Hostname: page-component-76fb5796d-qxdb6 Total loading time: 0 Render date: 2024-04-30T05:25:51.262Z Has data issue: false hasContentIssue false

Validation of an FFQ to assess dietary protein intake in type 2 diabetic subjects attending primary health-care services in Mali

Published online by Cambridge University Press:  01 May 2009

A Coulibaly
Affiliation:
Département des Sciences des Aliments et de Nutrition, Faculté des Sciences de l’Agriculture et de l’Alimentation, Université Laval, Québec (QC), Canada G1K 7P4
H Turgeon O’Brien
Affiliation:
Département des Sciences des Aliments et de Nutrition, Faculté des Sciences de l’Agriculture et de l’Alimentation, Université Laval, Québec (QC), Canada G1K 7P4
I Galibois*
Affiliation:
Département des Sciences des Aliments et de Nutrition, Faculté des Sciences de l’Agriculture et de l’Alimentation, Université Laval, Québec (QC), Canada G1K 7P4
*
*Corresponding author: Email isabelle.galibois@aln.ulaval.ca
Rights & Permissions [Opens in a new window]

Abstract

Objective

To validate a 53-item quantitative FFQ (QFFQ) for the assessment of dietary protein intake in type 2 diabetic outpatients in Bamako, Mali.

Design

Consumption of protein-containing foods over the week preceding the interview was measured with a 7d QFFQ and compared with intakes measured with 48-h recalls.

Setting

Centre National de Lutte contre le Diabète.

Subjects

Seventeen male and forty female adults with type 2 diabetes.

Results

Correlation between protein intakes estimated using the QFFQ and 48h recalls was 0·63 (P < 0·0001). There was no significant difference between the two methods concerning the total protein daily intakes and intakes per kilogram of body weight. The QFFQ indicated that foods of animal origin were a lesser source of protein. Animal protein intake did not differ between men and women but sources did. In men, the main sources were beef (54 % of total animal protein), fish (15 %) and milk powder (8 %). In women, the principal sources were fish (28 %), beef (20 %) and birds (13 %). In contrast, plant protein intake was significantly higher in men than in women (P = 0·01), but the same plant foods contributed in similar proportions for both genders, rice being by far the greatest source (47 % of plant protein in men, 53 % in women).

Conclusion

The QFFQ developed in this study is a valid tool to evaluate dietary protein intakes in Malian diabetic subjects. While the total protein intakes were low in both men and women, differences in choices and amounts of protein food sources were shown.

Type
Research Paper
Copyright
Copyright © The Authors 2008

Type 2 diabetes mellitus is an important health issue worldwide. Black Africans living in rural and urban regions of Africa are no exception(Reference Osei, Schuster, Amoah and Owusu1). In Mali, the estimated number of people afflicted with diabetes was 140 000 in 2000, and it is expected to rise to 405 000 by 2030(2). The increasing prevalence of type 2 diabetes in sub-Saharan African regions can be partly ascribed to modernisation and adoption of Western lifestyle with an associated increase of energy-dense diets, reduced physical activity and obesity(Reference Ostbye, Welby, Prior, Salmond and Stokes3).

Nutrition therapy is an integral part of the treatment of diabetes mellitus and patient self-management(Reference Amend, Melkus, Chyun, Galasso and Wylie-Rosett48). Classically, more emphasis has been placed on the relative amounts and types of carbohydrate and fat to include in the diet(Reference Bantle, Wylie-Rosett and Albright5Reference Ha and Lean10), but some studies have also reported beneficial effects of increasing dietary protein in type 2 diabetes(Reference Parker, Noakes, Luscombe and Clifton11Reference Gannon and Nuttall13). This could be related to the fact that proteins do not increase plasma glucose concentrations in subjects with controlled diabetes, while ingested proteins are just as potent a stimulant of insulin secretion as carbohydrates(Reference Gannon, Nuttall, Grant, Ercan-Fang and Ercan-Fang14Reference Franz17). Thus, food proteins could contribute to an improvement in metabolic control. In the general population, the WHO/FAO recommend protein intake to account for 10–15 % of the total energy(9). The dietary intake of protein for individuals with diabetes and normal renal function should range between 15 % and 20 % of the total energy, according to the American Diabetes Association(Reference Bantle, Wylie-Rosett and Albright5, Reference Bantle, Wylie-Rosett and Albright6).

