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Article

Gender Differences in Smoking Initiation and Cessation Associated with the Intergenerational Transfer of Smoking across Three Generations: The Nagahama Study

by
Sachiko Nakagawa
1,
Yoshimitsu Takahashi
2,
Takeo Nakayama
2,
Shigeo Muro
3,
Michiaki Mishima
4,
Akihiro Sekine
5,
Yasuharu Tabara
6,
Fumihiko Matsuda
6 and
Shinji Kosugi
1,* on behalf of the Nagahama Study Group
1
Department of Medical Ethics and Medical Genetics, Kyoto University School of Public Health, Kyoto 606-8501, Japan
2
Department of Health Informatics, Kyoto University School of Public Health, Kyoto 606-8501, Japan
3
Department of Respiratory Medicine, Nara Medical University, Nara 634-8521, Japan
4
Department of Respiratory Medicine, Kyoto University Graduate School of Medicine, Kyoto 606-8501, Japan
5
Center for Preventive Medical Science, Chiba University, Chiba 260-8670, Japan
6
Center for Genomic Medicine, Kyoto University Graduate School of Medicine, Kyoto 606-8501, Japan
*
Author to whom correspondence should be addressed.
Int. J. Environ. Res. Public Health 2022, 19(3), 1511; https://doi.org/10.3390/ijerph19031511
Submission received: 27 December 2021 / Revised: 22 January 2022 / Accepted: 26 January 2022 / Published: 28 January 2022
(This article belongs to the Special Issue Current Status of Tobacco Control Policies)

Abstract

:
Global tobacco policies lowered overall and male smoking rates, but female smoking rates have remained unchanged. Parent–child studies revealed the effects of parental smoking, but gender differences had mixed results. We investigated the effects of long-term smoking behavior in families over three generations in order to clarify gender differences. A cross-sectional study in a community-based genome cohort was conducted using a self-reported questionnaire. A total of 8652 respondents were stratified by gender regarding smoking initiation. A logistic regression analysis was performed to analyze the family smoking history. A total of 2987 current smokers and ever-smokers were compared regarding smoking cessation. With respect to smoking initiation, women were affected by their smoking mothers (odds ratio (OR), 2.4; 95% confidence interval (CI), 1.8–3.2) and grandmothers (OR, 1.7; CI, 1.1–2.4). Women who continued smoking were affected only by their smoking mothers (OR, 1.6; CI, 1.05–2.49). In conclusion, gender differences in smoking initiation and cessation are possibly associated with family smoking history. Mothers and grandmothers were shown to have a strong influence on women with respect to both smoking initiation and cessation. Future research should focus on providing evidence for effective gender-specific intervention programs to curb long-term smoking in women.

1. Introduction

In the last 50 years, evidence-based tobacco control policies have contributed to the worldwide decrease in the prevalence of cigarette smoking among adults [1]. Trends in many countries over the past 25 years have shown that smoking rates for men have dropped significantly more than those for women [2]. The largest imbalance has been found in the southeast Asia and western Pacific regions [3]. Japan, which is located in the aforementioned regions, has ratified the WHO Framework Convention on Tobacco Control (WHO FCTC). In 2008, WHO introduced the “MPOWER” measures to assist in the country-level implementation of effective interventions to reduce the demand for tobacco, contained in the WHO FCTC: monitor tobacco use and prevention policies (M); protect people from exposure to second-hand tobacco smoke (P); offer help to quit tobacco use (O); warn about the dangers of tobacco (W); enforce bans on tobacco advertising, promotion, and sponsorship (E); raise taxes on tobacco (R). In an attempt to further lower smoking rates, smoking cessation medication began being covered by health insurance policies in 2006, and tobacco tax increases and restrictions on smoking areas started being promoted. However, MPOWER measures have been found to be insufficient [4]. Both the smoking rate (29.4% of men and 7.2% of women smoked daily in 2019) [5] and the decline in smoking rate show significant gender differences. In order to reduce the smoking rate, smoking cessation policies and the prevention of smoking initiation are both important factors. Regarding gender differences in smoking cessation, women are more likely to have difficulty maintaining long-term abstinence from smoking than men including those with even moderate addiction [6], those between the ages of 30 and 55 (approximately) [6], those with some smoking cessation therapy [7,8], and those who consume alcohol [9]. Some arguments have been put forward stating that the gender differences observed in clinical trials [10] cannot be translated into real-world settings [11], but a recent study on the utilization of National Tobacco Cessation Services among female smokers also suggested that further research considering gender-specific tobacco cessation support was needed [12].
A WHO survey from 2015 on smoking initiation among women and girls noted that a better understanding of the key factors affecting this situation was needed in order to address the growing global pandemic of female smokers and the looming impact on women’s health [13]. The most-studied environmental influences thus far include parental, sibling, and peer relationships. Parental smoking has been shown to strongly and significantly affect smoking initiation among offspring [14]. Compared to offspring of nonsmokers, those of persistent smokers had twofold smoking rates (OR, 1.96; CI, 1.31–2.93). Maternal smoking was more strongly associated with youths’ regular smoking than parental smoking (ORs, 3.12; CI, 1.58–6.16 vs. 1.47; 0.87–2.49) [15]. The effect of parental smoking appears to vary on the basis of the parent’s sex/gender, which is likely to be related to the traditional roles of mothers and fathers [15]. Regarding the influence of smoking grandparents, results indicate direct linkages between both grandparent and parent smoking (OR, 4.53; CI, 2.57–7.97) and parent and offspring smoking (OR, 2.91; CI, 1.60–5.31); however, the direct link between grandparents and grandchildren was not significant (OR, 2.25; CI, 0.96–5.23, p < 0.10) [16]. According to a study in Finland, both girls and boys had higher odds for daily smoking, if any of the four grandparents were current smokers. Results indicated the significant odds between paternal grandfather and girls (OR, 2.63; CI, 1.59–4.33), paternal grandmother and girls (OR, 1.71; CI, 1.01–2.90), paternal grandmother and boys (OR, 3.02 (1.50–6.09), maternal grandfather and boys (OR, 1.99; CI, 1.02–3.89), maternal grandmother and girls (OR, 2.88; CI 1.88–4.36), and maternal grandmother and boys (OR, 2.03; CI, 1.00–4.10). However, when parents’ and grandparents’ smoking status was included in the same model, grandparent smoking generally lost statistical significance [17]. Despite the potential effects of smoking grandparents, the results were inconsistent. Furthermore, this has not been studied in the Asia Pacific region, which has a particularly large gender difference with respect to smoking rate.
We hypothesized that the integrated analysis of smoking behavior over three generations would reveal how it may consistently affect the next generation, which is an extension of previously reported parent–child studies that only investigated parental influences. To compare smoking behavior with that of parents and grandparents to investigate whether there are any gender differences between smoking initiation and cessation, new evidence-based, gender-specific tobacco policies can be implemented with the aim of reducing the smoking rate among women. Therefore, it is necessary to clarify the gender differences in smoking behavior across generations. The primary aim of this work was to perform a cross-sectional study to investigate how gender differences affect smoking initiation and cessation in a Japanese genome cohort, focusing on intergenerational transmission over three generations, from grandparents to their children and, subsequently, from their children to their grandchildren.

