Teen smoking and birth outcomes.
Walker, Mary Beth ; Tekin, Erdal ; Wallace, Sally 等
1. Introduction
The Centers for Disease Control and Prevention (CDC) reports that
the incidence of low birth weight births (infants weighing less than
2500 grams at birth) is on the rise, and that very young mothers (those
15 years old and under) are two to three times more likely to have a low
birth weight baby than their counterparts aged 24-34 years. The
incidence of low birth weight for all teens is 23% higher than for the
population as a whole (CDC 2006a). A recent study by Chen et al. (2007)
concludes that low birth weight and other adverse birth outcomes
observed in teen pregnancies cannot be fully attributed to known risk
factors, such as low socioeconomic status and inadequate prenatal care.
Low birth weight is correlated with a number of adverse outcomes
for children, including future health problems and poorer educational
outcomes. Low birth weight infants account for large public health
expenditures: studies show that more than one third of the total dollar
amount spent in the United States on health care during the first year
of life can be attributed to low birth weight, even though low birth
weight infants account for fewer than 10% of all births in the United
States (Lewitt et al. 1995). (1)
The presence of a link between birth weight and smoking has long
been accepted. In a 2001 report, the Surgeon General stated that
"Infants born to women who smoke during pregnancy have a lower
average birth weight and are more likely to be small for gestational age than infants born to women who do not smoke. Low birth weight is
associated with increased risk for neonatal, perinatal, and infant
morbidity and mortality. The longer the mother smokes during pregnancy,
the greater the effect on the infant's birth weight" (CDC
2001). Multiple studies have shown that tobacco use during pregnancy is
correlated with lower birth weights; see, for example, Evans and Ringel
(1999), Abrevaya (2006), and Abrevaya and Dahl (2008). Shiono and
Behrman (1995) report that smoking during pregnancy accounts for 20% of
low birth weight births, making it the single most important modifiable
risk factor for low birth weight in developed countries (Kramer 1987).
We also observe that the incidence of teen smoking is relatively
high: In 2004, 21.7% of all high school students reported smoking
cigarettes, while the incidence of cigarette smoking among nonteens was
20.9%. (2) Data from the state of Georgia (1994-2002) indicate that
approximately 22.1% of nonblack teen mothers report that they smoked
during their pregnancies; whereas, only 11.7% of nonblack older mothers
report smoking (Table 1).
Could the observed differences in birth weights for babies born to
teen mothers and babies born to nonteens be attributable, at least in
part, to differences in the effects of smoking on infant health for
these two groups? The issue is complicated by several factors. First,
there are the physiological effects of nicotine on the fetus; medical
research indicates that nicotine itself is a neuroteratogen, affecting
nervous system development (see Roy, Seidler, and Slotkin 1998; Slotkin
1998; Law et al. 2003). Smoking also interferes with the function of the
placenta, which may lead to malnutrition (Law et al. 2003). Then, too,
teen mothers will not have sustained the same physical damage from
smoking as adult women, simply because the teens have not had the same
length of exposure to tobacco. These causal effects do not suggest any
reason to suspect substantial differences in the impacts on babies born
to smoking teens or smoking adults.
However, smoking during pregnancy not only has a direct physical
effect on the health of the fetus, but it also serves as a possible
signal for other unhealthy behaviors that are not usually measured in
our data sets. Although not all studies use methods to account for the
possible correlation of maternal tobacco use with these other
unobservable influences, in recent work researchers do recognize the
endogeneity of tobacco use in birth outcome models; see, for example,
Almond, Chay, and Lee (2005) or Abrevaya (2006). Simply stated, the
hypothesis is that women who choose to smoke during pregnancy, despite
the considerable evidence that relates smoking to poor birth outcomes,
could be likely to engage in other risky behaviors. Use of tobacco could
provide a signal of the mother's attitude or concern for a healthy
birth, and these unobservable factors could also affect the pregnancy
outcome.
Perhaps some fraction of the difference in birth outcomes for teens
and nonteens results from systematic differences in either the extent of
these unobserved behaviors or the correlation of these behaviors with
tobacco use. Thus, obtaining empirical evidence of the causal effect of
maternal tobacco use on birth weight for both teen mothers and older
mothers could provide some useful information on the signal provided by
tobacco use, such as the teen mother's attitude or concern for a
healthy baby relative to a nonteen mom. In this paper, we provide
estimates of the impact of maternal tobacco use on birth outcomes for
teen mothers and older mothers, using a unique data set of the entire
population of births in the state of Georgia over the period 1994-2002.
We use three different estimation methods that rely on different
assumptions regarding the unobserved components of maternal behavior, in
the hope of obtaining estimates of the causal effect of smoking on birth
weights. The results of the alternative estimators suggest that both
ordinary least squares (OLS) and matching estimators, which rely on
observable characteristics to estimate the causal link between birth
weight and smoking, may overstate the impact of smoking on birth weight.
The fixed effects estimates, which control for unobservables, suggest
that there are some differences of the impact of smoking on birth weight
for teen and nonteen mothers, but that the effect is substantially
smaller than what is found in the other estimations.
Evidence that the impact of smoking on birth weight for teens and
nonteens differs can inform future research into both teen smoking and
teen pregnancy, as well as the policies and programs aimed at the teen
population. Currently many of the antismoking campaigns and programs are
focused on teenagers. For example, the national campaign "Healthy
People 2010" lists tobacco use as one of its 10 high-priority
public health issues, targeting a 50% reduction in tobacco use for
teens. Evidence to justify and reinforce these efforts could be useful
in the general policy debate regarding tobacco use.
Section 2 of this paper reviews the literature. Section 3 discusses
the empirical strategy. Section 4 introduces the data used in the
analyses. Section 5 presents the results, and Section 6 concludes the
paper.