In sub-Saharan Africa, particularly in Mali, it has been reported that the availability of protein per capita for the general population was 60 g/d(Reference Honfoga and Van Den Boom18, 19) in contrast with the USA where the food supply provided an average of 113 g per capita per day in 2004(20). In addition, Mali is currently affected by a strong devaluation of its currency (CFA franc). This places the population at great risk as it has reached a limit in its capacity for adaptation, which includes not only the quality but also the quantity of food consumed(Reference Ag Bendech, Chauliac, Rérolle, Kante and Malvy21). These factors may indicate that the protein intake of a large number of Malian diabetic patients could be inadequate, in terms of both amount and quality.

In low-income countries, there is a lack of cost-effective dietary assessment methods(Reference Torheim, Barikmo, Hatloy, Diakité, Solvoll, Diarra and Oshaug22); therefore it is necessary to develop quantitative methods to assess food and nutrient intake. The FFQ is currently the method most often used for assessing dietary intake in large epidemiological studies in industrialised countries(Reference Torheim, Barikmo, Hatloy, Diakité, Solvoll, Diarra and Oshaug22). It represents a practical and cost-effective alternative to diet recalls and diet histories(Reference Segovia-Siapco, Singh, Jaceldo-Siegl and Sabaté23).

The aim of the present study was to conduct a nutritional survey in a group of type 2 diabetic patients in Mali in order to validate a 7d FFQ developed to quantify and characterise the usual dietary protein intake.

Methods

A detailed description of the study methods has been presented elsewhere(Reference Coulibaly, Turgeon-O’Brien and Galibois24); therefore, only a brief summary is given here.

Subjects and ethics

The study was undertaken in a primary health-care service for diabetes: the Centre National de lutte contre le Diabète (CNLD) in Bamako, Mali.

Fifty-seven adult Malians aged between 25 and 75 years, diagnosed with type 2 diabetes and not treated with insulin, were included in the study. Participants were among the outpatients who attended primary health-care services. The patients visiting the clinic received information from their physician. In order to facilitate patients’ adherence in the study, physicians were in charge of explaining the study protocol and verifying the eligibility criteria, which were checked again by a member of the research team (A.C.). The study was approved by the research ethical committee of Laval University. A written informed consent was obtained from subjects prior to their inclusion in the study.

The sample comprised more women than men (forty females v. seventeen males), largely reflecting the composition of the CNLD clientele as it was observed on the days of data collection. However, it could not be determined whether this is representative of the actual type 2 diabetic adult population in Mali.

Study design

This study was conducted on site over a 5-month period, between May and October 2005, corresponding to the wet season in Mali. Each subject individually met A.C. and the interviews were conducted in a local dialect, Bamana. The first interview comprised anthropometric measurements, a general questionnaire, a 7d quantitative FFQ (QFFQ) and a dietary recall. Most subjects came back during the following weeks for another interview with A.C. to complete a second dietary recall.

Anthropometric measurements and general questionnaire

Weight was measured with light clothing on a digital scale to the nearest 0·1 kg; standing height was measured without shoes using a wooden measuring board and tape with a precision of 0·1 cm. The BMI was then calculated by dividing weight (kg) by the square of height (m).

After anthropometric measurements were taken, each participant was submitted to a general questionnaire to collect information on diabetes duration and treatment and on sociodemographic characteristics.

Dietary recalls

In the present study, participants were asked to recall their previous 48h intake of food and beverages. It was shown that a 48h recall is able to rank participants appropriately with respect to most nutrients and many foods, and is superior to a single 24h recall(Reference McNaughton, Mishra, Bramwell, Paul and Wadsworth25). All participants completed one (n 14) or two (n 43) 48h recalls. The nutrient content was analysed using the nutritional analysis software NUTRIFIQ developed at the Département des Sciences des Aliments et de Nutrition at Laval University in Québec, Canada, and based on the 2001 Canadian Nutrient File(26). To complete the database, nutritive values of foods from the Malian Food Composition Table(27) were added to the Canadian Nutrient File.

The 7d quantitative FFQ

The QFFQ developed for the present study covered the amount of all protein-containing foods consumed during the 7d preceding the interview. Using the Food Composition Table for Mali(27) and the Food Composition Tables for use in Africa(28), most food items and dishes consumed in Mali that were a source of protein (that is, supplying at least 1 g protein per 100 g) were identified. The QFFQ was pre-tested with a few diabetic patients (n 5) in order to ensure completeness and functionality of the questionnaire. These patients were not included in the actual study.

