The Role of Copper Intake in the Development and Management of Type 2 Diabetes: A Systematic Review
Abstract
:1. Introduction
2. Methods
2.1. Literature Search
2.2. Study Selection
2.3. Data Extraction
2.4. Risk-of-Bias Assessment
3. Results
3.1. Overall Quality Assessment
3.2. Cross-Sectional Studies
3.3. Cohort Studies
3.4. Interventional Studies
4. Discussion
5. Strengths and Limitations of the Review
6. Conclusions
Supplementary Materials
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Database | Search Terms |
---|---|
Medline | ((((((copper[MeSH Terms]) AND (Diabetes Mellitus, Type 2[MeSH Terms])) OR (Diabetes Mellitus, Non Insulin Dependent)) OR (Diabetes Mellitus, Ketosis Resistant)) OR (Diabetes Mellitus, Stable)) OR (Diabetes Mellitus, Maturity Onset)) OR (Diabetes Mellitus, Slow-Onset) |
Embase | (‘copper intake’ OR ‘copper feeding’ OR ‘diet copper’ OR ‘dietary copper’ OR ‘dietary copper intake’ OR ‘copper’ OR ‘Cu+’ OR ‘Cu (I)’ OR ‘copper (I)’ OR ‘copper (II)’ OR ‘Cu (II)’ OR ‘Cu++’ OR ‘Cu2+’) AND (‘diabetes mellitus’ OR ‘diabetes’ OR ‘diabetic’ OR ‘non-insulin dependent diabetes mellitus’ OR ‘type 2 diabetes mellitus’) |
CINAHL | (MM “copper”) AND ((MM “Diabetes Mellitus”) OR (MM “Diabetes Mellitus, Type 2”) OR (MM “Glucose Metabolism Disorders”) OR (MM “Diabetic Ketoacidosis”)) |
Study (Author, Year) | Country | Setting | Sample Size | Population and Sample Characteristics | Exposure and Outcome Assessment | Main Findings |
---|---|---|---|---|---|---|
Randomized Controlled Trial (RCT) | ||||||
Gunasekara et al., 2011 [18] | Sri Lanka | Patients previously diagnosed with adult-onset T2DM, for a minimum of two years, who visited the medical clinics of the teaching hospital in Karapitiya, Galle. | 96 | 33 males, 63 females Zinc + MVM group: n = 29 MVM group: n = 31 Control group: n = 36 No difference in age distribution of patients in the three groups. At baseline and during the follow-up period, the three groups did not exhibit any significant differences in the use of statins and other medications that protect the heart. There were no notable differences in the dietary intake of trace minerals and vitamins. | Exposure: 3 treatment groups: Group A: zinc + MVM Group B: same MVM without zinc Group C: placebo Each MVM had 2 mg of copper included. No mention of food compsotion tables were used. Assessment: Assessed FBS and HbA1c (Mainly looked at the difference between with or without zinc) | In comparison to the other two groups (MVM and control), the zinc + MVM group had a mean change in FBS of −0.33 mmol/L (mean + SD 0.21 mmol/L; p = 0.05). Meanwhile, a significant decrease in HbA1C% levels was observed in zinc + MVM supplemented individuals, regardless of their baseline levels, whereas the other two groups did not exhibit any significant changes in HbA1C% levels. The MVM group showed a mean change of +0.19 mmol/L, while the control group showed a mean change of +0.43 mmol/L. |
Alfawaz et al., 2019 [19] | Saudi Arabia | Al-Quds Health Care Center and specified schools located in Riyadh city | 160 | The GA group consisted of 75 individuals (41 males and 34 females), of which 93.3% were classified as overweight or obese. The Guidance group comprised of 64 individuals (26 males and 38 females), of which 90.6% were classified as overweight or obese. All general and clinical characteristics were not significantly different except for a slight variation in mean body mass index (BMI) (p = 0.04). | Group 1 (GA): provided with general information regarding the risk factors associated with prediabetes and diabetes, and a brief overview of preventive measures during the orientation. Group 2 (guidance): received comprehensive and well-organized counseling on nutrition and lifestyle related to prediabetes, diabetes, weight management, physical activity, and nutrition during their regular visits to the centers. They also attended workshops on diabetes. Outcomes: changes in glycemic indices Assessment: Took 3 24 h recalls + asked about dietary preferences. Diet was analyzed using the Food Processor Nutrition Analysis Program (ESHA). | In the GA group, a significant increase in consumption of copper was observed. Between-group comparisons revealed a clinically significant increase in copper (p = 0.03) in favor of the guidance group. FBG and hbA1c significantly reduced overtime in guidance group but not GA group. Insulin was reduced significantly in both groups’ overtime (p < 0.05 and <0.01 in GA and guidance groups, respectively) Between-group comparison showed clinically significant differences in favor of the guidance group in terms of fasting glucose (p = 0.005), HbA1c (p = 0.005), and HOMA-IR (p = 0.034) |
