trend was derived from the Mantel-Haenszel Chi-square test and p for sex difference was derived from logistic regression; †The prevalence was standardized to the patient population with newly diagnosed diabetes in China National Survey of Diabetes in 2010 and only those aged 30 years and above were included in the standardization, so the standardized prevalence was only for those aged 30 years and above. Abbreviations: LADA, latent autoimmune diabetes in adults and including latent autoimmune diabetes in youth; T1DM, type 1 diabetes, including LADA and classic type 1 diabetes. The age-standardized prevalence of classic T1DM was 1.72% (95% CI: 1.25%, 2.19%) in males, 1.96% (95% CI: 1.45%, 2.47%) in females (p=0.0520 for difference by sex), and 1.76% (95% CI: 1.43%, 2.09%) in both sexes combined. The age-standardized prevalence of LADA was 3.40% (95% CI: 2.75%, 4.05%) in males, 4.20% (95% CI: 3.47%, 4.93%) in females (p=0.0039 for difference by sex) and 3.72% (95% CI: 3.23%, 4.21%) in both sexes combined. Altogether, the age-standardized prevalence of T1DM was 5.14% (95% CI: 4.36%, 5.92%) in males, 6.16% (95% CI: 5.30%, 7.02%) in females (p=0.0004 for difference by sex) and 5.49% (95% CI: 4.90%, 6.08%) in both sexes (Table 2). Classic T1A, classic T1B and LADA accounted for 22.4% (n=227), 12.7% (n=129) and 64.9% (n=658) of the total T1DM cases, respectively. Etiologically, the proportion of autoimmunity-related cases in T1DM was 87.3%. In overweight or obese patients, the prevalence of total T1DM was 3.4% and 2.4%, respectively, with 76.5% and 79.2% of these having LADA, which was lower than that in normal BMI patients (Figure 2). The same tendency of a lower prevalence of T1DM in patients with higher C-peptide levels was also shown. (Figure 3).
Figure 2

Prevalence of total T1DM (A), LADA (B), Classic T1DM (C) among Chinese adults 30 years of age or older, according to BMI. The prevalence of total type 1 diabetes (A), LADA (B), Classic T1DM (C) among men, women, and both genders is shown, according to BMI. Total T1DM includes both classic T1DM and LADA. Bars indicate 95% confidence intervals.

Abbreviations: T1DM, type 1 diabetes mellitus; LADA, latent autoimmune diabetes of adults.

Figure 3

Prevalence of total T1DM (A), LADA (B), Classic T1DM (C) among Chinese adults 30 years of age or older, according to postprandial C-peptide level. The prevalence of total T1DM (A), LADA (B), Classic T1DM (C) among men, women, and both genders is shown, according to postprandial C-peptide level. Total T1DM includes both classic T1DM and LADA. Bars indicate 95% confidence intervals.

Abbreviations: T1DM, type 1 diabetes mellitus; LADA, latent autoimmune diabetes of adults.

Prevalence of total T1DM (A), LADA (B), Classic T1DM (C) among Chinese adults 30 years of age or older, according to BMI. The prevalence of total type 1 diabetes (A), LADA (B), Classic T1DM (C) among men, women, and both genders is shown, according to BMI. Total T1DM includes both classic T1DM and LADA. Bars indicate 95% confidence intervals. Abbreviations: T1DM, type 1 diabetes mellitus; LADA, latent autoimmune diabetes of adults. Prevalence of total T1DM (A), LADA (B), Classic T1DM (C) among Chinese adults 30 years of age or older, according to postprandial C-peptide level. The prevalence of total T1DM (A), LADA (B), Classic T1DM (C) among men, women, and both genders is shown, according to postprandial C-peptide level. Total T1DM includes both classic T1DM and LADA. Bars indicate 95% confidence intervals. Abbreviations: T1DM, type 1 diabetes mellitus; LADA, latent autoimmune diabetes of adults.

