In terms of public health, anaemia or iron deficiency anaemia is the most commonly used indicator of iron deficiencyReference Morland, Wing and Roux1. Iron deficiency anaemia may result from one or more of the following: (1) inadequate dietary iron intake or low iron bioavailability; (2) impaired absorption (e.g. gastric surgery, intestinal malabsorption); (3) increased iron needs during growth or during pregnancy; (4) increased iron loss due to heavy menstrual blood loss or chronic disease2, Reference Goddard, McIntyre and Scott3. Common causes of anaemia, other than iron deficiency, include other vitamin deficiencies (e.g. vitamin B12, B6, folate and C)4. Anaemia of chronic disease, a condition accompanied by inflammation, is present in some people, including young children4.
The consequences of iron deficiency anaemia or iron deficiency are often deleterious. A review of longitudinal studies indicated that children who were anaemic in early childhood continued to have poor cognition and school performance in middle childhood, compared with non-anaemic childrenReference McGregor and Ani5. Severe anaemia during pregnancy is strongly related to increased risks of low birth weight, preterm birth and perinatal mortalityReference Lee, Kim, Kim, Kim and Kim6, Reference Rasmussen7. Iron deficiency, even without anaemia, is also associated with reduced physical performance and work capacityReference Hass and Brownlie8.
Anaemia is found in approximately two billion people worldwide, with half of all cases caused by a lack of iron9. In 2001, iron deficiency anaemia was found to affect 10.3% of adult women in industrialised countries10 and, in the United States in 1998, 5% of women aged 20–49 years and 2% of women aged 50 years and older were found to be anaemic2. In the United Kingdom, approximately 8% of adult women have iron deficiency anaemia and 11% have low iron stores without anaemia, according to data from the 2000–01 National Diet and Nutrition Surveys (NDNS)Reference Fairweather-Tait11. There is no comparable national data on iron deficiency or iron deficiency anaemia in Japan, other than studies focusing on specific population groupsReference Maeda, Yamamoto and Yamauchi12–Reference Uchida, Kawachi, Sakamoto, Igaki, Ogasawara and Kariyone14. However, the Japanese Red Cross Blood Centre15 indicated that the average deferral rate for female donors, due to insufficient blood gravity, increased from 6.4% to 8.4% between 1995 and 2005 nationwide. Although low blood gravity is not specific to anaemia, attempts to verify this issue are needed.
The increasing prevalence of underweight women is a major health problem in JapanReference Takimoto, Yoshiike, Kaneda and Yoshita16. Iron deficiency is uncommon among female patients with anorexia nervosa due to increased iron storage secondary to reduced iron losses from amenorrhoeaReference Kennedy, Kohn, Lammi and Clarke17. However, low body mass index (BMI) was an independent risk factor for ‘mild iron deficiency’ (serum ferritin < 20 μg l−1 and haemoglobin ≥120 g l−1) in premenopausal adult women in New ZealandReference Heath, Skeaff, Williams and Gibson18. Therefore, we suspect that the risk of iron deficiency, and of anaemia, may also be high in Japan. Therefore, we performed long-term trend analyses of anaemia using national data. There are consecutive cross-sectional haemoglobin data available for adults, collected between 1989 and 2003. Therefore, we analysed changes in haemoglobin over 15 years, and calculated the prevalence of anaemia using the World Health Organization (WHO) standard10. We also evaluated geographical differences in changes in haemoglobin and compared the prevalence of anaemia between three residential area types to determine whether the environment plays a role in anaemia development.
Methods
Description of the data source
The National Health and Nutrition Survey of Japan (NHNS-J) is a series of cross-sectional, nationally representative examination surveys conducted by the Ministry of Health, Labour and Welfare19. A two-stage sampling technique was used in the NHNS-J. In the first stage, survey districts for the ‘Comprehensive Survey of Living Condition of the People on Health and Welfare’ were selected using cluster stratified random sampling technique from districts assigned for the nearest population census, which has been conducted every 5 years since 1920. In the second stage for the NHNS-J sampling, a total of 300 survey districts were randomly selected from survey districts for the ‘Comprehensive Survey of Living Condition of the People on Health and Welfare’, and 5000 households and a total of 15 000 individuals in selected households were chosen to participate in NHNS-J each year.
