Literature DB >> 25157095

Delayed skeletal muscle mitochondrial ADP recovery in youth with type 1 diabetes relates to muscle insulin resistance.

Melanie Cree-Green1, Bradley R Newcomer2, Mark S Brown3, Amy D Baumgartner4, Bryan Bergman5, Brendan Drew4, Judith G Regensteiner6, Laura Pyle7, Jane E B Reusch8, Kristen J Nadeau9.   

Abstract

Insulin resistance (IR) increases cardiovascular morbidity and is associated with mitochondrial dysfunction. IR is now recognized to be present in type 1 diabetes; however, its relationship with mitochondrial function is unknown. We determined the relationship between IR and muscle mitochondrial function in type 1 diabetes using the hyperinsulinemic-euglycemic clamp and (31)P-MRS before, during, and after near-maximal isometric calf exercise. Volunteers included 21 nonobese adolescents with type 1 diabetes and 17 nondiabetic control subjects with similar age, sex, BMI, Tanner stage, and activity levels. We found that youths with type 1 diabetes were more insulin resistant (median glucose infusion rate 10.1 vs. 18.9 mg/kglean/min; P < 0.0001) and had a longer time constant of the curve of ADP conversion to ATP (23.4 ± 5.3 vs. 18.8 ± 3.9 s, P < 0.001) and a lower rate of oxidative phosphorylation (median 0.09 vs. 0.21 mmol/L/s, P < 0.001). The ADP time constant (β = -0.36, P = 0.026) and oxidative phosphorylation (β = 0.02, P < 0.038) were related to IR but not HbA1c. Normal-weight youths with type 1 diabetes demonstrated slowed postexercise ATP resynthesis and were more insulin resistant than control subjects. The correlation between skeletal muscle mitochondrial dysfunction in type 1 diabetes and IR suggests a relationship between mitochondrial dysfunction and IR in type 1 diabetes.
© 2015 by the American Diabetes Association. Readers may use this article as long as the work is properly cited, the use is educational and not for profit, and the work is not altered.

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Year:  2014        PMID: 25157095      PMCID: PMC4303961          DOI: 10.2337/db14-0765

Source DB:  PubMed          Journal:  Diabetes        ISSN: 0012-1797            Impact factor:   9.461


Introduction

Type 1 diabetes is increasing in youth and is associated with increased cardiovascular morbidity and mortality (1). In type 2 diabetes, insulin resistance (IR) has a critical role in the development of cardiovascular disease, exercise impairment, and other features of the metabolic syndrome (2). IR typically occurs in association with the metabolic syndrome phenotype (increased hepatic, visceral, and intramyocellular lipid [IMCL]; hypertriglyceridemia; obesity; hyperinsulinemia; hyperglycemia; and low HDL cholesterol and adiponectin). However, IR is now also recognized as a common feature of youth and adults with type 1 diabetes, despite lacking hyperinsulinemia and the aforementioned typical features of the metabolic syndrome (2–4). We previously reported significant IR in normal-weight youths with type 1 diabetes, as well as exercise and cardiac and vascular dysfunction compared with nondiabetic youth (2). Thus, the presence of IR may contribute to the early and excess cardiovascular disease seen in type 1 diabetes (2,5–7). The mechanism(s) of muscle IR in individuals with type 2 diabetes is thought to include decreased glucose transport secondary to decreased mitochondrial function, decreased blood flow, increased circulating free fatty acid (FFA) levels, increased IMCL, signaling defects, or inflammation (8). Decreased mitochondrial function and alterations in lipid metabolism have also been detected in nondiabetic populations with IR including aging, burn trauma, and HIV medication–related lipodystrophy (9–11). In adults with type 1 diabetes, fasting FFAs are elevated and are not fully suppressed by hyperinsulinemia (6,12). In youth with type 1 diabetes, we demonstrated vascular dysfunction and increased FFAs but no increase in IMCL or markers of systemic inflammation compared with nondiabetic youth (2). In contrast, IMCL and inflammatory markers were reported to be increased in adults with type 1 diabetes (2,13,14). Therefore, IR in type 1 diabetes may share some, but not all, mechanistic features of type 2 diabetes. There is limited information on the role of mitochondrial function in IR in type 1 diabetes. The majority of previous studies used muscle biopsy in adults and suggested mitochondrial dysfunction. Mitochondrial DNA from fasting adults with type 1 diabetes showed decreased expression of mitochondrial oxidative genes compared with control subjects (15). After insulin withdrawal in adults with type 1 diabetes, mitochondrial DNA expression decreased relative to the normoinsulinemic state (16). Adults with type 1 diabetes had decreased energy flux through ATP synthase during a hyperinsulinemic-euglycemic clamp (17). However, the two published studies using 31P spectroscopy methods are contradictory (18,19). The mitochondrial studies to date include only adults with long-standing diabetes duration, where complications such as microvascular disease or obesity may confound the results. Therefore, studies in youth are important to understand the initial pathophysiology and significance. Assessment of mitochondrial function in youth with type 1 diabetes has not been published to date. Moreover, studies in adults with type 1 diabetes have not examined the role of serum FFA or glucose, muscle insulin sensitivity, or IMCL in mitochondrial dysfunction. We hypothesized that nonobese youth with type 1 diabetes have mitochondrial dysfunction, which relates to IR and elevated FFA. The purpose of this study was to assess muscle IR and mitochondrial function in youth with type 1 diabetes, along with additional established contributors to IR in other populations: FFA, glucose, IMCL, and inflammation.