Determinants of classic T1DM and LADA

In univariable analyses, age, overweight/obesity, central obesity, family history of diabetes, BP, lipid analytes (LDL-C, HDL-C, and triglycerides), HbA1c, fasting C-peptide, postprandial C-peptide, current alcohol consumption, and use of medications were associated with LADA or classic T1DM (Table 3).
Table 3

Univariable odds ratio of clinical factors for LADA and classic type 1 diabetes in Chinese patients with newly diagnosed diabetes

LADAClassic T1DM
OR (95%CI)p-ValueOR (95%CI)p-Value
Age, years<0.0001*<0.0001*
 30–39 vs ≥501.60(1.31–1.97)4.80(3.76–6.13)
 40–49 vs ≥501.34(1.12–1.60)1.63(1.23–2.14)
Male vs female0.86(0.73–1.00)0.05071.03(0.83–1.27)0.8045
Education0.12940.2150
 Tertiary education1.17(0.94–1.45)1.23(0.93–1.63)
 Senior high school1.11(0.91–1.36)0.94(0.72–1.24)
 Junior high school or lower1.01.0
BMI<0.0001*<0.0001*
 Overweight0.45(0.38–0.54)0.21(0.15–0.28)
 Obesity0.32(0.24–0.43)0.12(0.07–0.21)
 Normal weight1.01.0
Central obesity0.45(0.38–0.54)<0.00010.27(0.21–0.35)<0.0001
Family history of diabetes0.76(0.64–0.93)0.00740.76(059–0.98)0.0353
BP <130/80 mmHg1.37(1.14–1.64)0.00092.70(1.99–3.66)<0.0001
LDL-C <2.6 mmol/L1.16(0.99–1.36)0.07251.60(1.29–1.99)<0.0001
TG <1.7 mmol/L2.13(1.80–2.53)<0.00012.78(2.19–3.54)<0.0001
HDL-C >1.0 mmol/L in male or 1.3 mmol/L in female1.32(1.12–1.55)0.00091.39(1.11–1.73)<0.0001
HbA1c <7.0% (53 mmol/mol)0.62(0.50–0.77)<0.00010.37(0.26–0.52)<0.0001
Fasting C-peptide<0.0001*<0.0001*
 Upper quartile0.21(0.16–0.27)0.01(0.00–0.02)
 Mid-high quartile0.29(0.23–0.37)0.02(0.01–0.04)
 Mid-low quartile0.42(0.35–0.52)0.04(0.02–0.06)
 Bottom quartile1.01.0
Postprandial C-peptide<0.0001*<0.0001*
 Upper quartile0.22(0.17–0.28)0.01(0.00–0.03)
 Mid-high quartile0.24(0.19–0.30)0.01(0.00–0.03)
 Mid-low quartile0.31(0.25–0.39)0.04(0.02–0.07)
 Bottom quartile1.01.0
Lifestyle
 Current smoking0.96(0.81–1.14)0.62621.14(0.91–1.43)0.2531
 Current drinking0.70(0.55–0.88)0.00200.88(0.66–1.17)0.3714
 Diet treatment1.08(0.93–1.27)0.31621.18(0.96–1.46)0.1221
 Physical activity1.06(0.90–1.24)0.51231.12(0.90–1.39)0.2979
Location of residence
 South vs North0.95(0.80–1.12)0.51571.01(0.81–1.26)0.9414
 Rural vs Urban1.01(0.82–1.26)0.90461.22(0.92–1.61)0.1679
Use of medicines
 Antihypertensive drugs0.59(0.47–0.74)<0.00010.26(0.17–0.39)<0.0001
 Lipid lowering drugs0.57(0.41–0.78)0.00040.71(0.48–1.05)0.0828
 Insulin2.19(1.75–2.75)<0.00016.83(5.43–8.59)<0.0001
 Alpha-glucosidase inhibitor1.44(1.19–1.74)0.00021.07(0.81–1.42)0.0618
 Metformin0.98(0.83–1.16)0.81490.47(0.36–0.62)<0.0001
 Sulphonylurea1.06(0.84–1.33)0.62650.34(0.21–0.55)<0.0001
 GLP-1 based drugs0.84(0.34–2.05)0.69870.31(0.04–2.21)0.2427

Note: *p for trend.