2. Previous Literature
Across the United States, teen births are on the decline. Southern
states continue to have the highest teen birth rates in the nation. In
1990, the national teen birth rate (births per 1000 females ages 15-17)
was 37, and in Georgia it was 50. In 2004, these figures were 22.1 and
29.3, respectively (CDC 2006a). More detailed data on births in Georgia
reflect some startling statistics regarding teen pregnancies. If we
consider all births to mothers below the age of 19, 4% of those births
are to mothers younger than age 15 (at time of delivery) and 26% to
mothers ages 15-16. In 2002, 9% of live infant births were of low birth
weight, an increase from 8.5% in 1998. Of teen births in 2000, 82% were
covered by Medicaid. (3)
The previous literature most relevant to our work are the recent
studies that recognize the endogeneity of tobacco use in birth outcome
models and use various techniques to account for this estimation
problem. In a randomized experiment, Permutt and Hebel (1989) considered
the impact of "stop smoking" counseling on birth weights for a
group of smoking mothers. The control group for comparison was a group
of smoking mothers who did not receive counseling. The authors found a
negative effect of smoking on birth weight of about 400 grams, using a
sample of 935 mothers. This is quite a large effect given that the
normal birth weight is 3500 grams. This study is unique in its natural
experiment approach, but the causal effect of smoking is estimated
imprecisely because of a small sample size.
Abrevaya (2006) estimates the causal effect of smoking during
pregnancy on birth weight and gestation length in weeks using panel data
techniques. This study is an interesting departure from the rest of the
literature because it employs a panel data analysis using a sample of
mothers with multiple births during the sample period. Since there are
no individual identifiers in the data set that would allow the author to
uniquely identify a mother (for example, her Social Security number), he
employs a matching strategy to determine which individual mothers
experienced multiple births during the time period considered. The
results from the fixed effects models indicate that the effect of
smoking on birth outcomes is smaller than those obtained from the OLS
models, suggesting a strong negative correlation between the omitted
variables and the smoking indicators. Our study is similar to this one
in that one of our identification strategies relies on the variation in
the smoking behavior of mothers who give multiple births during the
period analyzed. Because our data are drawn from administrative records,
we identify each mother perfectly. We are also able to control for a
much larger set of variables.
Almond, Chay, and Lee (2005) is another recent study on the effects
of maternal smoking during pregnancy on health outcomes of singleton births controlling for a wide set of background characteristics. The
authors compare the hospital costs, health outcomes, and infant
mortality rates between heavier and lighter infants from all twin pairs
born in the United States. In order to identify the causal effect of
smoking on birth weight, they use a propensity score matching estimator.
The authors' analysis of the effect of smoking on birth weight uses
data from Pennsylvania between 1989 and 1991; although, the authors
indicate that they found similar results for Florida, Georgia, Illinois,
Michigan, North Carolina, and Ohio. However, this study does not
distinguish between teen mothers and nonteen mothers. They find that the
impact of smoking on birth weight is about -200 grams.
Evans and Ringel (1999) examine the effect of cigarette taxes on
birth outcomes using data from the 1989-1992 Natality Detail Files. The
results suggest that excise cigarette taxes are associated with a
decrease in smoking participation among pregnant women and with an
increase in birth weight. The smoking participation price elasticity is
estimated to be -0.5. The authors use a data set of over 10 million
births, much larger than other studies. They employ an instrumental
variables method to identify the causal effect of smoking on birth
weight. Specifically, they use the changes in state cigarette taxes to
identify the causal effect of smoking on birth weight. A potential
problem with this estimation strategy is that the time period, 1989
1992, was not a period when changes in cigarette taxes were frequent.
Their results indicate that smoking causes a decrease in birth weight by
350 600 grams. However, their results from the instrumental variables
method are not statistically different from those from the OLS
estimation, perhaps because of low variation in their instrument.
Abrevaya and Dahl (2008) estimate the effect of birth
"inputs," including smoking, on birth weight. The authors use
samples of natality data for the states of Washington and Arizona. In
both states, births were maternally linked based on available
information (for Washington: mother's name, mother's date of
birth, mother's race, and mother's state of birth; and for
Arizona: mother and father's date of birth, mother's race, and
mother's state of birth). The subsample chosen for estimation is
the first and second births to white mothers. Their results are
qualitatively similar to ours, though their estimation strategy is
different. Their work uses quantile estimators to address the impacts of
birth inputs over the entire distribution of birth weight. They
incorporate individual effects that are somewhat different from the
usual fixed effects because quantiles are not linear operators. The
authors find that smoking reduces birth weight throughout the birth
weight distribution by between 26.2 and 82.5 grams in the panel
estimation. They also estimate a cross-Section model and find much
larger impacts of smoking, which they attribute to a failure to control
for unobserved characteristics. Our results show similar negative
effects of smoking on the conditional mean birth weight, but the
magnitudes are not directly comparable because of the different
estimators and because we incorporate measures of smoking intensity and
distinguish between adult and teen mothers.
Our analysis focuses on Georgia and uses recent data that include
the entire population of births over a longer period than used in most
previous studies. The resulting sample is much larger than those of many
other studies in this literature. We focus on the difference between
teen and nonteen mothers and focus on differences in outcomes by race.
We pay careful attention to identifying the causal effect of teen
smoking on birth weight by employing a variety of estimators that make
different assumptions. Our identification strategy for the fixed effects
estimator relies on a sample of mothers with multiple births during the
period considered. We report OLS, matching, and fixed effects results.
3. Empirical Strategy
Our goal is to estimate the effect of smoking during pregnancy on
birth outcomes and to assess whether this effect differs between teen
mothers and adult mothers. Suppose that the true data-generating process
can be written as
[outcome.sub.it] = [[alpha].sub.1] [S.sub.it] + [x.sub.it] [beta] +
[[alpha].sub.2][z.sub.it] + [[epsilon].sub.it], (1)
where [outcome.sub.it] is the outcome for the baby for mother i for
birth t (first, second, etc.). The vector [x.sub.it] contains all the
mother, father, and location level characteristics that affect birth
weight. The variable [z.sub.it] measures other risky behaviors of the
mother that affect the birth outcome of the infant but are unobservable.
