Once considered as merely a disease marker, it is now appreciated that anaemia has profound implications as a risk factor for other illnesses while posing a serious health risk on its own. Anaemic patients have a shorter survival than their non-anaemic, age-matched counterparts(Reference Ania, Suman, Fairbanks, Rademacher and Melton1). Anaemia is also an independent risk factor for mortality in HIV infection(Reference Semba, Shah, Klein, Mayer, Schuman and Vlahov2), cancer(Reference Nissenson, Goodnough and Dubois3), renal disease(Reference Caro, Salas, Ward and Goss4) and heart disease(Reference Mozaffarian, Nye and Levy5). Additionally, anaemia contributes to disease morbidity. Thus, anaemia constitutes a major health issue and no more so than in the elderly.
Anaemia is a common health problem among elderly populations worldwide, particularly in developing countries. The prevalence of anaemia in the elderly has been found to range from 8 % to 44 %, with the highest prevalence in men aged 85 years and older(Reference Ania, Suman, Fairbanks and Melton6–Reference Daly8), by the WHO criteria for anaemia (Hb of <120 g/l in women and <130 g/l in men)(9). In China, the anaemia prevalence for people aged 60 years and older in rural areas was 31·6 %, far higher than that in urban areas (19·6 %) and just second to that of infants, as reported by data of the Chinese Nutrition and Health Survey in 2002(Reference Wang10). The dietary pattern has changed dramatically during the past 20 years in China, especially in rural China; however, the anaemia prevalence in rural China has changed little. Are there any special possible reasons behind the high prevalence of anaemia in rural Chinese elderly? Study shows that chronic blood loss from genitourinary tract cancer, chronic haemoptysis and bleeding disorders may result in Fe deficiency but are much less common causes(Reference Smith11).
The aims of the present case–control study were to investigate the possible dietary risk factors for anaemia in rural elderly women in south-west China and also to provide basic data for further effective and sustainable preventive dietary measures for anaemia in the elderly population.
Subjects and methods
Study design
The present population-based, case–control study was conducted in Guangxi Autonomous Region, south-west China. Study participants were peasants from fourteen villages in two counties of Guangxi Province, an area with a relative low economic income level. The study was approved by the ethics committee of the Nutrition and Food Safety Institute of the Chinese Center for Disease Control and Prevention (CDC).
Study population
All female volunteers, aged 50–75 years, gave a finger-prick blood sample for measurement of whole blood Hb. Cases and controls were selected by their Hb value according to the anaemia criteria defined by WHO, 1968(9).
1. Cases: Women with Hb concentration <120 g/l were identified as anaemic. Of the women with anaemia, those with serious diagnosed diseases were excluded, and those with Hb concentration between 90 and 120 g/l became candidates for anaemia cases. Every candidate was sent a letter by a primary health-care physician, which described and explained the study and sought participation. If consent was obtained and a candidate wished to participate in the study, the primary health-care physician scheduled an appointment for an in-person interview.
2. Controls: The population-based controls were selected from the volunteers whose Hb concentration was >130 g/l and without serious diagnosed diseases. The controls were from the same village and were in the same age group (5 years to be considered as one group) as the cases. All controls were contacted in a fashion similar to the cases to schedule in-person interviews.
Each participant was requested to complete a health and lifestyle survey, a dietary survey and a basic health examination.
Dietary data collection
A Chinese FFQ and 24 h recall were used in dietary assessment. The FFQ comprised 108 food items grouped into sixteen categories and subjects were asked about their habitual diets at home during the past year. In addition, all of the foods the subjects ate within 24 h were recorded in a 24 h recall questionnaire, which was continued for three days. Food and nutrients were calculated from the three 24 h recalls, with a supplement for the intake of tea, edible oils and spices, which were not included in the 24 h recall questionnaire, by FFQ. All of the questionnaires were revised by specialist and validated by a pilot study. The whole dietary questionnaire was asked by trained interviewers. Food models were used to aid participants in estimating intake amounts in order to help improve data quality. To assess Fe intake accurately, the intake of mainly medicines, especially chalybeate, was also questioned. We assessed the dietary Fe intake according to results of the dietary survey and the Chinese food composition table(12). More than 97 % of the total Fe analysed in the diet came from the 24 h food recalls and the other 3 % from the FFQ.