The QFFQ contained a list of fifty-three food items divided in two main categories: animal proteins and plant proteins. The animal protein group comprised meat, offal, poultry, fish, eggs and milk, as well as combination dishes containing these foods, while the plant protein group included dishes of beans, soya, peas, groundnut, rice, maize, sorghum, millet, wheat and tubers. Also, open-ended questions on other protein foods consumed were included at the end of the QFFQ. Food models and usual utensils were used to help participants assess the amounts eaten. In Mali, a significant proportion of daily intake is made up of foods and beverages bought from street vendors. When participants were asked to describe the size of the portions they ate, they would often refer to the price they paid. Local street foods were also purchased from vendors by A.C. in order to determine the weight of the portion by the price paid. Portion sizes of foods recorded in household measures were also converted to weight equivalents.

For each food in the list, a protein conversion factor was derived from food composition tables. The conversion factor is a number between 0·01 and 1·00, which represents the amount of protein in 1 g of food. For each participant, the protein content of the average portion consumed on a daily basis was calculated by multiplying the weight of the portion (in g) by the conversion factor. A summation was made for the animal protein foods and the plant protein foods, as well as for the total daily protein intake.

Of the fifty-seven participants included in this study, two did not complete the FFQ; so the dietary protein intakes from the QFFQ were calculated for fifty-five participants.

Biochemical analyses

In the days following the first interview, the subjects were asked to go to a private laboratory of biomedical analyses (Laboratoire ALGI) in Bamako to undergo a blood test. Fasting venous blood samples were collected from patients using tubes containing ethylenediaminetetraacetic acid (EDTA) for glycosylated haemoglobin (HbA1c) analysis, and into tubes containing sodium fluoride for glucose analysis. Blood sample collections and the analyses were carried out directly in the private laboratory. Of the fifty-seven participants included in this study, seven failed to go to the laboratory and did not undergo the blood sampling.

Glucose levels were measured by enzymatic methods using a glucose RTU kit from Biomerieux. HbA1c was measured using the D-10 automat system of BIO-RAD, an HPLC system that operates without pre-treatment of the sample and with a restricted intervention by the user. The D-10 technique for HbA1c is certified by the ‘National Glycohemoglobin Standardization Program’ (NGSP), and has proven its traceability compared to the reference method of the ‘Diabetes Control and Complications Trial’(29).

At each meeting with A.C. in the CNLD, capillary fasting blood glucose was also measured for each participant using a blood glucose meter and test strips from Ascencia Contour, Bayer.

Statistical analysis

Statistical analyses were performed using SAS release 9·1 (SAS Inc., Cary, NC, USA). The normality of data was tested before statistical analyses. Results are expressed as mean and sd unless otherwise stated. Comparisons between groups were undertaken using independent sample Student’s t-tests. Comparisons were also made between the two methods using the paired t-test. Pearson’s correlation coefficients were calculated to measure the association between the two dietary intake methods. Statistical significance was set at P < 0·05.

Results

The mean age of the participants was 54·5 (sd 9·4) years and their diabetes duration was 3·5 (sd 3·8) years. More than three-quarters of the subjects were married. In subjects’ households, the meals were shared by an average of seventeen family members. About a quarter of the subjects were employed. Forty-two per cent did not have any schooling; approximately 16 % went to university, while 42 % of subjects had reached either a primary or a lycée/college education level.

Only one-tenth of participants took no medication and managed their diabetes only with diet, whereas one-third took medicinal plants with or without oral hypoglycaemic agents. About half of the subjects who took oral hypoglycaemic agents used drugs of the sulfonylurea class, mainly Amarel®, Glucophage®, Hemidaonil® and Daonil®. Regarding frequency of intake, 17·5 % of the subjects took the oral hypoglycaemic agents once per day, 35 % took them twice, 30 % took them three times per day and finally, only 2 % of subjects took these drugs four times per day. When used, the medicinal plants were mainly taken in the form of infusion. More than three-quarters of the users took them daily; only two subjects took them on a weekly basis and one only occasionally.

Concerning dietary advices, all participants, except two, said that they had received nutritional counselling related to their diabetes. Un-individualised nutritional advice given to patients at the CNLD focuses on three essential points which are: (i) foods to be avoided: sugar, banana, cream, condensed milk, cake, dried fruits, honey, fruits with syrup, fruit juice; (ii) foods to be eaten in restricted amounts, such as meat and fish, no more than 250 g/d; and starchy foods to be measured with a 400ml bowl: white rice, steamed rice, fonio (an African cereal crop low in protein), potato, yam, millet, corn, peas, beans; and (iii) vegetables allowed without measurement. Other advice were related to lifestyle habits: 30 min of physical activity per day and weaning from smoking were recommended.

Clinical characteristics and energy and macronutrient intakes of participants according to the 48h recalls are presented for each gender in Table 1. There was no significant difference between men and women for age and weight. BMI was larger for women than for men. On the contrary, height and daily intakes of energy were significantly higher in men than in women. However, the contribution of macronutrients expressed as a percentage of total energy was not different between men and women. Fasting blood glucose values were also similar for both genders. Although HbA1c tended to be higher in men than in women, the difference was not statistically significant.