2. Materials and Methods

2.1. Study Design and Participants

The present study was a cross-sectional study using the Nagahama Prospective Cohort for Comprehensive Human Bioscience (The Nagahama Study). The cohort was recruited from the general population of Nagahama city, Japan, which has a population of 125,000. A total of 9804 participants were recruited via mass communication by the local government and citizen organizations from 2008 to 2010. Of these participants, we excluded 26 non-Japanese participants using PCA (polymerase cycling assembly) [18] and 14 participants withdrew their consent, which left a total of 9764 participants for the analysis. A structured questionnaire on smoking was implemented from 2009 to 2010 for baseline investigation, and 8652 subjects were registered from 2009 to 2010 for our analyses. Figure 1 shows the study flowchart. A copy of the questionnaire used to capture the data is provided in the Supplementary Materials.
The researchers and city employees held an information session for the residents regarding the present study. Japan has universal health coverage, and this study included the Specific Health Examination mandated by Japanese national laws for medical insurers to prevent against noncommunicable diseases [19]. The cohort was primarily aimed at healthy subjects, and participants had to meet the following criteria: (1) be aged between 30 and 74 years old, (2) be able to participate in health examinations independently, (3) have no difficulty in communication, (4) have little serious diseases/symptoms or health issues, and (5) have voluntarily decided to participate in the study. The municipal government staff made appointments for health examinations by telephone, and the participants were registered at the site of the health examination. Written informed consent was obtained from all of the participants prior to their health examination. The response rate was 100% and the interviews were carried out at the location of the medical checkup. All protocols and informed consent procedures were approved by the Kyoto University Graduate School and Faculty of Medicine Ethics Committee, the Ad Hoc Review Board of the Nagahama Cohort Project, and the Nagahama Municipal Review Board of Personal Information Protection. This study was carried out in accordance with approved guidelines. Smoking status, intergenerational variables, demographic and environmental variables, and variables of noncommunicable diseases were collected using an anonymous self-administered postal questionnaire.

2.2. Outcome Variables

Assessment of Smoking Status

Smoking status was categorized into three clinical groups: current smokers (CSs), ever-smokers (ESs), and never-smokers (NSs). These groups were respectively defined as those who smoke every day or some days, those who have quit smoking, and those who have no experience of smoking. To assess the factors of smoking initiation, smoking starters (CSs and ESs) were compared with never-smokers (NSs). To assess the factors of successful cessation, CSs were compared with ESs.

2.3. Correlated Variables

2.3.1. Intergenerational Variables

The main correlated variable was the intergenerational transmission of smoking across three generations. The intergenerational variables consisted of dichotomous indicator variables, i.e., whether or not the mother, father, grandmother, grandfather, or siblings smoke. All answers were chosen as either yes or no (binary scoring). When the mother was recorded as a smoker, we also determined her smoking status during pregnancy (1 = yes; 0 = no; unknown = excluded).

