Literature DB >> 31958307

Glucose time in range and peripheral neuropathy in type 2 diabetes mellitus and chronic kidney disease.

Laura Mayeda1, Ronit Katz2, Iram Ahmad3, Nisha Bansal2, Zona Batacchi4, Irl B Hirsch4, Nicole Robinson2, Dace L Trence4, Leila Zelnick2, Ian H de Boer2,5.   

Abstract


OBJECTIVE: Compared with hemoglobin A1c (HbA1c), continuous glucose monitoring (CGM) may better capture risk of diabetes complications in patients with chronic kidney disease (CKD), including diabetic peripheral neuropathy (DPN). We hypothesized that glucose time in range (TIR), measured by CGM, is associated with DPN symptoms among participants with type 2 diabetes mellitus (type 2 DM) and moderate-to-severe CKD. ​RESEARCH DESIGN AND METHODS: We enrolled 105 people with type 2 DM treated with insulin or sulfonylurea, 81 participants with CKD (estimated glomerular filtration rate (eGFR) <60 mL/min/1.73 m2) and 24 matched control participants with eGFR ≥60 mL/min/1.73 m2. Each participant wore a CGM for two 6-day periods. Calculated glycemic measures included TIR (glucose 70-180 mg/dL) and glucose management indicator (GMI). DPN symptoms were assessed using the Michigan Neuropathy Screening Instrument (MNSI) questionnaire, with a positive MNSI score defined as ≥2 symptoms. ​
RESULTS: Participants with CKD had a mean age of 68 years, diabetes duration 20 years, eGFR 38 mL/min/1.73 m2 and HbA1c 7.8%, 61 mmol/mol. Sixty-two participants reported ≥2 DPN symptoms, 51 (63%) with CKD and 11 (46%) controls. Less TIR and higher GMI were associated with higher risk of MNSI questionnaire score ≥2 (OR 1.25 (95% CI 1.02 to 1.52) per 10% lower TIR, and OR 1.79 (95% CI 1.05 to 3.04) per 1% higher GMI, adjusting for age, gender and race). Similar results were observed when analyses were restricted to participants with CKD. In contrast, there was no significant association of HbA1c with DPN symptoms. ​
CONCLUSIONS: Symptoms of DPN were common among participants with long-standing type 2 DM and CKD. Lower TIR and higher GMI were associated with DPN symptoms. © Author(s) (or their employer(s)) 2020. Re-use permitted under CC BY-NC. No commercial re-use. See rights and permissions. Published by BMJ.

Entities:  

Keywords:  diabetes; diabetic foot; glucose monitoring; nephropathy; neuropathy

Mesh:

Substances:

Year:  2020        PMID: 31958307      PMCID: PMC7039577          DOI: 10.1136/bmjdrc-2019-000991

Source DB:  PubMed          Journal:  BMJ Open Diabetes Res Care        ISSN: 2052-4897


For type 2 diabetes mellitus (type 2 DM), the role of glycemia in the development of diabetic peripheral neuropathy is not entirely understood. Hemoglobin A1c (HbA1c) is a fairly crude marker of glycemia, particularly in patients with chronic kidney disease, and continuous glucose monitor is a powerful tool in the therapeutic management of diabetes. We demonstrate that less time in range and higher glucose management indicator were significantly associated with the prevalence of diabetic peripheral neuropathy. Laboratory value HbA1c was not found to be associated with peripheral neuropathy. Our data suggest that CGM metrics may provide clinicians and researchers especially valuable information for evaluating risk of diabetes complications.

Introduction

Diabetic peripheral neuropathy (DPN) is the most common complication of diabetes and leads to physical disability, with profound effect on quality of life, morbidity and mortality.1–4 In particular, DPN contributes to diabetic foot ulcers, lower extremity amputations and infection. Diabetes complications tend to coexist, but surprisingly little has been published regarding the relationship between chronic kidney disease (CKD) and DPN, and existing data do not demonstrate a clear association. This is in contrast to diabetic retinopathy, for which there is a clear relationship with CKD, particularly type 1 diabetes mellitus (type 1 DM) and in type 2 diabetes mellitus (type 2 DM).5 6 Patients with CKD are at high risk of diabetic foot disease, and lower extremity amputation is two to six times greater among those with CKD and diabetes than diabetes alone.7 8 These risks may plausibly be explained in part by coexisting DPN. Hyperglycemia is a known risk factor for the development and progression of both DPN and CKD.9–12 Improved glycemic control has been shown to dramatically reduce the risk of DPN in people with type 1 DM but only modestly reduce the incidence of DPN in type 2 DM.13–15 This discrepancy highlights that for type 2 DM, the role of glycemia in the development of DPN is not entirely understood. Compared with hemoglobin A1c (HbA1c), continuous glucose monitoring (CGM) may better capture risk of complications, including DPN, through precisely measured time in range (TIR), glucose management indicator (GMI) and measures of glucose variability. TIR has been found to be strongly associated with the development or progression of diabetic retinopathy and microalbuminuria in type 1 and type 2 DM.16 17 However, more data are needed to evaluate the relationship of TIR with microvascular diabetes outcomes, and no prior studies have identified an association of TIR or GMI with DPN.18 We aimed to 1) describe the prevalence of DPN symptoms among participants with type 2 DM and moderate-to-severe CKD and 2) examine the association of glycemia (as measured by CGM) with DPN symptoms among our target population.