Abbreviations: LADA, latent autoimmune diabetes of adults; T1DM, type 1 diabetes mellitus; OR, odds ratio; GLP-1, glucagon-like peptide-1; Tertiary education is defined as college level or above.

Univariable odds ratio of clinical factors for LADA and classic type 1 diabetes in Chinese patients with newly diagnosed diabetes Note: *p for trend. Abbreviations: LADA, latent autoimmune diabetes of adults; T1DM, type 1 diabetes mellitus; OR, odds ratio; GLP-1, glucagon-like peptide-1; Tertiary education is defined as college level or above. In a multivariable analysis with all these factors included in the model (Table 4), young age was associated with increased risk of classic T1DM but to a lesser extent, was also associated with increased risk of LADA (ORs of 30–39, 40–49 years vs 50 and more years: 1.32, 95% CI: 1.02–1.71; 1.16, 0.93–1.44, p for trend=0.0219). In the same vein, overweight and obesity were associated with decreased risks of classic T1DM but to a lesser degree, tended to be associated with decreased risks of LADA (ORs of overweight and obesity vs normal weight: 0.74, 95% CI: 0.59–0.94; 0.66, 95% CI: 0.45–0.98, p for trend=0.0069). However, central obesity was not associated with decreased risks of LADA or classic T1DM. Alcohol use (OR: 0.75, 95% CI: 0.57–0.98) and family history of diabetes (OR: 0.80, 0.65–1.00) were associated with decreased risk of LADA but not with classic T1DM.
Table 4

Multivariable odds ratio of clinical factors for LADA and classic T1DM in Chinese patients with newly diagnosed diabetes

LADAClassic T1DM
OR (95%CI)p-ValueOR (95%CI)p-Value
Age, years0.0219*<0.0001*
 30–39 vs ≥501.32(1.02–1.71)3.51(2.53–4.89)
 40–49 vs ≥501.16(0.93–1.44)1.35(0.95–1.90)
BMI0.0069*0.0007*
 Overweight0.74(0.59–0.94)0.52(0.36–0.79)
 Obesity0.66(0.45–0.98)0.40(0.19–0.88)
 Normal weight1.01.0
Central obesity0.84(0.66–1.05)0.12391.10(0.76–1.60)0.6025
Family history of diabetes0.80(0.65–1.00)0.04630.74(0.54–1.03)0.0709
BP <130/80 mmHg1.32(1.09–1.60)0.00451.16(0.88–1.54)0.2849
LDL-C <2.6 mmol/L1.07(0.88–1.29)0.49781.35(1.02–1.78)0.0341
TG <1.7 mmol/L1.48(1.21–1.81)0.00021.26(0.92–1.73)0.1462
HDL-C >1.0 mmol/L in male or 1.3 mmol/L in female1.15(0.95–1.40)0.15550.94(0.70–1.25)0.6586
HbA1c <7.0% (53 mmol/mol)0.82(0.63–1.07)0.13751.09(0.70–1.71)0.6919
Fasting C-peptide0.0010*<0.0001*
 Upper quartile0.66(0.52–0.85)0.10(0.05–0.18)
 Mid-high quartile0.68(0.50–0.93)0.11(0.04–0.28)
 Mid-low quartile0.57(0.39–0.85)0.09(0.02–0.43)
 Bottom quartile1.01.0
Postprandial C-peptide<0.0001*<0.0001*
 Upper quartile0.42(0.32–0.54)0.13(0.08–0.23)
 Mid-high quartile0.38(0.28–0.52)0.03(0.01–0.13)
 Mid-low quartile0.45(0.31–0.66)0.09(0.02–0.35)
 Bottom quartile1.01.0
Lifestyle
 Current drinking0.75(0.57–0.98)0.03360.94(0.65–1.35)0.7187
Use of drugs
 Antihypertensive drugs0.91(0.70–1.19)0.49160.68(0.41–1.14)0.1432
 Lipid lowering drugs0.63(0.43–0.91)0.01310.90(0.54–1.53)0.7026
 Insulin1.79(1.38–2.32)<0.00013.60(2.65–4.89)<0.0001
 Alpha-glucosidase inhibitor1.41(1.13–1.76)0.00251.21(0.85–1.73)0.2933
 Metformin0.99(0.81–1.21)0.92850.58(0.41–0.83)0.0025
 Sulphonylurea1.12(0.86–1.47)0.40350.57(0.32–1.03)0.0613

Note: *p for trend.