NHNS-J consists of three components: (1) physical examination (anthropometric measurements; blood pressure; blood tests; interview on use of medication, smoking status, alcohol intake and exercise; pedometer-measured physical activity level), (2) dietary intake survey (1-day, semi-weighed food record per household) and (3) dietary habits questionnaire. All physical examinations take place at local centres, and a team of physicians, nurses, dietitians and laboratory technicians are in charge of the assessment. Blood samples are collected from subjects aged 20 years and over, and are drawn at least 3 h after the last meal. Since 1989, haemoglobin values have been monitored annually, so we performed in-depth analyses on haemoglobin data collected after 1989.
Laboratory procedures and definition of anaemia
In this study, we evaluated haemoglobin values to determine the prevalence of anaemia. Once intravenous blood is collected, haemoglobin values are determined by an autoanalyser (SE-9000) at a private laboratory commissioned by the government authority. We applied the WHO criteria to define anaemia: haemoglobin concentration of <12 g dl−1 for non-pregnant women above 15 years of age10. It has been suggested by the National Center for Health Statistics of the Centers for Disease Control and Prevention (CDC) in the United States2 that haemoglobin cut-off values should be adjusted for subjects who reside in a high altitude (≥3000 ft) and for those who smoke cigarettes. However, there is insufficient information regarding the effect of smoking on haemoglobin concentrations in the Japanese and what level of adjustment is appropriate, so we used crude haemoglobin concentrations to evaluate the prevalence of anaemia.
Subjects for the current analyses
We conducted secondary analyses of 50 967 non-pregnant/non-lactating women aged over 20 years, who participated in the NHNS-J between 1989 and 2003. Subjects with no data on haemoglobin were excluded from the secondary data set. We obtained permission to use the NHNS-J data sets from the relevant government authority prior to the analyses. In order to avoid year-to-year fluctuations and to have adequate sample sizes for subgroup analyses, data were grouped into three time periods (1989–1993, 1994–1998 and 1999–2003). For subgroup analyses, subjects were divided into six age groups (20–29 years; 30–39 years; 40–49 years; 50–59 years; 60–69 years; and 70+ years). In terms of geographical comparisons, we first divided subjects into three age subgroups (20–49 years; 50–69 years; and 70+ years), and then subdivided into three areas (‘metropolitan’ – 12 major cities and 23 Tokyo Metropolitan Wards with a population of more than 10 00 000 people; ‘cities’ – all cities with a population of less than 10 00 000; ‘towns’ – all small towns and villages). This segmentation allows for a better estimation of which group is at higher risk of anaemia.
Statistics
Haemoglobin concentrations were expressed as means and standard deviations (SD) for each time period according to age groups and residential areas. The prevalence of anaemia (haemoglobin < 12.0 g dl−1) was expressed as a percentage (%) for each time period, according to age groups and residential areas.
To evaluate trends in mean haemoglobin levels, we computed regression coefficients for successive survey years using general linear models, coded as 0, 0.2, 0.4, etc., up to 2.8, for 1989, 1990, 1991, etc., up to 2003. The results are shown as the increment of each parameter per 5 years with 95% confidence intervals (CIs). To evaluate trends in the prevalence of anaemia across the three time periods, logistic regression analysis was used and the results are shown as the increment in the odds ratio (OR) with 95% CI (OR for 1989–1993 is 1.00, the reference). For geographical comparisons in the prevalence of anaemia, logistic regression analysis was used to compare values for metropolitan areas and cities with towns within the same age group in each time period. P < 0.05 was considered to be statistically significant.
The Hosmer–Lemeshow goodness-of-fit was used to assess goodness-of-fit for all models. P for χ 2 goodness-of-fit >0.30 was considered to be well-fitted for all models. The generalised coefficient of determination statistics, i.e. R 2, was used to describe the proportion of variability explained by the model. If the value of R 2 is close to zero, one variable cannot be predictable from other variable. All statistical analyses were performed using SAS software (Version 8.2).
Results
Table 1 shows changes in mean haemoglobin value in g dl−1 (with SD) over 15 years, according to the overall and demographic subgroups, i.e. age groups and residential areas. For age groups, the mean haemoglobin values were lowest in subjects aged 40–49 years throughout the three time periods: 12.8 (1.5), 12.6 (1.5) and 12.4 (1.5), respectively. There was a decreasing trend for mean haemoglobin values, with these trends significant in all age groups. In terms of residential areas, statistically significant decreases in mean haemoglobin values were observed in all three areas in all three age subgroups, except for the groups of women aged 70 years and older who resided in metropolitan areas and small towns. The overall change in mean haemoglobin in all subjects aged 20 years and older from 1989 to 2003 was −0.08 (95% CI −0.09, −0.07), and the decline was statistically significant (P < 0.01).