[S.sub.it] is an indicator of whether the mother smoked during the
pregnancy, the random variable [[epsilon].sub.it] represents random
shocks to birth weight, and the parameters to be estimated are given by
[[alpha].sub.1] and [beta].
Because the [z.sub.it] variable is not observable, its effects are
reflected in the error term, and the model that is actually estimated
can be written
[outcome.sub.it] = [alpha][S.sub.it] + [x.sub.it][beta] +
[u.sub.t], (2)
where [u.sub.it] now absorbs the unobservable variable. It can
easily be shown that the OLS estimator for a can be written
[MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII], where [[??].sub.1]
and [[??].sub.2] represent the OLS estimators from Equation 1, and
[delta] represents the slope estimator from a regression of [z.sub.it]
on [S.sub.it] and [x.sub.it]. (4) Because we anticipate that both
[[??].sub.1] and [[??].sub.2] will be negative and that [S.sub.it] and
[z.sub.it] are positively correlated, on average, the estimates of
[[alpha].sub.1] that we obtain will usually be larger (in the negative
direction) than they should be. (5) The greater the discrepancy between
[[??].sub.1] and [[??].sub.1], the larger the impact of [z.sub.it] on
[outcome.sub.it] and/or the closer the correlation between smoking and
the unobservable [z.sub.it].
The first set of estimates we obtain for Equation 2 are OLS
estimates; this estimator is consistent under the conditions that either
[z.sub.it], has no effect on [outcome.sub.it] or the sample covariances
between [z.sub.it], and both [S.sub.it] and [x.sub.it] are zero.
A second possible estimation strategy is to assume that the
selection into tobacco use by pregnant women is determined by observable
variables: That is, if the relevant characteristics that determine
smoking behavior are observable, we can use this information to control
for the endogeneity of tobacco use. We use these observable
characteristics to sort our data into "matched" samples of
smoking and nonsmoking women. We can then compute the impact of tobacco
use on birth weight as the average difference in birth weights of
infants in the matched samples of smokers and nonsmokers. Unlike
regression techniques, matching estimators do not impose any functional
form restrictions, nor do they assume a homogenous treatment effect
across populations (Zhao 2005). The assumption of "selection on
observables" is quite strong; however, it implies that the density
of infant health outcomes is independent of smoking behavior, once
observable variables have been conditioned on. More formally, with birth
weight, bw, as the outcome under consideration, these assumptions are
written as follows, where "1" means a smoker and "0"
a nonsmoker:
pdf ([bw.sub.1]|x,S) = pdf ([bw.sub.1]|x)
pdf([bw.sub.0]|x,S) = pdf([bw.sub.0]|x).
Although these assumptions cannot be tested directly, some indirect
evidence can be obtained through estimating the treatment effect on a
subsample that cannot have been affected by the treatment; we compute
these tests and discuss the results below. (6)
The third estimation strategy relaxes the assumption that
conditioning on observable characteristics that determine tobacco use
makes infant health outcomes independent of smoking behavior. We turn to
a fixed effects specification that requires a sample of mothers who gave
birth multiple times during our data period. In order to implement this
estimator, we specify
[outcome.sub.it] = [alpha] [S.sub.it] + [x.sub.it][beta] +
[[mu].sub.i] + [[epsilon].sub.it], (3)
where [[mu].sub.i] is an individual effect associated with the ith
mother. Because mothers' Social Security numbers were available, we
can uniquely identify mothers with multiple births over the period of
our sample. Any time invariant observed or unobserved influence on
infant health outcomes will be controlled for by the fixed effect, and
only factors that change over time will be included in the vector of
control variables. Some of these will include marital status of the
mother, mother's age, mother's education, infant's sex,
possibly the place of birth, the number of prenatal care visits,
mother's weight gained during pregnancy, and Medicaid status.
Identification of the treatment effect in this approach relies upon
mothers who change their smoking behavior between births. Our data cover
a relatively long period of time so that a substantial number of
teenager and adult women do change their smoking behavior, as noted in
Table 2. This estimator is attractive as it eliminates any
mother-specific time-invariant unobserved heterogeneity. However, if
there are time-varying unobserved characteristics of the mother that are
correlated with her smoking behavior, this approach would still yield
biased estimates. Abrevaya (2006) considers the bias that could result
from time-varying unobserved characteristics. He analyzes the simple
correlation of changes in observed behavior with changes in smoking
behavior. He finds that reduced smoking is associated with increased
prenatal care and speculates that reduced smoking would also be
correlated with reduced alcohol consumption and poor nutrition. From
this analysis he concludes that the direction of bias of the potential
time-varying characteristics is negative.
4. Data
Our data come from Georgia's Department of Human Resources birth records. (7) Georgia is an interesting state to analyze because of
the state's above average incidence of teen births (noted above)
and above average teen smoking behavior during our sample period. In
2002, the incidence of tobacco use in Georgia was 22.8% for the adult
population and 23.7% for the high school aged population. The U.S.
averages for that period were 22.5% and 22.9% for these groups,
respectively. (8)
The data include detailed information on the birth of a child, the
health status of the mother and child, and basic demographic information
including the race and ethnicity of the mother and age of the mother.
Our data cover 1994-2002, which provides a substantial number of births.
This is also a period long enough to observe enough numbers of multiple
births for our fixed effects model. We have a total of 941,746
observations (births) in the entire file and 138,500 incidents of teen
births, where teen births are live births to girls aged 19 years and
younger at the time of birth. The number of teen births per year fell
over the sample period, ranging from a minimum of 13,544 births in 2002
to a maximum of 16,353 births in 1995.
We subdivided the data a number of ways. First, we separated
African-American women from others. In keeping with much of the health
literature, we estimate separate models for blacks and nonblacks. In the
nonblack sample, the only substantial ethnic subgroup is Hispanic women.