Dietary Balance Index, low bound score
To evaluate the relationship between the diet pattern and anaemia, we introduced the Chinese Dietary Balance Index (DBI) in which eight items – cereals, vegetables and fruits, beans and dairy, animal foods, alcohol, salt, edible oils and food variety – were chosen to assign cut-offs and point schemes based on the Chinese Food Guide Pagoda(Reference He, Zhai and Ge13, 14). The maximal score was given for each component. If the consumption reached the recommended amount, score was 0. The scores of the components reflecting under-intake are negative, the ones reflecting over-intake are positive, and the ones which need to reflect both under- and over-intake can be negative and positive. There are five methods to calculate DBI score: DBI total score (DBI_TS), DBI low bound score (DBI_LBS), DBI high bound score (DBI_HBS), DBI dietary quality distance (DBI_DQD) and DBI pattern. In the present paper, one of the scoring methods, DBI_LBS, was used to present the problem of under-intake and its severity. DBI_LBS is the sum of each negative score of all the related components. The higher the absolute value of DBI_LBS, the lower the food intake and the greater the severity of undernutrition. Four of the eight items – i.e. cereals, vegetables and fruits, beans and dairy, animal food, whose scores can be negative – were selected to calculate DBI_LBS. Table 1 shows the four selected DBI components and their method of evaluation.
Lifestyle survey and basic health examination
Each participant was interviewed at the time of enrolment to obtain information on health status and lifestyle including demographic data, education, marriage, expenditure on food, physical activity, exercise, smoking and alcohol, suffering chronic disease and which kind of chronic disease diagnosed at hospital (eleven kinds of chronic disease which might relate to anaemia were considered, including alimentary tract ulcer, haemorrhoids and lung tuberculosis), sleeping and mood. A simple health examination comprising measurement of weight, height, waist circumference, heart rate and blood pressure was done for each participant. Anthropometry was performed by trained examiners following a standardized protocol.
Data analysis
Data processing and statistical analyses were done using the Epi Info (Centers for Disease Control and Prevention, Atlanta, GA, USA) and SAS 8·2 software packages (SAS Institute, Inc., Cary, NC, USA). The t test and the χ 2 test were used to compare continuous variables and frequencies, respectively, between the two groups. We calculated odds ratios and 95 % confidence intervals from unconditional logistic regression models to ascertain the association of total energy and nutrient intakes (in quartiles) with anaemia risk. Cut-off points for quartiles of nutrient intakes were determined on the basis of distributions among all controls. Total meat consumption, protein, age, BMI, waist circumference (WC), diastolic blood pressure (DBP) and systolic blood pressure (SBP) were evaluated as potential confounding factors in model I. Furthermore, energy, fat, expenditure on food and pregnancy times in lifetime were adjusted in model II on the basis of model I. Each nutrient had a unique set of confounding variables. A stepwise procedure was performed to obtain the final model. Statistical tests were two-sided. Significance was set at P < 0·05.
Results
General characteristics of the subjects
The finger blood Hb level was detected for a total of 1696 rural women aged 50–75 years in Guangxi Chuang Autonomous Region. Of the 492 women diagnosed with anaemia, eighteen had Hb concentration <90 g/l and 474 had Hb concentration between 90 and 120 g/l. Due to nine women refusing, eleven being untraceable and thirteen dropping out because of illness, 441 candidates with Hb between 90 and 120 g/l were finally selected as cases and thus the response rate (interviewed/eligible) was 93·0 %. Four hundred and thirty-nine of the 480 eligible candidates (Hb > 120 g/dl) were selected as controls and the response rate was 91·5 % (twenty-four women refused, nine were untraceable and eight dropped out because of illness). After being checked according to designated criteria, twenty-one cases and six controls with unreasonable dietary information were deleted during the process of data analysis. Thus, data of 420 cases and 433 controls were used for the final analysis.
The average Hb concentration in the anaemia group was 112·0 g/l, ranging from 90·0 to 119·9 g/l; while the average Hb concentration in controls was 138·5 g/l and ranged from 125·9 to 173·0 g/l.
The proportion of ethnic minority Chuang and pregnancy times in lifetime were significantly higher in cases than in controls (P = 0·03 for both). BMI (P < 0·001), WC (P < 0·001), DBP (P = 0·005) and expenditure on food (P = 0·004) were significantly lower in cases compared with controls. No significantly difference was observed for SBP and heart rate between the two groups (Table 2).
Dietary assessment
Table 3 shows the mean daily food consumption and nutrient intakes. The mean consumption of animal foods in controls was 91·0 g/d, 10·5 % higher than that in cases. The consumption of total animal foods (P = 0·04), eggs (P = 0·04), staple foods (P = 0·002) and vegetables (P = 0·01) was significantly lower in cases than in controls. The poultry consumption of controls was 30 % higher than that of cases but without statistical difference, similarly for the consumption of red meat and aquatic products. However, the absolute value of DBI_LBS was significantly higher in cases than in controls (P < 0·0001).
DBI_LBS, Dietary Balance Index, low bound score.
*The t test (for food consumption and nutrient intakes) and the χ 2 test (for food sources of dietary Fe and food sources of dietary protein) were used to test for differences between cases and controls.