Cross-sectional Studies | ||||||
Zhang et al., 2022 [20] | China | NHANES | 4595 | Nationally representative U.S population. Adults aged >62 years old. 49.79% males, 50.21% females. 978 of the 4595 participants self-reported “eye afflication/retinopathy in individuals with diabetes”. When comparing diabetic patients who reported having eye problems or retinopathy with those who did not report any eye problems or retinopathy, there were no notable differences in terms of age, sex, blood pressure, BMI, smoking, or drinking. Nevertheless, there were notable differences in duration of diabetes, insulin usage, race, and level of education. | Exposure: 58 different dietary nutrients, including copper intake (mg). Assessed through the average intake of two 24 h recalls. There was no mention of food composition tables used. Outcome: Self-reported eye affliction/retinopathy | Among the 58 dietary nutrients, fiber, butonic, octonic, vitamin A, alpha-carotene, folate, magnesium, copper and caffeine intake, reduced the occurrence of diabetic retinopathy. Logistic regression analysis showed that dietary copper intake reduces the risk of diabetic retinopathy and the pooled OR (95% CI) was 0.67 (0.54–0.84) after comparing Q4 (highest) with Q1(lowest) of the intake. |
Tan et al., 2021 [21] | UK | The study recruited participants through a random selection process, utilizing advertisements and flyers that were distributed in various locations such as the University of Nottingham Malaysia and nearby supermarkets and schools. | 128 | The study included adult participants with an average age of 44.0 ± 10.9 years, with most of them being female (84.4%) and the rest being male (15.6%). Of the total participants, 45% (57) were found to have insulin resistance, which was defined as HOMA-IR ≥ 1.7. Participants were then separated into two groups, insulin-resistant and non-insulin-resistant, and no significant differences were observed between the two groups in terms of age, sex, race, physical activity status, smoking, or alcohol consumption. | Exposure: Dietary intake of copper and selenium. FFQ was used. Food composition was analyzed by using Dietplan7 database and “Nutrient Composition of Malaysian Foods”. Outcome: Overweight and obese participants from Malaysia and identified individuals with insulin resistance, based on a HOMA-IR value of ≥1.7. | The study found a significant positive association between dietary copper intake and HOMA-IR, but only when copper intake was ≥13.4 μg/kg/day. This association was demonstrated by an odds ratio of 0.276 (95% CI: 0.025–0.527) and a p-trend value of 0.033. Balance between selenium and copper intake is important, especially for individuals with diabetes and insulin resistance. |
Norbitt et al., 2021 [22] | New Zealand | ANDROMEDA project | 106 | 37 females, 69 males 3 Groups:
| Exposure: The EPIC-Norfolk food frequency questionnaire (FFQ) was used to evaluate the typical diet of each participant throughout the year. The FETA (FFQ EPIC Tool for Analysis) software was utilized to analyze the data collected from the FFQ. Outcome: DEP Criteria NAP: HbA1c < 5.7% (39 mmol/mol) and/or FPG < 100 mg/dL (5.6 mmol/L) at initial AP and during the study. T2DM: HbA1c levels greater than or equal to 5.7% and/or FPG levels greater than or equal to 100 mg/dL before the onset of AP and at the time of the study. NODAP: Did not have hyperglycemia before and during the initial AP attack. However, during the follow-up, had HbA1c levels greater than or equal to 5.7% and/or FPG levels greater than or equal to 100 mg/dL. | The T2DM group showed a significant difference in their copper intake after taking into account their age, gender, daily energy intake, V/S fat volume ratio, alcohol consumption, and smoking status. In the NAP group, there was a significant negative correlation between FPG levels and copper intake. |
