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Eating patterns in a nationwide sample of Japanese aged 1–79 years from MINNADE study: eating frequency, clock time for eating, time spent on eating and variability of eating patterns

Published online by Cambridge University Press:  05 March 2021

Kentaro Murakami*
Affiliation:
Department of Social and Preventive Epidemiology, School of Public Health, University of Tokyo, Tokyo 113-0033, Japan
M Barbara E Livingstone
Affiliation:
Nutrition Innovation Centre for Food and Health (NICHE), School of Biomedical Sciences, Ulster University, Coleraine, UK
Shizuko Masayasu
Affiliation:
Ikurien-naka, Ibaraki, Japan
Satoshi Sasaki
Affiliation:
Department of Social and Preventive Epidemiology, School of Public Health, University of Tokyo, Tokyo 113-0033, Japan
*
*Corresponding author: Email [email protected]
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Abstract

Objective:

Although there is growing evidence suggesting that eating patterns are important determinants of health status, comprehensive information on patterning of eating behaviours is almost lacking. The aim of this cross-sectional study was to describe eating patterns in Japan.

Design:

Information on actual eating behaviours was collected using 2-d dietary record in each season over a year (total 8 d). Eating occasions were defined as any discrete intake occasion (with a discrete start clock time and name) except for eating occasions consisting of water only, which were excluded.

Setting:

Japan.

Participants:

A nationwide sample of 4032 Japanese aged 1–79 years.

Results:

The mean value of eating frequency of meals (i.e. breakfast, lunch and dinner), snacks and total eating occasions was 2·94, 1·74 and 4·68 times/d, respectively. The mean clock time for the start of breakfast, lunch and dinner was 07.24, 12.29 and 19.15 h, respectively. The mean time spent consuming breakfast, lunch, dinner and snacks was 19, 25, 34 and 27 min/d, respectively. On average, variability (i.e. average of absolute difference from mean) of meal frequency was small compared with that of snack frequency and total eating frequency. Both mean variability of clock time for the start of eating (<1 h) and mean variability of time spent on meals (<10 min/d) were also small. Conversely, mean variability of time spent on snacks was large (>18 min/d).

Conclusion:

The present findings serve as both a reference and an indication for future research on patterning of eating behaviours.

Type
Research Paper
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Copyright
© The Author(s), 2021. Published by Cambridge University Press on behalf of The Nutrition Society

Efforts to overcome the limitations of evaluating the health impact of consuming single nutrients and foods in isolation have led to a gradual shift in nutrition research to dietary patterns(Reference Kant1,Reference Hu2) . While dietary patterns are generally examined using the daily intake of individual foods(Reference Newby and Tucker3Reference Hearty and Gibney6), an increasing number of studies now focus on dietary intake on an eating occasion basis (i.e. breakfast, lunch, dinner and snacks) or eating patterns(Reference Kerver, Yang and Obayashi7Reference Leech, Worsley and Timperio9). Evaluation of eating patterns instead of overall dietary intakes or patterns might increase relevance by accounting for physiological synergies and interactions occurring during digestion and metabolism(Reference Jacobs and Steffen10). Moreover, eating pattern-based dietary advice would resonate better with consumers if it reflects actual eating behaviours(Reference Leech, Worsley and Timperio9).

Because of the complex nature of eating patterns, existing research has used a variety of variables in terms of eating patterns, including eating frequency(Reference Huseinovic, Winkvist and Slimani11Reference Murakami and Livingstone17), timing of eating(Reference Kant13,Reference Huseinovic, Winkvist and Freisling18Reference Almoosawi, Vingeliene and Karagounis21) and variability of eating patterns(Reference Farshchi, Taylor and Macdonald22Reference Shin, Lim and Sung27), with equivocal outcomes. This may be mainly due to a lack of clear definitions of these variables. To develop more consistent and clearer definitions of eating pattern variables, comprehensive reports on eating pattern variables based on actual eating behaviour assessment (such as dietary record) are imperative. While there are several papers in this regard based on large-scale observational studies in free-living situations(Reference Huseinovic, Winkvist and Slimani11Reference Murakami and Livingstone14,Reference Huseinovic, Winkvist and Freisling18) , these are limited with regard to the number of dietary assessment days (usually only 1 or 2 d)(Reference Huseinovic, Winkvist and Slimani11Reference Kant13,Reference Huseinovic, Winkvist and Freisling18) or assessed only a limited aspect of eating patterns(Reference Huseinovic, Winkvist and Slimani11,Reference Murakami and Livingstone14,Reference Huseinovic, Winkvist and Freisling18) . In particular, we are unaware of descriptive information on time spent on eating and variability of eating patterns in general populations despite the potential health effects of eating rate(Reference Robinson, Almiron-Roig and Rutters28,Reference Ohkuma, Hirakawa and Nakamura29) and regularity of eating(Reference Farshchi, Taylor and Macdonald22Reference Murakami and Livingstone26). Moreover, most of previous studies have been conducted in adult populations, while information in children is sparse. Investigation of this issue in children is merited from a prevention perspective.

Therefore, the aim of the present study was to describe eating patterns, namely eating frequency, clock time for the start of eating, time spent on eating and variability of eating patterns, in a nationwide sample of Japanese aged 1–79 years, based on information on actual eating behaviors collected using 2-d dietary record in each season over a year (total 8 d).

Methods

Study procedure and participants

This analysis was based on data from MINNADE (MINistry of health, labour and welfare-sponsored NAtionwide study on Dietary intake Evaluation) study. The ultimate purpose of MINNADE study was to describe nationwide data on dietary characteristics and eating behaviours in Japan. The study consisted of two rounds of 1-year data collection (first round: November 2016 to September 2017; second round: October 2017 to September 2018). The target population comprised apparently healthy Japanese aged 1–79 years living in private households in Japan. Initially, thirty-two (of forty-seven) prefectures, which cover >85 % of total population in Japan, were selected on the basis of geographical diversity and feasibility of the survey, particularly the recruitment of collaborators (research dietitians). During sampling procedure, the proportion of population number in each region in Japan was reflected (i.e. Hokkaido 4 %, Tohoku 7 %, Kanto I 28 %, Kanto II 8 %, Hokuriku 4 %, Tokai 12 %, Kinki I 13 %, Kinki II 3 %, Chugoku 6 %, Shikoku 3 %, Kita-kyushu 7 % and Minami-kyushu 5 %(30)).