Methods

Study population and design

The Continuous Glucose Monitoring to Assess Glycemia in Chronic Kidney Disease (CANDY) study was a prospective observational cohort study designed to examine hyperglycemia, glycemic variability and biomarkers of glycemic control among people with type 2 DM and CKD.19 Participants with type 2 DM were enrolled between 7 August 2015 and 12 July 2017 from Nephrology clinics, the Diabetes Care Center and referring clinics associated with the University of Washington, Seattle, Washington, USA. We recruited 81 participants with moderate-to-severe CKD (estimated glomerular filtration rate (eGFR) <60 mL/min/1.73 m2). We then recruited 24 control participants (with eGFR ≥60 mL/min/1.73 m2) from the same source population, matching on the characteristics of age, duration of diabetes, HbA1c and glucose-lowering medication use of participants with CKD. Because a primary objective of the CANDY study was to evaluate incidence of hypoglycemia in this population, eligible participants were treated with a sulfonylurea and/or insulin as their diabetes medication regimen. Exclusion criteria were age <18 years, history of kidney transplant, dialysis treatment, treatment with erythropoietin, current use of clinical CGM, pregnancy or current therapy for cancer and inability to speak English. Of the 149 consented participants, 105 completed the study. Nine participants were found to meet exclusion criteria after consent obtained, 13 declined to participate and 17 were lost to follow-up. One participant completed the study, but the data from the CGM were insufficient for analysis.

Continuous glucose monitoring

The Medtronic Enlite sensor (Medtronic, Northridge, California, USA) was used to monitor glycemia for two 6-day periods, separated by 2 weeks. With this sensor, interstitial glucose levels were recorded every 5 min, with a detection range of 40–400 mg/dL. Each participant was also provided with a Freestyle Lite glucose meter (Abbott, Alameda, California, USA) for self-monitored blood glucose at least twice a day to calibrate the CGM. Study physicians evaluated each CGM report, excluding periods of time with evidence of CGM malfunction or marked dyssynchrony (>30%) between CGM and fingerstick glucose values. Glycemia metrics evaluated included measurements of overall glycemia and glucose variability over the 12-day period. TIR, glucose 70–180 mg/dL, was computed by calculating the percentage of CGM glucose readings in target range.20 Time above range (TAR, glucose >180 mg/dL) was calculated in a similar manner. GMI, which is the estimation of HbA1c based on CGM data, was calculated based on mean CGM glucose over the 12 days using the previously published equation.20 21 Per cent coefficient of variation was calculated as the SD divided by mean multiplied by 100 of all CGM glucose concentrations measured every 5 min over 12 days.

Assessment of peripheral neuropathy symptoms

At the first study visit, participants were given the Michigan Neuropathy Screening Instrument (MNSI) questionnaire to assess symptoms of peripheral neuropathy. The MNSI questionnaire has been validated to assess distal DPN compared with gold standard diagnostic testing and has been widely used in large clinical trials, including Diabetes Control and Complications Trial (DCCT)/Epidemiology of Diabetes Interventions and Complications (EDIC), Action to Control Cardiovascular Risk in Diabetes (ACCORD) and Bypass Angioplasty Revascularization Investigation 2 Diabetes (BARI-2D).12 14 15 22 A MNSI total score was calculated using the published scoring algorithm, assigning one point for 12 of the 14 questions in the questionnaire. The algorithm excludes questions 4 (cramping) and 10 (weakness) from the total score, as question 4 is in part a measure of impaired circulation, and question 10 is in part a measure of general asthenia.22 MNSI questionnaire score ≥2 was our primary outcome definition for DPN because it was also used in the ACCORD and BARI-2D studies.14 15 Secondary outcomes included MNSI questionnaire ≥4, which represents more advanced disease and was used in DCCT/EDIC,13 and a composite outcome of MNSI questionnaire score ≥2 or reported use of neuropathy medications, to include participants with DPN who are no longer symptomatic due to treatment.23

Clinical data

Race, ethnicity, education, general health, smoking and medical history were defined by self-report. Medications were inventoried with assistance from electronic health records. Serum creatinine was measured at two separate study visits (2 weeks apart) using methods traceable to isotope dilution mass spectrometry, and eGFR was calculated from serum creatinine using the Chronic Kidney Disease Epidemiology Collaboration (CKD-EPI) equation. The mean of the two eGFR values was used for analyses. HbA1c was measured by HPLC at the University of Missouri, conforming to National Glycohemoglobin Standardization Program (NGSP) standards, from whole blood collected at the end of each CGM period; the mean of the two values was used for analyses.