2.3.2. Years of Smoking and Smoking Initiation

The number of years that CSs and ESs had been smoking for was determined. Both their age and the number of cigarettes smoked per day (CPD) at the time of smoking initiation were also provided as the smoking initiation status. Age was categorized as either <20 or ≥20 years, and CPD was categorized as 1–10, 11–20, or ≥21.

2.3.3. Variables of Alcohol Consumption

As alcohol consumption could have been a confounder, the variable of alcohol consumption consisted of four indicator variables according to the answer to the following question: “How much do you drink a day, in terms of glasses of refined Japanese Sake?” A glass (180 mL) of refined Sake (rice wine) is equivalent to a medium bottle (500 mL) of beer, 110 mL of Shochu (alcohol content 25%), a glass (double, 60 mL) of whisky, and two glasses (240 mL) of wine.

2.3.4. Demographic and Environmental Variables

Age and spousal smoking status were evaluated as moderators of the association between gender and smoking behavior, smoking initiation, and smoking cessation. Spousal smoking was indicated as either yes or no (binary scoring). Body mass index (BMI) was evaluated as a moderator of the association with smoking cessation. Participants were grouped into the following categories according to BMI: <25.0 and ≥25.0.

2.3.5. Variables of Noncommunicable Disease

It is known that smoking facilitates the development of diabetes mellitus by affecting the function of insulin in lowering blood sugar levels, triggering dyslipidemia by hindering lipid metabolism, and increasing blood pressure due to the action of constricting blood vessels. In the Specific Health Examination and Specific Health Guidance, smoking habits are counted as an additional risk when combined with high blood pressure, dyslipidemia, or high blood sugar, in addition to abdominal obesity. There are three types of blood tests used in the Specific Health Examination: lipid, liver function, and blood sugar. We also assessed renal function. Glutamic oxaloacetic transaminase (GOT), glutamic pyruvic transaminase (GPT), gamma-glutamyl transferase (γ-GTP), total cholesterol (Tch), blood sugar (BS), hemoglobin A1c (HbA1c), systolic blood pressure (BP), and serum creatinine (SerumCr) were evaluated as variables of noncommunicable disease.

2.4. Statistical Analysis

Using data from all of the participants, we examined gender differences in smoking initiation and cessation. The participants were stratified by gender. We compared each variable between the two groups using Fisher’s exact test and t-test. We also performed an analysis of variance among the three groups. In order to identify the potential association between the independent variables and smoking behavior, all variables were entered into univariate logistic regression models. Multiple logistic regression analysis was performed to identify the correlated factors of smoking behavior. When a high degree of correlation existed between variables, they were not entered together in the same multivariable model. Multicollinearity was assessed using correlation coefficients and the variance inflation factor (VIF). Given the known relationship between smoking cessation and menstruation status [20], age could have affected gender differences in the success rate of smoking cessation. Age was, thus, categorized into groups (i.e., 30–55 and ≥56 years of age). Multivariate logistic regression models were prepared to estimate the factors correlated with smoking initiation and cessation. Those variables included in the adjusted models were based on the existing knowledge of risk factors for smoking behavior. Continuous variables were categorized for regression analyses. Multivariate logistic regressions were subsequently used to extend the analysis and to assess the role of correlated variables when entered into the equation simultaneously. The covariates for the adjusted models were age group, spousal smoking status, and family smoking history. We evaluated the interaction between age and years of smoking in the final models using main-effect terms. Sensitivity analyses were performed to test the influence of the number of years of smoking. To assess the influence of smoking during pregnancy, we calculated the odds ratio using Fisher’s exact test. All statistical analyses were performed using Software R version 4.1.2 (http://www.r-project.org/, accessed on 14 January 2022). A p-value <0.05 was considered statistically significant.

3. Results

Among the 8652 respondents who met the inclusion criteria, 2833 were men and 5819 were women. Overall, 14.1% (n = 1219) were CSs, 20.4% (n = 1768) were ESs, and 65.5% (n = 5665) were NSs. The rate of smoking among men (30.5%, 865/2833) was higher than that among women (6.1%, 354/5819). More women were NSs, with a rate of 85.5% compared with a rate of 24.4% among men. Table 1 shows a comparison of the demographic background and indices of noncommunicable diseases among the three groups.

3.1. Gender Differences in Smoking Initiation

The results of the logistic regression analysis are shown in Table 2. Gender differences were observed to significantly correlate with smoking initiation in the final model. Women with smoking mothers (odds ratio (OR), 2.4; 95% confidence interval (CI), 1.8–3.2) and grandmothers (OR, 1.7; 95% CI, 1.1–2.4) had a higher likelihood of being a CS or an ES. Men were not affected by their smoking mothers or grandparents, while women were more likely to be affected by their smoking mothers and grandmothers. Age showed opposite trends with respect to gender. Women aged ≤55 years had significantly more smoking experience than those aged ≥56 years (OR, 3.6; 95% CI, 3.0–4.3). On the contrary, men aged ≤55 years had less smoking experience than those aged ≥56 years (OR, 0.6; 95% CI, 0.5–0.7). Both men and women were affected by their fathers (OR, 1.4; 95% CI, 1.2–1.7 and OR, 1.3; 95% CI, 1.1–1.5, respectively) and siblings (OR, 1.8; 95% CI, 1.4–2.2 and OR, 2.3; 95% CI, 1.9–2.7, respectively).