Abbreviations: LADA, latent autoimmune diabetes of adults; T1DM, type 1 diabetes mellitus; OR, odds ratio; GLP-1, glucagon-like peptide-1.

Multivariable odds ratio of clinical factors for LADA and classic T1DM in Chinese patients with newly diagnosed diabetes Note: *p for trend. Abbreviations: LADA, latent autoimmune diabetes of adults; T1DM, type 1 diabetes mellitus; OR, odds ratio; GLP-1, glucagon-like peptide-1. LADA patients were more likely to achieve the BP target (1.32, 95% CI: 1.09–1.60), and the triglyceride target (1.48, 95% CI: 1.21–1.81). In contrast, classic T1DM patients were only more likely to achieve the LDL-C target, and the likelihood of reaching the targets for BP, triglycerides, HDL-C and HbA1c in classic T1DM were similar to non-T1DM patients.

Discussion

Our study is the first to assess the prevalence and proportion of LADA and classic T1DM in newly diagnosed adult diabetes in China. It had long been assumed that T1DM accounted for 5% of all four types of diabetes (ie, T1DM, T2DM, monogenic forms of diabetes, and GDM); although, solid data were not available. In this study in newly diagnosed diabetes in China, we found that the age-standardized prevalence of LADA in adults aged≥30 years to be as high as 3.40% in males and 4.20% in females with newly diagnosed diabetes in China, accounting for 65% of all adult-onset T1DM cases. In total, the prevalence of all T1DM in newly diagnosed adult diabetes was 5.8%. Although the prevalence of classic T1DM in patients older than 60 years old was lower than 1.0%, the total T1DM was still 4.1% due to the consistent prevalence of LADA across all age groups. Surprisingly, in overweight or obese patients, the prevalence of T1DM was 3.4% and 2.4%, respectively, but 76.5% or 79.2% of these subjects were characterized as having LADA, suggesting a more slowly progressive autoimmune process in older and obese patients. Several population-based studies have reported the rate of LADA in patients initially diagnosed as having T2DM. An early study from Japan reported that the prevalence of GADA in adults with apparent T2DM was 3.8%.11 Similarly, the prevalence of LADA was 4.4% in Korean and Italian populations.12,13 Diabetes Outcomes Progression Trial reported that GADA positivity was 4.2% in North America and 3.7% in Southern Europe among individuals with T2DM, whereas in Northern Europe, the prevalence of LADA in patients with T2DM was estimated to be 7–10%.14–17 A prevalence of LADA at 3.8% in newly diagnosed diabetes in our Chinese cohort is similar to the rates reported in Eastern Asian populations and also consistent with higher rates in European and North American populations, although European and North American countries have a much higher rate of T1DM than in China.18 Our previous LADA-China study reported the rate of LADA to be 5.9% in a small sample of 4880 subjects with T2DM.8 In the large sample reported herein covering both T1DM and T2DM, our survey has updated the prevalence of LADA among all newly diagnosed diabetes cases and among T1DM cases in the adult population in China. LADA is classified as slowly progressive T1DM in pathogenesis and differential diagnosis from T2DM is usually relied on GADA testing instead of on clinical features. Our study found that younger age and non-obesity were associated with increased risk of LADA. Our findings are inconsistent with those of other studies that older age and overweight/obesity were associated with a higher risk of LADA but this could be due to differences in the underlying research question.19,20 Indeed, other studies sought to identify LADA from the general population while our objective was to identify LADA from newly diagnosed diabetes, which is more relevant to clinical practice. Interestingly, alcohol consumption was associated with a lower risk of LADA but not associated with classic T1DM, and family history of diabetes was associated with a lower risk of LADA, the latter suggesting that the genetic predisposition of LADA may be weaker than T2DM. However, LADA patients had similar odds of achieving good glycemic control as compared to non-T1DM, presumably due to their increased likelihood of using insulin. Our study showed that LADA, classic T1DM, and T2DM shared many clinical characteristics, which pose an even greater challenge for clinicians to distinguish the three conditions. Indeed, in our surveyed patients, those with LADA had a similar likelihood of using oral antidiabetic medications such as metformin and sulfonylurea, suggesting that they were likely to be treated as if they had T2DM. In this regard, few studies have shown that LADA patients on insulin treatment could benefit from the use of metformin and sulphonylurea.21–23 It has been established that the potential best therapeutic option for LADA patients should aim not only to obtain good metabolic control but also, to allow better preservation of residual β-cell function. Identification of LADA in newly diagnosed diabetes is a critically important step to preserve the β-cell function of patients with LADA. However, universal testing of antibodies for LADA in T2DM remains a debatable question that depends on the effectiveness and cost-effectiveness of early initiation of LADA treatment regimen. In this regard, Fourlanos et al, developed a screening tool for LADA using common clinical parameters.24 Indeed, instead of universal testing of autoantibody, a two-step procedure, ie, universal screening plus antibody testing, may be a more cost-effective practice although its effectiveness and cost-effectiveness need further studies. Our study had limitations. First, this survey was not a random-sampling survey although we had made great efforts to recruit patients from extensive geographic locations in China. To minimize over- or under-estimation of the prevalence of LADA, we used a representative sample of Chinese adults with newly diagnosed diabetes to standardize these rates.9 Second, some socio-economic indicators such as income and wealth were not collected in our survey. Third, this analysis only reported data of those patients aged ≥30 years; however, this is the most relevant population for the current study with the adolescent onset of T2DM being rare in the Chinese population. We know there is a challenge to deal with the issue of “true LADA” and “false or low GADA titer patients “. In one way, the false-positive rate is likely very low given the high specificity of the assay and the enrichment of the cohort by selecting patients with non-insulin requiring adult-onset diabetes; in the other, we did the GADA titer distribution analysis in all age groups, and tried to figure out whether there was a constant level across all ages. It looked like that percentage is about 1% and if we defined “true LADA” strictly and removed those with low GADA titer, the prevalence of total T1DM would be 4.27%, with 58% of them belonged to LADA (Table S2).
Table S2