Statistical analysis

Linear regression with robust Huber-White SEs was used to test differences in MNSI score by CKD status, adjusting for age, sex and race. Logistic regression was used to test differences in the prevalence of DPN by CKD status, TIR, GMI and other glycemia metrics and clinical characteristics. In analyses that were considered secondary because they may overly adjust for causal intermediates, differences in DPN were additionally adjusted for HbA1c or neuropathy meds. All analyses were performed using SPSS statistical software (IBM, Released 2017, IBM SPSS Statistics for Windows, V.25.0. Armonk, New York, USA). A two-tailed p value <0.05 was taken as evidence of statistical significance in all analyses.

Results

Participant characteristics

The 81 participants with CKD had a mean age of 68 years, diabetes duration 20 years, body mass index 33.8 kg/m2, eGFR 38 mL/min/1.73 m2 and HbA1c 7.8%; 74% were white, 89% used insulin (table 1). In comparison, the 24 control participants had overlapping but slightly lower distributions of age and duration of diabetes and a similar distribution of glucose-lowering medication use (by design). History of myocardial infarction (MI), congestive heart failure (CHF) and stroke was reported in 16%, 22% and 15% of participants with CKD, respectively, and 4% of participants without CKD for each, MI, CHF and stroke. Statin use was reported in 93% of participants with CKD and 83% of control participants. Twenty-four per cent of individuals reported use of neuropathic medications. Gabapentin was the most commonly reported neuropathic medication, with 22% of CKD and 17% of controls reporting use. Duloxetine or venlafaxine were reported in 5% of participants with CKD and 4% of controls.
Table 1

Baseline demographic and clinical characteristics of participants

CKDControls
(n=81)(n=24)
Demographics
Age (years)68 (10)64 (10)
Male52 (64)15 (63)
Race/ethnicity
 White60 (74)20 (83)
 Black12 (15)2 (8)
 Other9 (11)2 (8)
Hispanic ethnicity8 (10)3 (13)
Highest level of education
 High school22 (27)7 (29)
 Trade school17 (21)7 (29)
 College23 (28)7 (29)
 Graduate school19 (24)3 (13)
Health history
Current smoking2 (3)3 (13)
History of MI13 (16)1 (4)
History of CHF18 (22)1 (4)
History of stroke12 (15)1 (4)
Duration of diabetes (years)20 (10.55)16 (8.35)
Medication use
Insulin 72 (89)21 (88)
 Insulin dose (units/kg/day)0.56 (0.43)0.65 (0.49)
Insulin secretagogues 18 (22)5 (21)
 Sulfonylureas17 (21)5 (21)
 Meglitinides1 (1)0 (0)
Other glucose-lowering agents 29 (36)18 (75)
 DPP4i3 (4)0 (0)
 GLP1 agonists11 (14)5 (21)
 Biguanides18 (22)14 (58)
 SGLT2i1 (1)5 (21)
 TZDs0 (0)0 (0)
 Alpha-glucosidase inhibitor0 (0)0 (0)
Antihypertensive medications
 ACEi/ARBs60 (74)21 (88)
 Beta-blockers38 (47)5 (21)
Lipid-lowering medications
 Statins75 (93)20 (83)
Neuropathy medications
 Gabapentin18 (22)4 (17)
 Duloxetine/Venlafaxine4 (5)1 (4)
 Lidocaine patch3 (4)0
 Tricyclic antidepressants0 (0)0 (0)
 Pregabalin0 (0)0 (0)
Physical characteristics
Height (cm)171 (10)172 (9)
BMI33.8 (5.7)32.4 (6.2)
Systolic blood pressure (mm Hg)132 (21)136 (17)
Diastolic blood pressure (mm Hg)72 (13)78 (12)
Laboratory values
eGFR (mL/min/1.73 m2)38 (14)83 (11)
Urine ACR (mg/g)150 (28 to 637)14 (8 to 57)
HbA1c (%), mean (SD)7.8 (1.6)8.0 (1.5)
HbA1c (mmol/mol), mean (SD)62 (17)64 (16)
CGM variables
GMI (%), mean (SD)7.37 (0.96)7.09 (0.73)
% CV of CGM sensor glucose readings, mean (SD)31 (6)29 (7)
% Time below range (<70 mg/dL)2 (3)2 (3)
% Time in range (70–180 mg/dL)62 (23)69 (22)
% Time above range (>180 mg/dL)37 (23)29 (22)

Cell contents are N (%) or mean (SD), except for urine ACR which is median (25th percentile, 75th percentile).