3.2. Gender Differences in Smoking Cessation

The variables used for the additional adjustment for smoking cessation were BMI (<25.0 or ≥25.0), CPD, age at the time of smoking initiation, spousal smoking status, and alcohol consumption. As shown in Table 3, gender differences were observed to be significantly correlated with smoking cessation in the final model. Women who continued smoking were affected by their smoking mothers (OR, 1.6; 95% CI, 1.0–2.4), which is consistent with the findings of smoking initiation. Conversely, men with smoking fathers (OR, 1.8; 95% CI, 1.4–2.1), grandfathers (OR, 1.5; 95% CI, 1.1–2.0), spouses (OR, 1.5; 95% CI, 1.1–2.1), and siblings (OR, 1.3; 95% CI, 1.0 –1.6) continued smoking. Men aged ≤55 years of age continued smoking compared with those aged ≥56 years (OR, 2.4: 95% CI, 2.0–2.9), whereas no significant differences were found in women. In men, obesity was defined as having a BMI of more than 25.0. Obesity in CSs was observed significantly less than in ESs (OR, 0.8; 95% CI, 0.6–0.9). The results of the sensitivity analyses revealed that when years of smoking were entered in the model, the age of women showed a reverse effect, while the age of men did not have any influence. Age was, thus, retained in the model.

3.3. Association between Maternal Smoking during Pregnancy and Smoking Initiation

Given the correlation coefficient of 0.60 (p < 0.01) between smoking mothers and antenatal maternal smoking, maternal smoking during pregnancy was excluded to avoid multicollinearity in the multivariate analysis. Fisher’s exact test showed gender differences in maternal smoking during pregnancy. The odds ratios were 0.28 (smoking/nonsmoking mother in pregnancy = 17/60) for CSs and ESs and 0.04 (1/23) for NSs among men, and 0.25 (15/60) for CSs and ESs and 0.36 (27/76) for NSs among women. Antenatal maternal smoking affected smoking initiation among men, but not significantly (OR, 6.4; p = 0.06; 95% CI, 0.9–283.6). On the contrary, it did not affect women (OR, 0.7; p = 0.37; 95% CI, 0.3–1.5).