Research Design and Methods

Subjects

Thirty-eight participants 12–18 years of age were recruited from pediatric clinics at the Children’s Hospital Colorado and the Barbara Davis Center for Childhood Diabetes for a prospective, cross-sectional study. Participants included nonobese (BMI ≤95th percentile for age) volunteers with and without type 1 diabetes. To help reduce variability, we ensured that all participants were untrained (defined as ≤3 h per week of exercise, verified by standardized 3-day activity recall and by 7-day accelerometer recording [Actigraph, Pensacola, FL]), had achieved Tanner Stage 2 or above in puberty (as assessed by physical exam by a pediatric endocrinologist), and were not prescribed medications known to effect IR, blood pressure, or lipids. Youth with type 1 diabetes had an HbA1c of <12% (108 mmol/mol). This study was approved by the University of Colorado Anschutz Medical Campus Institutional Review Board. Parental informed consent and participant assent were obtained from all participants ≤18 years old and participant consent from those aged 18 years old.

Overall Study Design

Participants underwent a screening visit, an overnight inpatient stay prior to a hyperinsulinemic-euglycemic clamp, and an exercise/imaging study visit, which included MRI of the leg for maximal cross-sectional area, proton MRS (1H-MRS) to measure IMCL content, and in-MRI exercise testing with phosphorus MRS (31P-MRS). 31P-MRS studies during exercise have been shown to correlate well with mitochondrial function assessed from muscle biopsy (20). Volunteers consumed an isocaloric diet (55% carbohydrate, 15% protein, and 30% fat) for 3 days prior to admission, and all subjects were free of acute illness. All testing was performed fasting, with no strenuous exercise for the 3 days prior. Blood glucose was checked in subjects with type 1 diabetes immediately prior to the MRI. Body composition (Hologic, Waltham, MA) was assessed by standard DEXA methods (18).

Measure of Insulin Sensitivity

In participants with type 1 diabetes, subcutaneous insulin was replaced with an overnight intravenous insulin infusion to normalize blood glucose levels (goal of 100 mg/dL). A 3.5 to 4.5-h hyperinsulinemic-euglycemic clamp (80 mU/m2 ⋅ min insulin) was performed fasting in the morning to measure IR, similar to our previously described methods (2). Briefly, serum glucose concentrations were maintained at ∼95 mg/dL based on serial blood samples drawn every 5 min and analyzed at the bedside with a YSI (Yellow Springs Instrument, OH). Glucose infusion rate (GIR) during the last stage of the clamp was expressed as milligrams dextrose infused per lean kilogram, corrected for serum blood glucose. A stable isotope 6,6 D2 glucose tracer was included as previously described in a subset of 9 youth with type 1 diabetes and 11 control youth to allow calculations of endogenous glucose release during hyperinsulinemia and isolate muscle insulin sensitivity (4).

MRI and MRS

Imaging Acquisition

Imaging and spectroscopy were performed on a General Electric 3 Tesla magnet with HDx MRI (General Electric, Milwaukee, WI) running version 15M4 software equipped with the General Electric multinuclear spectroscopy accessory of hardware and research software and a custom 1H/31P leg coil (Clinical MR Solutions, Brookfield, WI) (21). The coil was a concentric probe with an inner coil 9 cm in diameter (for 31P) and a 13-cm outer 1H coil for scout imaging and shimming. Cross-sectional area of the calf was measured and based on a sampling depth of 5.5 cm, and the percent of soleus and gastrocnemious muscle sampled was calculated (21).

Spectroscopy

Rates of mitochondrial phosphorylation were assessed by 31P-MRS performed at 51.70 MHz with the 1H/31P coil. The machine was autoshimmed with 1H, and then a 31P scan was performed for resting baseline measurements (long repetition time of 15,000 ms, flip angle of 135 degrees, and 32 scans) to measure a fully relaxed spectrum. The 31P exercise scan was then performed under partially saturated conditions (repetition time 1,000 ms, flip angle 135, 2,048 points). IMCL and extramyocellular lipid content were measured via 1H-MRS as previously described (2).

31P-MRS Exercise Protocol

Strength testing to determine maximal volitional contraction (MVC) was done on a custom-built magnetic resonance–compatible plantar flexion device with force measurement capability as previously described (21–23). The force transducer box was connected to an external readout stage (Omega Engineering, Stamford, CT) and then to a computer for recording of force throughout exercise with data acquisition software (Labview; National Instruments, Austin, TX). The 31P-MRS exercise protocol consisted of measurements during rest for 90 s, isometric plantar flexion exercise for 90 s at 70% MVC, and recovery for 5 min postexercise. We selected a 90-s isometric exercise bout, as this perturbation has been extensively modeled and used for assessing both aerobic and anaerobic processes (24). Force was monitored continuously throughout the exercise, with verbal feedback to keep the force measurements within the target goal. The average force applied was recorded in kilograms. All participants were able to complete the exercise for 90 s at or near target force. In approximately half of the subjects, an additional exercise test was also performed at 45% MVC to test the effect of submaximal exercise, with at least 15 min of rest between exercise bouts.