A total of 441 research dietitians agreed to support the study and were responsible for recruitment of participants from communities as well as data collection. Based on feasibility and human and financial resources (assuming 5–6 persons per research dietitian), we decided to include 256 individuals (128 for each sex) for each of nine age groups (i.e. 1–6, 7–13, 14–19, 20–29, 30–39, 40–49, 50–59, 60–69 and 70–79 years) during the first round of data collection (n 2304 in total). Considering the difference in dropout rate between age-sex groups observed during the first round, the number of recruited participants in the second round varied from 110 to 119 for each sex-age group, with a total of 2051 individuals (4–5 persons per research dietitian).

The key inclusion criterion for this study of community-dwelling (free-living) individuals was their willingness to complete a dietary record. Excluded from the study were dietitians, individuals living with a dietitian, those working together with a research dietitian, those who had experienced dietary counselling from a doctor or dietitian, those taking insulin treatment for diabetes, those taking dialysis treatment, pregnant or lactating women (at the start of study) and infants habitually drinking human milk. We did not exclude overnight workers from this study but asked not to conduct dietary record on overnight working days as well as days before and after these days. Participation of only 1 person per household was permitted. Participants in this study were not randomly selected. Consequently, a total of 4268 individuals aged 1–79 years participated in this study.

Dietary assessment

Dietary data were collected using 4 × 2-d (total 8 d) weighed dietary records. After receiving written and verbal instructions by a research dietitian, as well as an example of a completed diary sheet, each participant was requested to maintain a record of all items eaten or drunk, both in and out of the home. This was done over 2 nonconsecutive days once per season at an interval of around 3 months, namely November for fall, February for winter, May for spring and August for summer. The sets of two recording days comprised 2 weekdays (Monday to Friday) for half of participants and 1 weekday and 1 weekend day (Saturday or Sunday as well as national holidays) for the remaining participants. However, not all days of the week were evenly represented. This allocation was maintained throughout the study; thus, it was expected that half of participants provide 8-weekday dietary data while the remaining participants provide 4-weekday data and 4-weekend day data. This strategy was adopted to obtain dietary data with an approximate proportion of weekdays and weekend days (3:1 compared with the actual ratio of 5:2) as a whole, while not compromising feasibility and simplicity for the conduct of the survey. The recording schedule for each participant was arranged by the assigned research dietitian.

Children aged ≥13 years (as well as adult participants) were expected to be able to complete the record themselves, whereas for children aged <13 years, the parent/guardian was asked to complete the record with input from the child as appropriate. Irrespective of age, however, we encouraged participants to get support from the main cook (e.g. mother and wife) when necessary. Within a few days after each recording day (usually the next day), the research dietitian collected the recording diary, checked the completeness of recording and recorded additional information if necessary. All the collected diaries were checked by trained dietitians at the central office in terms of coding, recorded weights and descriptions of items consumed. Data on dietary intake were not available in this study because the use of these data is not currently permitted by the Ministry of Health, Labour and Welfare, Japan.

Definition and creation of eating pattern variables

The food diary sheet used was based on a typical Japanese eating pattern, which comprises breakfast, lunch, dinner and snacks, and these eating occasions were prescribed in the diary. Thus, the eating event (eating occasion) name used in the present analysis was based on this classification. Multiple entries of eating events into a section of breakfast, lunch or dinner were extremely rare in this study (only six cases); in these cases, the first eating event was considered the corresponding eating event (i.e. breakfast, lunch, or dinner), and the following eating events were considered snacks.

During the diet recording, participants were asked to report the clock time when a food or beverage was consumed (both start and finish times). Consequently, all items reported in an eating event were given the same clock time and event name in the food diary. Based on these data, several eating pattern variables were created mainly based on previous studies(Reference Huseinovic, Winkvist and Slimani11Reference Kant13,Reference Murakami and Livingstone26) as described below. Unless otherwise indicated, the mean value over 8 d was used for each participant.

Eating frequency

In this study, eating occasions were defined as any separate intake occasion (with a discrete start clock time and name) except for eating occasions consisting of water only (tap and mineral water), which were excluded(Reference Huseinovic, Winkvist and Slimani11). Thus, eating frequency was defined as the total number of eating occasions per day, which consist of foods only, drinks only or foods and drinks combined. Based on participant-identified name of eating occasions, eating frequency variables for meals (breakfast, lunch and dinner combined), snacks and all eating occasions were calculated for each participant.

Clock time for the start of eating

Based on information on start clock time of eating occasions, clock time for the start of eating breakfast, lunch, dinner and the first and the last eating occasions were created. For each individual, we calculated mean values over data-available days for clock time for the start of first and last eating occasions. We also calculated mean values on consumption days with data needed for clock time for the start of breakfast, lunch and dinner; participants who reported no consumption of these meals on any of 8 recording days had missing values on these variables.

Time spent on eating

Time spent on eating (breakfast, lunch, dinner and all snacks combined) was defined as time difference between the finish and start time of eating occasions. For these variables, we calculated mean values on consumption days with data needed, and participants who reported no consumption on any of 8 recording days had missing values on these variables.

Time between eating occasions

Time between eating occasions was defined as time between end of meal and start of next meal. For each day, the mean value of time between eating occasions was calculated, and then mean value over data-available days was calculated for each participant.

Length of ingestion period

Length of ingestion period was defined as time between the start clock time of the first eating occasion and the finish clock time of the last eating occasion. For each participant, we calculated mean value based on data-available days.