4. Discussion

This cross-sectional study in a Japanese genome cohort, based on data from the general population of Nagahama city in Japan, demonstrated that gender differences were associated with the intergenerational transmission of smoking behavior across three generations. There were three key findings in this study. The first, with respect to smoking initiation, was that women were affected by their mothers and grandmothers. The second, with respect to smoking cessation, was that smoking in all family members except the mother and the grandmother affected men, whereas women were only affected by their smoking mothers. The third, with respect to age, was that, in the case of men, the smoking initiation rate was significantly lower in the younger age group and the smoking rate was significantly lower in the older age group; however, in women, the smoking initiation rate was significantly higher in the younger age group and the smoking rate was not different between younger and older age groups. Under the same tobacco control for both men and women, there was no significant impact on curbing smoking rates, because female smokers were in the minority. Given the fact that the smoking rate in younger women has not declined, as shown in this study, the WHO report in 2019 showed that the smoking rate among women in high-income countries was still the highest among all countries (16.4%), more than four times the average rate seen in low- and middle-income countries (3.5%). In contrast, the highest rate among men was seen in middle-income countries (35.3%), where it was almost double the average rate found in low-income countries (20.2%). Among women in high-income countries, it is globally rising [21]; thus, the use of the same tobacco control methods for men and women may not sufficiently restrain the smoking behavior of women in their social advancement.
The effects of parental smoking differed by gender for both smoking behavior and nicotine dependence [22]. In the present study, the smoking status of mothers significantly increased the likelihood of smoking initiation among women but not among men, which is consistent with a previous report [15,23]. Moreover, we found that grandmothers had a stronger influence on smoking initiation among women compared with fathers and grandfathers. In contrast to our results, a previous study indicated that the direct linkages between grandparents and grandchildren were not significant [16,17]. However, these studies also suggested that their offspring represented the combined influence of the family social environment, as well as shared genetic factors affecting smoking initiation and nicotine addiction.
Gender differences may reflect the distinctive sexual dimorphism of the brain, including hormonal and structural factors that emerge during fetal development [24]. Similarities in smoking behavior could be due to shared genes, particularly those involved in nicotine metabolism (e.g., CYP2A6) or those related to the availability of brain neurotransmitters, such as dopamine and serotonin (e.g., DRD2 and 5HTTLRP) [25]. Pharmacogenetic studies have suggested associations between treatment outcomes and genes coding for drug-metabolizing enzymes (e.g., CYP2A6 and CYP2B6) [26,27,28]. CYP2A6 metabolizes nicotine. The rate of inactivation and the clearance of nicotine can ultimately influence smoking behavior, as well as the ability of smokers to quit smoking. In a recent study, women were associated with higher CYP2A6 mRNA expression, relative to men in univariate analyses with similar trends for protein levels and enzyme activity, but not significantly [29]. If a gender-specific genetic etiology of smoking cessation is found, not only is effective smoking cessation treatment possible, but tobacco control can also be implemented according to the evidence.
The WHO has stated that smoking cessation interventions should be effective for and available to vulnerable groups of people [30]. This indicates the need to consider appropriate tobacco control measures for women. According to a previous Canadian study on tobacco control, price and taxation were the only policies related to smoking behavior in both men and women, whereas the association between health education and smoking behavior was gender-specific [31]. Per capita health education expenditures were positively associated with the odds of being a nonsmoker for men (OR, 1.36; CI, 1.09–1.70) but not women (OR, 1.13; CI, 0.91–1.39) [31]. Even at a younger age, there was no evidence that school-based smoking prevention programs have a significant effect on preventing adolescent girls from smoking (overall pooled effect relative risk, 0.96; CI, 0.86–1.08) [32]. A Cochrane review for family-based programs for preventing smoking by children and adolescents regardless of gender showed moderate-quality evidence of family-based interventions having a positive impact on preventing smoking when compared to a no-intervention control (risk ratio, 0.76; CI, 0.68–0.84) [33]. However, mothers and grandmothers are often positive role models for girls, and smoking behavior is inherited, as shown in our research. This relationship could hinder the success of family-based programs. We also paid attention to the intergenerational transmission of implicit attitudes in adolescents’ smoking initiation. Mothers who had more positive implicit attitudes had children with more positive implicit attitudes. These positive implicit attitudes of adolescents predicted their smoking initiation 18 months later [34].
Gender differences in smoking rates and the declining smoking rates in Japan could be explained by the following: as smoking rates among fathers and grandfathers have declined over the last 50 years, smoking in their affected sons has also declined; meanwhile, smoking rates among women have been maintained across generations of mothers and grandmothers, resulting in no decrease in smoking initiation among women, indicating that mothers and grandmothers have a strong influence on female offspring in terms of both smoking initiation and cessation. Effective smoking prevention education tools and timing for girls should be the focus rather than smoking cessation after initiation. In order for tobacco public policy to succeed completely, it is necessary to clarify the cause of intergenerational transfer for smoking behavior, and further research is required for related evidence.
Age groups showed gender differences in smoking cessation. In previous studies, gender differences were observed in smoking cessation among respondents between 30 and 55 years of age, with women having greater difficulty abstaining from smoking [6]. One of the big gender differences is presumed to be menopause. Since dramatic changes in the hormonal environment are associated with various health problems, investigating the different effects of female hormones is a worthwhile avenue for future research.
The present study had several limitations. This was a cross-sectional study; thus, predictors could not be determined. The data were based on self-reports, allowing recall bias of the participants, especially with regard to smokers indicating their status as nonsmokers. Conversely, CSs and ESs reflect their perceptions of their parents and grandparents smoking, which can be considered even more important than the actual grandparents’ smoking status. Our setting was Nagahama City, which is a relatively populous local area in Japan. The population ratio of males to females is 48.9% to 51.2% (48.6% men and 51.4% women in Japan), along with 13.6% for ages from 0 to 14 years old, 58.2% for ages 15 to 64, and 28.2% for ages over 65 (12.1%, 59.5%, and 28.4% in Japan, respectively). While we consider our study cohort representative of the Japanese population, the small population may prevent the generalization of this study. The intensity of smoking was also self-reported and not determined. Regarding smoking cessation, one of the reasons for failure to quit smoking is nicotine addiction. We captured CPD data, but we did not determine the degree of nicotine addiction and smoking cessation therapy. We analyzed the secondary data from the Nagahama Study. We surveyed around 3000 male cases in line with a previous study [17] with 3535 samples (response rate of 37%). Even though our questionnaire response rate was 100%, secondary data processing led to a sample size of 2833 men and 5819 women. Given the small sample size, the statistical power may have been low.

5. Conclusions

In conclusion, we found that gender differences in smoking initiation and cessation might be attributed to differences in the influencers of smoking among family members. Compared with men, women with smoking mothers and grandmothers were more likely to be smokers, and women with smoking mothers were less likely to achieve smoking cessation. Our findings suggest that smoking mothers may continue to affect the smoking behavior of their daughters and even granddaughters. Future research should focus on whether the long-term smoking behavior of women is due to genetic factors in matrilineal families or provide evidence to help develop effective gender-specific intervention programs to curb the long-term smoking behavior of women.