In the subsamples that include mothers who have experienced two or more
live births within the sample period, the teen data set includes teens
who gave birth at least twice as teenagers (aged 19 years or younger).
Similarly, the subsample of nonteen multiple births includes women aged
20 years or older who have experienced two or more live births. Among
nonblack teens, the maximum number of live births to a single mother
during the sample period was four; for nonblack nonteen women, the
maximum was seven. For black teens and women, the maximum number of live
births was five and eight, respectively.
We consider two infant health outcome measures. The first is the
actual birth weight of the child, measured in grams, for full-term
births, and the second is the gestation-adjusted birth weights as
computed by Oken et al. (2003). The gestation-adjusted birth weight is
measured in percentile rankings, so that infants who are relatively
heavy for the gestational age are assigned a high percentile ranking;
whereas, small infants are assigned lower percentile rankings. When
actual birth weights are used as the outcome measure, we limit the
sample to only full-term births, meaning those with weeks of gestation
recorded as more than 37. This avoids the comparison of unusually small
full-term infants with those that are pre-term.
Table 1 documents smoking behavior reported in the vital statistics
records for all women in our data and reports low birth weight incidence
along with average birth weight and gestation. Table 2 summarizes
smoking patterns for mothers with multiple births. Overall, teen mothers
are somewhat more likely to use tobacco during pregnancy, but there
appear to be fewer teens who report heavy smoking over all the years of
our data. Teen mothers are less likely to quit smoking between the first
and second pregnancy: 2.7% of teen mothers quit versus 5.9% of nonteen
mothers. Teen mothers do have lighter babies, and this effect is most
pronounced for the black subsample.
There are interesting differences among the mothers in terms of the
time profile of their smoking behavior. We break the data into groups by
teens and nonteens, first births and subsequent births, and smoking
behavior. Smoking behavior is classified into four mutually exclusive categories: "never smoked," "always smoked,"
"quit smoking after the first birth," and "started
smoking after the first birth." Table 3 shows the average birth
weight and gestation length for these groups for teens and nonteen
mothers. As displayed in the table, the highest birth weights for teens
and nonteens generally occurs when there is no tobacco use just prior to
the birth ("never," "started after first birth," and
"quit after first birth"). Teens who never smoked have first
babies that are about 93% of the birth weight of nonsmoking, nonteen
moms (3110/3334). Smoking behavior brings the teen and nonteen moms
slightly closer together in terms of the birth weight ratio for first
and subsequent births. When teen mothers quit smoking, we see an
increase in the birth weight of their subsequent babies, while there is
little change for nonteen moms in this category (actually, a slight
decrease in birth weight for nonteen morns). For teen morns who begin
smoking after the first birth, we notice a decrease in birth weight
between the first and subsequent births of 34.9 grams (3121.6-3156.5),
compared to a nonsmoking teen morn who sees, on average, an increase
between first and second births of 49 grams (3159-3110).
A full list of variable names and definitions, plus summary
statistics for both teen and nonteen mothers, is provided in Table 4. As
displayed in Table 4, teen mothers are more likely to be black and are
more likely to be using Medicaid. They are much less likely to be
married or report a father. Furthermore, they have fewer prenatal care
visits than nonteen mothers, but they also are less likely to be
smokers.
5. Results
The results we focus on are based on the models using full term
births. (9) Results of the gestation-adjusted birth weight estimation
are available from the authors. (10) In the estimation prenatal care is
measured with two variables: the number of visits and the number of
visits squared. A dummy variable to indicate whether the infant
represents the mother's first live birth is included. Mother's
age and mother's education are entered as continuous variables.
We experimented with using demographic information on the father,
based on the idea that the father's characteristics might proxy for
otherwise unmeasured sociodemographic characteristics of the mother and
the mother's environment. For a substantial portion of the sample,
however, the father characteristics were missing. When included in the
models, these variables had virtually no impact on the outcome measures.
Finally, we constructed a binary variable that is equal to one when all
demographic information on the father is missing; again, we hypothesize that this provides a signal on the socioeconomic characteristics of the
mother. A variety of other control variables were included, but they had
little impact on the estimation results in a variety of specifications.
(11) Dummy variables were included for year and county of birth (these
coefficients are suppressed in the tables).
We have chosen not to test whether the effect of smoking differs
between teens and nonteens by pooling the data and using dummy variables
for teenage mothers in Equation 1 because this method would impose the
restriction that all other variables have identical effects for the two
groups. (12) We prefer to allow for the possibility that there are
substantive differences between these two groups in the way birth
outcomes are determined for the reasons discussed earlier. Therefore, we
will estimate Equation 1 separately for teen and nonteen mothers.
The consistency of the OLS estimator depends on the assumption that
smoking is uncorrelated with the unobservable factors reflected in the
errors. The results are presented in Table 5 (adults) and Table 6
(teens). The OLS results suggest some sizeable impacts of smoking on
birth weight, but the impact is somewhat larger for nonteen women, which
is not what we expected. Among all of the subgroups and categories of
smoking, the impact of smoking on birth weight ranges from 109 to 275
grams (the omitted category of smoking is "no smoking"). At
all three levels of smoking intensity, the point estimates for adult
women exceed those for teens, and the point estimate for adults is
nearly double the impact for teens in the highest smoking category.
Thus, based on these estimates, maternal smoking has more deleterious effects on nonteens than on teens.
The second estimator involves sorting both teen and nonteen samples
into matched groups of smokers and nonsmokers based on a number of
observable variables, using the matching estimator suggested by Abadie
and Imbens (2002). As described above, this estimator relies on the
assumption of selection on observables. Although this assumption cannot
be directly tested, Imbens (2004) suggests that some information can be
gained by estimating the treatment effect on an outcome that could not
have been affected by the treatment. If this treatment effect is found
to be not significantly different from zero, it lends some plausibility to the unconfoundedness assumption and hence the consistency of the
matching estimator.