Sobhani et al., 2021 [23] | Iran | Diabetes nephropathy patients randomly enrolled from Alzzahra Hospital, and a nephrology and nutrition clinic in Isfahan, Iran from July 2010 to April 2013. | 397 | 397 patients were selected, with mean age of 65.54 ± 9.76 years, and BMI of 23.35 ± 3.53 kg/m2. The dependent variable used was GFR (measured in ml/min) and the presence of DN was confirmed by a nephrologist. | Exposure: Fast food consumption was measured using a validated semi-quantitative FFQ. Food composition was analyzed using NUTRITIONIST-IV software. Outcomes: Anthropometric measurements including weight, height, BMI, and waist circumference. Additionally, measurements of blood pressure, physical activity status, socioeconomic status, use of medications, biochemical analysis of lipid profile, FBS, HbA1c, BUN creatinine, and hs-CRP. | Increased consumption of fast food was linked to higher levels of energy, protein, carbohydrates, fat, cholesterol, vitamin C, saturated fat, monounsaturated fat, oleic fat, polyunsaturated fat, iron, zinc, magnesium, alpha-tocopherol, phosphorus, potassium, calcium, copper, sodium, vitamin B1, vitamin B2, vitamin B3, vitamin B6, folate, and vitamin B12. The highest intake of fast food was associated with higher levels of creatinine, systolic blood pressure, and diastolic blood pressure, and lower levels of total cholesterol. |
Cohort Studies | ||||||
Eshak et al., 2018 [24] | Japan | Taken from 45 Japanese communities | 16,160 | 5955 males, 10,205 females. Followed up for a period of 5 years. 396 subjects developed T2DM, 200 men and 196 women. Individuals who developed diabetes were more likely to have a family history of diabetes and hypertension compared to those who remained non-diabetic. Additionally, they were older, had a higher BMI, and were more likely to smoke and consume more alcohol (this information was not displayed in the table). | Assessment: 40-item FFQ without specifying portion sizes. Did not take into consideration copper from supplements, only diet. No mention of any food composition tables used. | The consumption of iron and copper was linked to an increased risk of developing T2DM. |
Cui et al., 2022 [25] | China | Data from CHN wave 1997–2015 | 14,711 | The study included 7333 males and 7378 females, with a mean age of 44 ± 15 years and a mean BMI of 23.2 ± 3.3 kg/m2. They were followed up with for 15 years. On average, participants consumed 1.9 ± 0.6 mg/day of 25Cu. Participants with higher Cu intake tended to be younger, have lower BMI, live in less urban areas and northern provinces, have lower education levels, drink alcohol, be physically active, and consume more dietary Se, total energy, protein, plant protein, carbohydrates, and fiber at a higher PUFA:SFA ratio. They also tended to consume less animal protein, have a lower animal protein to plant protein ratio, and consume less dietary fat, SFA, MUFA, and PUFA compared to those with lower Cu intake. | Assessment: The participants’ dietary intake was assessed using three consecutive 24 h recalls and was confirmed through food weighing methods at the household level. Food composition was obtained from the China Food Composition Tables. | There was no significant association between dietary intake of Cu and the risk of T2DM. |
Laouali et al., 2021 [26] | France | E3N cohort, a french prospective study. Women were selected from the French national health insurance plan for teachers and coworkers, the Mutuelle Gínírale de l’Education Nationale. | 70,991 | The average daily intake of copper and Cu/Zn ratio was 2.90 mg (with a standard deviation of 1.15) and 0.26 (with a standard deviation of 0.10), respectively. The average age of the participants was 53 years old (with a standard deviation of 6.7), with a follow-up period of 20 years. Almost all of the women (99%) consumed more copper than the recommended amount. A higher Cu/Zn ratio was linked to older age, higher BMI and physical activity levels, and a greater incidence of hypercholesterolemia at the start of the study. Women who followed a more cautious diet had a higher Cu/Zn ratio. | Assessment: validated 208-item semi-quantitative FFQ at baseline in 1993. A follow-up questionnaire was sent to identify potential T2DM cases. A food composition database adapted from the French Information Center on Food Quality was used. | A reduced Cu/Zn ratio in one’s diet is linked to a decreased risk of developing Type 2 Diabetes, particularly in women who are obese and consume more than 8 mg of zinc per day. |