†Including mung beans, red beans and long-grained rice.
‡Soyabean products amount to soyabeans to calculate the quantity.
§Besides general vegetables, including fungi, algae, potatoes and dry legumes except mung beans, red beans and long-grained rice.
||Wine was converted to alcohol content.
¶Micrograms of retinol equivalents, the sum of vitamin A intake from animal foods and β-carotene from plant sources.
**Vitamin A from animal foods.
Energy (P = 0·02), protein (P = 0·008), carbohydrate (P < 0·0001), vitamin A (retinol equivalents, RE; P = 0·04), vitamin B1 (P = 0·01), riboflavin (P = 0·01) and Ca (P = 0·04) intakes in cases were significantly lower than in controls. There was no significant difference in food sources of both dietary Fe and dietary protein between the cases and controls. Vegetables, staple foods and animal foods were the main sources of dietary Fe for the two groups, and also staple foods and animal foods were the main sources of protein for both groups.
Relationship between dietary pattern, nutrients and anaemia
Table 4 shows the associations (odds ratios and 95 % confidence intervals) of DBI_LBS and nutrients with anaemia. The absolute value of DBI_LBS was positively related to anaemia in both model I and model II (quartile 4 v. quartile 1: OR = 0·4, P for linear trend < 0·0001). High intake of vitamin A (RE) was inversely associated with anaemia in both model I and model II (quartile 4 v. quartile 1: OR = 0·6, P for linear trend = 0·02). However, other nutrients, such as total energy, protein, fat, carbohydrate, vitamin A (μg), β-carotene, vitamin B1, riboflavin, vitamin C, Ca and Fe, were not associated with anaemia in either model I or model II.
DBI_LBS, Dietary Balance Index, low bound score.
*Cut-offs based on intakes among control participants.
†Adjusted for total meat consumption, protein, age, BMI, waist circumference and diastolic blood pressure.
‡Further adjusted for energy, fat, expenditure for food and pregnancy times in lifetime besides other confounders in model I.
§Q1, 1st quartile; Q2, 2nd quartile; Q3, 3rd quartile; Q4, 4th quartile.
||Micrograms of retinol equivalents, the sum of vitamin A intake from animal foods and beta-carotene from plant sources.
¶Vitamin A from animal foods.
Discussion
Vitamin A (RE) intake and its relationship with anaemia
The present research showed that vitamin A (RE) intakes in cases and controls were quite low, about 60 % of the recommended amount of 700 μg RE/d for Chinese elderly women. As to the source, about 90 % of vitamin A (RE) was from β-carotene. The results also showed that vitamin A (RE) was significantly negatively related to anaemia (quartile 4 v. quartile 1: OR = 0·6, P = 0·02), indicting that poor vitamin A (RE) status contributes to low Fe bioavailability. A previous study showed that vitamin A deficiency was an independent risk factor for anaemia in children (OR = 4·85, 95 % CI 2·14, 10·9, P < 0·0001)(Reference Gamble, Palafox, Dancheck, Ricks, Briand and Semba15). In another study, with decreasing serum vitamin A concentration, the prevalence and severity of anaemia increased in Chinese children(Reference Lin, Song, Liu, Ma, Tan, Jiang, Liu, Liu and Wang16). A similar result was also found among pregnant women in the plains of Nepal(Reference Dreyfuss, Stoltzfus, Shrestha, Pradhan, LeClerq, Khatry, Shrestha, Katz, Albonico and West17). There are many potential biological mechanisms by which vitamin A deficiency could cause anaemia. These mechanisms fall into three general categories: (i) modulation of erythropoiesis; (ii) modulation of immunity to infectious diseases and the anaemia of infection; and (iii) modulation of Fe metabolism. There is probably some overlap between these mechanisms, as erythropoiesis and Fe metabolism are modulated by infection(Reference Semba and Bloem18). Although vitamin A deficiency is a cause of anaemia, further work is needed to characterize both the pathogenesis and the public health importance of ‘vitamin A deficiency anaemia’. Furthermore, consideration should be given to community-based trials of multi-micronutrient supplementation as a strategy to reduce anaemia in both children and women in developing countries.