Supplementary Materials

The following are available online at https://www.mdpi.com/article/10.3390/ijerph19031511/s1, Questionnaire on specific health examination (Question relevant to the subject).

Author Contributions

For research articles with several authors, conceptualization, S.N. and S.K.; methodology, S.N.; validation, Y.T. (Yoshimitsu Takahashi); formal analysis, S.N.; investigation, S.N. and Y.T. (Yoshimitsu Takahashi); resources, Y.T. (Yoshimitsu Takahashi), S.M. and Y.T. (Yasuharu Tabara); data curation, S.N.; writing—original draft preparation, S.N.; writing—review and editing, Y.T. (Yoshimitsu Takahashi), T.N., S.M., M.M., A.S., Y.T. (Yasuharu Tabara), F.M. and S.K.; visualization, S.N.; supervision, S.K.; project administration, S.N.; funding acquisition, Y.T. (Yoshimitsu Takahashi), T.N., S.M., M.M., A.S., Y.T. (Yasuharu Tabara), F.M. and S.K. All authors have read and agreed to the published version of the manuscript.

Funding

The work was supported by a university grant, the Center of Innovation Program, the Global University Project, and a Grant-in-Aid for Scientific Research (25293141, 26670313, 26293198, 17H04182, 17H04126, 17H04123, 18 K18450, and 19 K17634) from the Ministry of Education, Culture, Sports, Science and Technology of Japan, as well as the Practical Research Project for Rare/Intractable Diseases (ek0109070, ek0109196, and ek0109348), the Comprehensive Research on Aging and Health Science Research Grants for Dementia R&D (dk0207006, dk0207027), the Program for an Integrated Database of Clinical and Genomic Information (kk0205008), the Practical Research Project for lifestyle-related diseases including cardiovascular diseases and diabetes mellitus (17ek0210066, 18ek0210096, and 19ek0210116), and the Research Program for Health Behavior Modification by Utilizing IoT (le0110005, le0110013) from the Japan Agency for Medical Research and Development (AMED). The work was also supported by the Takeda Medical Research Foundation, the Mitsubishi Foundation, the Daiwa Securities Health Foundation, and the Sumitomo Foundation.

Institutional Review Board Statement

All protocols and informed consent procedures of the study were conducted according to the guidelines of the Declaration of Helsinki and approved by the Kyoto University Graduate School and Faculty of Medicine Ethics Committee, the Ad Hoc Review Board of the Nagahama Cohort Project, and the Nagahama Municipal Review Board of Personal Information Protection (G0278).

Informed Consent Statement

Written informed consent was obtained from all of the participants prior to their health examination.

Data Availability Statement

This study was conducted by analyzing a dataset of the Nagahama Prospective Cohort for Comprehensive Human Bioscience (the Nagahama Study); the data are available upon request because we did not obtain consent from each participant for publication of individual data in the public domain. Data from the Nagahama study are available upon request to the Nagahama office ([email protected]). We plan to make our data available at the National Bioscience Database Center after obtaining consent from the participants in this study.