Non-randomized controlled trials | ||||||
Rostami et al., 2022 [27] | Iran | New cases of types 2 diabetes referred to the health center in Behshar, Mazandaran Province, Iran. | 30 | 15 individuals did not consume any functional foods or supplements, and were not given spirulina supplements. Another 15 individuals did not consume any oral hypoglycemic medications, insulin, functional foods, or other supplements, but did receive spirulina supplements. Participants consisted of 11 males and 19 females. Mean ages for spirulina group and controls were 46.70 ± 8.10 and 47.30 ± 8.80, respectively. The BMI of the group receiving spirulina treatment was 28.27 (with a standard deviation of 2.05), while the BMI of the diabetic control group was 27.21 (with a standard deviation of 1.83). | Exposure: Spirulina supplementation as pills were given for eight weeks (4 g/day, which contains 280 mcg of copper). No mention of food composition tables used. Outcomes: 12 h overnight fasting blood glucose, triglyceride, cholesterol, HDL cholesterol, LDL cholesterol, and MDA, serum insulin, in addition to weight, height, and BMI. | There was a noticeable reduction in the levels of total cholesterol, LDL cholesterol, triglycerides, and MDA in the blood serum. Upon analysis of the correlation, it was found that higher levels of serum triglycerides, total cholesterol, LDL cholesterol, and MDA at the start of the study were linked to a greater decrease in the lipid profile and MDA levels. The serum MDA levels of diabetic participants exhibited a significant decrease after receiving spirulina supplements, dropping from 6.0 nm/L (with a standard deviation of 1.43) to 4.88 nm/L (with a standard deviation of 1.16). |
Armstrong et al., 1995 [28] | Ireland | Cases: from diabetes clinic Controls: hospital staff and other outpatient clinics | 40 (20 cases, 20 controls) | 10 males and 10 females in each group, each group had 6 smokers. Average age for control was 54 years, and average age for cases was 58 years. Average BMI for control was 26, and average BMI for cases was 31. | Exposure: The individuals in the experimental group were provided with dietary guidance based on the 1990 revision of the dietary recommendations for individuals with diabetes. The control group received comparable treatment to the experimental group, with the exception that no dietary advice was offered to them. Assessment: One 24 h recall, FFQ, fasting glucose. Diet was analyzed using MICRO-DIET computer software based on McCance and Widdowson’s Composition of Food. | The intake of copper was comparable in both the diabetic patients and the control group, but the exact amounts were not specified. In diabetic patients, the fasting blood glucose (FBG) levels decreased from 13.6 mmol/L at the beginning of the study to 9.7 mmol/L after dietary intervention. HbA1c reduced from 7.44 ± 0.67% to 5.91 ± 0.57% (p < 0.01). |
Cross-Sectional Studies | |||||
---|---|---|---|---|---|
Study | Selection | Comparability | Outcome | Total Quality Score | |
Zhang et al., 2022 [20] | ** (Representative of target population; unsatisfactory response rate; validated measurement tool) | ** (Multiple confounders are controlled) | * (Self-reported outcomes; clear statistical tool) | 5 | |
Tan et al., 2021 [21] | ** (Selection of users was volunteer-based, but somewhat representative of target population; poor description of response rate; validated measurement tools were used | ** (Multiple confounders are controlled) | ** Self-reported outcomes with record linkages; clear statistical tool) | 6 | |
Norbitt, Kimita, Ko, Bharmal, and Petrov, 2021 [22] | *** (Selection was representative of population; satisfactory response rate; validated measurement tool) | * (Important confounders are controlled) | ** (Self-reported outcomes with record linkages; appropriate statistical methods) | 6 | |
Sobhani et al., 2021 [23] | *** (Selected users; sample size calculations were shown; non-respondents were not mentioned in the study; exposure: “DN was affirmed by a nephrologist”) | ** (Author controlled for multiple confounders) | ** (Validated FFQ was used; statistical method not appropriate, no association was tested, and author only reported mean values at each tertile of fast food intake) | 5 | |
Cohort Studies | |||||
Study | Selection | Comparability | Outcome | Total Quality Score | Comment |