Spectroscopy Analysis

Peak positions and areas of interest (phosphocreatine [PCr], inorganic free phosphate [Pi], β-ATP [three peaks], α-ATP [two peaks], and γ-ATP [two peaks], and phosphomonoester) were determined by time domain fitting using jMRUi software (25,26) using AMARES (A Method of Accurate, Robust and Efficient Spectral fitting), a nonlinear least square fitting algorithm using previously built prior knowledge files (27). A representative set of exercise spectra is shown in Fig. 1 for a 70% MVC exercise bout. All exercise spectra were corrected for saturation using the fully relaxed spectra. The jMRUi data were used to calculate metabolic variables as previously described (28). Calculations included the rates of oxidative phosphorylation (OxPhos) after exercise, creatine kinase (CK) reaction, initial PCr synthesis (VPCr), and anaerobic glycolysis (AnGly). ADP, PCr, and Pi time constants were calculated via regression analyses with Sigmaplot (Systat Software, Inc., San Jose, CA). VPCr, the initial rate of PCr resynthesis in the first 10 s after exercise, = (1/PCr time constant) × ([PCr rest] − [PCr end exercise]) in mmol/L/s. Qmax, the apparent mitochondrial capacity, i.e., maximal oxidative ATP production rate, = VPCr[1+(30/[ADP end exercise])] in mmol/L/s. AnGly in millimoles per liter per second is calculated from data collected in the last 10 s of exercise as follows:
Figure 1

Representative plot of 70% exercise data for a volunteer with type 1 diabetes. Raw 31P-MRS data are shown. Each line represents 2 s of data. Time is on the Z axis, and the graph represents ∼5 min of data collection. The nadir of PCr peak height and maximum of Pi peak height is the end of exercise.

Representative plot of 70% exercise data for a volunteer with type 1 diabetes. Raw 31P-MRS data are shown. Each line represents 2 s of data. Time is on the Z axis, and the graph represents ∼5 min of data collection. The nadir of PCr peak height and maximum of Pi peak height is the end of exercise. OxPhos in millimoles per liter per second is calculated from the slope of the line of ∆PCr/ ∆time during the first 10 s after cessation of exercise. CK represents the ATP production from CK reactions, which are not mitochondrial dependent. CK is calculated as the slope of the line of ∆PCR/∆time during the last 10 s of exercise in millimoles per liter per second. Qmax is based on VPc, end exercise (ADP), and an assumption of ADP control in mitochondria. It represents the apparent mitochondrial maximal oxidative ATP production rate relative to mitochondrial density. Qmax was only calculated from the 70% exercise bout data, which is near maximal. 1H-MRS data were analyzed as previously described (2). IMCL concentrations, obtained by reference to the unsuppressed water peak, are reported in institutional concentration units.

Statistical Analysis

The distribution of all variables was examined, and results are presented as mean ± SD, median (minimum, maximum), or proportions, as appropriate. Group comparisons were made using χ2 or Fisher exact test for proportions and the t test or Kruskal-Wallis test for continuous variables. The associations between blood glucose at time of MRI, HbA1c, BMI, BMI Z score, GIR, IMCL, and FFA concentrations during hyperinsulinemia and the three primary outcomes from the 70% exercise were examined (ADP time constant, Qmax, and OxPhos) using multiple regression. The Spearman correlation between each of the outcomes and the covariates was estimated, and only those covariates with a correlation significantly different from zero were included in the regression. P values <0.05 were considered significant. All statistical analyses were performed with SAS Software, version 9.3 (SAS, Cary, NC).

Results

Of the 38 adolescents enrolled, 21 had type 1 diabetes and 17 were nondiabetic control subjects. Participant demographics are shown in Table 1. Groups had similar sex and age distributions. Most participants were in mid- to late puberty. Participants with type 1 diabetes had a mean HbA1c of 8.2% (66 mmol/mol). Of note, markers of inflammation were similar between the groups, with no difference in hs-CRP, interleukin-6, myloperoxidase, aspartate aminotransferase (AST), alanine aminotransferase (ALT), or platelets (Table 1). Fasting LDL cholesterol, HDL cholesterol, and triglycerides were also similar between groups. Fasting FFA concentrations were significantly lower in type 1 diabetes, likely due to the suppressive effects of the overnight insulin infusion used to control glycemia. In addition, in youth with type 1 diabetes, serum FFA concentrations inappropriately failed to further suppress in response to hyperinsulinemia (consistent with adipose IR), and the GIR was significantly lower (10.10 mg/kglean/min [3.01, 20.78] vs. 18.92 mg/kglean/min [9.39, 28.09]; P < 0.01) (consistent with whole-body IR). Rd adjusted for tracer-determined endogenous glucose release in a subset of subjects was also different between groups (12.3 ± 4.4 mg/kglean/min in type 1 diabetic, 19.9 ± 3.9 in control subjects; P < 0.001), consistent with muscle IR. These differences in insulin sensitivity occurred despite similar serum glucose and insulin concentrations during the hyperinsulinemic-euglycemic clamp.
Table 1