A form of this test was implemented by estimating the effect of
smoking behavior on birth weight, using samples of first births to women
(either adults or teens and stratified by race), where the treatment
group consisted of women who did not smoke during the first pregnancy
but smoked during subsequent pregnancies. The control group consisted of
women who did not smoke during either the first or subsequent
pregnancies. 13 Results from these tests indicate that the null
hypothesis of unconfoundedness is not rejected for the sample of black
teen mothers only. Nonetheless, matching estimator results are reported
for all subsamples in order to compare to our other empirical results.
The covariates used for matching include length of gestation,
number of prenatal visits, mother's age, mother's education,
mother's weight gain categories, marital status, and first birth
and year dummies. The estimator uses the four "closest"
matches to the treated individuals, where closeness is defined by the
vector norm given by [(x'Vx).sup.1/2], with x representing the
vector of covariates and V defined as the diagonal matrix of the inverse variance matrix of x. We also used the bias adjustment suggested in
Abadie and Imbens (2002) because of the large number of covariates.
The treatment effect on the treated is computed by averaging the
difference between the birth weight of children of smokers and
nonsmokers within the matched groups. Note that these model results are
based only on the mother's use of tobacco, rather than the
intensity of tobacco use, as in the other models. These results, given
in Table 7, suggest that smoking has a detrimental effect on birth
weight, but that the effect is larger for nonteen women than for teens.
The effect for nonblack teens is estimated as -164 grams, and the effect
for nonblack nonteens is -211 grams. Both effects have very small
standard errors. For blacks, the teen estimate is -106 grams, and for
nonteens it is -176 grams. It is interesting to note that these results
are similar to an average of the coefficients for the three smoking
intensity categories used in the OLS model.
The results from the fixed effects model that uses the sample of
mothers with multiple births and full term babies are presented in Table
8 (nonteens) and Table 9 (teens). The substantial changes in the
measured impact of smoking support the notion that smoking is an
indicator of other unhealthy behaviors that are not measured in the OLS
or matching estimation strategies.
The difference in the impact of smoking on birth weight between
adults and teen moms is subtle. At the lowest level of smoking (10
cigarettes per day or less), children of smoking, nonblack teen moms are
9.7 grams lighter than children of smoking, nonblack adults. This
difference decreases to 3.7 grams for nonblacks smoking more than 10 to
20 cigarettes per day. For black women and teens, the differences in the
effects of smoking on birth weight are larger. At the lowest level of
smoking, black teen mothers give birth to babies that are 42.9 grams
lighter than black adult women in the same smoking category. In the
highest smoking category (more than 20 cigarettes per day), the
difference is quite large: black teen mothers give birth to infants that
are nearly 300 grams lighter than black adults. There are very few black
teen mothers who report heavy smoking; however, so that although the
large effect is striking, we cannot expect that it is representative of
this population.
Are the differences in the impact of smoking on birth weight
between teens and adults important? Clearly the differential impact of
smoking on birth weight for teens and adults is not sufficient to
explain the gap in average birth weights for teens and adults. Nonblack
teens give birth to infants who are, on average, 128 grams lighter than
infants born to adult nonblack women. (14) The different sizes of the
causal effects of smoking accounts for between 7% and 18% of that 128
gram gap. For black teens and adults, the average birth weight gap is
smaller, about 113 grams. For these women the differential impact of
smoking is somewhat larger; the difference accounts for 44% of the
difference in average birth weights.
Overall, the differences between the teen and nonteen mothers are
relatively small for most of our subsamples. Recall that because teen
smokers, by virtue of their youth, will have smoked fewer years, on
average, than adult smokers, they will have sustained less physical
damage from smoking than long term smokers. This yields some ground to
argue that the effects on infants born to teen mothers should be
smaller. Our finding of a negative impact of smoking on teen and
nonteen's babies, and a slightly stronger impact for teens (once
the impact of unobservable factors is accounted for), is very
interesting. (15)
6. Conclusions
In this paper, we have used three different estimation strategies
to analyze the impact of smoking on birth weight of teen and nonteen
mothers. Our results suggest that the unobservables that influence
behavior and correlate with tobacco use during pregnancy play a large
part in the previously reported impacts of smoking on birth weight. When
we control for unobservables (model 3, fixed effects), we find that
smoking is still an important factor in infant health, but the marginal
impact of smoking is much smaller than typically estimated. Both our OLS
estimates (model 1) and our estimates from our matched sample (model 2)
result in larger coefficients for smoking.
The differences in the estimated impact of smoking on birth weight
for teens and nonteens are somewhat surprising. We actually anticipated
that while the causal effects of smoking would be similar for teens and
adults, the signal provided by tobacco use--that is, the correlation of
tobacco use with other unhealthy behaviors--would be stronger for teens
than nonteens. We had expected that the signaling model would help
explain more of the well-documented result that teens give birth to
relatively lower birth weight children. Instead, our results indicate
that the signal effect provided by tobacco use is stronger for adults
than for teens; whereas, the causal effects are somewhat stronger for
teens. The differences in the causal effects, however, are modest. For
nonblacks, 7% of the difference in average birth weights of infants born
to teens and nonteens can be explained by smoking behavior for those in
the low smoking category. For blacks, about 40% of the difference can be
explained by low levels of smoking.
From a policy perspective, successful smoking cessation campaigns
(all else constant) should have similar impacts on the health of
children of teen and nonteen mothers. The difficulty, of course, is that
similar cessation programs will probably not have the same level of
success on smoking cessation for teens and nonteens. The choice of
appropriate policy is confounded by the lack of empirical results that
explain the differences in teen and nonteen birth weight. As discussed
by Chen et al. (2007) and as found here, it is very difficult to make
headway into an explanation of the differences in birth weight between
teens and nonteens. Further research is needed regarding the impact of
unobservable variables, such as teen attitudes toward pregnancy and
associated behaviors (physiological, social, and emotional). Survey data
may be an interesting supplement to currently available administrative
data in this regard.