Variability of eating patterns

Variability in each eating pattern variable was calculated by adding the absolute difference between the mean value and that in each day divided by the number of days, with a higher value indicating a larger variability in eating patterns(Reference Murakami and Livingstone26). For each individual, mean daily values over 8 dietary recording days were used for eating frequency variables; mean values over data-available days for clock time for the start of first and last eating occasions, time between eating occasions, and length of ingestion period; mean values on consumption days with data needed for clock time for the start of breakfast, lunch and dinner and time spent on eating breakfast, lunch, dinner, and snacks. For variables based on breakfast, lunch, dinner and snacks, only participants who reported consumption of the corresponding eating episode on ≥ 4 d (with complete information) were included.

Assessment of basic characteristics

Age at the time of start of the study was calculated based on birth date. Anthropometric measurements were performed by either family members or research dietitians using standard procedures. Body height (nearest 0·1 cm) and weight (nearest 0·1 kg) were measured, while the participants were barefoot and wearing light clothes only. When measurement was not available (n 23), self-reported (or parent-reported) height and weight were used. BMI (kg/m2) was calculated by the commonly used formula, namely weight (kg) divided by height squared (m2). Information on annual household income was collected using a question with possible sixteen categories, which were subsequently aggregated into three categories (< 4 million, ≥ 4 to < 7 million and ≥ 7 million Japanese yen). Information on education level and employment status was also collected for adult participants (aged 20–79 years), who were grouped into three categories for the former (junior high school or high school, college or vocational school and university or higher) and into four categories for the latter (full-time job, part-time job, student and unemployed).

Analytic sample

For analysis, we excluded from the initial sample of 4268 participants 111 participants with < 8-d dietary record data, 102 participants who had 8-d dietary data but whose dietary assessment was conducted on 2 consecutive days at least in 1 season and seven participants who had nonconsecutive 8-d dietary data but whose dietary assessment was not conducted in appropriate months (i.e. October, November and December for fall, January, February and March for winter, April, May and June for spring and July, August and September for summer). After further excluding twelve participants who became pregnant during data collection and four participants who lived in a different region (which we recognised after the start of data collection), the final analysis sample comprised 4032 participants (see online supplementary material, Supplemental Figure S1). Further exclusion of participants whose dietary assessment was not conducted in accordance with the schedule assigned (n 324) did not alter the findings of the study (data not shown); therefore, these participants were retained in the analysis.

Statistical analysis

All statistical analyses were performed for adults (aged 20–79 years) and children (aged 1–19 years) separately, using SAS statistical software (version 9.4, SAS Institute Inc.). Data are presented as means and sd for continuous variables and as the numbers and percentages of participants for categorical variables. First, the number and proportion of participants by number of reporting days of consumption of breakfast, lunch, dinner and snacks were calculated. Then, distribution of clock time for the start of eating breakfast, lunch, dinner and snacks was described. Finally, descriptive statistics on eating pattern variables was provided for the whole sample as well as by sex and age group (20–39, 40–59 and 60–79 years for adults and 1–6, 7–13 and 14–19 years for children). Differences in eating pattern variables between sex and across age categories were examined on the basis of independent t test and ANOVA, respectively. All reported P values are two-tailed, and P values <0·05 were considered statistically significant. When the overall P value from ANOVA was <0·05, a Bonferroni’s post hoc test was performed.

Results

This analysis included 2681 adults aged 20–79 years (1325 men and 1356 women) and 1351 children aged 1–19 years (680 boys and 671 girls) who completed nonconsecutive 8-d dietary record over a year (Table 1). A total of 16·3 % of dietary record came from Monday, 15·6 % from Tuesday, 16·0 % from Wednesday, 15·0 % from Thursday, 13·9 % from Friday, 8·3 % from Saturday and 14·9 % from Sunday. The percentage of participants (adults and children combined) who reported consumption of breakfast, lunch and dinner on all the 8 dietary recording days was 88·1 %, 92·6 % and 95·9 %, respectively (see online supplementary material, Supplemental Table S1). In total, 81·4 % of participants reported consumption of all three main meals on all 8 d, with additional 12·6 % of participants reporting consumption of two of three main meals on all 8 d as well as that of the remaining meal on at least 4 d. In contrast, the prevalence of no consumption of each of these meals on all 8 d was very low (0·7 % for breakfast, 0·1 % for lunch and 0·05 % for dinner). For snacks, 54·9 % of participants reported consumption on all 8 d, with 4·1 % of them reporting no consumption on any of 8 d.

Table 1 Basic characteristics of study population

* n 2656 for adults and 1331 for children (because of missing information).

Available for adults only (n 2664 because of missing information).

Available for adults only.

Figure 1 shows distribution of clock time for the start of breakfast, lunch, dinner and snacks reported by adults (a) and children (b) in 8-d dietary record. All three meals had a clear peak in timing (07.00–07.59 for breakfast, 12.00–12.59 for lunch and 19.00–19.59 for dinner). Within 3-h time slots with the central slot corresponding with the peak (i.e. 06.00–08.59 for breakfast, 11.00–13.59 for lunch and 18.00–20.59 for dinner) was reported a very large proportion of breakfast (85·1 % for adults and 90·1 % for children), lunch (93·8 % for adults and 96·8 % for children) and dinner (85·0 % for adults and 90·4 % for children). For the timing of snacks, there were three peaks in both adults and children (10.00–10.59, 15.00–15.59 and 20.00–20.59). Snacking after dinner was reported in 33 % of all dietary recording days.

