Introduction

The impact of climate change on human life has become a major issue in recent years. The effect of rising temperatures due to greenhouse gas emissions has become even more pronounced. The Intergovernmental Panel on Climate Change (2014) found that, in 2010, global emissions of carbon dioxide were twice that of 1970. Greenhouse gas emissions increase the ambient temperature as they absorb and release radiation in the thermal infrared range. Previous literature has documented the fact that summers have become increasingly hot due to this phenomenon. For example, Habeeb et al. (2015) found that the frequency and intensity of heat waves increased significantly between 1961 and 2010 across 50 US cities.

Few studies have analyzed the relationship between temperature and birth rate. Those that have include Seiver (1985, 1989), Roenneberg and Aschoff (1990), Lam and Miron (1991, 1996), and Barreca et al. (2018). They used relatively old data,Footnote 1 and found a negative relationship between temperature and birth rate; that is, high temperatures reduce the number of births. Barreca et al. (2018), the most recent of the studies, examined data obtained between 1931 and 2010 and found that an additional day with a mean temperature of 80 °F or higher decreased birth rates 8, 9, and 10 months later, but increased them 11–23 months later; the net effect of these findings is equal to a decrease in birth rate of 0.33%. The study also found that an additional day with a temperature of 80 °F or higher increased the current month’s birth rate and decreased that of the following month.Footnote 2,Footnote 3 However, they found no significant impact from cold temperatures.

Using data from South Korea, this study examines the effect of temperature on birth rate and birth outcomes. It complements the existing literature as follows. First, this study analyzes relatively recent data, obtained between 2009 and 2013. Presenting results based on recent data can be a valuable addition to the literature because populations adapt to extreme weather; thus, a prediction of the effect of future temperature is likely to be more reliable when it is based on recent data. Second, when estimating the temperature effect, this study compares birth rate and birth outcomes within the same city/month over time. This prevents the possibility of bias when comparing different months in the same city or different cities within the same month. Thus, the analysis is a cohort analysis. According to Hsiang (2016), this is a strengthening of the unit homogeneity assumption because different cohorts within the same unit are comparable. Since the data does not span a long period, the same city/month can be assumed to be homogeneous over time. Third, this study focuses on the influence of summer heat because rising temperatures impact people. Therefore, this study employs daily maximum temperatures rather than the daily average temperatures used in prior studies, because average temperatures may not accurately reflect the extent of the summer heat, as experienced by people.

This study’s findings are as follows. One additional day with a maximum temperature of 30–32 °C, relative to a day with a maximum temperature of 28–30 °C, decreases the birth rate 9 months later by 0.24%, or 92 babies per month. This result is robust to various specifications and samples. This study also found that the impact of the temperature bin did not vary according to the mother’s characteristics, including education and age. That is, high temperature has no differential effect on mothers of different backgrounds. Finally, we found no significant temperature effect on birth outcomes, but we cannot rule out that children born 9 months after summer heat are a selected (healthy) group.

The remainder of this paper is organized as follows. The next section reviews the literature, followed by presentation of the data; the “Empirical strategy” section outlines the empirical strategy, which is followed by the estimation results. The “Discussion and conclusion” section concludes the paper.

Literature review

High temperatures can lead to reduced number of pregnancies due to increased fatigue and heat-related diseases (McMorris et al. 2006; Bai et al. 2014; Nybo et al. 2014), reduced sexual desire (Markey and Markey 2013; Wilde et al. 2017), deterioration of female reproductive health (Sorensen et al. 2018), and decreased sperm count and quality (Levine et al. 1990; Chen et al. 2003; Levitas et al. 2013; Mao et al. 2017). Avoidance or lack of pregnancy because of hot weather decreases the number of newborns 9 months after a heat exposure event.Footnote 4 Resuming efforts to become pregnant immediately thereafter increases the number of newborns 10 months after the heat exposure event (delayed pregnancy). If the pregnancy period is shortened, the number of newborns in the expected month will decrease. For example, if the pregnancy period is shortened by 1 month, babies that were expected to be born 1 month later will be born in this month. In this case, this month will see an increase in the number of newborns, and the next month will see a decrease.Footnote 5

Studies on the effect of temperature on birth outcomes have shown mixed results. Some studies found that high temperatures cause a low birth weight (Deschênes et al. 2009; Andalón et al. 2016; Barreca et al. 2018) and preterm births (Dadvand et al. 2011; Strand et al. 2011; Barreca et al. 2018), possibly because, at high temperatures, blood flow to the uterus decreases (Basu et al. 2010) and the body secretes stress hormones, such as cortisol (Yackerson et al. 2008). However, other studies found no significant effect on birth outcomes (Porter et al. 1999; Tustin et al. 2004; Lee et al. 2008).Footnote 6

Data

This study analyzes birth and population data from the National Statistical Office for the period of 2009 to 2013 and weather data from Korean Meteorological Administration for the period of 2008 to 2013. The birth data are based on registrations of newborns in all 162 cities in the country, which include information on the birth year/month, gender, birth weight, gestational length, and parental ages and education levels.Footnote 7 The total number of newborns for the 5-year period is 2.3 million, and for each year, it is 444,849 (2009), 470,171 (2010), 471,265 (2011), 484,550 (2012), and 436,455 (2013) with an average of 461,458. The yearly average for the 162 cities is 2848 and the median is 669.