Age-standardized sex-specific prevalence of LADA and type 1 diabetes after removal of low GADA titer LADA patients

Age, yearsMaleFemaleLADA after removal of low GADA titer patientsTotal T1DM (defined as Classic T1DM and LADA after removal of low GADA titer patients
MaleFemaleMaleFemale
nnn (%)n (%)n (%)n (%)
30–3488529830 (3.39)14 (4.7)86 (9.72)42 (14.09)
35–39110639430 (2.71)19 (4.82)69 (6.24)42 (10.66)
40–44142957652 (3.64)14 (2.43)75 (5.25)32 (5.56)
45–49160795540 (2.49)30 (3.14)72 (4.48)45 (4.71)
50–541705144237 (2.17)36 (2.5)64 (3.75)58 (4.02)
55–591227107621 (1.71)27 (2.51)41 (3.34)41 (3.81)
60–641052105523 (2.19)19 (1.8)29 (2.76)30 (2.84)
65–696756578 (1.19)12 (1.83)17 (2.52)16 (2.44)
≥7065655412 (1.83)20 (3.61)15 (2.29)26 (4.69)
Crude rate10,3427007253 (2.45)191 (2.73)468 (4.53)332 (4.74)
Standardized†2.29 (1.75-2.83)2.82 (2.22–3.42)4.02 (3.32–4.72)4.77 (4.00–5.54)

Notes: Data are expressed as n (%). Standardized prevalence was expressed as p (95% CI). By analyzing the GADA titer distribution in all age groups, we defined the Low GADA titer as lower than 80 U/mL and removed this part of LADA for possible false-positive rate.

Abbreviations: LADA, latent autoimmune diabetes of adults; GADA, glutamic acid decarboxylase autoantibody; T1DM, type 1 diabetes mellitus.