Fig. 1 Distribution of clock time for the start of eating breakfast, lunch, dinner and snacks reported by 2681 Japanese adults aged 20–79 years (a) and by 1351 Japanese children aged 1–19 years (b). The total number of breakfast, lunch, dinner and snacks reported by adults in 8-d dietary record (with information on clock time) is 20 369, 20 982, 21 269 and 37 227, respectively. The corresponding number in children is 10 576, 10 732, 10 753 and 18 960, respectively. Breakfast; lunch; dinner; snacks

For the population overall (n 4032), the mean value (sd) of eating frequency of meal, snacks and total eating occasions was 2·94 (0·19), 1·74 (1·18) and 4·68 (1·20) times/d, respectively. The mean (sd) clock time for the start of breakfast, lunch and dinner was 07.24 (00.48), 12.29 (00.31) and 19.15 (00.51) h, respectively. The mean (sd) time spent on breakfast, lunch, dinner and snacks was 19 (8), 25 (8), 34 (15) and 27 (34) min/d, respectively.

Tables 2 and 3 present descriptive data on eating pattern variables for adults and children, respectively, by sex and age group. Eating frequencies of meals, snacks and all eating occasions were higher in female adults (2·94, 1·85 and 4·79 times/d, respectively) than male adults (2·90, 1·62, and 4·52 times/d, respectively; all P < 0·0001), while eating frequencies of snacks and all eating occasions were higher in male children (1·83 and 4·80 times/d, respectively) than female children (1·68 and 4·65 times/d, respectively; both P ≤ 0·01). There was no sex difference in clock time for the start of eating, except for earlier start time for lunch in men (12.30 v. 12.34 h), earlier start time for dinner in women (19.16 v. 19.22 h) and earlier start time for the last eating occasion in girls (19.35 v. 19.46 h; all P ≤ 0·005). Longer time was spent on breakfast and lunch in both female adults (20 v. 18 min/d and 25 v. 23 min/d, respectively; both P < 0·0001) and female children (21 v. 19 min/d and 27 v. 25 min/d, respectively; both P ≤ 0·0006). Female adults also spent shorter time for dinner and snacks and had shorter time between eating occasions (34 v. 36 min/d, 25 v. 32 min/d and 3·2 v. 3·6 h, respectively; all P ≤ 0·0008). Female children also spent longer time for dinner and had shorter length of ingestion period (33 v. 31 min/d and 12·6 v. 12·8 h, respectively; both P ≤ 0·008). In terms of age, compared with adults aged 20–39 years (and to a lesser extent with adults aged 40–59 years), adults aged 60–79 years had higher eating frequencies of meals and snacks or all eating occasions, earlier clock time for the start of all meals as well as the first and last eating occasions, longer time spent on meals but shorter time on snacks, shorter time between eating occasions and shorter length of ingestion period. Similar characteristics were shared by children aged 1–6 years (compared with those aged 7–13 years and 14–19 years).

Table 2 Eating patterns of Japanese adults aged 20–79 years as assessed by eating frequency, clock time for the start of eating, time spent on eating, time between eating occasions and length of ingestion period, by sex and age group*

* For each individual, mean daily values over 8 dietary recording days were used for eating frequency variables; mean values over data-available days for clock time for the start of first and last eating occasions, time between eating occasions and length of ingestion period; mean values on consumption days with data needed for clock time for the start of breakfast, lunch and dinner and time spent on eating breakfast, lunch, dinner and snacks. For variables based on breakfast, lunch, dinner and snacks, participants who reported no consumption on any of 8 recording days were excluded (n 26, 5, 2 and 139, respectively).

Sex difference examined based on independent t test.

Age group difference examined based on ANOVA. When the overall P from ANOVA was < 0·05, a Bonferroni’s post hoc test was performed; values within each variable with unlike superscript letters are significantly different (P < 0·05).

§ Including breakfast, lunch and dinner.

|| One participant who reported consumption of snacks but provided no information on clock time was excluded.

Table 3 Eating patterns of Japanese children aged 1–19 years as assessed by eating frequency, clock time for the start of eating, time spent on eating, time between eating occasions and length of ingestion period, by sex and age group*

* For each individual, mean daily values over 8 dietary recording days were used for eating frequency variables; mean values over data-available days for clock time for the start of first and last eating occasions, time between eating occasions and length of ingestion period; mean values on consumption days with data needed for clock time for the start of breakfast, lunch and dinner and time spent on eating breakfast, lunch, dinner and snacks. For variables based on breakfast and snacks, participants who reported no consumption on any of 8 recording days were excluded (n 2 and 25, respectively).

Sex difference examined based on independent t test.

Age group difference examined based on ANOVA. When the overall P from ANOVA was < 0·05, a Bonferroni’s post hoc test was performed; values within each variable with unlike superscript letters are significantly different (P < 0·05).

§ Including breakfast, lunch and dinner.

Variability of eating patterns (calculated by adding the absolute difference between the mean value and that in each day divided by the number of days) is shown in Supplemental Table 2 (for adults) and Supplemental Table 3 (for children). On average, variability of meal frequency was small compared with that of snack frequency and total eating frequency. Both mean variability of clock time for the start of eating (< 1 h) and mean variability of time spent on meals (< 10 min/d) were also small. Conversely, mean variability of time spent on snacks was somewhat large (21·2 min/d for adults and 17·8 min/d for children).

Compared with male adults, female adults showed smaller variation in all eating pattern variables, except for no difference in snack frequency, total eating frequency, clock time for lunch and the last eating occasion and time spent on breakfast, as well as larger variability of time spent on lunch. For children, there was no sex difference, except for smaller variability of snack frequency and total eating frequency and larger variability of clock time for dinner and time spent on breakfast and dinner in females. In terms of age, adults aged 60–79 years had smaller variability of all eating pattern variables than younger adult groups, except for no difference in snack frequency. Smaller variability of eating patterns was also observed in children aged 1–6 years (compared with older child groups), except for no difference in variability of snack and total eating frequency and larger variability of time spent for breakfast and lunch.