SD – standard deviation; CI – confidence interval; metropolitan – 12 major cities and 23 Tokyo metropolitan wards with a population more than 1 000 000 people; cities – all cities with a population less than 1 000 000 people; towns – all small towns and villages.
Values are shown by means and SD.
† Adjusted for age as a continuous variable.
‡ Calculated by general linear model using the raw data from 15 points of observation. Data are expressed as mean haemoglobin changes in value (95% CI).
Table 2 shows the prevalence of anaemia in each time period by the overall and demographic subgroups (i.e. age groups and residential areas) and the ORs for changes in the prevalence of anaemia from the logistic regression models over 15 years. A higher prevalence of anaemia was observed in women aged 40–49 years and 70 years and older throughout all time periods, than in other age groups. Among six age groups, the highest OR for changes per 5 years was observed in women aged 40–49 years (OR 1.20, 95% CI 1.14, 1.27, P < 0.01), followed by women aged 30–39 years (OR 1.14, 95% CI 1.08, 1.21, P < 0.01). Changes in the prevalence of anaemia in other age groups were not statistically significant. In terms of residential areas, statistically significant changes in metropolitan areas and cities were observed only in women aged 20–49 years, and changes in towns were observed in women aged 20–49 years and 50–69 years. No statistically significant changes in all three areas were observed in women aged 70 years and older. In terms of residential differences on the prevalence of anaemia, the prevalence of anaemia in women aged 20–49 years living in metropolitan areas was statistically lower than in towns in 1989–1993 and 1999–2003. Statistically significant lower prevalence of anaemia was observed in women aged 50–69 years living in cities and cities and metropolitan areas than in towns in 1994–1998 and 1999–2003, respectively. No residential differences were observed in women aged 70 years and older throughout all three time periods. The Hosmer and Lemeshow goodness-of-fit tests indicated the models categorised by demographic subgroups fitted relatively well (P-values > 0.03), except for some subgroups. The R 2 values for all models indicated that the explanatory variables in the models have little contribution.
OR – odds ratio; CI – confidence intervals; NS – not significant; metropolitan – 12 major cities and 23 Tokyo metropolitan wards with a population more than 1 000 000 people; cities – all cities with a population less than 1 000 000 people; towns – all small towns and villages.
Values are shown in percentage (%).
† Adjusted for age as a continuous variable.
‡ Calculated by logistic models using the raw data from 15 points of observation. Data are expressed as ORs (95% CI). Significance level compared with small towns within the same age group in each time period: *P< 0.05; **P < 0 01.
§ The Hosmer–Lemeshow goodness-of-fit was used to assess goodness-of-fit for all models.
¶ The generalised coefficient of determination statictics, i.e. R 2, was used to describe the proportion of variability explained by the model.
Discussion
WHO proposes that the public health significance of anaemia be classified on the prevalence estimated from blood haemoglobin levels or haematocrit10, with proposed levels of significance as follows: ‘normal’ (≤5%), ‘mild’ (5.0 to 19.9%), ‘moderate’ (20.0–39.9%), and ‘severe’ (≥40%). Our results clearly demonstrate a level of significance in Japanese women is either ‘mild’ or ‘moderate’, according to the WHO classification10. For the most recent time period (1999–2003), anaemia was particularly prominent in women aged 40–49 years (26.9%), in women aged 70 years and older (26.0%) and in women aged 30–39 years (20.6%). A lower prevalence of anaemia was found among women aged 50–59 years and 60–69 years, but the level remained high enough to warrant attention. Most importantly, the prevalence has been increasing.
In this study, we also observed higher prevalence of anaemia in towns, compared to metropolitan and cities, in all three periods, except for elderly women aged 70 years and older. Back in the 1960s and until the 1980s, anaemia was the major public health problem among Japanese women, especially among those in villages. Several factors were considered as possible reasons for higher prevalence of anaemia in villages compared to cities or towns. For example, undernutrition, higher number of pregnancies, overworking and parasite infections were discussed as possible risk factorsReference Owada, Tanaka, Hattori, Ueda, Date and Tsue20. Today, however, there is not much difference in nutrition and health environments between cities and villages due to the nationwide economic growth. Overnutrition, represented by increased prevalence of obesity, is now greater in towns than in metropolitan areasReference Yoshiike, Seino, Tajima, Arai, Kawano and Furuhata21. Further studies are needed to examine why the prevalence of anaemia remains high in towns as we observed in the present study, and whether other developed and Asian countries have similar situations to ours.