Table 1 Anthropometric characteristics, metabolic control and dietary intakes of participants according to 24h dietary recalls (n 57)

HbA1c, glycosylated haemoglobin.

P < 0·05.

Protein intake estimates obtained with the 48h recalls and with the QFFQ were compared. Using Pearson’s test of correlation, positive and significant correlations were found between daily protein intakes using the QFFQ and 48h recalls (all subjects: r = 0·63, P < 0·0001; women: r = 0·61, P < 0·0001; men r = 0·59, P = 0·02). Results of the t-tests are shown in Table 2, where the total protein daily intakes and intakes per kilogram of body weight are also presented. There were no significant differences between the two methods.

Table 2 Daily protein intake of participants by gender according to the 48h recalls (n 57) and the QFFQ (n 55)

*Significantly different from men (P < 0·01).

Significance of the difference between mean recall and quantitative FFQ (QFFQ).

n 17 for dietary recall, n 16 for QFFQ.

§n 40 for dietary recall, n 39 for QFFQ.

The staple foods that were the predominant providers of protein in the diets of men and women according to the QFFQ are reported in Table 3. Concerning animal proteins, the total daily intake did not differ between men and women, but contributions of some food sources did. In men, the main sources of animal protein were in decreasing order: beef (54 % of total animal protein), fish (15 %) and milk powder (8 %). In women, the principal sources were fish (28 %), beef (20 %) and birds (chicken, guinea fowl, pigeon) (13 %). In absolute amounts, the daily intake of beef (P = 0·04) was significantly higher in men than in women, while women consumed more milk curds than men (P = 0·01). For plant proteins, the picture was somewhat different. Total daily intake was significantly higher in men than in women (P = 0·01), but the same plant foods contributed in similar proportions to the total intake for both genders. Thus, rice was by far the largest source of plant protein (47 % in men, 53 % in women), followed by bread (12 % in men and women) and groundnut (11 % in men, 9 % in women).

Table 3 Main sources of animal and plant protein in diets of type 2 diabetic men and women in Mali

aNumber of eggs consumed per day.

Discussion

In the context that information on the diet of Malian diabetic patients is scarce and considering that dietary protein could contribute to the improvement in blood glucose control, we developed an interviewer-administered QFFQ to measure the intakes of protein in the habitual diet of these subjects. The purpose of the present study was to validate this QFFQ in a group of type 2 diabetic patients attending a primary health-care service in Mali, using 48h recalls as the reference method.

Results indicate that there were no significant differences in the intakes of protein evaluated with the QFFQ and the 48h recalls. A significant positive correlation was found between the QFFQ and the 48h dietary recalls for protein intake (r = 0·63), which was within the expected range and similar to the findings of Rodriguez et al.(Reference Rodriguez, Méndez, Torun, Schroeder and Stein30) (r = 0·53). It has been previously reported that the correlation coefficient of a nutrient should range from 0·40 to 0·70 in order to produce a good agreement between assessment methods(Reference Thompson and Byers31, Reference Willett32). Some studies on subjects without diabetes(Reference Malekshah, Kimiagar and Saadatian-Elahi33) have found a higher (r = 0·76), weaker or no correlation(Reference Goulet, Nadeau, Lapointe, Lamarche and Lemieux34, Reference Nath and Huffman35) in dietary protein. In adults with type 1 diabetes, Riley and Blizzard(Reference Riley and Blizzard36) investigated the characteristics of a FFQ in measuring dietary intake. They have reported a weak correlation (r = 0·38) for dietary proteins. This difference could be due to the reference method. They used 2d weighed dietary records, while in our study the reference method was the 48h recall.

Although we found positive and significant correlations and no significant difference in the daily intakes between the two dietary methods, only the 48h recalls showed significant differences between men and women in total protein intake and in intake per kilogram of body weight. This might be due to under- and overestimation of intakes, depending on the dietary assessment method. It has been shown that FFQ can both under- and overestimate the intakes of specific nutrients(Reference Goulet, Nadeau, Lapointe, Lamarche and Lemieux34). In fact, many validation studies have reported that FFQ, when compared to food records or 24h recalls, overestimate nutrient intakes(Reference Torheim, Barikmo, Hatloy, Diakité, Solvoll, Diarra and Oshaug22, Reference Segovia-Siapco, Singh, Jaceldo-Siegl and Sabaté23, Reference Rodriguez, Méndez, Torun, Schroeder and Stein30, Reference Malekshah, Kimiagar and Saadatian-Elahi33, Reference Schaefer, Augustin, Schaefer, Rasmussen, Ordovas, Dallal and Dwyer37). In contrast, other studies have reported that FFQ did not systematically overestimate nutrient intakes(Reference Goulet, Nadeau, Lapointe, Lamarche and Lemieux34, Reference MacIntyre, Venter and Vorster38Reference Quandt, Vitolins, Smith, Tooze, Bell, Davis, DeVellis and Arcury40).