Discussion

To our knowledge, this is the first comprehensive report on patterning of eating behaviours under free-living conditions, particularly time spent on eating and variability of eating patterns. Eating frequency has been the most widely investigated variable of eating behaviours in adults. In the European Prospective Investigation into Cancer and Nutrition (EPIC) study consisting of ten European countries, mean total eating frequency (using the definition of eating occasion identical to that used in this study) varied across countries (4·9 to 7·0 times/d), with a trend for lower eating frequency in Mediterranean countries (Greece, Spain, Italy and France) compared with central European (Germany, the Netherlands and UK) and Nordic (Denmark, Sweden and Norway) countries(Reference Huseinovic, Winkvist and Slimani11). While the definition of eating occasions is inconsistent across studies, mean total eating frequency in a national representative adult population has also been reported from the USA (5·0 times/d)(Reference Kant13), Australia (ranging from 4·9 to 5·9 times/d, depending on sex and age group)(Reference Leech, Worsley and Timperio12) and the UK (7·8 times/d for men and 7·6 times/d for women)(Reference Murakami and Livingstone14). In contrast, mean total eating frequency in the present Japanese adults (4·7 times/d), which was identical to that in a small previous Japanese study(Reference Murakami, Shinozaki and Livingstone31), was consistently lower than that observed in Western countries. Given that daily meal frequency is generally close to three times in many studies(Reference Huseinovic, Winkvist and Slimani11Reference Kant13), this is clearly due to difference in snack frequency, with a lower mean in Japanese population (1·7 and 1·8 times/d in the present and previous(Reference Murakami, Shinozaki and Livingstone31) studies, respectively) compared with Western populations (ranging from 2·1 to 4·2 times/d, depending on studies)(Reference Huseinovic, Winkvist and Slimani11Reference Kant13).

In contrast, fewer studies have attempted to characterise other potentially important features of eating patterns. It appears that meal skipping is rare in Japan (86 %, 91 % and 96 % of adults reporting consumption of breakfast, lunch and dinner, respectively, over all 8 d of dietary recording) compared with Western populations. In EPIC study, the proportion of consumers on a diet recall day ranged from 86·0 % to 99·8 % for breakfast, from 72·4 % to 100 % for lunch and from 89·2 % to 100 % for dinner(Reference Huseinovic, Winkvist and Slimani11). The corresponding value in US adults from NHANES 2009–2014 was 85 %, 79 % and 93 %, respectively(Reference Kant13). With regard to timing of eating, the mean clock time for the start of eating in US adults was 08.08 h for the first eating occasion, 08.11 h for breakfast, 12.43 h for lunch 18.24 h for dinner and 20.18 for the last eating occasion(Reference Kant13). Compared with US population, our Japanese participants tended to consume earlier meals at earlier time (mean: 07.31 h for the first eating occasion, 07.25 h for breakfast and 12.32 h for lunch) but later meals at later time (19.19 h for dinner and 19.57 h for the last eating occasion). Consequently, the length of eating period was longer in the present Japanese (mean: 13.00 h) than the US adults (mean: 12.20 h)(Reference Kant13). Nevertheless, time between eating occasions was longer in the present Japanese (mean: 3.40 h) than the US adults (mean: 2.50 h)(Reference Kant13), mainly because of lower eating (snack) frequency in the former.

In this study, snacking after dinner was observed in only 33 % of total dietary recording days, which is a little more frequent compared with Mediterranean countries (21 % to 33 %) but much less frequent than other Western countries (49 % to 87 %)(Reference Huseinovic, Winkvist and Slimani11,Reference Kant13) . In a small study based on 16-d dietary record, the Japanese eating pattern was, on average, characterised by small snacks (11 % of total energy intake), as well as relatively large three main meals (percentage of total energy intake: 21 % for breakfast, 32 % for lunch and 40 % for dinner)(Reference Murakami, Shinozaki and Livingstone32). A similar eating pattern (three main meals, with infrequent snacks particularly at night) was also observed in a representative sample of Taiwanese adults(Reference Chau, Pan and Chen33). It would be of interest to clarify if this eating pattern is prevalent in East Asian countries with similar social and cultural backgrounds.

For time spent on eating, we are unaware of any previous studies which can be compared with the present findings. In the present population, a longer time was spent consuming later meals (mean: 19 min for breakfast, 24 min for lunch and 35 min for dinner), which is consistent with a previous observation in Japanese that a larger amount of energy was consumed in later meals (mean: 23 %, 30 % and 40 %, respectively)(Reference Murakami, Livingstone and Sasaki34). We are also unaware of previous studies investigating variability of eating patterns. In this population, it seemed that variability of eating patterns related to meals was relatively small compared with those for snacks.

Taken together, eating patterns of Japanese adults may be characterised by a relatively stable nature of frequency, timing and time spent with regard to meals (breakfast, lunch and dinner) as well as snacks which are less frequently consumed but exhibit greater variability in both timing and time spent. It seems that these are somewhat in common in eating patterns in Mediterranean regions characterised by less eating frequency(Reference Leech, Worsley and Timperio12) and later consumption of meals and snacks(Reference Huseinovic, Winkvist and Freisling18). As these characteristics may be favourably associated with health outcomes beyond food selection and nutrient composition(Reference Leech, Worsley and Timperio9), further studies on the association of eating patterns with food and nutrient intake, diet quality and health outcomes would merit more exploration.

Eating patterns in children as well as association between eating patterns and basic characteristics have been poorly investigated. In this study, eating patterns in children were on average comparable with those in adults, which may be reasonable given that adults are generally responsible for children’s diet. For the associations of eating patterns with sex and age, the most consistent finding was that older adults and younger children have more stable and regular eating patterns with regard to frequency, timing and time spent on eating compared with younger adults and older children, respectively. This may reflect busy lifestyle in younger adults and older children. In any case, further studies on these topics are warranted.