Demographics and metabolic measurements

Type 1 diabetes (n = 21)Control (n = 17)
Sex (male)10 (47.6)5 (29.4)
Age (years)15.0 (13.0, 18.0)14.0 (12.0, 18.0)
Race**
 White18 (85.7)9 (52.9)
 Hispanic3 (14.3)4 (23.5)
 Black02 (11.8)
 Other (more than one)02 (11.8)
Tanner stage*
 Missing1 (4.8)0
 203 (17.7)
 31 (4.8)0
 44 (19.1)7 (41.2)
 515 (71.4)7 (41.2)
BMI (kg/m2)**25.0 ± 4.221.4 ± 3.9
Waist-to-hip ratio0.9 ± 0.10.8 ± 0.1
Percent total body muscle mass65.9 ± 9.868.3 ± 8.8
HbA1c (%)***8.2 (6.7, 12.0)5.3 (4.7, 5.8)
HbA1c (mmol/mol)***66 (50, 108)34 (28, 40)
Inflammatory markers
 AST (units/L)28.5 (19.0, 45.0)29.0 (18.0, 62.0)
 ALT (units/L)20.0 (3.0, 38.0)19.5 (12.0, 64.0)
 hs-CRP (mg/L)0.49 (0.12, 7.71)0.20 (0.03, 20.60)
 Interleukin-6 (pg/mL)1.25 (1.25, 12.50)1.25 (1.25, 11.90)
 Myloperoxidase (mg/L)445.0 ± 193.7433.7 ± 173.2
 White blood cells (1 kcell/μg)6.2 (3.9, 14.3)5.8 (3.4, 7.8)
 Platelets (1 kcell/μg)240.7 ± 57.6251.1 ± 51.2
Lipids
 Total cholesterol (mg/dL)**140.2 ± 24.9163.2 ± 26.6
 Triglycerides (mg/dL)74.0 (42.0, 112.0)83.0 (44.0, 196.0)
 HDL (mg/dL)47.1 ± 9.246.8 ± 10.9
 LDL (mg/dL)*78.5 ± 20.798.9 ± 26.1
 FFA baseline (mmol/L)*355.8 ± 226.3563.9 ± 212.1
Clamp measurements
 FFA end clamp (mmol/L)*33.0 (7.5, 125.0)20.5 (15.0, 35.0)
 Insulin end clamp (mmol/L)181.0 (108.0, 812.0)213.3 (158.0, 252.0)
 Glucose end clamp (mg/dL)94.7 ± 4.799.1 ± 9.4
 GIR (mg/kglean/min)***10.10 (3.01, 20.78)18.92 (9.39, 28.09)
Rd (mg/kglean/min)***12.3 ± 4.419.9 ± 3.9

Data are n (%), mean ± SD, or median (minimum, maximum). P values are from χ2 or Fisher exact test, t test, or Kruskal-Wallis test, as appropriate.

*0.01 ≤ P ≤ 0.05;

**0.0001 ≤ P < 0.01;

***P < 0.0001. kcell, representing 1,000 cells.

Demographics and metabolic measurements Data are n (%), mean ± SD, or median (minimum, maximum). P values are from χ2 or Fisher exact test, t test, or Kruskal-Wallis test, as appropriate. *0.01 ≤ P ≤ 0.05; **0.0001 ≤ P < 0.01; ***P < 0.0001. kcell, representing 1,000 cells. The leg muscle cross-sectional area was slightly larger in the group with diabetes (3,681 ± 464 vs. 2,948 ± 776 mm2). However, the force generated per area was similar between groups (Table 2). The soleus represented the majority of muscle sampled in both groups (76 ± 7 type 1 diabetic vs. 81 ± 6% control subjects). Group means of raw data from 31P-MRS, including PCr, free phosphate, ADP concentrations, and pH, are shown in Fig. 2. Youth with type 1 diabetes had similar perturbations in PCr (Fig. 2) and pH (Fig. 2), but the peak ADP concentration was approximately half that of control subjects (Fig. 2), and thus free phosphate concentrations were also lower in subjects with type 1 diabetes (Fig. 2). 31P-MRS calculated measures for both 45% and 70% exercise are shown in Table 2. Youth with type 1 diabetes generated a similar isometric force relative to the size of their calf muscle for both levels of exertion, indicating equal relative workloads (for 70% exercise: 27.67 ± 5.44 vs. 24.69 ± 5.74 kg/cm2), and the mean force over the entire 70% exercise bout was identical, as shown in Fig. 3. However, during 70% exercise, youth with type 1 diabetes had a significantly longer ADP time constant (23.38 ± 5.26 vs. 18.80 ± 3.90 s; P < 0.01), indicating slower mitochondrial rates of conversion of ADP to ATP and a lower rate of oxidative phosphorylation (0.09 mmol/L/s [0.01, 0.43] vs. 0.21 mmol/L/s [0.10, 0.37]; P < 0.01). The Qmax was also lower in youth with type 1 diabetes (0.43 mmol/L/s [0.09, 1.10] vs. 0.54 mmol/L/s [0.41, 2.50]; P < 0.05). The rate of AnGly was higher in youth with type 1 diabetes (0.37 mmol/L/s [0.09, 0.69] vs. 0.22 mmol/L/s [0.06, 0.51]; P < 0.05). Rates of the CK reaction were similar between groups. Overall, results during 45% exercise were similar to those seen with 70% exercise (Fig. 4). IMCL was similar between groups, with 424.18 (150.05, 1,260.00) in type 1 diabetic and 464.80 (197.32, 1,490.00) in control subjects. Mean blood glucose at the time of MRS in the youth with type 1 diabetes was 134 mg/dL (98, 394).
Table 2