DBI_LBS and its relationship with anaemia
The DBI was established based on the Dietary Guideline for Chinese Residents, as was the ideal value corresponding to score of 0 for each DBI component. The different methods of calculating DBI score reflect different dietary problems. For example, DBI_HBS, the sum of each positive score of each related component, is used to present over-intake and its severity. DBI_LBS, the sum of each negative score of each related component, is used to assess under-intake and its severity. The nearer the DBI_LBS is to zero, the slighter the dietary under-intake. The higher the absolute value of DBI_LBS, the greater the severity of the dietary under-intake(Reference He, Zhai and Ge13). The absolute value of DBI_LBS was positively related to anaemia in the present study, indicating that under-intake or undernutrition is a risk factor for anaemia. Actually, the region included in the study was relatively poor in rural China. Most subjects do not have adequate food consumption as assessed by the Chinese Food Guide Pagoda(14) and only a very low proportion of subjects have sufficient nutrient intakes as assessed by the Chinese Dietary Reference Intakes(19); the same thing happened even in the controls. Furthermore, the severity of under-intake was greater for the cases compared with the controls. The food-based components of the DBI_LBS – i.e. cereals, vegetables and fruits, beans and dairy, animal foods – are the main food components of daily diet and also the main sources of total energy for Chinese women. So it may indicate that diet quality and total energy intake have a strong impact on the development of anaemia.
In the present study, the total animal food consumption of the anaemic women was significantly lower than that of the controls. Although not statistically significant, the proportion of Fe from animal foods in anaemic women was slightly lower than that in controls. This indicates that the amount of animal food consumption and the Fe form in food can affect Fe absorption and utilization. Muscle tissue is a strong enhancer of non-haem Fe absorption and Fe bioavailability strongly influences non-haem Fe absorption from single meals(Reference Hurrell20). Lyle et al.(Reference Lyle, Weaver, Sedlock, Rajaram, Martin and Melby21) showed that meat consumption was superior to Fe supplementation for maintaining Hb and serum ferritin concentrations in college women. Patterson et al.(Reference Patterson, Brown and Roberts22) reported that the form of Fe and the role of enhancers and inhibitors of Fe absorption may be more important than total Fe intake in determining Fe status.
Fe intake and its relationship with anaemia
Although the absolute quantity of Fe intake is thought to play a central role in the aetiology of anaemia, the present analyses found that the amount of dietary Fe intake had no relationship with anaemia in the studied population. One possible reason may be that Fe bioavailability was different between the two groups. There is a very large difference in Fe absorptivity for different Fe forms. Haem Fe represents 10–15 % of dietary Fe intake in meat-rich diets but may contribute 10–40 % of the total absorbed Fe. However, non-haem Fe contained in plant foods has a low absorptivity(19). In the present study, the main source of Fe was from plant foods. So we suggest that the cause of anaemia was not the difference in non-haem Fe bioavailability in plant foods itself between the two groups, but the difference in enhancers of Fe bioavailability, since the low absorptivity of non-haem Fe in plant foods would be more influenced by enhancers of Fe compared with haem Fe. Another hypothesis could be that the difference in Fe intake between the two groups was not large enough to get a statistically significant difference. The third possible reason might be that the sample size was not large enough to find the real difference. This result suggests that individual Fe intake may not be independently associated with anaemia and inadequate absorption of Fe may be the true impact factor on anaemia. Further research work needs to be done on this issue, particularly for elderly Chinese women.
Limitations and further study
Several possible limitations of the study warrant consideration. First, as in other case–control studies, there was a potential for methodological bias, such as a combination of selective participation or recall of past diet. Second, we did not distinguish the anaemia of chronic disease from nutritional anaemia by credible biochemical indicators. Fortunately, we excluded those anaemic women who suffered serious diagnosed disease or whose Hb value was <90 g/l, considering they had a greater possibility of suffering anaemia of chronic disease. It should be noted that a minor population of cases had suffered certain chronic diseases according to our health questionnaire. The relationship between anaemia and dietary factors would be more distinct if we excluded all chronic disease sufferers. We will try to seek the effect of chronic disease on anaemia by detecting blood biochemical indices and developing other relevant surveys in further study. Third, owing to the limitation of the food composition table of China, we could not calculate the dietary intake of folic acid and vitamin B12 and assess their nutritional status. If possible, we will try to detect the folic acid and vitamin B12 in Chinese food and then analyse the total potential related dietary factors for anaemia, especially on nutritional anaemia.
Conclusion
Undernutrition, which was positively associated with anaemia, was an important risk factor for anaemia, particularly for Chinese elderly women in undeveloped area. For vitamin A (RE), there appeared to be a significantly negative relationship with anaemia risk. Individual Fe intake was not found to have an independent association with anaemia.
Acknowledgements
Sources of funding:The study was funded by the Nestlé Foundation. Conflicts of interest:None. Authorship contributions:J.Z. contributed to the conception and design of the study; J.L. contributed to the field work management; L.M., C.W., Q.M. and L.L. collected the data; L.M. analysed the data and drafted the paper; J.Z. commented upon and revised drafts. All authors gave their approval to the final version submitted for publications. Acknowledgements:We would like to thank the participating regional centres for disease control and prevention in Guangxi Province, including Tiandeng and Bama Centers, for their support in the data collection. We also thank all the subjects enrolled in this project.