The advantages of the present study include the use of actual eating behaviour data based on food diary with a large number of recording days (8 d) collected throughout a year, use of a wide range of eating pattern variables with clear definitions and a nationwide large sample. However, there are also several limitations. First, although the sampling was conducted so that regional difference in population proportion is reflected, the present population is not a nationally representative sample of general Japanese but rather volunteers. Given the burden required for dietary recording, it is conceivable that the participants were more representative of the health conscious nature. Nevertheless, distribution of annual household income in the present population was similar to that in a national representative sample (45·0 %, 26·9 % and 28·0 % for <4, ≥4 to <7 and ≥7 million Japanese yen, respectively, in all households; 19·3 %, 36·2 % and 44·5 %, respectively, in households with a child/children)(35), although education level in the present adult population was somewhat high compared with a national representative sample (54·6 % for junior high school or high school, 20·8 % for college or vocational school and 24·6 % for university or higher)(36). Further, mean (sd) values of body height, weight and BMI in our adult participants were also similar to those in a national representative sample aged ≥ 20 years (men: 167·6 (7·0) cm, 67·0 (11·5) kg and 23·8 (3·4) kg/m2, respectively; women: 154·1 (6·9) cm, 53·6 (9·4) kg and 22·6 (3·7) kg/m2, respectively)(37). Thus, there may be no strong reason for considering that the present participants largely differ from general Japanese population.

Second, while all the dietary data were derived from dietary record, nature and extent of measurement error of self-reported (parent-reported) information on eating patterns are largely unknown. However, given that there are no objective markers of eating patterns examined here, we had no choice but relying on self-report on eating patterns. In this regard, we believe that dietary record is an optimal solution because we are able to collect a wide range of information (e.g. time) based on actual eating behaviours without relying on memory. Third, there is currently no consensus about what constitutes an eating occasion, a meal, a breakfast, a lunch, a dinner and a snack(Reference Leech, Worsley and Timperio12,Reference Murakami and Livingstone16,Reference Murakami and Livingstone17) . Although we used a widely used definition of eating occasions(Reference Huseinovic, Winkvist and Slimani11) as well as meals and snacks(Reference Huseinovic, Winkvist and Slimani11Reference Kant13) to maximise comparability between studies, the present findings should be interpreted with these caveats in mind, and different results may be obtained if different definitions were applied. Finally, by design, dietary recording was conducted avoiding overnight working days (as well as days before and after these days). For overnight workers, dietary data might not fully represent their usual eating patterns because of a lack of data on overnight working days. Thus, further studies are needed to investigate eating patterns in overnight workers.

In conclusion, we provided comprehensive pictures of a range of eating pattern variables in a nationwide sample of Japanese. The major findings are as follows: meal skipping is quite rare in Japan; compared with Western populations, Japanese have on average a lower eating frequency (because of lower snack frequency); clock time for the start of breakfast and lunch is relatively early while that for lunch is relatively late; time spent on eating meals gradually increases during the day; variability of eating patterns is relatively small except for snacking and is smaller in older adults and younger children compared with younger adults and older children, respectively. The present findings serve as both a reference and an indication for future research on patterning of eating behaviours. The next step is to investigate associations of a variety of eating pattern variables with food and nutrient intake, diet quality and health outcomes.