Regardless of dietary methods, the present study showed that dietary protein intakes in a group of type 2 diabetic men and women in Mali were similar to what is observed for protein availability (around 60 g per capita per day) in the diet of the general Malian population(Reference Honfoga and Van Den Boom18, 19). They were also quite similar to the dietary protein intakes of South African black men and women with type 2 diabetes (63 and 50 g/d, respectively)(Reference Nthangeni, Steyn, Alberts, Steyn, Levitt, Laubscher, Bourne, Dick and Temple41), but lower than that of Ghanaian type 2 diabetics (81 g/d)(Reference Banini, Allen, Allen, Boyd and Lartey42). Compared to the protein availability of the US population (113 g per capita per day) in 2004(20), the lower protein intake of the participants in this study could be due to the reduced financial means and to the large number of family members, which could limit the access to excellent sources of protein such as meat and fish. In fact, Torheim et al.(Reference Torheim, Barikmo, Hatloy, Diakité, Solvoll, Diarra and Oshaug22) have reported in their study conducted in a Malian village that meat and fish were rarely eaten. The fact that food patterns in Mali are seasonal(19, Reference Torheim, Barikmo, Hatloy, Diakité, Solvoll, Diarra and Oshaug22) could explain the low intake of protein by the diabetic patients. Indeed, our study was conducted during the wet season, which is not the period of harvest, and hence staple foods such as cereals were not abundant. The low protein intake could also be due to the fact that patients were sometimes given conflicting advice with respect to the type of foods they were allowed to eat, and they generally appeared to have little understanding of portion sizes. We found that the main provider of proteins in their diet was plant protein, which was also shown in other studies(Reference Honfoga and Van Den Boom18, 19). But at the same time, as doctors and nurses had counselled them to eat less food that was rich in starch, our subjects may have under-reported their plant food intake to show their adherence to nutritional counselling. Although dietary carbohydrate is the major contributor to postprandial glucose concentration, it is an important source of energy, water-soluble vitamins and minerals, and fibre(Reference Bantle, Wylie-Rosett and Albright57). Hence, low-carbohydrate diets are not recommended in the management of diabetes. The amount of carbohydrate ingested is usually the primary determinant of postprandial response, but the type of carbohydrate also affects this response(Reference Bantle, Wylie-Rosett and Albright57). As carbohydrate-containing plant foods are the main provider of dietary protein in Malian diabetic patients, they should be advised to give preference to plant foods such as legumes that could provide more protein than rice or maize, and that could also provide more fibre, which is beneficial in type 2 diabetes(Reference Bantle, Wylie-Rosett and Albright57). Moreover, an experimental study in subjects with type 2 diabetes reported that compared to potatoes, dried peas induced a delayed and smaller increase in postprandial plasma glucose, supporting the suggestion that type 2 diabetic patients should increase their consumption of low-glycaemic, high-fibre foods at the expense of high-glycaemic, low-fibre foods(Reference Schafer, Schenk, Ritzel, Ramadori and Leonhardt43).

We should also keep in mind that Mali is one of the poorest countries in Africa and with the 1994 devaluation of the currency, a great impoverishment of the population was observed. The continuing impoverishment of the Malian population, the impact of large family sizes and food consumption units, and the cost of diabetes treatment pose a major challenge to patients who cannot afford more than staple foods, which are mainly plant food.

The higher consumption of dietary protein and beef in men compared to women can be explained by socio-cultural conditions prevailing in Mali such as polygamy, number of family members and the women’s position in the family. In fact, women are generally housewives, with men being the main financial providers. This leaves women in a lower economic situation. Men have privileged access to food and, as seen here, have more beef in their diet than women. Moreover, women must at first satisfy their husband and children’s dietary intake in order to be well regarded by their family. The presence of street food consumption in Mali(Reference Ag Bendech, Chauliac, Rérolle, Kante and Malvy21, Reference Diagana, Akindès, Savadogo, Reardon and Staatz44) could also explain the higher consumption of animal protein and beef in men. The fact that men have financial resources could allow them to buy street foods rich in protein such as meat, fish and eggs to supplement their dietary protein intake.