Our findings have important clinical and public health implications. It is estimated that diabetes affected 113.9 million Chinese adults, with 79.6 million being newly diagnosed diabetes.9 If our rates of LADA and classic T1DM in newly diagnosed diabetes are also applicable to other newly diagnosed diabetes in China, it can be estimated that China had 4.3 million adults with LADA and 2.4 million with classic T1DM, that is there are 6.7 million patients with T1DM in total. Presumably, a majority of LADA patients are treated as though they have T2DM. If these patients were identified to have LADA and proper treatments were in place, their blood glucose regulation would be maintained and clinical comorbidities, such as microvascular and macrovascular complications, would be greatly reduced. Considering the large population of LADA in newly diagnosed diabetes in China, further studies are warranted to test the effectiveness and cost-effectiveness of universal screening and early initiation of insulin therapy needs further studies.

Supplementary materials

Age and sex distribution of the population census data of the general population in China in 2010 Age-standardized sex-specific prevalence of LADA and type 1 diabetes after removal of low GADA titer LADA patients Notes: Data are expressed as n (%). Standardized prevalence was expressed as p (95% CI). By analyzing the GADA titer distribution in all age groups, we defined the Low GADA titer as lower than 80 U/mL and removed this part of LADA for possible false-positive rate. Abbreviations: LADA, latent autoimmune diabetes of adults; GADA, glutamic acid decarboxylase autoantibody; T1DM, type 1 diabetes mellitus.
  22 in total

1.  Third Report of the National Cholesterol Education Program (NCEP) Expert Panel on Detection, Evaluation, and Treatment of High Blood Cholesterol in Adults (Adult Treatment Panel III) final report.

Authors: 
Journal:  Circulation       Date:  2002-12-17       Impact factor: 29.690

2.  Dyslipidemia management in adults with diabetes.

Authors:  Steven M Haffner
Journal:  Diabetes Care       Date:  2004-01       Impact factor: 19.112

3.  LADA prevalence estimation and insulin dependency during follow-up.

Authors:  Yongsoo Park; Sangmo Hong; Leejin Park; Jungtaek Woo; Sehyun Baik; Munsuk Nam; Kwanwoo Lee; Youngseol Kim
Journal:  Diabetes Metab Res Rev       Date:  2011-11       Impact factor: 4.876

Review 4.  Is latent autoimmune diabetes in adults distinct from type 1 diabetes or just type 1 diabetes at an older age?

Authors:  Jerry P Palmer; Christiane S Hampe; Harvey Chiu; Amit Goel; Barbara M Brooks-Worrell
Journal:  Diabetes       Date:  2005-12       Impact factor: 9.461

Review 5.  Latent autoimmune diabetes in the adults (LADA) in Asia: from pathogenesis and epidemiology to therapy.

Authors:  Chiara Guglielmi; Andrea Palermo; Paolo Pozzilli
Journal:  Diabetes Metab Res Rev       Date:  2012-12       Impact factor: 4.876

6.  LADA and CARDS: a prospective study of clinical outcome in established adult-onset autoimmune diabetes.

Authors:  Mohammed Iqbal Hawa; Ana Paula Buchan; Thomas Ola; Chuan Chuan Wun; David A DeMicco; Weihang Bao; D John Betteridge; Paul N Durrington; John H Fuller; H Andrew W Neil; Helen Colhoun; Richard David Leslie; Graham A Hitman
Journal:  Diabetes Care       Date:  2014-04-10       Impact factor: 19.112

7.  Metformin as an adjunct therapy in adolescents with type 1 diabetes and insulin resistance: a randomized controlled trial.

Authors:  Jill Hamilton; Elizabeth Cummings; Vera Zdravkovic; Diane Finegood; Denis Daneman
Journal:  Diabetes Care       Date:  2003-01       Impact factor: 19.112

8.  Incidence of type 1 diabetes in China, 2010-13: population based study.

Authors:  Jianping Weng; Zhiguang Zhou; Lixin Guo; Dalong Zhu; Linong Ji; Xiaoping Luo; Yiming Mu; Weiping Jia
Journal:  BMJ       Date:  2018-01-03

9.  Frequency, immunogenetics, and clinical characteristics of latent autoimmune diabetes in China (LADA China study): a nationwide, multicenter, clinic-based cross-sectional study.