There are many causes of anaemia in a population. However, in terms of public health, iron deficiency is the most important cause of nutritional anaemia worldwide. Low iron intake may be a significant cause in Japanese women, especially in young women. The Estimated Average Requirement (EAR) for iron is 9.0 mg for menstruating adult women and 5.5 mg for non-menstruating adult women22. The actual average intake (and its SD in mg) in women aged 20–29 years, 30–39 years, 40–49 years, 50–59 years, 60–69 years and over 70 years, according to NHNS-J 2003, was 7.0 (2.9), 7.3 (6.0), 8.9 (20.1), 8.7 (3.6), 9.3 (3.9) and 8.1 (3.5), respectively23. These data show that the prevalence of low iron intake might be high in young Japanese women. Second, diseases related to increased iron losses, such as ‘menorrhagia’ or leiomyoma, may be common in Japanese women. A 4-year follow-up study of 95 061 25- to 44-year-old premenopausal women in the United States, estimated the incidence of uterine leiomyoma at 12.8 per 1000 woman-yearsReference Marshall, Spiegelman, Barbieri, Goldman, Manson and Colditz24. Although estimates of the incidence among Japanese premenopausal women vary between studies, approximately 30% of all women of reproductive age are susceptible to uterine leiomyoma in JapanReference Takamatsu, Nakagawa, Kitaoka, Kishi, Tominaga and Tanigaki25. The aetiology of anaemia (e.g. insufficient dietary iron intakes, high blood iron loss) needs further evaluation with the use of other indicators of iron status.
A major strength of this study is that this is the first study identifying prevalence and risks of iron deficiency and iron deficiency anaemia in young Japanese women using a large nationwide sample. However, there are some limitations that need to be highlighted. First, data are not obtained using a simple random sample. Rather, a stratified cluster sampling design is used to select participants. The smallest random sampling unit is a district, not an individual, and the number of households and size of households differ from district to district. Sampling design is consistent each year so we assume that there is no sampling effect on the equality of subgroups in this study. However, the response rate for the NHNS-J has declined recently; therefore, the estimates may differ greatly when they are calculated with the correct weight than when they are calculated without being weighted at all. In this study, we used non-weighted data for all analyses. Further assessment is needed once sample weights and imputation for non-response are fully taken into account in the methodology of NHNS-J in future.
A definition of anaemia in this study is another consideration. We estimated anaemia with a single measure, which was haemoglobin concentration below the WHO-established cut-off level10. The haemoglobin level drops when anaemia is present; however, such a drop cannot be used to distinguish between nutritional anaemia (such as iron deficiency) and anaemia from other causes. Binkin and Yip26 reported that using haemoglobin to screen for iron deficiency detected only 37% of iron-deficient women in the United States. In order to detect iron deficiency as a risk for nutritional anaemia, WHO/CDC experts recommend using haemoglobin and ferritin (and the transferrin receptor where infection is common)10. The NHNS-J started monitoring ferritin in 2004. Therefore, we will review the prevalence of, and secular trends in, iron deficiency in the population once we have an adequate sample size. Another limitation is that we do not know the probability of a woman being at risk of chronic disease or menstruating. Lastly, the Hosmer–Lemeshow goodness-of-fit tests did not fit well in all of the models we tested and the R 2 values indicated that the explanatory variables used in all models had little contribution. Therefore, future research should focus on studying additional constructs that might explain changes in prevalence of anaemia in the Japanese women. None the less, the results must be interpreted with caution and further research is needed; still, this study provides baseline data for future public policy making and nutrition monitoring for high-risk subgroups (e.g. middle-aged women, women residing in towns).
In summary, this is the first study reporting long-term trends of anaemia in adult Japanese women, using data sets collected nationwide. Although some considerations are needed in interpretation of the findings, the study indicated that middle-aged women, especially those aged 40–49 years, are at a higher risk for developing anaemia. Data also indicated that there may be additional risks for women living in towns. Comprehensive efforts to reduce risks of anaemia are needed, and nutrition monitoring systems useful to collect the nationally representative samples also need to be developed.
Acknowledgments
Sources of funding: This study was funded by Research on Health Science (the Ministry of Health, Labour and Welfare).
Conflict of interest declaration: None of the authors had a personal or financial conflict of interest.
Authorship responsibilities: F.H. was responsible for the conception of the study, with assistance from N.Y. and K.K.; N.Y. obtained funding; F.H. analysed and interpreted the data, with assistance from N.Y. and K.K.; K.Y. provided statistical expertise; F.H. wrote the manuscript; F.H. was responsible for review and revision of the manuscript, with assistance from N.Y., K.Y. and K.K.
Acknowledgments: The authors thank Dr Yokoyama (National Institute of Public Health) for statistical advice.