The population data include information on the number of residents in each city/year. The data are based on local registrations, and the number of residents is the average resident numbers on the first and last days of each year. The weather data include information on daily maximum temperature and precipitation at the city level. All are taken from actual weather stations, but in the case of the seven cities around Seoul without stations, Seoul’s weather data are used instead.Footnote 8,Footnote 9

Table 1 shows the number of days per month with a daily maximum temperature in the given range for cities. For example, for ≥ 32 °C, a city in the bottom 25th percentile has 1.2 days per month, or 14.4 days (= 1.2 × 12) per year, and a city in the top 25th percentile has 2.2 days per month, or 26.4 days (= 2.2 × 12) per year. The table also shows the number for each month. For example, August, the hottest month, has an average of 10.9 days of temperatures ≥ 32 °C, followed by July, with 5.2 days.

Table 1 The average number of days per month with a daily maximum temperature in the given range: distribution for city and month

Table 2 presents data (at the city/year-month level) on newborns and their mothers. The daily birth rate is 2.24, which means over the 5 years, an average of 2.24 children per 100,000 residents was born each day. The rate is defined as the number of newborns in a month divided by the number of days in the month, divided by the city/year population, and then multiplied by 100,000. In addition, the proportions of girls and babies of low birth weight are 48.5% and 5.2%, respectively.

Table 2 Summary statistics on newborns and their mothers

Empirical strategy

Consider birth rate regression Eq. (1) for city c and year/month t. The subscripts m and y represent the calendar month and year, respectively.

$$ \ln \left({\mathrm{A}}_{\mathrm{ct}}\right)={\upbeta}_0+\sum \limits_{j=1}^6\sum \limits_{k=0}^{12}{\beta}_k^j Tem{p}_{ct-k}^j+\sum \limits_{i=1}^3\sum \limits_{k=0}^{12}{\lambda}_k^i Rai{n}_{ct-k}^i+{\mathbf{X}}_{\mathbf{ct}}{\mathbf{B}}_{\mathbf{1}}+{\eta}_{cm}+{\gamma}_t+{\delta}_{cy}+{\nu}_c\times t+{\nu}_c\times {t}^2+{\varepsilon}_{ct} $$
(1)

The dependent variable is the natural log of birth rate, which is defined in the “Data” section. Temp is a variable representing the daily maximum temperature of each month and consists of the following six categories: < 22 °C, 22–24 °C, 24–26 °C, 26–28 °C, 30–32 °C, and ≥ 32 °C. Using categorical variables for temperature is now standard across the literature (Dell et al. 2014). For example, ≥ 32 °C indicates the number of days in a month for which the daily maximum temperature is equal to or greater than 32 °C. The superscript 6 of the Temp variable represents ≥ 32 °C, and 1 represents < 22 °C. The bin of 28–30 °C is excluded from the equation and is used as a comparison category.Footnote 10 If no bin is excluded, the coefficients for each temperature bin indicate the value of the dependent variable, and, therefore, one should compare the coefficients to examine how a temperature bin affects the birth rate relative to another temperature bin. Excluding a bin exempts us from doing so. This study includes the temperature of the current month and past temperatures from up to 12 months prior in the equation. If, for example, Temp6ct-9 has a value of 3, then city c experienced 3 days of maximum temperature of ≥ 32 °C 9 months previously. In addition, Rain is a variable representing the total precipitation of each month and consists of the following three categories: < 34 mm, 72–150 mm, and ≥ 150 mm.Footnote 11 The bin of 34–72 mm is excluded from the equation, and the equation includes the rainfall of the current month and the past 12 months. This variable is included because it is known to affect health outcomes (Dell et al. 2014). The vector X includes the mothers’ average age and education at the city/year-month level. Education is the proportion of mothers with no college degree. These variables are included because the mother’s characteristics are likely to affect the number of births.

Although the maximum temperature in a city on a given day is determined randomly, following Barreca et al. (2018), this study includes a variety of fixed effects in the regression to address the confounding of unobserved factors. In the equation, η is the city/month fixed effect, and thus the birth rate of the same city/month is compared over time. That is to say, the January birth rate of a city in a year is compared with the January birth rate of the city in other years. Without this variable, it is difficult to know whether the differences in birth rates are due to variations in temperature or variations in characteristics of the month or of cities. γ is the year/month fixed effect. This variable controls for factors affecting the whole country in a certain year/month. For example, avoiding pregnancy when suspecting, say, a Middle East respiratory syndrome coronavirus infection will reduce the number of newborns 9 months later. If we do not control for this variable, we cannot tell whether the low number of newborns can be attributed to the virus or to the weather.