Authors:  Zhiguang Zhou; Yufei Xiang; Linong Ji; Weiping Jia; Guang Ning; Gan Huang; Lin Yang; Jian Lin; Zhenqi Liu; William A Hagopian; R David Leslie
Journal:  Diabetes       Date:  2012-10-18       Impact factor: 9.461

10.  Overweight, obesity and the risk of LADA: results from a Swedish case-control study and the Norwegian HUNT Study.

Authors:  Rebecka Hjort; Emma Ahlqvist; Per-Ola Carlsson; Valdemar Grill; Leif Groop; Mats Martinell; Bahareh Rasouli; Anders Rosengren; Tiinamaija Tuomi; Bjørn Olav Åsvold; Sofia Carlsson
Journal:  Diabetologia       Date:  2018-03-27       Impact factor: 10.122

View more
  7 in total

1.  Islet autoantibody positivity in an adult population with recently diagnosed diabetes in Uganda.

Authors:  Davis Kibirige; Isaac Sekitoleko; Priscilla Balungi; Jacqueline Kyosiimire-Lugemwa; William Lumu; Angus G Jones; Andrew T Hattersley; Liam Smeeth; Moffat J Nyirenda
Journal:  PLoS One       Date:  2022-05-23       Impact factor: 3.752

2.  Association Between Snoring and Diabetes Among Pre- and Postmenopausal Women.

Authors:  Yun Yuan; Fan Zhang; Jingfu Qiu; Liling Chen; Meng Xiao; Wenge Tang; Qinwen Luo; Xianbin Ding; Xiaojun Tang
Journal:  Int J Gen Med       Date:  2022-03-04

3.  GAD65 Antibody Epitopes and Genetic Background in Latent Autoimmune Diabetes in Youth (LADY).

Authors:  Yiman Peng; Xia Li; Yufei Xiang; Xiang Yan; Houde Zhou; Xiaohan Tang; Jin Cheng; Xiaohong Niu; Jing Liu; Qiuhe Ji; Linong Ji; Gan Huang; Zhiguang Zhou
Journal:  Front Immunol       Date:  2022-03-09       Impact factor: 7.561

Review 4.  Latent autoimmune diabetes in adults: a focus on β-cell protection and therapy.

Authors:  Wenfeng Yin; Shuoming Luo; Zilin Xiao; Ziwei Zhang; Bingwen Liu; Zhiguang Zhou
Journal:  Front Endocrinol (Lausanne)       Date:  2022-08-05       Impact factor: 6.055

5.  Thyroid autoantibody distribution in patients with latent autoimmune diabetes in youth: a multicenter, national survey.

Authors:  Xixi Nan; Xia Li; Yufei Xiang; Xiang Yan; Houde Zhou; Xiaohan Tang; Jin Cheng; Xiaohong Niu; Jing Liu; Qiuhe Ji; Linong Ji; Gan Huang; Zhiguang Zhou
Journal:  Ann Transl Med       Date:  2022-08

Review 6.  Latent autoimmune diabetes in adults in China.

Authors:  Junlin Qiu; Zilin Xiao; Ziwei Zhang; Shuoming Luo; Zhiguang Zhou
Journal:  Front Immunol       Date:  2022-08-25       Impact factor: 8.786

7.  Fasting plasma glucose and glucose fluctuation are associated with COVID-19 prognosis regardless of pre-existing diabetes.

Authors:  Weijia Xie; Na Wu; Bin Wang; Yu Xu; Yao Zhang; Ying Xiang; Wenjing Zhang; Zheng Chen; Zhiquan Yuan; Chengying Li; Xiaoyue Jia; Yifan Shan; Bin Xu; Li Bai; Li Zhong; Yafei Li
Journal:  Diabetes Res Clin Pract       Date:  2021-09-06       Impact factor: 5.602

  7 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.