In patients with type 2 diabetes, it was reported that the simultaneous ingestion of glucose with protein in test meals significantly decreased the glycaemic response, as compared with glucose taken alone(Reference Gannon, Nuttall, Lane and Burmeister45). Other single-meal studies confirmed that protein foods have a modest impact on blood glucose but a significant effect on insulin secretion(Reference Gannon, Nuttall, Grant, Ercan-Fang and Ercan-Fang14, Reference Saeed, Jones, Nuttall and Gannon15) in type 2 diabetic subjects. In addition, clinical studies have shown that an increase in dietary protein improved the metabolic control in type 2 diabetes, albeit in the context of a weight-loss diet(Reference Parker, Noakes, Luscombe and Clifton11) or without weight loss(Reference Gannon and Nuttall46).

Considering these potential beneficial effects of dietary protein in type 2 diabetes, future studies should be conducted to evaluate the effect of a nutritional intervention in Malian type 2 diabetic patients without nephropathy that would aim to improve their protein intake. Also, as dietary habits depend on the time of the year, nutrition surveys should be repeated in other seasons and with larger and more representative samples to confirm the assessment of usual protein intake with the QFFQ. Finally, dietary protein intake could be validated using biomarkers such as urinary nitrogen.

Conclusion

In conclusion, although our study presents some limitations, we found that the QFFQ developed in the present study is a valid and useful tool to estimate the average daily protein intakes of type 2 diabetic patients in Mali. We also found that diabetic patients need to receive more nutrition counselling and many patients need to increase their protein intake, particularly women. However, it will be necessary to conduct nutritional surveys with larger samples to verify the actual intake of the type 2 diabetic population in Mali.

Acknowledgements

Source of funding:This work received financial support from Programme Canadien des bourses de la francophonie.

Conflict of interest:No conflict of interest.

Author contributions:A.C. is a candidate for a PhD in nutrition at Université Laval. This paper is a part of her thesis work. I.G. is her research director, and H.T.O’B. is her co-director.

Acknowledgements:We thank Dr Niantao, Boukenem, Konake Kadidia, nurses of the CNLD, and all participants of this study.