ACEi, angiotensin-converting-enzyme inhibitors; ACR, albumin-to-creatinine ratio; ARB, angiotensin receptor blocker; BMI, body mass index; CGM, continuous glucose monitor; CHF, congestive heart failure; CKD, chronic kidney disease; CV, coefficient of variation; DPP4i, dipeptidyl peptidase 4 inhibitor; eGFR, estimated glomerular filtration rate; GLP1, glucagon-like peptide 1; GMI, glucose management indicator; HbA1c, hemoglobin A1c; MI, myocardial infarction; SGLT2i, sodium-glucose cotransporter 2 inhibitors; TZD, thiazolidinedione.

Baseline demographic and clinical characteristics of participants Cell contents are N (%) or mean (SD), except for urine ACR which is median (25th percentile, 75th percentile). ACEi, angiotensin-converting-enzyme inhibitors; ACR, albumin-to-creatinine ratio; ARB, angiotensin receptor blocker; BMI, body mass index; CGM, continuous glucose monitor; CHF, congestive heart failure; CKD, chronic kidney disease; CV, coefficient of variation; DPP4i, dipeptidyl peptidase 4 inhibitor; eGFR, estimated glomerular filtration rate; GLP1, glucagon-like peptide 1; GMI, glucose management indicator; HbA1c, hemoglobin A1c; MI, myocardial infarction; SGLT2i, sodium-glucose cotransporter 2 inhibitors; TZD, thiazolidinedione.

CKD and peripheral neuropathy

The mean MNSI questionnaire score for participants with CKD was 3.36 (2.97) and 2.33 (2.41) for controls (p=0.046), with an adjusted difference of 1.35 (95% CI 0.03 to 2.67), p=0.025. For most questions in the MNSI questionnaire, participants with CKD had a higher prevalence of symptoms compared with controls (figure 1). The most frequently reported symptom in both groups was cramping in the lower extremities (67% CKD, 50% control), which was not included in the algorithm used to calculate the total MNSI score. Eight participants (seven CKD, one control) reported a prior amputation. Sixty-two participants had DPN, as established by an MNSI questionnaire score ≥2, including 51 (63%) with CKD and 11 (46%) controls; adjusted OR 2.29 (95% CI 0.88 to 6.00). Estimates of association of CKD with secondary definitions of DPN (MNSI score ≥4, MNSI score ≥2 or use of neuropathic medications) were similar (table 2).
Figure 1

Prevalence of neuropathy symptoms based on Michigan Neuropathy Screening Instrument questionnaire response by chronic kidney disease (CKD) status.

Table 2

Associations of CKD with distal peripheral neuropathy

CKD(n=81)Controls(n=24)P value*Adjusted difference(95% CI)†Adjusted OR(95% CI)†
Mean MNSI questionnaire score3.36 (2.97)2.33 (2.41)0.0461.35 (0.03 to 2.67)
MNSI score ≥2‡51 (63%)11 (46%)0.1602.29 (0.88 to 6.00)
MNSI score ≥2 or use of one or more neuropathy medications56 (69%)13 (54%)0.2222.31 (0.86 to 6.20)
MNSI score ≥436 (44%)8 (33%)0.3582.16 (0.78 to 5.94)

*Unadjusted t-test or χ2 test.

†Adjusted for age, gender, race

‡ Primary outcome of interest.

CKD, chronic kidney disease; MNSI, Michigan Neuropathy Screening Instrument.

Associations of CKD with distal peripheral neuropathy *Unadjusted t-test or χ2 test. †Adjusted for age, gender, race ‡ Primary outcome of interest. CKD, chronic kidney disease; MNSI, Michigan Neuropathy Screening Instrument. Prevalence of neuropathy symptoms based on Michigan Neuropathy Screening Instrument questionnaire response by chronic kidney disease (CKD) status.

TIR, glycemia and peripheral neuropathy

Among all participants, mean TIR was 63%±23%. For those participants who were within the target range >70% of the time, DPN prevalence was 43%, and those who were within target range <70% of the time, DPN prevalence was 74%. The prevalence of DPN was inversely correlated with TIR (figure 2) and significantly associated, adjusting for age, sex and race (OR 1.25 (95% CI 1.02 to 1.52) per 10% (144 min) lower TIR). TAR was also associated with prevalence of DPN (table 3). GMI was 7.48% for participants with DPN and 7.06% for participants without DPN. GMI was significantly associated with the prevalence of DPN, adjusting for age, sex and race (OR 1.79 (95% CI 1.05 to 3.04) per 1% higher GMI). Conversely, there was no significant relationship of HbA1c, glucose variability as measured by %CV or diabetes duration with DPN. With further adjustment for body mass index, eGFR, use of insulin and use of sulfonylureas, estimates of association were similar, with wider CIs as expected for multiple covariates applied to a relatively small group of participants. Similar results were observed when secondary definitions of DPN were evaluated as outcomes (online supplementary table 1). In analyses stratified by CKD status, estimates for associations of TIR, GMI and other glycemia metrics with DPN were similar to those in the whole population or further from the null (table 4).
Figure 2

Prevalence of distal peripheral neuropathy according to time in range asceratined by continuous glucose monitoring.