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We would like to acknowledge the generous financial support of the
UPS Foundation. We would also like to thank Georgia's Department of
Human Resources for data access and Panupong Panudulkitti for his
excellent research assistance.
Received November 2006; accepted December 2007.
Mary Beth Walker, Georgia State University, Andrew Young School of
Policy Studies, P.O. Box 3992, Georgia State University, Atlanta, GA
30302-3992, USA; E-mail
[email protected]; corresponding author.
Erdal Tekin, Georgia State University, Andrew Young School of
Policy Studies, P.O. Box 3992, Georgia State University, Atlanta, GA
30302-3992, USA; E-mail
[email protected].
Sally Wallace, Georgia State University, Andrew Young School of
Policy Studies, P.O. Box 3992, Georgia State University, Atlanta, GA
30302-3992, USA; E-mail
[email protected].
(1) It is worth noting here that although low birth weight is
clearly a health risk to the infant, high birth weight babies are also
at risk (Law 2002; Wei et al. 2003). Previous research has not shown any
connection between maternal smoking and abnormally high birth weights.
Part of our empirical strategy controls for high birth weight births.
(2) CDC (2005, 2006b).
(3) Based on the authors' tabulations of Georgia Medicaid
records and the Georgia Vital Statistics data file.
(4) See Wooldridge (2002, p. 62).
(5) Note that estimated values of 8 would also depend on the other
covariates in the model and their relationship to [S.sub.it].
(6) Further details on the estimator that we use and the
specification tests can be found in Abadie and Imbens (2002) and Imbens
(2004).
(7) permission of the Department of Human Resources is necessary
for use of the data.
(8) Centers for Disease Control and Prevention (2003).
(9) We do not estimate the effect of smoking on gestation and hence
that channel of causation to birth weight remains unexplored in this
paper.
(10) The gestation adjustment controls for the gender of the
infant, with different percentiles for males and females.
(11) These variables include presence of a father, mother's
education, county of birth, and various medical conditions.
(12) We did estimate a model that used interaction terms between
the teen dummy and the other variables to distinguish the coefficients
for the two groups. The joint hypothesis that the coefficients were the
same for the two groups was soundly rejected, even for subsets of
coefficients that did not include the smoking variables.
(13) Clearly, this test procedure is not fully adequate because we
cannot know whether women who did not smoke during first pregnancies had
actually never smoked before or had smoked and then stopped. Similarly,
the women in the control group, who never reported smoking during
pregnancy, could have been smokers at some previous period.
(14) This difference is based on calculations from the Georgia
Vital Statistics data file, using full-term births only.
(15) The results using the gestation adjusted birth weights for the
OLS, matching, and fixed effects models were very similar to those
reported for the full-term birth samples. These results are available
upon request.
Table 1. Birth Outcomes and Smoking Behavior
Black Adults Nonblack Adults
Low birth weight incidence (%) 10.29 4.61
Average weight (grams) 3,170.5 3,423.1
Average gestation length (weeks) 38.43 38.95
Did not smoke during pregnancy (%) 94.68 88.28
Smoked < 10 cigarettes daily (%) 4.53 7.35
Smoked 10-20 cigarettes daily (%) 0.69 3.80
Smoked > 20 cigarettes daily (%) 0.09 0.57
Number of observations 257,664 520,306
Black Teens Nonblack Teens
Low birth weight incidence (%) 12.15 7.16
Average weight (grams) 3,063.3 3,278.1
Average gestation length (weeks) 38.40 38.95
Did not smoke during pregnancy (%) 97.60 77.93
Smoked < 10 cigarettes daily (%) 2.22 16.35
Smoked 10-20 cigarettes daily (%) 0.17 5.18
Smoked > 20 cigarettes daily (%) 0.02 0.55
Number of observations 69,989 66,847
Source: Tabulations from Vital Statistics data file.
Table 2. Smoking Patterns of Mothers with Multiple Births
Teen Nonteen
Smoking Behavior between Births Mothers (%) Mothers (%)
Never smoked 78.87 86.12
Always smoked 7.33 5.20
Quit smoking between first and subsequent
births 5.86 2.74
Started smoking between first and 4.39 2.69
subsequent births
Totals do not add to 100% because of missing values for smoking
behavior.
Source: Tabulations from Vital Statistics data file.
Table 3. Birth Weight (Grams) and Gestation Length (Weeks) by Smoking
Patterns
Never Smoked Always Smoked
First Subsequent First Subsequent
Outcome Birth Birth Birth Birth
Teen mothers
Birth weight 3110 3159 3071.6 3111.5
Gestation 38.5 38.3 38.9 38.54
Adult mothers
Birth weight 3334.27 3409.2 3128.1 3112.6
Gestation 38.98 38.7 38.99 38.5
Quit after Started after
First Birth First Birth
First Subsequent First Subsequent
Outcome Birth Birth Birth Birth
Teen mothers
Birth weight 3103.6 3184.9 3156.5 3121.6
Gestation 38.8 38.6 38.7 38.5
Adult mothers
Birth weight 3246.8 3200.6 3197.6 3207.1
Gestation 39.1 38.6 38.9 38.5
Source: Tabulations from vital statistics data.