Acknowledgements

Acknowledgement: The authors would like to thank the research dietitians who conducted the data collection: Tamotsu Noshiro, Ikuko Kato, Yoshie Awa, Erika Takayama, Mari Sakurai, Mihoko Yanase, Masae Kato, Mihoko Furukawa, Yuna Nodera, Kazue Fukushi, Miwako Onodera, Yoshie Sato, Megumi Yoshida, Masako Shimooka, Kaori Takahashi and Fuki Kudo (Hokkaido); Yumiko Sato, Yutaka Shojiguchi, Kazunori Kimoto, Saori Kikuchi, Megumi Maeta, Mayumi Sugawara, Shinogu Muraoka, Kanako Takahashi, Noriko Suzuki, Yoko Fujihira and Megumi Onodera (Iwate); Yukiko Takahashi, Kaoru Honda, Chie Yamada, Miki Sato, Katsue Watanabe, Akemi Konno and Reina Kato (Miyagi); Akiko Sato, Hiromi Kawaguchi, Miyuki Awano, Chigusa Miyake, Ayako Konno, Ayumi Goto, Shizuko Taira, Yuka Takeda, Akiko Matsunaga, Nao Konta, Yumi Miura, Satoshi Numazawa, Chiemi Ito, Sachie Yokosawa, Manami Endo and Hiromi Seki (Yamagata); Yoko Tsukada, Tomoko Oga, Satoko Fujita, Hitomi Sonobe, Hanayo Kadoi, Toshie Nakayama, Hiromi Takasawa, Yoko Ichikawa, Yuko Takano, Junko Hanzawa, Kiyomi Seki, Emi Kamoshita, Yuri Kawakami and Hisako Watahiki (Ibaraki); Reiko Ishii, Yoshiyuki Tatsuki, Daisuke Mogi, Akiko Nakamura, Suguru Yagi, Yumiko Furushima, Noriko Ogiwara, Kiyomi Kimura, Kinue Takahashi, Kikue Tomaru, Kana Tsukagoshi, Fumiko Fujiu, Kyoko Maehara and Yuki Kobayashi (Gunma); Kaoru Goto, Yuka Inaba, Michiko Koresawa, Tomoko Tsuchida, Naoko Sakakibara, Fumika Shimoyama, Akiko Kato, Miki Hori, Rika Kurosaki, Hiroko Yamada, Hitomi Sasaki, Keiko Arai, Yuka Arai, Manami Honda, Akiko Utsumi, Asako Hamada, Keiko Sekine, Akiko Yamada, Mami Ono, Satoko Maruyama, Emiko Kajiwara, Taeko Takahashi, Hitomi Kawata, Satoru Arai, Ryoko Hirose, Madoka Ono and Mihoko Ainai (Saitama); Masako Shinohara, Noriko Nakamura, Mitsuko Ito, Yuka Takahara, Minako Fukuda, Masae Ito, Yayoi Sueyoshi, Hiroko Shigeno, Tomohiro Murakami, Masako Kametani, Kyoko Wada, Mika Ueda, Jun Kouno, Hiroyo Yamaguchi, Mariko Oya, Junko Suegane, Yumiko Asai, Miyuki Ono, Mitsuko Uekusa, Chieko Sunada, Yumi Tanada, Mariko Shibata, Emi Tsukii, Kae Terayama, Hiroko Iwasaki, Keiko Yokoyama, Haruna Kayano, Kazuyo Shimota, Keiko Ifuku and Keiko Honma (Chiba); Yoshiko Saito, Megumi Suzuki, Eiko Kobayashi, Yoshiko Katayama, Sonoko Yamaguchi, Tomoko Kita, Naoko Yuasa, Hitomi Okahashi, Shinobu Matsui, Yurina Arai, Sanae Togo, Eiko Horiguchi, Juri Sato, Takehiro Komatsu, Yumi Matsuura, Junko Higashi, Ayaka Nakashita, Takako Sakanashi, Yoko Kono, Naomi Nakazawa and Yukiko Shibata (Tokyo); Machiko Tanaka, Ikue Sahara, Yasue Watanabe, Kanako Yoshijima, Yuko Harashima, Yoshiko Iba, Haruko Irisawa, Junko Inose, Reiko Okui, Taeko Endo, Mayuko Sakitsu, Ikuko Endo, Haruko Terada, Chiaki Nishikawa, Ai Yasudomi, Suzuyo Takeda, Kaori Shimizu, Mari Ikeda, Yuko Okamoto, Keiko Yamada, Fumiko Nemoto, Shinobu Katayama, Yuki Takakuwa, Michiru Goukon, Megumi Koike, Masae Kamiya, Takako Okada, Yayoi Hayashi, Etsuko Abe, Akiko Hamamoto, Kumiko Ono, Kazumi Takagi, Sachiko Ito, Yuki Kumagai, Noriko Ozaki, Haruka Sato, Hisae Takahashi, Masuko Komazaki, Akiko Nako, Tatehiro Inamoto and Kimiyo Matsumoto (Kanagawa); Masako Koike, Reiko Kunimatsu, Keiko Kuribayashi, Hiroko Adachi, Yuri Shikama, Yurika Seida, Ryouko Ito, Satoko Kimura, Yoko Sato, Michiyo Nakamura, Hisako Kaneko, Hatsuyo Ikarashi, Mamiko Karo, Keiko Hirayama, Ikumi Torigoe and Fumiko Gumizawa (Niigata); Natsuko Mizuguchi, Aki Sakai, Hisako Noguchi, Chie Tanabe, Yokako Osaki, Ikiko Kawasaki, Nobuko Yoshii, Yumiko Nishihara, Izumi Takahara, Mika Minato, Yuuki Okamoto, Yukiyo Sakai, Shitomi Nakamura, Kanako Kobayashi, Emi Hano and Megumi Emori (Toyama); Kazumi Horiguchi, Michiyo Kubota, Naoya Mochizuki, Miyuki Yokokoji, Kazuko Koizumi, Megumi Ariizumi, Hozumi Kakishima, Mayumi Kawakubo, Chisato Nakajima, Yasuko Ishii, Yukie Shiogami, Yukiko Uchida, Ikuko Kayanuma and Kikuyo Moriya (Yamanashi); Noriko Sumi, Noriko Takahashi, Kuniko Watanabe, Yoko Ido, Akiko Adachi and Manami Tauchi (Gifu); Naoya Terada, Chisato Suwa, Toshihiro Tamori, Natsuko Osakabe, Toshiyuki Serizawa, Akiko Seki, Izumi Mochizuki, Nagako Matsui, Eiko Watanabe, Kyoko Yui, Yuki Murakami, Tomomi Iwasaki and Tomoko Sugiyama (Shizuoka); Keiko Kawasumi, Masako Tanaka, Kayoko Ishida, Megumi Yamatani, Shihoko Yama, Miyuki Otono, Mie Kojima, Tamaki Kobayashi, Hiroe Komaki, Miki Yanagida, Yumiko Fukaya, Syoko Sawaki, Tomomi Ota, Yasuko Kito, Mei Tobinaga, Takashi Yasue, Kuniko Hatamoto, Toru Ono, Takako Minami, Akemi Kumazawa, Masami Kato, Miyuki Kondo, Kyoko Shimizu, Sayoko Tanaka and Shizue Masuda (Aichi); Hiromi Ashida, Shintaro Hinaga, Yoshiko Shoji, Ryusuke Yamaguchi, Hiroka Morita, and Atsuko Nakabayashi (Mie); Erika Shioi, Sawa Mizukawa, Miwako Ohashi, Eriko Taniguchi, Yuri Mitsushima, Mariko Teraya, Kazuko Ogawa, Yoko Minami, Megumi Ito, Yasuhiro Morimoto, Shizuka Kurokawa and Manami Hayashi (Kyoto); Yumiko Noutomi, Yoshiko Iwamoto, Junko Ikukawa, Shinobu Fujiwara, Tami Irei, Keiko Takata, Yasuka Tabuchi, Naoko Murayama, Kaori Maruyama, Hiromi Tashiro, Miki Tanaka, Miho Nomura, Shizuyo Umezawa, Minori Shintani, Ikuyo Maruishi, Atsuko Toyokawa, Rumi Kitada, Yuka Takashima, Eriko Nakatani, Wakana