Acknowledgments

The Nagahama Study group executive committee is composed of the following individuals: Yasuharu Tabara, Takahisa Kawaguchi, Kazuya Setoh, Yoshimitsu Takahashi, Shinji Kosugi, Takeo Nakayama, and Fumihiko Matsuda from the Center for Genomic Medicine Kyoto University Graduate School of Medicine (Y.T. (Yasuharu Tabara), T.K., K.S. and F.M.), the Department of Health Informatics (Y.T. (Yoshimitsu Takahashi) and T.N.), and the Department of Medical Ethics and Medical Genetics (S.K.), Kyoto University School of Public Health. We are extremely grateful to the Nagahama City Office and nonprofit organization Zeroji Club for their help in conducting the Nagahama study.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Participant flow diagram.
Figure 1. Participant flow diagram.
Ijerph 19 01511 g001
Table 1. Demographic background and indices of noncommunicable diseases.
Table 1. Demographic background and indices of noncommunicable diseases.
MenCurrentSmokersEver-SmokersNever-Smokers
n (%)865 (30.5%)1277 (45.1%)691 (24.4%)
Age at enrolment (years)55 (39–63)63 (54–68)59 (41–67)
BMI (kg/m2)22.9 (21.0–25.0)23.5 (21.7–25.3)23.1 (21.2–25.1)
GOT (IU/L)23 (19–28)24 (21–29)23 (20–28)
GPT (IU/L)21 (16–31)22 (17–31)22 (17–30)
γ-GTP (IU/L)37 (25–60)34 (24–57)30 (21–46)
Tch (mg/dL)199 (178–222)200 (179–222)198 (178–223)
BS (mg/dL)89 (84–95)91 (86–98)89 (84–96)
HbA1c (%)5.0 (4.8–5.3)5.1 (4.9–5.4)5.0 (4.9–5.3)
BP (mmHg)125 (117–136)128 (119–138)126 (116–137)
Serum Cr (mg/dL)0.8 (0.7–0.9)0.8 (0.8–0.9)0.9 (0.8–0.9)
WomenCurrent SmokersEver-SmokersNever-Smokers
n (%)354 (6.1%)491 (8.4%)4974 (85.5%)
Age at enrolment (years)42 (36–55)40 (34–54)57 (44–64)
BMI (kg/m2)20.3 (18.8–22.7)20.7 (19.2–22.6)21.5 (19.7–23.7)
GOT (IU/L)19 (16–22)19 (16–23)21 (18–25)
GPT (IU/L)14 (11–18)14 (11–19)16 (13–21)
γ-GTP (IU/L)18 (14–26)16 (13–23)17 (14–25)
Tch (mg/dL)194 (172–220)197 (174–220)211 (188–234)
BS (mg/dL)85 (80–90)85 (81–91)87 (83–92)
HbA1c (%)4.9 (4.8–5.2)4.9 (4.8–5.2)5.1 (4.9–5.3)
BP (mmHg)110 (103–122)110 (103–121)119 (108–130)
Serum Cr (mg/dL)0.6 (0.5–0.7)0.6 (0.5–0.7)0.6 (0.6–0.7)
Data are presented as the median (IQR). BMI: body mass index, GOT: glutamic oxaloacetic transaminase, GPT: glutamic pyruvic transaminase, γ-GTP: gamma-glutamyl transpeptidase, Tch: total cholesterol, BS: blood sugar, HbA1c: hemoglobin A1c, BP: systolic blood pressure, Serum Cr: serum creatinine.
Table 2. Gender differences in smoking initiation.
Table 2. Gender differences in smoking initiation.
Men
Variables nCurrent and Ever-Smokers
n, %
Crude OR
(95% CI)
(n = 2833)
Adjusted OR
(95% CI)
(n = 2827)
p-Value
Age (years)30–55109377971.3%0.7 (0.6–0.8)0.6 (0.5–0.7)<0.001
56≤1740136378.3%ref.ref
Father smokesYes1675131178.3%1.4 (1.2–1.7)1.4 (1.2–1.7)<0.001
No115883171.8%ref.ref.
Mother smokesYes17213176.2%1.0 (0.7–1.5)0.9 (0.6–1.4)0.66
No2661201175.6%ref.ref.
Grandfather smokesYes30824077.9%1.2 (0.9–1.5)1.1 (0.8–1.5)0.50
No2525190275.3%ref.ref.
Grandmother smokesYes715780.3%1.3 (0.8–2.5)1.2 (0.7–2.2)0.62
No2762208575.5%ref.ref.
Sibling smokesYes61351183.4%1.8 (1.4–2.3)1.8 (1.4–2.2)<0.001
No2220163173.5%ref.ref.
Women
Variables nCurrent and Ever-Smokers
n, %
Crude OR
(95% CI)
(n = 5819)
Adjusted OR
(95% CI)
(n = 5813)
p-Value
Age (years)30–55289565122.5%4.1 (3.5–4.8)3.6 (3.0–4.3)<0.001
56≤29241946.6%ref.ref.
Father smokesYes306556918.6%2.0 (1.8–2.4)1.3 (1.1–1.5)0.01
No275427610.0%ref.ref.
Mother smokesYes28710235.5%3.6 (2.7–4.6)2.4 (1.8–3.2)<0.001
No553274313.4%ref.ref
Grandfather smokesYes74413618.3%1.4 (1.1–1.7)1.0 (0.8–1.2)0.84
No507570914.0%ref.ref..
Grandmother smokesYes1524428.9%2.5 (1.7–3.5)1.7 (1.1–2.4)0.01
No566780114.1%ref.ref.
Sibling smokesYes110331028.1%3.1 (2.6–3.6)2.3 (1.9–2.7)<0.001
No471653511.3%ref.ref.
OR: odds ratio, CI: confidence interval.
Table 3. Gender differences in smoking cessation.
Table 3. Gender differences in smoking cessation.
Men
Variables nCurrent Smokers
n, %
Crude OR
(95% CI)
(n = 2142)
Adjusted OR
(95% CI)
(n = 2131)
p-Value
Age (years)30–5577943756.1%2.8 (2.3–3.4)2.4 (2.0–2.9)<0.001
56≤136342831.4%ref.ref.
Body mass index≥25.059722637.9%0.9 (0.7–1.0)0.8 (0.6–1.0)0.02
<25.0154563941.4%ref.ref.
Father smokesYes131161947.2%2.1 (1.8–2.6)1.8 (1.4–2.1)<0.001
No83124629.6%ref.ref.
Mother smokesYes1316952.7%1.7 (1.2–2.4)1.2 (0.8–1.7)0.41
No201179639.6%ref.ref.
Grandfather smokesYes24013455.8%2.0 (1.5–2.7)1.5 (1.1–2.0)0.01
No190273138.4%ref.ref.
Grandmother smokesYes572950.9%1.5 (0.9–2.6)0.9 (0.5–1.6)0.67
No208583640.1%ref.ref.
Sibling smokesYes51125449.7%1.6 (1.4–2.0)1.3 (1.0–1.6)0.03
No163161137.5%ref.ref.
Spouse smokesYes1689355.4%1.9 (1.4–2.7)1.5 (1.1–2.1)0.02
No197477239.1%ref.ref.
Cigarettes per day at initiation≥2135113739.0%1.0 (0.9–1.2)1.0 (0.9–1.2)0.84
11–20129554141.8%
1–1049618737.7%ref.ref.
Age at initiation
(years)
<2058125043.0%1.2 (1.0–1.4)0.8 (0.7–1.0)0.08
20≤156161539.4%ref.ref.
Alcohol consumption (glasses)≥3 (≥540 mL)1096761.5%1.3 (1.1–1.4)1.2 (1.1–1.3)0.003
≥2–<3 (360–540 mL)34115545.5%
≥1–<2 (180–360 mL)78930638.8%
<1 (<180 mL)90333737.3%ref.ref.
Women
Variables nCurrent Smokers
n, %
Crude OR
(95% CI)
(n = 845)
Adjusted OR
(95% CI)
(n = 834)
p-Value
Age (years)30–5565126941.3%0.9 (0.7–1.2)0.8 (0.6–1.1)0.19
56≤1948543.8%ref.ref.
Body mass index≥25.0883843.2%1.0 (0.7–1.7)1.1 (0.7–1.7)0.81
<25.075731641.7%ref.ref.
Father smokesYes56925645.0%1.5 (1.1–2.0)1.4 (1.0–1.9)0.06
No2769835.5%ref.ref.
Mother smokesYes1025553.9%1.7 (1.1–2.6)1.6 (1.0–2.4)0.04
No74329940.2%ref.ref.
Grandfather smokesYes1366044.1%1.1 (0.8–1.6)1.0 (0.7–1.5)0.99
No70929441.5%ref.ref.
Grandmother smokesYes442454.5%1.7 (0.9–3.2)1.5 (0.8–2.9)0.20
No80133041.2%ref.ref.
Sibling smokesYes31013944.8%1.2 (0.9–1.6)1.0 (0.7–1.4)0.91
No53521540.2%ref.ref.
Spouse smokesYes53521440.0%0.8 (0.6–1.1)0.8 (0.6–1.1)0.22
No31014045.2%ref.ref.
Cigarettes per day at initiation≥21321340.6%1.3 (1.1–1.7)1.2 (0.9–1.6)0.17
11–2025112549.8%
1–1056221638.4%ref.ref.
Age at initiation
(years)
<202069043.7%1.1 (0.8–1.5)1.0 (0.7–1.4)0.92
20≤63926441.3%ref.ref.
Alcohol consumption (glasses)≥3 (≥540 mL)261557.7%1.4 (1.2–1.8)1.4 (1.2–1.7)0.001
≥2–<3 (360–540 mL)442454.5%
≥1–<2 (180–360 mL)1497953.0%
<1 (<180 mL)62623637.7%ref.ref.
OR: odds ratio, CI: confidence interval.
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Nakagawa, S.; Takahashi, Y.; Nakayama, T.; Muro, S.; Mishima, M.; Sekine, A.; Tabara, Y.; Matsuda, F.; Kosugi, S., on behalf of the Nagahama Study Group. Gender Differences in Smoking Initiation and Cessation Associated with the Intergenerational Transfer of Smoking across Three Generations: The Nagahama Study. Int. J. Environ. Res. Public Health 2022, 19, 1511. https://doi.org/10.3390/ijerph19031511