Table 3

Association of glycemia with distal peripheral neuropathy

ExposureUnadjustedModel 1Model 2
OR (95% CI)P valueOR (95% CI)P valueOR (95% CI)P value
Time in range (70–180 mg/dL) (per 10% lower)*1.26 (1.04 to 1.53)0.0211.25 (1.02 to 1.52)0.0311.23 (0.99 to 1.52)0.060
Time above range (>180 mg/dL) (per 10% higher)*1.24 (1.03 to 1.50)0.0241.23 (1.02 to 1.50)0.0351.22 (0.99 to 1.50)0.061
% coefficient of variations (per 6% higher (1 SD))1.25 (0.83 to 1.86)0.2831.24 (0.82 to 1.88)0.3121.19 (0.75 to 1.90)0.457
GMI (per 1% higher)1.82 (1.08 to 3.07)0.0241.79 (1.05 to 3.04)0.0331.81 (1.02 to 3.20)0.042
HbA1c (per 1% or 11 mmol/mol higher)1.29 (0.97 to 1.70)0.081.25 (0.93 to 1.69)0.1391.29 (0.93 to 1.79)0.129
Duration of diabetes (per 10 years longer)1.15 (0.77 to 1.71)0.511.19 (0.77 to 1.82)0.4331.13 (0.73 to 1.75)0.575

Sixty-two of 105 participants with a total MNSI questionnaire score ≥2 were defined as having distal peripheral neuropathy in this analysis.

Model 1 is adjusted for age, gender, race. Model 2 additionally adjusts for BMI, eGFR, use of insulin and use of sulfonylureas. In model 2, all outcomes except duration of diabetes additionally adjust for duration of diabetes.

*10%=144 minutes/day.

BMI, body mass index; eGFR, estimated glomerular filtration rate; GMI, glucose management indicator; HbA1c, hemoglobin A1c; MNSI, Michigan Neuropathy Screening Instrument.

Table 4

Associations of glycemia with diabetic peripheral neuropathy stratified by CKD status

CKDControlsP value for interaction
Adjusted OR* (95% CI)Adjusted OR* (95% CI)
Time in range (70–180 mg/dL) (per 10% lower)†1.27 (1.01 to 1.61)0.97 (0.61 to 1.53)0.69
Time above range (>180 mg/dL) (per 10% higher)†1.26 (1.01 to 1.58)0.92 (0.58 to 1.47)0.63
Per cent coefficient of variations (per 6% higher (1 SD))1.04 (0.63 to 1.71)3.10 (0.87 to 11.01)0.37
GMI (per 1% higher)1.93 (1.05 to 3.55)0.68 (0.16 to 2.84)0.58
HbA1c (per 1% or 11 mmol/mol higher)1.33 (0.94 to 1.88)0.48 (0.14 to 1.65)0.83
Duration of diabetes (per 10 years longer)1.16 (0.73 to 1.87)0.91 (0.23 to 3.65)0.58

Sixty-two of 105 participants with a total MNSI questionnaire score ≥2 were defined as having distal peripheral neuropathy in this analysis.

*adjusted for age, gender, and race

†10%=144 minutes/day

CKD, chronic kidney disease; GMI, glucose management indicator; HbA1c, hemoglobin A1c; MNSI, Michigan Neuropathy Screening Instrument.

Association of glycemia with distal peripheral neuropathy Sixty-two of 105 participants with a total MNSI questionnaire score ≥2 were defined as having distal peripheral neuropathy in this analysis. Model 1 is adjusted for age, gender, race. Model 2 additionally adjusts for BMI, eGFR, use of insulin and use of sulfonylureas. In model 2, all outcomes except duration of diabetes additionally adjust for duration of diabetes. *10%=144 minutes/day. BMI, body mass index; eGFR, estimated glomerular filtration rate; GMI, glucose management indicator; HbA1c, hemoglobin A1c; MNSI, Michigan Neuropathy Screening Instrument. Prevalence of distal peripheral neuropathy according to time in range asceratined by continuous glucose monitoring. Associations of glycemia with diabetic peripheral neuropathy stratified by CKD status Sixty-two of 105 participants with a total MNSI questionnaire score ≥2 were defined as having distal peripheral neuropathy in this analysis. *adjusted for age, gender, and race †10%=144 minutes/day CKD, chronic kidney disease; GMI, glucose management indicator; HbA1c, hemoglobin A1c; MNSI, Michigan Neuropathy Screening Instrument.