Markers of muscle metabolism during exercise

Type 1 diabetesControl
45% exercise1116
 Force/area (kg/cm2)18.60 ± 3.2118.05 ± 4.23
 AnGly (mmol/L/s)0.33 (0.04, 0.64)0.28 (0.10, 0.67)
 CK ATP production (mmol/L/s)0.07 ± 0.060.07 ± 0.06
 OxPhos (mmol/L/s)*0.05 (0.00, 0.32)0.14 (0.03, 0.28)
 Total ATP production (mmol/L)0.47 ± 0.190.52 ± 0.17
 ADP time constant (s)21.71 ± 5.3417.61 ± 5.64
 PCr time constant (s)27.51 (15.53, 41.02)22.50 (13.52, 39.15)
 VPCr (mmol/L//s)**0.11 ± 0.050.24 ± 0.13
70% exercise2117
 Force/area (kg/cm2)27.67 ± 5.4424.69 ± 5.73
 AnGly (mmol/L/s)*0.37 (0.09, 0.69)0.22 (0.06, 0.51)
 CK ATP production (mmol/L/s)0.08 ± 0.070.08 ± 0.05
 OxPhos (mmol/L/s)**0.09 (0.01, 0.43)0.21 (0.10, 0.37)
 Total ATP production (mmol/L)0.56 ± 0.240.56 ± 0.09
 ADP time constant (s)**23.38 ± 5.2618.80 ± 3.90
 PCr time constant (s)29.18 (17.45, 51.26)30.15 (8.14, 39.00)
 VPCr (mmol/s)**0.23 ± 0.160.42 ± 0.27
Qmax (mmol/s)*0.43 (0.09, 1.10)0.54 (0.41, 2.50)

Data are means ± SD, n, or median (minimum, maximum). P values are from t test or Kruskal-Wallis test, as appropriate.

0.01 ≤ P ≤ 0.0.5;

0.0001 ≤ P < 0.01;

P < 0.0001.

Figure 2

Average muscle metabolite concentrations before, during, and after 45% exercise. A: Inorganic phosphate. B: PCr concentrations. C: ADP concentrations. D: Intracellular pH.

Figure 3

Average muscle metabolite concentrations before, during, and after 70% exercise. A: Inorganic phosphate. B: PCr concentrations. C: ADP concentrations. D: Intracellular pH.

Figure 4

Plantar flexion force before, during, and after 70% exercise. A: Average force during the 45% bout. B: Average force exerted during the 70% bout. The forces are not different between subject groups.

Markers of muscle metabolism during exercise Data are means ± SD, n, or median (minimum, maximum). P values are from t test or Kruskal-Wallis test, as appropriate. 0.01 ≤ P ≤ 0.0.5; 0.0001 ≤ P < 0.01; P < 0.0001. Average muscle metabolite concentrations before, during, and after 45% exercise. A: Inorganic phosphate. B: PCr concentrations. C: ADP concentrations. D: Intracellular pH. Average muscle metabolite concentrations before, during, and after 70% exercise. A: Inorganic phosphate. B: PCr concentrations. C: ADP concentrations. D: Intracellular pH. Plantar flexion force before, during, and after 70% exercise. A: Average force during the 45% bout. B: Average force exerted during the 70% bout. The forces are not different between subject groups. Results from regression analyses for the primary mitochondrial end points (ADP time constant, OxPhos, and Qmax from 70% exercise) are shown in Table 3. Variables considered in the initial Spearman correlation analysis for each regression were HbA1c, GIR, blood glucose at time of MRI, and FFA concentration after hyperinsulinemia (end FFA). HbA1c, GIR, and end FFA concentration were univariately associated with ADP time constant, but only GIR was independently associated, with a lower GIR associated with a higher ADP time constant. HbA1c and GIR were univariately associated with oxidative phosphorylation, but only GIR was independently associated with oxidative phosphorylation, with a lower GIR associated with lower oxidative phosphorylation. Finally, HbA1c, GIR, and IMCL were univariately correlated with Qmax, but only IMCL was independently associated with Qmax. Of note, a higher IMCL was associated with a higher or more efficient Qmax. Spearman analysis was performed with Rd corrected for hepatic glucose output to isolate muscle IR in a subgroup with similar results to the unadjusted GIR, but regression analysis could not be performed owing to the smaller sample size.
Table 3

Parameter estimates and P values for regression with mitochondrial outcomes from 70% MVC exercise

OutcomeCovariateParameter estimateSE of parameter estimateP
ADP TCIntercept25.234.96<0.0001
ADP TCHbA1c0.180.460.7025
ADP TCGIR−0.360.150.0261
ADP TCEnd FFA concentration−0.010.040.8735
OxPhosIntercept0.260.290.3929
OxPhosHbA1c0.0010.0280.9471
OxPhosGIR0.020.010.0382
QmaxIntercept0.440.230.0802
QmaxHbA1c−0.020.020.3431
QmaxGIR0.010.010.1933
QmaxIMCL0.00020.00010.0159

Items in bold indicate statistical significance.