Table 4. Variable Definitions and Descriptive Statistics
Variable Definition
Weight Birth weight in grams
Gestweight Gestation-adjusted birth weight, in
percentile rankings
Gestweek Length of gestation in weeks
First birth = 1 if birth represents first live birth to
mother, 0 otherwise
[Nonsmoker.sup.a] = 1 if mother's tobacco use is zero, 0
otherwise
Smoker: 0-10 = 1 if mother's tobacco use is between 0 and
cigarettes 10 cigarettes per day, 0 otherwise
Smoker: 10-20 = 1 if mother's tobacco use is between 10 and
cigarettes 20 cigarettes per day, 0 otherwise
Smoker: > 20 = 1 if mother's tobacco use is > 20
cigarettes cigarettes per day, 0 otherwise
Male = 1 if infant is male, 2 otherwise
Prenatal care = Number of prenatal care visits
Mother's age = Mother's age in years
Mother's education = Mother's education in years
Mother's weight = 1 if mother's weight gain is missing, 0
gain: missing otherwise
Mother's weight gain: = 1 if mother's weight gain is < 10 lbs, 0
< 10 pounds otherwise
Mother's weight gain: = 1 if mother's weight gain is between 10 and
10-35 pounds 35 lbs, 0 otherwise
Mother's weight gain: = 1 if mother's weight gain is > 35 lbs, 0
> 35 pounds (a) otherwise
Marital status = 1 if mother is married, 0 otherwise
Father missing = 1 if information on father is missing, 0
otherwise
Medicaid = 1 if Medicaid paid for birth, 0 otherwise
Number of observations
Teen Mothers
Variable Black Nonblack
Weight 3063.3 (569.295) 3278.1 (558.278)
Gestweight 35.6 (28.59) 44.9 (28.42)
Gestweek 38.4 (2.687) 38.952 (2.322)
First birth
0.737 (0.440) 0.808 (0.394)
Nonsmoker (a) 0.976 (0.153) 0.779 (0.414)
Smoker: 0-10
cigarettes 0.022 (0.147) 0.163 (0.370)
Smoker: 10-20
cigarettes 0.002 (0.041) 0.052 (0.222)
Smoker: > 20
cigarettes 0.0002 (0.014) 0.006 (0.074)
Male 1.492 (0.500) 1.488 (0.500)
Prenatal care 10.33 (3.928) 11.56 (4.002)
Mother's age 17.51 (1.431) 17.81 (1.214)
Mother's education 10.62 (1.430) 10.45 (1.523)
Mother's weight
gain: missing 0.060 (0.238) 0.045 (0.206)
Mother's weight gain:
< 10 pounds 0.075 (0.263) 0.037 (0.189)
Mother's weight gain:
10-35 pounds 0.610 (0.488) 0.544 (0.198)
Mother's weight gain:
> 35 pounds (a) 0.254 (0.436) 0.374 (0.484)
Marital status 0.035 (0.185) 0.405 (0.491)
Father missing 0.533 (0.499) 0.249 (0.432)
Medicaid 0.689 (0.463) 0.617 (0.486)
Number of observations 69,989 66,847
Adult Mothers
Variable Black Nonblack
Weight 3170.9 (614.178) 3423.1 (550.602)
Gestweight 41.9 (28.38) 53.1 (28.68)
Gestweek 38.435 (2.627) 39.0 (2.014)
First birth
0.314 (0.464) 0.393 (0.488)
Nonsmoker (a) 0.947 (0.224) 0.883 (0.322)
Smoker: 0-10
cigarettes 0.045 (0.208) 0.073 (0.261)
Smoker: 10-20
cigarettes 0.007 (0.083) 0.038 (0.191)
Smoker: > 20
cigarettes 0.0009 (0.031) 0.006 (0.076)
Male 1.494 (0.500) 1.488 (0.500)
Prenatal care 11.48 (4.018) 12.60 (3.788)
Mother's age 26.86 (5.363) 28.35 (5.236)
Mother's education 12.96 (1.966) 13.52 (2.433)
Mother's weight
gain: missing 0.060 (0.238) 0.042 (0.200)
Mother's weight gain:
< 10 pounds 0.093 (0.290) 0.048 (0.213)
Mother's weight gain:
10-35 pounds 0.592 (0.491) 0.620 (0.485)
Mother's weight gain:
> 35 pounds (a) 0.255 (0.436) 0.291 (0.454)
Marital status 0.412 (0.492) 0.855 (0.352)
Father missing 0.286 (0.452) 0.061 (0.240)
Medicaid 0.439 (0.496) 0.210 (0.407)
Number of observations 257,664 520,306
Standard deviations are in parentheses.
Source: Vital statistics data from Georgia.
(a) Omitted category.