Discussion

DPN symptoms were common among people with long-standing type 2 DM and CKD in this observational cohort study. On average, participants with CKD reported one more neuropathy symptom than control subjects. Hyperglycemia was also common, with glucose >180 mg/dL during approximately one-third of time monitored by CGM. Less TIR and higher GMI were significantly associated with the prevalence of DPN. In contrast, HbA1c in this population with CKD was not associated with DPN, suggesting that CGM-derived measures of glycemia for these individuals more closely reflect the risk of DPN due to hyperglycemia than even well-measured biomarkers of mean glycemia which are known to underestimate in CKD.24 25 CKD and diabetic neuropathy have been widely studied, but the focus has been primarily on cardiac autonomic neuropathies, with few studies evaluating CKD and peripheral neuropathy.26–29 About 60%–70% of patients with CKD have some type of uremic polyneuropathy.30 However, uremia appears to have little effect specifically on the peripheral nervous system, as measured by nerve conduction studies, when eGFR is >12 mL/min/1.73 m2. In our study, 67% of participants with CKD reported an MNSI score ≥2, and the mean eGFR was 38 mL/min/1.73 m2 well above the threshold of 12 mL/min/1.73 m2 at which peripheral neuropathy due to uremia was previously reported. This suggests that the DPN symptoms we observed were likely due to diabetes, which is further supported by the significant associations of TIR and GMI with DPN in our study population. There are several possible explanations for our observation that participants with CKD had more neuropathy symptoms than those without CKD, despite similar current diabetes treatments and glycemic control. First, participants with CKD may have had more risk factors for microvascular complications, such as cardiovascular disease and poor glycemic control earlier in the course of diabetes, and these risk factors might have led to both CKD and DPN, confounding the observed association. Second, CKD may act synergistically with type 2 DM to cause DPN by increasing inflammation, oxidative stress or other nerve damage pathways.31 Third, we cannot rule out that differences in symptoms were due to perceptions of neuropathy that are augmented by CKD, rather than physical nerve damage. Finally, there may be yet to be identified genetic risk factors that predispose individuals to microvascular complications of diabetes. In demonstrating associations of TIR and GMI with DPN, our study is consistent with clinical trials reporting that glycemic control prevents or delays the development and progression of DPN. Our data parallel the DCCT/EDIC findings that intensive diabetes therapy reduced the risk of microvascular outcomes. In the DCCT/EDIC trial of type 1 DM, intensive diabetes therapy led to a dramatic reduction in DPN and its progression (78% relative risk reduction).13 In type 2 DM, enhanced glycemic control has been demonstrated to more modestly reduce the risk of developing, by DPN 5%–9%.14 15 32 For example, in the ACCORD trial, intensive glycemic therapy arm was associated with a lower prevalence of MNSI score ≥2 at the end of the study (HR 0.92 (95% CI 0.86 to 0.99)).15 The apparent blunted effects of intensive glycemic control on DPN comparing type 2 DM with type 1 DM may be due to multiple comorbidities also affecting peripheral nerves in type 2 DM, and this may be even more pronounced in our population of participants with CKD.27 33 Nonetheless, we observed significant correlations of both TIR and GMI with DPN symptoms. HbA1c is a fairly crude marker of glycemia, particularly in patients with CKD, and CGM is a powerful tool in the therapeutic management of diabetes. Core glucose metrics determined by CGM, including TIR and GMI, provide more precise real-time and retrospective information about glycemic control.34 For example, for any given mean glucose level, HbA1c tends to be lower in end-stage kidney disease, while GMI would remain unbiased.24 Our data suggest that CGM measures may be more strongly associated with risk of developing DPN in this population. These measures are being considered as new therapeutic targets and more studies are needed to determine how CGM metrics correlate with diabetes complications.16 21 Glucose variability has been demonstrated to be an independent risk factor for free radical damage and diabetes complications, yet we did not find that glucose variability was associated with DPN.35 36 There is inconsistency in the relationship between glucose variability and DPN in the literature, and some research indicates that for type 2 DM, glucose variability may be regarded as a marker of beta-cell function rather than direct cause of DPN.37–39 To our knowledge, this is the first study to demonstrate associations of TIR and GMI with DPN. TIR findings parallel the DCCT/EDIC evaluation of TIR and the development and progression of other microvascular outcomes.16 Our study also contributes to the literature of DPN in participants with CKD, which to date is scant. Other strengths of the study include the use of a validated questionnaire to define our outcome of interest and a thorough inventory of neuropathy medications. In addition, we used CGM for sufficient periods of time to characterize glycemic patterns, standardized across participants. We evaluated contemporary glycemic metrics that are being considered as new therapeutic target in diabetes management. This study was limited by the relatively small sample size and the cross-sectional observational study design; therefore, we were not able to assess the temporal relationship between CKD or glycemia and DPN. Our relatively small amount of CGM data may not accurately reflect the long-term glycemic patterns throughout 20 years of living with diabetes. We did not use a physical examination-based definition for DPN, which means that our primary outcome was based on subjective report of symptoms. However, other studies have demonstrated the MNSI questionnaire closely correlates with physical examination findings, with MNSI score ≥4 threshold most consistent with the physical examiation.22 Additionally, subjective data are most relevant to patient experience and quality of life.