Parameter estimates and P values for regression with mitochondrial outcomes from 70% MVC exercise Items in bold indicate statistical significance.

Discussion

The existence of significant IR in individuals with type 1 diabetes is increasingly recognized; yet, the relationship between mitochondrial function and IR has not been explored in youth with type 1 diabetes. We found that nonobese youth with type 1 diabetes have muscle mitochondrial dysfunction compared with nondiabetic youth of similar age, pubertal stage, BMI, and level of habitual physical activity, which correlates inversely with insulin sensitivity. Specifically, youth with type 1 diabetes had a slower rate of conversion of ADP back to ATP after cessation of near-maximal isometric exercise, despite relatively lower ADP production during exercise. Thus, youth with type 1 diabetes seem to use AnGly as a fuel source rather than OxPhos. These findings are consistent after both moderate and submaximal exercise loads, showing mitochondrial dysfunction even at levels of exercise performed in everyday life. Of note, these changes in mitochondrial function were found in the absence of other features of the metabolic syndrome such as dyslipidemia or increased IMCL and did not relate to markers of glycemic control or BMI. Thus, youth with type 1 diabetes have a unique phenotype of IR and mitochondrial dysfunction but lack many other features typical of IR. This is the first report of mitochondrial dysfunction in youth with type 1 diabetes, and mitochondrial studies in adults with type 1 diabetes using either nutritional or exercise perturbations are conflicting to date. For example, Kacerovsky et al. (17) measured ATP flux with 31P-MRS fasted and during a hyperinsulinemic-euglycemic clamp. They found that insulin-stimulated glucose flux through ATP synthase during the clamp was reduced by 25% in type 1 diabetes, and glucose 6 phosphate concentrations were reduced by 42% (17). Since the glucose 6 phosphate was reduced more than the ATP synthase, one interpretation is that delivery of glucose to the cell is impaired, rather than the mitochondria itself being dysfunctional. The authors found a tight relationship between HbA1c, Rd, and ATP flux and thus concluded that despite tight glycemic control (mean HbA1c of 6.89 ± 0.4% [52 ± 1 mmol/mol] in the type 1 diabetic participants), glucotoxicity was the cause of the findings. Alternatively, Antonetti et al. (15) found that mitochondrial gene expression, specifically, cytochorome oxidase I, cytochodrome oxidase III, NADH dehydrogenase IV, and 12s mRNA gene expression, was actually increased in muscle biopsies from patients with type 1 diabetes and vascular disease, suggesting increased mitochondrial function, perhaps in response to hypoxemia. In men with type 1 diabetes, postexercise PCr recovery assessed with 31P-MRS was slower after 120 s of 75% maximal plantar flexion; however, the participants with diabetes worked harder than the control subjects (19). Item et al. (18) found that mitochondrial capacity as assessed with 31P-MRS during 85% plantar flexion for 30 s was not impaired in women with type 1 diabetes relative to control subjects and related to HbA1c. However, this short exercise paradigm may not be of an adequate duration to test OxPhos, as initial force generation with muscle occurs via the PCr reaction (29). In summary, three of five studies in adults indicated that mitochondrial function, stimulated by either insulin or exercise, may be impaired in type 1 diabetes, and our data add to this body of evidence that the defect occurs early in diabetes development. What remains unclear, however, is whether the mitochondria themselves are impaired or whether nutrient delivery (i.e., reduced muscle blood flow secondary to lack of insulin action) or availability is the cause of the resulting poor mitochondrial function. Finally, it is unclear whether abnormalities in mitochondrial function seen in adults will be the same as those seen in youth. We found that mitochondrial function was related to IR but not glycemia. Both ADP time constant and OxPhos were related to IR but not to markers of glucose control including HbA1c or blood glucose at the time of exercise testing. Previous studies proposed that IR in type 1 diabetes was primarily related to hyperglycemia (30,31). However, this assumption has been challenged by more recent studies in both animal models and adults with type 1 diabetes in reasonable glycemic control (4,6,32). We previously found that neither HbA1c nor 3-day glucose readings with continuous glucose monitoring relate to IR in adolescents with type 1 diabetes (2). In studies of nondiabetic patients that included assessments of both IR and mitochondrial function, glycemia did not relate to either IR or mitochondrial function (10,15,33,34). In adults with type 2 diabetes, mitochondrial function was impaired relative to control subjects but was only affected by extreme hyperglycemia, and an HbA1c in the range similar to that of our patient population did not relate to mitochondrial function (34). Thus, it may be that when glucose concentrations are managed near goal clinical glucose ranges, IR and mitochondrial function are not strongly influenced by hyperglycemia. We found that mitochondrial dysfunction was tightly associated with muscle IR as measured with a hyperinsulinemic-euglycemic clamp but not serum FFA or IMCL. Moreover, we previously demonstrated that IMCL is not elevated in pediatric type 1 diabetes, and others have demonstrated that IMCL does not relate to IR in adults with type 1 diabetes (2,35). In this cohort, we similarly found no elevation in IMCL in youth with type 1 diabetes and that IMCL was associated positively with increased Qmax. This positive relationship of IMCL with Qmax is consistent with the athlete’s paradox, where IMCL rises in healthy subjects as individuals are more trained, and it is negatively correlated with insulin sensitivity (36). Finally, we did find that youth with type 1 diabetes had higher serum FFA during hyperinsulinemia; yet, we did not find an association between FFA suppression and mitochondrial function. However, the serum insulin concentrations achieved during the clamp were supraphysiologic at 200 IU/mL. It is possible that in daily life, serum FFA over 24 h are higher in youth with type 1 diabetes than in control subjects due to inadequate insulin concentrations for suppression of lipolysis and that these FFA elevations may decrease muscle blood flow and secondarily nutrient delivery or directly impair mitochondrial function. The interpretability of exercise data is always dependent on the quality of the exercise paradigm and the muscle sampled. The raw ADP data shown in Fig. 3 show that the youth with type 1 diabetes produced much less ADP that the control volunteers during a 70% exercise perturbation. The simplest explanation for this discrepancy is that the youth with type 1 diabetes did not perform as much physical work as the control group. However, the force data indicate that participants with type 1 diabetes pushed with a force equal to that of control subjects, and when normalized for leg muscle area, the youth with type 1 diabetes pushed an average of 3 kg harder. Further, the pH curves are similar between the groups, indicating that the intracellular perturbation was equivalent, and the intracellular environment did not become acidotic enough to prevent optimal mitochondrial function (32). Finally, in our study a subset of patients performed two exercise bouts with the second at 45% of MVC. The overall results from this subset are consistent with the 70% results, indicating that the difference between groups is not likely reflective of unequal exercise levels or ischemia induced from maximal contraction. Furthermore, these results illustrate that mitochondrial deficiencies are seen in near-maximal as well as submaximal exercise levels in this population, implying that the mitochondrial dysfunction in type 1 diabetic youth could impact exercise performance in youth. Analysis of the imaging data indicates that the majority of muscle sampled was the soleus, a primarily oxidative muscle type. Thus, it appears that youths with type 1 diabetes are generating the force for the exercise via more nonoxidative pathways, such as AnGly. There are several limitations to a broader applicability of our findings to all youth with type 1 diabetes. Our sample size was relatively small, as these studies are complex and costly. To be certain that our findings were not due to BMI, we performed a subanalysis of only those volunteers with a BMI <85th percentile and found identical results as presented (data not shown). Thus, we do not believe that our findings of a difference in the youth with type 1 diabetes are an artifact of adiposity. Owing to the inclusion criteria, the study cannot be considered generalizable to physically active or obese youth with type 1 diabetes. Moreover, the impact of FFAs in type 1 diabetes on mitochondrial function requires further study, as we only assessed FFA suppression of high-dose insulin in this analysis. In summary, we found that youth with type 1 diabetes have decreased mitochondrial OxPhos after exercise, which correlates with IR but not acute or chronic glycemia, IMCL, or FFA. As future therapeutics are developed to directly improve insulin sensitivity, those that involve mitochondrial function should also be considered for individuals with type 1 diabetes.
  35 in total