References

1.Osei, K, Schuster, DP, Amoah, AGB & Owusu, SK (2003) Pathogenesis of type 1 and type 2 diabetes mellitus in sub-Saharan Africa: implications for transitional populations. J Cardiovasc Risk 10, 8596.CrossRefGoogle ScholarPubMed
2. World Health Organization (2007) Facts and figures. http://www.who.int/diabetes/facts/world_figures/en/index1.html (accessed May 2007).Google Scholar
3.Ostbye, T, Welby, TJ, Prior, IAM, Salmond, CE & Stokes, YM (1989) Type 2 (non insulin dependent diabetes) migration and westernization; the Tokelau Island study. Diabetologia 32, 585590.CrossRefGoogle Scholar
4.Amend, A, Melkus, GD, Chyun, DA, Galasso, P & Wylie-Rosett, J (2007) Validation of dietary intake data in black women with type 2 diabetes. J Am Diet Assoc 107, 112117.CrossRefGoogle ScholarPubMed
5.Bantle, JP, Wylie-Rosett, J, Albright, AL et al. (2006) Nutrition recommendations and interventions for diabetes – 2006. A position statement of the American Diabetes Association. Diabetes Care 29, 21402157.Google ScholarPubMed
6.Bantle, JP, Wylie-Rosett, J, Albright, AL et al. (2007) Nutrition recommendations and interventions for diabetes. A position statement of the American Diabetes Association. Diabetes Care 30, S48S65.Google Scholar
7.American Diabetes Association (2006) Standards of medical care in diabetes 2006. Diabetes Care 29, S4S42.CrossRefGoogle Scholar
8.Canadian Diabetes Association (2003) Clinical practice guidelines for the prevention and management of diabetes in Canada. Expert Committee. Can J Diabetes 27, S1S152.Google Scholar
9. World Health Organization (2003) Diet, Nutrition and the Prevention of Chronic Diseases. Joint WHO/FAO Expert Consultation. Geneva: WHO.Google Scholar
10.Ha, TKK & Lean, MEJ (1998) Recommendations for the nutritional management of patients with diabetes mellitus. Eur J Clin Nutr 52, 467481.CrossRefGoogle ScholarPubMed
11.Parker, B, Noakes, M, Luscombe, N & Clifton, P (2002) Effect of high-protein, high-monounsaturated fat weight loss diet on glycemic control and lipid levels in type 2 diabetes. Diabetes Care 25, 425430.CrossRefGoogle ScholarPubMed
12.Gannon, MC, Nuttall, FQ, Saeed, A, Jordan, K & Hoover, H (2003) An increase in dietary protein improves the blood glucose response in persons with type 2 diabetes. Am J Clin Nutr 78, 734741.CrossRefGoogle ScholarPubMed
13.Gannon, MC & Nuttall, FQ (2004) Effect of a high-protein, low-carbohydrate diet on blood glucose control in people with type 2 diabetes. Diabetes 53, 23752382.CrossRefGoogle ScholarPubMed
14.Gannon, MC, Nuttall, FQ, Grant, CT, Ercan-Fang, S & Ercan-Fang, N (1998) Stimulation of insulin secretion by fructose ingested with protein in people with untreated type 2 diabetes. Diabetes Care 21, 1622.CrossRefGoogle ScholarPubMed
15.Saeed, A, Jones, SA, Nuttall, FQ & Gannon, MC (2002) A fasting-induced decrease in plasma glucose concentration does not affect the insulin response to ingested protein in people with type 2 diabetes. Metabolism 51, 10271033.CrossRefGoogle Scholar
16.Franz, MJ, Bantle, JP, Beebe, CA et al. (2002) Evidence-based nutrition principles and recommendations for the treatment and prevention of diabetes and related complications. Diabetes Care 25, 148198.CrossRefGoogle ScholarPubMed
17.Franz, MJ (2004) Evidence-based medical nutrition therapy for diabetes. Nutr Clin Pract 19, 137144.CrossRefGoogle ScholarPubMed
18.Honfoga, BG & Van Den Boom, GJM (2003) Food-consumption patterns in central West Africa, 1961 to 2000, and challenges to combating malnutrition. Food Nutr Bull 24, 167181.CrossRefGoogle ScholarPubMed
19. Food and Agriculture Organization (1999) Aperçus nutritionnels par pays-Mali. http://www.fao.org/ag/agn/nutrition/mal-f.stm (accessed May 2007).Google Scholar
20. US Department of Agriculture (2007) Nutrient Content of the US food supply, 1909–2004. A summary report. http://www.cnpp.usda.gov/USFoodSupply.htm (accessed May 2007).Google Scholar
21.Ag Bendech, M, Chauliac, M, Rérolle, PG, Kante, N & Malvy, DJM (2000) Les enjeux de la consommation alimentaire en milieu urbain à Bamako. Sante Publique 12, 4563.Google Scholar
22.Torheim, LE, Barikmo, I, Hatloy, A, Diakité, M, Solvoll, K, Diarra, MM & Oshaug, A (2001) Validation of a quantitative food-frequency questionnaire for use in Western Mali. Public Health Nutr 4, 12671277.CrossRefGoogle ScholarPubMed
23.Segovia-Siapco, G, Singh, P, Jaceldo-Siegl, K & Sabaté, J (2007) Validation of a food-frequency questionnaire for measurement of nutrient intake in a dietary intervention study. Public Health Nutr 10, 177184.CrossRefGoogle Scholar
24.Coulibaly, A, Turgeon-O’Brien, H & Galibois, I (2007) Apports nutritionnels, caractéristiques anthropométriques et contrôle métabolique de diabétiques de type 2 à Bamako au Mali. Méd Nutr 43, 4960.CrossRefGoogle Scholar
25.McNaughton, SA, Mishra, GD, Bramwell, G, Paul, AA & Wadsworth, MEJ (2005) Comparability of dietary patterns assessed by multiple dietary assessment methods: results from the 1946 British birth cohort. Eur J Clin Nutr 59, 341352.CrossRefGoogle ScholarPubMed