Conclusions

In conclusion and as hypothesized, lower TIR was associated with DPN symptoms, suggesting the importance of improved glycemic control in the prevention of DPN. We found that for every 10% lower TIR there is a 25% increased risk of DPN. Yet more studies are needed to understand why participants with CKD reported more symptoms of DPN despite similar glycemia. Laboratory value HbA1c in our CKD population was not found to be associated with DPN, whereas TIR and GMI were, suggesting CGM metrics may provide clinicians and researchers especially valuable information for evaluating risk of diabetes complications. Further research is needed to better understand the role that glycemic control plays in the development and progression of DPN in this population.
  39 in total

1.  Glycemic variability: a hemoglobin A1c-independent risk factor for diabetic complications.

Authors:  Michael Brownlee; Irl B Hirsch
Journal:  JAMA       Date:  2006-04-12       Impact factor: 56.272

2.  The determinants of endothelial dysfunction in CKD: oxidative stress and asymmetric dimethylarginine.

Authors:  Mahmut Ilker Yilmaz; Mutlu Saglam; Kayser Caglar; Erdinc Cakir; Alper Sonmez; Taner Ozgurtas; Ahmet Aydin; Tayfun Eyileten; Omer Ozcan; Cengizhan Acikel; Mustafa Tasar; Gultekin Genctoy; Kemal Erbil; Abdulgaffar Vural; Carmine Zoccali
Journal:  Am J Kidney Dis       Date:  2006-01       Impact factor: 8.860

3.  Prevalence of ocular fundus pathology in patients with chronic kidney disease.

Authors:  Juan E Grunwald; Judith Alexander; Maureen Maguire; Revell Whittock; Candace Parker; Kathleen McWilliams; Joan C Lo; Raymond Townsend; Crystal A Gadegbeku; James P Lash; Jeffrey C Fink; Mahaboob Rahman; Harold Feldman; John Kusek; Akinlolu Ojo
Journal:  Clin J Am Soc Nephrol       Date:  2010-03-18       Impact factor: 8.237

Review 4.  11. Microvascular Complications and Foot Care: Standards of Medical Care in Diabetes-2019.

Authors: 
Journal:  Diabetes Care       Date:  2019-01       Impact factor: 19.112

5.  Validation of Time in Range as an Outcome Measure for Diabetes Clinical Trials.

Authors:  Roy W Beck; Richard M Bergenstal; Tonya D Riddlesworth; Craig Kollman; Zhaomian Li; Adam S Brown; Kelly L Close
Journal:  Diabetes Care       Date:  2018-10-23       Impact factor: 19.112

6.  The effect of intensive treatment of diabetes on the development and progression of long-term complications in insulin-dependent diabetes mellitus.

Authors:  D M Nathan; S Genuth; J Lachin; P Cleary; O Crofford; M Davis; L Rand; C Siebert
Journal:  N Engl J Med       Date:  1993-09-30       Impact factor: 91.245

7.  Kidney disease and related findings in the diabetes control and complications trial/epidemiology of diabetes interventions and complications study.

Authors:  Ian H de Boer
Journal:  Diabetes Care       Date:  2014       Impact factor: 19.112

8.  The relationship between glycemic variability and diabetic peripheral neuropathy in type 2 diabetes with well-controlled HbA1c.

Authors:  Feng Xu; Li-Hua Zhao; Jian-Bin Su; Tong Chen; Xue-Qin Wang; Jin-Feng Chen; Gang Wu; Yan Jin; Xiao-Hua Wang
Journal:  Diabetol Metab Syndr       Date:  2014-12-15       Impact factor: 3.320

9.  Correlations among Diabetic Microvascular Complications: A Systematic Review and Meta-analysis.

Authors:  Jianqing Li; Yihong Cao; Weiming Liu; Qiuke Wang; Yifeng Qian; Peirong Lu
Journal:  Sci Rep       Date:  2019-02-28       Impact factor: 4.379

10.  Association between renal failure and foot ulcer or lower-extremity amputation in patients with diabetes.

Authors:  David J Margolis; Ole Hofstad; Harold I Feldman
Journal:  Diabetes Care       Date:  2008-04-04       Impact factor: 19.112

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  27 in total

Review 1.  Diabetes: how to manage diabetic peripheral neuropathy.