1.  31P MRS measurement of mitochondrial function in skeletal muscle: reliability, force-level sensitivity and relation to whole body maximal oxygen uptake.

Authors:  D E Larson-Meyer; B R Newcomer; G R Hunter; H P Hetherington; R L Weinsier
Journal:  NMR Biomed       Date:  2000-01       Impact factor: 4.044

Review 2.  Cardiovascular disease risk in young people with type 1 diabetes.

Authors:  Janet K Snell-Bergeon; Kristen Nadeau
Journal:  J Cardiovasc Transl Res       Date:  2012-04-12       Impact factor: 4.132

3.  Insulin sensitivity, glucose effectiveness, and free fatty acid dynamics after human islet transplantation for type 1 diabetes.

Authors:  Michael R Rickels; Ali Naji; Karen L Teff
Journal:  J Clin Endocrinol Metab       Date:  2006-03-28       Impact factor: 5.958

4.  Association of insulin sensitivity to lipids across the lifespan in people with Type 1 diabetes.

Authors:  D M Maahs; K Nadeau; J K Snell-Bergeon; I Schauer; B Bergman; N A West; M Rewers; S R Daniels; L G Ogden; R F Hamman; D Dabelea
Journal:  Diabet Med       Date:  2011-02       Impact factor: 4.359

5.  Method for controlled mitochondrial perturbation during phosphorus MRS in children.

Authors:  Melanie Cree-Green; Bradley R Newcomer; Mark Brown; Amber Hull; Amy D West; Debra Singel; Jane E B Reusch; Kim McFann; Judith G Regensteiner; Kristen J Nadeau
Journal:  Med Sci Sports Exerc       Date:  2014-10       Impact factor: 5.411

6.  Incidence of diabetes in youth in the United States.

Authors:  Dana Dabelea; Ronny A Bell; Ralph B D'Agostino; Giuseppina Imperatore; Judith M Johansen; Barbara Linder; Lenna L Liu; Beth Loots; Santica Marcovina; Elizabeth J Mayer-Davis; David J Pettitt; Beth Waitzfelder
Journal:  JAMA       Date:  2007-06-27       Impact factor: 56.272

7.  Insulin is a stronger inducer of insulin resistance than hyperglycemia in mice with type 1 diabetes mellitus (T1DM).

Authors:  Hui-Yu Liu; Sophia Y Cao; Tao Hong; Jianmin Han; Zhenqi Liu; Wenhong Cao
Journal:  J Biol Chem       Date:  2009-08-04       Impact factor: 5.157