26.Bureau des Sciences de la Nutrition (2001) Fichier canadien des éléments nutritifs. Ottawa: Ministère de la Santé Nationale et du Bien-être Social.Google Scholar
27. Barikmo I, Ouattara F & Oshaug A (2004) Table de composition d’aliments du Mali. Lillestrøm, Norway: Akershus University College.Google Scholar
28. Wu L & Busson J (1968) Table de composition des aliments à l’usage de l’Afrique. Rome: FAO.Google Scholar
29. BIO-RAD (2006) HPLC D-10 automat system. http://diabetes.bio-rad.com/html/products.html (accessed October 2006).CrossRefGoogle Scholar
30.Rodriguez, MM, Méndez, H, Torun, B, Schroeder, D & Stein, AD (2002) Validation of a semi-quantitative food-frequency questionnaire for use among adults in Guatemala. Public Health Nutr 5, 691698.CrossRefGoogle ScholarPubMed
31.Thompson, FE & Byers, T (1994) Dietary assessment resource manual. J Nutr 124, 2245S2317S.Google ScholarPubMed
32.Willett, WC (1994) Future directions in the development of food-frequency questionnaires. Am J Clin Nutr 59, 171S174S.CrossRefGoogle ScholarPubMed
33.Malekshah, AF, Kimiagar, M, Saadatian-Elahi, M et al. (2006) Validity and reliability of a new food frequency questionnaire compared to 24 h recalls and biochemical measurements: pilot phase of Golestan cohort study of esophageal cancer. Eur J Clin Nutr 60, 971977.CrossRefGoogle ScholarPubMed
34.Goulet, J, Nadeau, G, Lapointe, A, Lamarche, B & Lemieux, S (2004) Validity and reproducibility of an interviewer-administered food frequency questionnaire for health French-Canadian men and Women. Nutr J 3, 110.CrossRefGoogle Scholar
35.Nath, SD & Huffman, FG (2005) Validation of a semiquantitative food frequency questionnaire to assess energy and macronutrient intakes of Cuban Americans. Int J Food Sci Nutr 56, 309314.CrossRefGoogle ScholarPubMed
36.Riley, MD & Blizzard, L (1995) Comparative validity of a food frequency questionnaire for adults with IDDM. Diabetes Care 18, 12491254.CrossRefGoogle ScholarPubMed
37.Schaefer, EJ, Augustin, JL, Schaefer, MM, Rasmussen, H, Ordovas, JM, Dallal, GE & Dwyer, JT (2000) Lack of efficacy of a food-frequency questionnaire in assessing dietary macronutrient intakes in subjects consuming diets of known composition. Am J Clin Nutr 71, 746751.CrossRefGoogle ScholarPubMed
38.MacIntyre, UE, Venter, CS & Vorster, HH (2000) A culture-sensitive quantitative food frequency questionnaire used in African population: 2. Relative validation by 7-day weighed records and biomarkers. Public Health Nutr 4, 6371.CrossRefGoogle Scholar
39.Parr, CL, Barikmo, I, Torheim, LE, Ouattara, F, Kaloga, A & Oshaug, A (2002) Validation of the second version of a quantitative food-frequency questionnaire for use in Western Mali. Public Health Nutr 5, 769781.CrossRefGoogle ScholarPubMed
40.Quandt, SA, Vitolins, MZ, Smith, SL, Tooze, JA, Bell, RA, Davis, CC, DeVellis, RF & Arcury, TA (2007) Comparative validation of standard, picture-sort and meal-based food-frequency qustionnaires adapted for an elderly population of low socio-economic status. Public Health Nutr 10, 524532.CrossRefGoogle ScholarPubMed
41.Nthangeni, G, Steyn, NP, Alberts, M, Steyn, K, Levitt, NS, Laubscher, R, Bourne, L, Dick, J & Temple, N (2002) Dietary intake and barriers to dietary compliance in black type 2 diabetic patients attending primary health-care services. Public Health Nutr 5, 329338.CrossRefGoogle ScholarPubMed
42.Banini, AE, Allen, JC, Allen, HG, Boyd, LC & Lartey, A (2003) Fatty Acids, diet, and body indices of type II diabetic American Whites and Blacks and Ghanaians. Nutrition 19, 722726.CrossRefGoogle ScholarPubMed
43.Schafer, G, Schenk, U, Ritzel, U, Ramadori, G & Leonhardt, U (2003) Comparison of the effects of dried peas with those of potatoes in mixed meals on postprandial glucose and insulin concentrations in patients with type 2 diabetes. Am J Clin Nutr 78, 99103.CrossRefGoogle ScholarPubMed
44.Diagana, B, Akindès, F, Savadogo, K, Reardon, T & Staatz, J (1999) Effects of the CFA franc devaluation on urban food consumption in West Africa: overview and cross-country comparisons. Food Policy 24, 465478.CrossRefGoogle Scholar
45.Gannon, MC, Nuttall, FQ, Lane, JT & Burmeister, LA (1992) Metabolic response to cottage cheese or egg white protein, with or without glucose, in type II diabetic subjects. Metabolism 41, 11371145.CrossRefGoogle ScholarPubMed
46.Gannon, MC & Nuttall, FQ (2006) Control of blood glucose in type 2 diabetes without weight loss by modification of diet composition. Nutr Metab 3, 18.CrossRefGoogle ScholarPubMed
Figure 0

Table 1 Anthropometric characteristics, metabolic control and dietary intakes of participants according to 24h dietary recalls (n 57)

Figure 1

Table 2 Daily protein intake of participants by gender according to the 48h recalls (n 57) and the QFFQ (n 55)

Figure 2

Table 3 Main sources of animal and plant protein in diets of type 2 diabetic men and women in Mali