Authors:  Megha Gandhi; Emily Fargo; Lalita Prasad-Reddy; Katherine M Mahoney; Diana Isaacs
Journal:  Drugs Context       Date:  2022-06-14

2.  Clinical Application of Time in Range and Other Metrics.

Authors:  Grazia Aleppo
Journal:  Diabetes Spectr       Date:  2021-05-25

3.  Inhibition of circulating exosomal microRNA-15a-3p accelerates diabetic wound repair.

Authors:  Yuan Xiong; Lang Chen; Tao Yu; Chenchen Yan; Wu Zhou; Faqi Cao; Xiaomeng You; Yingqi Zhang; Yun Sun; Jing Liu; Hang Xue; Yiqiang Hu; Dong Chen; Bobin Mi; Guohui Liu
Journal:  Aging (Albany NY)       Date:  2020-05-21       Impact factor: 5.682

Review 4.  Individualizing Time-in-Range Goals in Management of Diabetes Mellitus and Role of Insulin: Clinical Insights From a Multinational Panel.

Authors:  Sanjay Kalra; Shehla Shaikh; Gagan Priya; Manas P Baruah; Abhyudaya Verma; Ashok K Das; Mona Shah; Sambit Das; Deepak Khandelwal; Debmalya Sanyal; Sujoy Ghosh; Banshi Saboo; Ganapathi Bantwal; Usha Ayyagari; Daphne Gardner; Cecilia Jimeno; Nancy E Barbary; Khadijah A Hafidh; Jyoti Bhattarai; Tania T Minulj; Hendra Zufry; Uditha Bulugahapitiya; Moosa Murad; Alexander Tan; Selim Shahjada; Mijinyawa B Bello; Prasad Katulanda; Gracjan Podgorski; Wajeeha I AbuHelaiqa; Rima Tan; Ali Latheef; Sedeshan Govender; Samir H Assaad-Khalil; Cecilia Kootin-Sanwu; Ansumali Joshi; Faruque Pathan; Diana A Nkansah
Journal:  Diabetes Ther       Date:  2020-12-26       Impact factor: 2.945

Review 5.  Time-in-range as a target in type 2 diabetes: An urgent need.

Authors:  Banshi Saboo; Jothydev Kesavadev; Arun Shankar; Meera B Krishna; Shruti Sheth; Vidisha Patel; Gopika Krishnan
Journal:  Heliyon       Date:  2021-01-15

6.  Beyond A1C-Standardization of Continuous Glucose Monitoring Reporting: Why It Is Needed and How It Continues to Evolve.

Authors:  Roy W Beck; Richard M Bergenstal
Journal:  Diabetes Spectr       Date:  2021-05-25

7.  A randomized trial to investigate the efficacy and safety of insulin glargine in hyperglycemic acute stroke patients receiving intensive care.

Authors:  Sung-Chun Tang; Shyang-Rong Shih; Shin-Yi Lin; Chih-Hao Chen; Shin-Joe Yeh; Li-Kai Tsai; Wei-Shiung Yang; Jiann-Shing Jeng
Journal:  Sci Rep       Date:  2021-06-01       Impact factor: 4.379

8.  A Randomized, Open-Label Comparison of Once-Weekly Insulin Icodec Titration Strategies Versus Once-Daily Insulin Glargine U100.

Authors:  Ildiko Lingvay; John B Buse; Edward Franek; Melissa V Hansen; Mette M Koefoed; Chantal Mathieu; Jeremy Pettus; Karolina Stachlewska; Julio Rosenstock
Journal:  Diabetes Care       Date:  2021-04-19       Impact factor: 19.112

9.  Improved time in range and postprandial hyperglycemia with canagliflozin in combination with teneligliptin: Secondary analyses of the CALMER study.

Authors:  Kyu Yong Cho; Hiroshi Nomoto; Akinobu Nakamura; Shinichiro Kawata; Hajime Sugawara; Jun Takeuchi; So Nagai; Kazuno Omori; Kazuhisa Tsuchida; Aika Miya; Ikumi Shigesawa; Kenichi Tsuchida; Shingo Yanagiya; Hiraku Kameda; Hiroki Yokoyama; Shinji Taneda; Yoshio Kurihara; Shin Aoki; Naoki Nishimoto; Tatsuya Atsumi; Hideaki Miyoshi
Journal:  J Diabetes Investig       Date:  2021-02-05       Impact factor: 4.232

Review 10.  Time in range: a new parameter to evaluate blood glucose control in patients with diabetes.

Authors:  Monica Andrade Lima Gabbay; Melanie Rodacki; Luis Eduardo Calliari; Andre Gustavo Daher Vianna; Marcio Krakauer; Mauro Scharf Pinto; Janice Sepúlveda Reis; Marcia Puñales; Leonardo Garcia Miranda; Ana Claudia Ramalho; Denise Reis Franco; Hermelinda Pedrosa Cordeiro Pedrosa
Journal:  Diabetol Metab Syndr       Date:  2020-03-16       Impact factor: 3.320

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