Table 5. OLS Results for Birth Weight--Adult Mothers
Black
Variable Coefficient Standard Error
Male -121.9 *** 1.20
Prenatal care 9.55 *** 0.75
Prenatal care squared -0.143 *** 0.03
First birth -82.16 *** 2.29
Mother's age 2.99 *** 0.22
Mother's education 6.74 *** 0.61
Marital status 35.93 *** 2.59
Father missing -10.15 *** 2.56
Medicaid -9.38 *** 2.68
Mother's weight gain: missing -126.3 *** 4.59
Mother's weight gain: < 10 pounds -207.6 *** 4.03
Mother's weight gain: 10-35 pounds -152.0 *** 2.35
Smoker: 0-10 cigarettes -171.7 *** 5.11
Smoker: 10-20 cigarettes -228.1 *** 12.79
Smoker: > 20 cigarettes -271.6 *** 35.99
Observations 198,398
Nonblack
Variable Coefficient Standard Error
Male -131.1 *** 1.34
Prenatal care 13.89 *** 0.62
Prenatal care squared -0.305 *** 0.02
First birth -98.18 *** 1.48
Mother's age 0.903 *** 0.15
Mother's education 8.77 *** 0.35
Marital status 37.86 *** 2.43
Father missing -12.69 *** 3.35
Medicaid -26.63 *** 2.04
Mother's weight gain: missing -127.99 *** 3.60
Mother's weight gain: < 10 pounds -197.6 *** 3.48
Mother's weight gain: 10-35 pounds -160.9 *** 1.52
Smoker: 0-10 cigarettes -199.1 *** 2.75
Smoker: 10-20 cigarettes -248.7 *** 3.73
Smoker: > 20 cigarettes -274.9 *** 9.21
Observations 437,076
*** significant at the 1% level.
Table 6. OLS Results for Birth Weight-Teen Mothers
Black
Variable Coefficient Standard Error
Male -116.1 *** 3.61
Prenatal care 2.11 1.56
Prenatal care squared 0.093 0.07
First birth -64.14 *** 4.54
Mother's age 1.85 1.91
Mother's education 5.42 *** 1.85
Marital status 42.18 *** 10.12
Father missing 8.76 ** 3.78
Medicaid -0.061 6.01
Mother's weight gain: missing -139.1 *** 8.26
Mother's weight gain: < 10 pounds -253.5 *** 8.09
Mother's weight gain: 10-35 pounds -174.6 *** 4.19
Smoker: 0-10 cigarettes -109.1 *** 12.62
Smoker: 10-20 cigarettes -155.8 *** 48.48
Smoker: > 20 cigarettes 41.15 131.3
Observations 53,019
Nonblack
Variable Coefficient Standard Error
Male -114.7 *** 3.70
Prenatal care 12.31 *** 1.66
Prenatal care squared -0.223 *** 0.06
First birth -63.69 *** 5.20
Mother's age 2.93 1.88
Mother's education 14.00 *** 1.49
Marital status 14.89 *** 4.33
Father missing -1.96 4.81
Medicaid -19.43 *** 5.22
Mother's weight gain: missing -137.4 *** 9.48
Mother's weight gain: < 10 pounds -208.9 *** 10.88
Mother's weight gain: 10-35 pounds -148.0 *** 24.95
Smoker: 0-10 cigarettes -153.3 *** 5.20
Smoker: 10-20 cigarettes -200.9 *** 8.60
Smoker: > 20 cigarettes -148.0 *** 24.95
Observations 54,932
*** and ** significant at the 1% and 5% levels, respectively.
Table 7. Matching Estimates of the Sample Average Treatment Effect for
Birth Weight
Teen Mothers
Black Nonblack
Standard Standard
Variable Coefficient Error Coefficient Error
The sample average
treatment effect -106.00 *** 13.37 -164.09 *** 5.10
Observations 53,019 54,932
Adult Mothers
Black Nonblack
Standard Standard
Variable Coefficient Error Coefficient Error
The sample average
treatment effect -176.44 *** 5.46 -211.21 *** 2.45
Observations 198,398 437,076
List of covariates controlled in the matching models is as follows:
birth weight, a binary indicator for the mother's tobacco use, first
birthmother's education, prenatal care, gestation, father missing,
mother's marital status, Medicaid, and year dummies.
*** significant at the 1% level.
Table 8. Fixed Effects Results for Birth Weight--Adult Mothers with
Multiple Births
Black
Standard
Variable Coefficient Error
Male -134.6 *** 3.42
Prenatal care 6.77 *** 1.39
Prenatal care squared -0.094 * 0.05
First birth -55.85 *** 4.61
Mother's age -0.943 2.75
Mother's education 1.33 2.23
Marital status 8.24 6.63
Father missing 3.83 5.14
Medicaid -3.94 5.09
Mother's weight gain: missing -60.94 *** 8.12
Mother's weight gain: < 10 pounds -105.7 *** 7.69
Mother's weight gain: 10-35 pounds -60.86 *** 4.63
Smoker: 0-10 cigarettes -50.31 *** 12.10
Smoker: 10-20 cigarettes -59.61 ** 26.58
Smoker: > 20 cigarettes -113.1 73.78
Observations 68,795
Nonblack
Standard
Variable Coefficient Error
Male -139.3 *** 2.14
Prenatal care 9.62 *** 1.10
Prenatal care squared -0.181 *** 0.04
First birth -77.72 *** 2.74
Mother's age -0.283 2.00
Mother's education 2.36 1.47
Marital status 24.89 *** 5.84
Father missing -13.43 ** 6.82
Medicaid 6.41 3.91
Mother's weight gain: missing -67.73 *** 6.11
Mother's weight gain: < 10 pounds -129.6 *** 6.43
Mother's weight gain: 10-35 pounds -82.11 *** 2.89
Smoker: 0-10 cigarettes -53.17 *** 6.75
Smoker: 10-20 cigarettes -82.52 *** 9.02
Smoker: > 20 cigarettes -50.71 *** 19.13
Observations 169,951
***, **, and * significant at the 1%, 5%, and 10% levels, respectively.
Table 9. Fixed Effects Results for Birth Weight-Teen Mothers with
Multiple Births
Black
Standard
Variable Coefficient Error
Male -131.8 *** 8.34
Prenatal care 5.38 3.74
Prenatal care squared -0.031 0.17
First birth -24.39 ** 12.26
Mother's age 11.73 10.23
Mother's education -9.09 * 5.48
Marital status 44.32 29.11
Father missing 11.09 9.79
Medicaid -9.65 14.49
Mother's weight gain: missing -93.24 *** 29.31
Mother's weight gain: < 10 pounds 120.9 110.4
Mother's weight gain: 10-35 pounds -412.4 * 224.4
Smoker: 0-10 cigarettes -39.95 ** 19.39
Smoker: 10-20 cigarettes -94.70 *** 19.06
Smoker: > 20 cigarettes -74.50 *** 11.07
Observations 11,901
Nonblack
Standard
Variable Coefficient Error
Male -127.8 *** 9.10
Prenatal care 11.65 *** 4.23
Prenatal care squared -0.303 * 0.16
First birth -42.05 *** 14.92
Mother's age 27.02 ** 11.41
Mother's education 1.25 6.03
Marital status -5.26 14.92
Father missing -10.87 13.04
Medicaid -24.71 * 14.13
Mother's weight gain: missing -62.41 *** 23.98
Mother's weight gain: < 10 pounds -115.3 *** 24.24
Mother's weight gain: 10-35 pounds -81.42 *** 11.59
Smoker: 0-10 cigarettes -62.86 *** 16.29
Smoker: 10-20 cigarettes -86.26 *** 23.81
Smoker: > 20 cigarettes -72.82 58.88
Observations 9957
***, **, and * significant at the 1%, 5%, and 10% levels,
respectively.