Tsujimoto, Yumi Koori, Emi Iwamoto and Masumi Yamada (Osaka); Atsuko Konishi, Yoshiko Nakamori, Yumi Ikawa, Junko Shimizu, Mie Atsumi, Atsuko Fukuzaki, Akemi Yamamoto, Yasuko Inoue, Miyuki Nakahara, Reiko Fujii, Yumi Tanaka, Rika Miyachi, Mari Matsuyama, Ayana Honda, Tomoka Nakata, Miho Inagaki, Mikiyo Ueno, Mami Kamei, Kiyomi Kawachi, Yasuyo Hasegawa and Masayo Fukumoto (Hyogo); Sachiyo Otani, Tomomi Sugimoto, Kanako Mizoguchi, Tomomi Shimada, Shima Takahashi, Yoshiko Okuno, Takahide Kijima, Masayo Ueda, Yuko Sakamoto, Hitoshi Matsuda, Yumie Shimizu, Rie Hataguchi, Junko Nohara, Yuko Sakakitani, Hatsuki Matsumoto, Sakiko Tanaka, Moe Yoshikawa, and Rena Yuki (Nara); Yurika Adachi, Akiko Notsu, Keiko Uzuki, Atsuko Umeda, Hiroko Nishio, Chikako Takeshita and Sayuri Omoso (Tottori); Hiromi Watanabe, Nami Sakane, Nao Hino, Sakiko Sonoyama, Yukiko Katagiri, Kaori Nagami, Tsunemi Moriyama and Yoshiko Kirihara (Shimane); Sachiko Terao, Akemi Inoue, Mieko Imanaka, Noriyuki Kubota, Sachiko Sugii, Yuri Fujiwara and Tomoko Miyake (Okayama); Youko Fujii, Hiroko Tamura, Kimie Tanaka, Izumi Hase, Etsuko Kimura, Akiko Hamada, Tomoko Kawai, Masako Ogusu, and Emi Isomichi (Hiroshima); Kyoko Ueda, Atsuko Nakanishi, Tomoko Ishida, Nobuko Morishita, Hitomi Nakata, and Takako Yagi (Yamaguchi); Yuriko Doihara, Toyoko Kitadai, Hideyo Yamada, Mariko Nakamura, Nanako Honda, Eri Ikeuchi, Kayo Hashimoto, Azusa Onishi and Manami Iwase (Tokushima); Machiko Ueda, Ayano Kamei, Reiko Motoie, Yoko Moriki, Nobumi Yoshida and Kiyoko Kubo (Ehime); Kyoko Kaku, Emi Ibushi, Miho Otsuka, Kiyoko Katayama, Hisami Kumagai, Chizuru Shibata, Miki Hamachi, Yuko Hayashida, Akiko Matsuzaki, Mika Yoshioka, Yoshie Yanase, Yoshiko Yahagi and Tomomi Ota (Fukuoka); Junko Kiyota, Hiromi Ide, Takako Fukushima, Shiho Tominaga, Satsuki Miyama, Yoko Okamura, Kayoko Kurahara, Tomomi Nagamori, Chika Shino, Akiko Taira, Yuki Kuwajima and Miyuki Matsushita (Kumamoto); Miki Hamada, Kiyomi Aso, Toshie Eto, Mitsue Kodama, Miyoko Sato, Mutsuko Shuto, Yuko Soga, Taeko Nagami, Machiko Hirayama, Mika Moribe, Junko Yamamoto, Hideko Yoshioka, Yuko Kawano, Rika Matsuoka and Satomi Sato (Oita); and Hisami Yamauchi, Satomi Moromi, Satoko Tomari, Kaoru Miyara, Chikako Murahama, Yukiko Furugen, Kana Awano, Hiromi Arakaki, Suzumi Uema, Yasuko Tomori, Nariko Mori, Ayako Iho, Michiru Hokama, Yasue Higa and Chigusa Chibana (Okinawa). The authors would also like to thank the research team staff at the survey centre (University of Tokyo): Tomoko Doi, Hitomi Fujihashi, Akiko Hara, Nana Kimoto, Nanako Koe, Eri Kudo, Fumie Maeda, Keika Mine, Akemi Nakahara, Hiroko Onodera, Hiroko Sato, Chifumi Shimomura, Ryoko Tajima and Fusako Tanaka. Financial support: This work was supported by a grant (no. 20KA1009) from the Ministry of Health, Labour and Welfare, Japan. The Ministry of Health, Labour and Welfare had no role in the design, analysis or writing of this article. Conflict of Interest: There are no conflicts of interest. Authorship: K.M. contributed to the concept and design of the survey and data collection and management, formulated the research, analysed and interpreted the data, prepared the first draft of the manuscript and had primary responsibility for the final content; M.B.E.L. contributed to the formulation of the research and provided critical input into the final draft of the manuscript; S.M. managed the study-field establishment and recruitment and contributed to data collection; S.S. directed the survey and assisted in the writing of the manuscript. All authors read and approved the final manuscript. Ethics of human subject participation: The study protocol was conducted according to the guidelines laid down in the Declaration of Helsinki, and all procedures involving human subjects were approved by the Ethics Committee of the University of Tokyo Faculty of Medicine (no. 11397). Written informed consent was obtained from each participant and also from a parent or guardian for participants aged <18 years.

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Figure 0

Table 1 Basic characteristics of study population

Figure 1

Fig. 1 Distribution of clock time for the start of eating breakfast, lunch, dinner and snacks reported by 2681 Japanese adults aged 20–79 years (a) and by 1351 Japanese children aged 1–19 years (b). The total number of breakfast, lunch, dinner and snacks reported by adults in 8-d dietary record (with information on clock time) is 20 369, 20 982, 21 269 and 37 227, respectively. The corresponding number in children is 10 576, 10 732, 10 753 and 18 960, respectively. Breakfast; lunch; dinner; snacks

Figure 2

Table 2 Eating patterns of Japanese adults aged 20–79 years as assessed by eating frequency, clock time for the start of eating, time spent on eating, time between eating occasions and length of ingestion period, by sex and age group*

Figure 3

Table 3 Eating patterns of Japanese children aged 1–19 years as assessed by eating frequency, clock time for the start of eating, time spent on eating, time between eating occasions and length of ingestion period, by sex and age group*

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