8.  Hyperglycemia decreases glucose uptake in type I diabetes.

Authors:  H Yki-Järvinen; E Helve; V A Koivisto
Journal:  Diabetes       Date:  1987-08       Impact factor: 9.461

9.  Subclinical atherosclerosis and estimated glucose disposal rate as predictors of mortality in type 1 diabetes.

Authors:  Jon C Olson; John R Erbey; Katherine V Williams; Dorothy J Becker; Daniel Edmundowicz; Sheryl F Kelsey; Kim Sutton Tyrrell; Trevor J Orchard
Journal:  Ann Epidemiol       Date:  2002-07       Impact factor: 3.797

10.  Short-term administration of pegvisomant improves hepatic insulin sensitivity and reduces soleus muscle intramyocellular lipid content in young adults with type 1 diabetes.

Authors:  A Thankamony; P H Tossavainen; A Sleigh; C Acerini; D Elleri; R N Dalton; N C Jackson; A M Umpleby; R M Williams; D B Dunger
Journal:  J Clin Endocrinol Metab       Date:  2013-12-11       Impact factor: 5.958

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  37 in total

1.  Metformin Improves Peripheral Insulin Sensitivity in Youth With Type 1 Diabetes.

Authors:  Melanie Cree-Green; Bryan C Bergman; Eda Cengiz; Larry A Fox; Tamara S Hannon; Kellee Miller; Brandon Nathan; Laura Pyle; Darcy Kahn; Michael Tansey; Eileen Tichy; Eva Tsalikian; Ingrid Libman; Kristen J Nadeau
Journal:  J Clin Endocrinol Metab       Date:  2019-08-01       Impact factor: 5.958

2.  Metformin Improves Insulin Sensitivity and Vascular Health in Youth With Type 1 Diabetes Mellitus.

Authors:  Petter Bjornstad; Michal Schäfer; Uyen Truong; Melanie Cree-Green; Laura Pyle; Amy Baumgartner; Yesenia Garcia Reyes; Aristides Maniatis; Sunil Nayak; R Paul Wadwa; Lorna P Browne; Jane E B Reusch; Kristen J Nadeau
Journal:  Circulation       Date:  2018-12-18       Impact factor: 29.690

Review 3.  Diabetes pharmacotherapy and effects on the musculoskeletal system.

Authors:  Evangelia Kalaitzoglou; John L Fowlkes; Iuliana Popescu; Kathryn M Thrailkill
Journal:  Diabetes Metab Res Rev       Date:  2018-12-20       Impact factor: 4.876

4.  Trabecular bone quality is lower in adults with type 1 diabetes and is negatively associated with insulin resistance.

Authors:  V N Shah; R Sippl; P Joshee; L Pyle; W M Kohrt; I E Schauer; J K Snell-Bergeon
Journal:  Osteoporos Int       Date:  2017-12-30       Impact factor: 4.507

5.  Youth With Type 1 Diabetes Have Adipose, Hepatic, and Peripheral Insulin Resistance.

Authors:  Melanie Cree-Green; Jacob J Stuppy; Jessica Thurston; Bryan C Bergman; Gregory V Coe; Amy D Baumgartner; Samantha Bacon; Ann Scherzinger; Laura Pyle; Kristen J Nadeau
Journal:  J Clin Endocrinol Metab       Date:  2018-10-01       Impact factor: 5.958

Review 6.  The Peripheral Peril: Injected Insulin Induces Insulin Insensitivity in Type 1 Diabetes.

Authors:  Justin M Gregory; Alan D Cherrington; Daniel J Moore
Journal:  Diabetes       Date:  2020-05       Impact factor: 9.461

7.  Amino acid and fatty acid metabolomic profile during fasting and hyperinsulinemia in girls with polycystic ovarian syndrome.

Authors:  Melanie Cree-Green; Anne-Marie Carreau; Haseeb Rahat; Yesenia Garcia-Reyes; Bryan C Bergman; Laura Pyle; Kristen J Nadeau
Journal:  Am J Physiol Endocrinol Metab       Date:  2019-02-12       Impact factor: 4.310

Review 8.  Pathogenesis of Lipid Disorders in Insulin Resistance: a Brief Review.

Authors:  Petter Bjornstad; Robert H Eckel
Journal:  Curr Diab Rep       Date:  2018-10-17       Impact factor: 4.810

9.  Insulin resistance in type 2 diabetes youth relates to serum free fatty acids and muscle mitochondrial dysfunction.

Authors:  Melanie Cree-Green; Abhinav Gupta; Gregory V Coe; Amy D Baumgartner; Laura Pyle; Jane E B Reusch; Mark S Brown; Bradley R Newcomer; Kristen J Nadeau
Journal:  J Diabetes Complications       Date:  2016-10-17       Impact factor: 2.852

10.  The role of glycemia in insulin resistance in youth with type 1 and type 2 diabetes.

Authors:  Christine L Chan; Laura Pyle; Rose Morehead; Amy Baumgartner; Melanie Cree-Green; Kristen J Nadeau
Journal:  Pediatr Diabetes       Date:  2016-08-09       Impact factor: 4.866

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