In addition, δ is the city/year fixed effect. This variable controls for factors affecting a certain city/year. For example, if a city experiences an economic recession in 2012, leading residents to postpone marriage and childbirth, the number of newborns will decline in 2013. The city/year fixed effects can control for such factors. Finally, νc × t and νc × t2 are the interactions between city fixed effects and time trend variables t and t2, respectively.

Equation (1) is estimated using ordinary least squares. The regression includes 9718 (= 162 cities × 5 years × 12 months − 2) observations. Two city/year-months are excluded from the analysis because the number of newborns is zero in those cases and it is not possible to take the log. The coefficients of interest are the coefficients for the Temp variable. Although Eq. (1) includes a variety of fixed effects to control for unobserved factors, the estimates could be biased if there are factors affecting both temperature and the birth rate. One possible factor is air pollution, which may cause global warming and affect the birth rate. However, a temperature rise due to air pollution occurs gradually, not abruptly. That is, air pollution occurring in a certain month is not likely to affect temperature in the near future and thus is not likely to bias the estimates. Even if this were the case, one of the fixed effects can control for air pollution, as long as it affects the entire country (or city) in a certain year (or month).

It is noteworthy that the estimates include the impact of avoidance behaviors (e.g., staying indoors or using air conditioning) because people engage in such behaviors in response to high temperatures. Hence, the interpretation of the result should reflect this behavior. That is, the estimates reflect both the effect of the temperature and the effect of such behaviors.

Finally, this study also analyzes the impact of temperature on birth outcomes, including the probability of a low birth weight and of preterm birth. For the former, the dependent variable is the proportion of babies with low birth weight, and the independent variables are the same as those in regression Eq. (1). When estimating the impact on birth outcomes, the number of newborns in each city/month is used as the weight.

Results

The effect of temperature on birth rate

Table 3 shows the result of the regression using Eq. (1). Each column of the table presents the temperature effect 0–12 months after summer heat. In addition, multiplying the dependent variable by 100, a coefficient of, say, − 0.3, can be interpreted as a 0.3% reduction in the birth rate. According to the table, an additional day with a maximum temperature of 30–32 °C, relative to a day with a maximum temperature of 28–30 °C, decreases the birth rate 9 months later by 0.24%. This result is consistent with the findings of Barreca et al. (2018), who showed that in the 2000s, an additional day with a mean temperature of 80 °F or higher reduced the birth rate 9 months later by 0.2%.

Table 3 The effects of maximum temperature relative to 28–30 °C on the log birth rate (× 100)

The effect size of 0.24% found in this study is equivalent to 92 fewer babies per month in the entire country because an annual average of 461,458, or a monthly average of 38,455 (= 461,458/12), was born in the country during the 5 years, and 0.24% of the monthly average is 92. The reduced birth rate 9 months after an incidence of high temperature means there were reduced pregnancies due to the hot weather. In addition, the lack of evidence of a change in the birth rate in other months, as shown in Table 3, means there was no shift in birth months. That is, we found no evidence of any shortening of pregnancy length or delayed pregnancy.Footnote 12 In Table 3, although no coefficients for the maximum temperature of ≥ 32 °C are statistically significant, some of them are fairly large in absolute value, implying that we cannot rule out large impacts in some months.Footnote 13

Finally, we also estimated the average temperature effect, as in the previous studies. The temperature bins are ≥ 25 °C, 20–25 °C, 10–15 °C, 5–10 °C, 0–5 °C, < 0 °C, and the bin of 15–20 °C is omitted to be used as a comparison category. As Table 4 shows no estimates are statistically significant.

Table 4 The effects of average temperature relative to 15–20 °C on the log birth rate (× 100)

Robustness checks

As a robustness check, we control for humidity in the regression equation. The analysis is limited to 81 cities because not every city has humidity data. When we limit the analysis to 81 cities without controlling for humidity, the birth rate 9 months after the daily maximum temperature of 30–32 °C reduces by 0.237%. When we control for it, the result remains unchanged at 0.245%. Other coefficients also do not show a difference. This implies that humidity does not affect the temperature-fertility relationship.

We also estimated the temperature effect by adding bins of lower temperatures. The following temperature bins were added to the original ones in Eq. (1): 19–22 °C, 16–19 °C, …, 1–4 °C, and < 1 °C. Again, the bin of 28–30 °C was excluded. Table 5 shows that the result is not different from that in Table 3. That is, an additional day with a maximum temperature of 30–32 °C, relative to a day with a maximum temperature of 28–30 °C, decreases the birth rate 9 months later by 0.23%.