Eshak et al., 2018 [24] | **** (Representative of target population; selection from same community as exposed cohort; structured interviews given; demonstrated that outcome was not present at start of study) | ** (Authors controlled for important and additional confounders) | * (Self-reported outcomes; follow-up period of 5 years was inadequate; adequate subjects accounted for) | 7 | |
Cui et al., 2022 [25] | **** (Representative of target population; selection from same community as exposed cohort; structured interviews given and records reviewed; demonstrated that outcome was not present at start of study) | ** (Authors controlled for important and additional confounders) | *** (Outcomes are linked with records in addition to self-reported outcomes; adequate subjects accounted for; adequate follow-up period of 15 years) | 9 | |
Laouali et al., 2021 [26] | *** (Representative of target population; selection from same community as exposed cohort; structured interviews given and records reviewed; demonstrated that outcome was not present at start of study) | * (Authors controlled for important confounders) | ** (Self-reported outcomes; adequate subjects accounted for; adequate follow-up period of 20 years) | 6 | In the selection; ascertainment of exposure was self-reported |
RCT Studies | ||||||||
---|---|---|---|---|---|---|---|---|
Study | Domain 1 Risk of bias arising from the randomization process | Domain 2 Risk of bias due to deviations from the intended interventions (effect of assignment/adhering to intervention) | Domain 3 Missing outcome data | Domain 4 Risk of bias in measurement of the outcome | Domain 5 Risk of bias in selection of the reported result | Overall risk of bias | ||
Gunasekara et al., 2011 [18] (RCT) | Some concerns Difference between groups not fully described, which may suggest a problem with randomization | Low (effect assignment to intervention) Some concerns (effect of adhering to intervention) due complain to medication inquired/single-blinded | Some concerns out of 96, only 86 completed the study (risk of missing data in the outcome depend on its true value) | Low | Low | Low risk of bias | ||
Alfawaz et al., 2019 [19] (RCT) | High Due to baseline differences between groups | High (effect assignment to intervention) Participants and people delivering the intervention were aware of their intervention. Some concerns (effect of adhering to intervention) due to compliance to dietary recommendation | Low | High Assessment of the outcome could have been influenced by knowledge of intervention receive | Low | High risk of bias | ||
Non-RCT studies | Domain 1 Bias due to confounding | Domain 2 Bias in selection of participants into the study | Domain 3 Bias in classification of interventions | Domain 4 Bias due to deviations from intended interventions | Domain 5 Bias due to missing data | Domain 6 Bias in measurement of outcomes | Domain 7 Bias in selection of the reported result | Overall risk of bias |
Rostami et al., 2022 [27] (non-RCT) | Modetate | Low | Low | Low | Low | Moderate | Moderate | Moderate |
Armstrong et al., 1995 [28] (non-RCT) | Moderate | Serious | Moderate | Moderate | Moderate | Moderate | Serious | Serious |
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Eljazzar, S.; Abu-Hijleh, H.; Alkhatib, D.; Sokary, S.; Ismail, S.; Al-Jayyousi, G.F.; Tayyem, R. The Role of Copper Intake in the Development and Management of Type 2 Diabetes: A Systematic Review. Nutrients 2023, 15, 1655. https://doi.org/10.3390/nu15071655
Eljazzar S, Abu-Hijleh H, Alkhatib D, Sokary S, Ismail S, Al-Jayyousi GF, Tayyem R. The Role of Copper Intake in the Development and Management of Type 2 Diabetes: A Systematic Review. Nutrients. 2023; 15(7):1655. https://doi.org/10.3390/nu15071655
Chicago/Turabian StyleEljazzar, Sereen, Haya Abu-Hijleh, Dana Alkhatib, Sara Sokary, Shrooq Ismail, Ghadir Fakhri Al-Jayyousi, and Reema Tayyem. 2023. "The Role of Copper Intake in the Development and Management of Type 2 Diabetes: A Systematic Review" Nutrients 15, no. 7: 1655. https://doi.org/10.3390/nu15071655
APA StyleEljazzar, S., Abu-Hijleh, H., Alkhatib, D., Sokary, S., Ismail, S., Al-Jayyousi, G. F., & Tayyem, R. (2023). The Role of Copper Intake in the Development and Management of Type 2 Diabetes: A Systematic Review. Nutrients, 15(7), 1655. https://doi.org/10.3390/nu15071655