AMA Style

Nakagawa S, Takahashi Y, Nakayama T, Muro S, Mishima M, Sekine A, Tabara Y, Matsuda F, Kosugi S on behalf of the Nagahama Study Group. Gender Differences in Smoking Initiation and Cessation Associated with the Intergenerational Transfer of Smoking across Three Generations: The Nagahama Study. International Journal of Environmental Research and Public Health. 2022; 19(3):1511. https://doi.org/10.3390/ijerph19031511

Chicago/Turabian Style

Nakagawa, Sachiko, Yoshimitsu Takahashi, Takeo Nakayama, Shigeo Muro, Michiaki Mishima, Akihiro Sekine, Yasuharu Tabara, Fumihiko Matsuda, and Shinji Kosugi on behalf of the Nagahama Study Group. 2022. "Gender Differences in Smoking Initiation and Cessation Associated with the Intergenerational Transfer of Smoking across Three Generations: The Nagahama Study" International Journal of Environmental Research and Public Health 19, no. 3: 1511. https://doi.org/10.3390/ijerph19031511

APA Style

Nakagawa, S., Takahashi, Y., Nakayama, T., Muro, S., Mishima, M., Sekine, A., Tabara, Y., Matsuda, F., & Kosugi, S., on behalf of the Nagahama Study Group. (2022). Gender Differences in Smoking Initiation and Cessation Associated with the Intergenerational Transfer of Smoking across Three Generations: The Nagahama Study. International Journal of Environmental Research and Public Health, 19(3), 1511. https://doi.org/10.3390/ijerph19031511

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