Table 5 The effects of maximum temperature relative to 28–30 °C on the log birth rate (× 100) 9 months after the weather event using the full distribution of temperatures

For the third robustness check, we estimated the temperature effect using past temperatures from up to 20 months prior and found that this also did not change the result. As shown in Table 6, the coefficient for 30–32 °C is − 0.291. For the last robustness test, to determine whether a particular city drives the result in Table 3, we excluded one city at a time. The choice of cities was made from the largest seven cities in the country, which have higher birth rates than the average birth rate. They are Seoul, the capital city, along with Daejeon, Gwangju, Incheon, and Ulsan.Footnote 14 As shown in Table 7, the exclusion leaves the coefficients unchanged. For example, when Seoul is excluded, the coefficient for 30–32 °C is − 0.237.

Table 6 The effects of maximum temperature relative to 28–30 °C on the log birth rate (× 100) using past temperatures up to 20 months
Table 7 The effects of maximum temperature relative to 28–30 °C 9 months after the weather event on the log birth rate (× 100) excluding a city at a time

Who is affected and how are they affected by high temperature?

Table 3 shows that high temperature reduces the number of births 9 months later. To investigate who is affected by the high temperature, this section estimates the temperature’s effect on the mothers’ characteristics, including education and age. Less educated and older or teen mothers could be affected more by a high temperature, possibly because they may have less knowledge about heat avoidance and may be less healthy. That is, the reduced births shown in Table 3 could be due to these types of mothers. The dependent variables of the analyses in Table 8 are the percentages of mothers with no college degree, of mothers aged 35 or older, and of teen mothers. In addition, the estimates in the table are the effect 9 months after the weather event. The table shows that a high temperature does not affect the mothers’ characteristics. While the coefficients for 30–32 °C in columns (1) and (3) are negative, they are not significant, and the positive coefficient in column (2) is not significant either.

Table 8 The effects of maximum temperature relative to 28–30 °C on mothers’ characteristics 9 months after the weather event

When the weather is hot, the number of births may reduce for the following reasons. As described in the “Literature review” section, people may reduce coital frequency, possibly due to heat-related fatigue (a behavioral factor). Even if the frequency is not reduced, the probability of conception may decline as a result of decreased sperm count and/or quality and deteriorated female reproductive health (a biological factor). Although this study cannot examine how each factor explains the temperature effect due to a lack of data, the reduced number of pregnancies 9 months after summer heat, as found in Table 3, can be reasonably attributed to these two factors.

Temperature effect on birth outcomes

This study estimates the temperature effect on birth outcomes. As the “Literature review” section describes, high temperatures may cause low birth weight and preterm births, although some studies did not find evidence of this. Table 9 shows the results, with each panel representing one regression. As shown in the two panels of the table, no estimates in the table are statistically significant.

Table 9 The effects of maximum temperature relative to 28–30 °C on birth outcomes

Although no estimates in Table 9 are statistically significant, it cannot be concluded that summer heat does not cause unhealthy babies because, considering that babies not conceived because of summer heat would have been born with worse birth outcomes if they had been conceived and born, the estimates of this study could underestimate the true effect of temperature on birth outcomes. That is, the estimates in Table 9 are possibly biased by selection.

Discussion and conclusion

This study estimated the effect of temperature on birth rates and birth outcomes for newborns in Korea between 2009 and 2013. The results showed that an additional day with a maximum temperature of 30–32 °C, relative to a day with a maximum temperature of 28–30 °C, decreased the birth rate 9 months later by 0.24%, or 92 babies per month. This study also found high temperatures have no differential effect on mothers of different backgrounds.

The effects on the birth rate found in this study are smaller than the effects found in Barreca et al. (2018). The difference may arise because the present study examines relatively recent data, while Barreca et al. (2018) analyze data obtained from 1931 to 2010. That is to say, people in modern times may respond differently to summer heat than people in the past. The former may use air conditioning more frequently than the latter and might be more accustomed to summer heat because they experience hot days more frequently. In fact, Barreca et al. (2018) found that the effect size declined after the 1960s. One additional factor that may make a difference in the two studies is that the mothers included in this study have a relatively high level of education. As shown in Table 2, mothers with no college degree account only for 39%, and the rest have a higher degree. Assuming that highly educated people have more knowledge about heat avoidance and more resources to follow through on this knowledge, this study should find smaller temperature effects.

Korea has a fertility rate lower than any other industrialized country, which could lead to severe labor shortages in the near future.Footnote 15 Though high temperatures have been found to have the potential to reduce the rate further, people can effectively minimize the temperature and economic impact through heat avoidance behavior. Although this study does not examine the temperature-birth rate relationship based on this behavior, future studies should analyze how heat avoidance behavior mitigates the temperature effect.