What factors can affect Apgar score?

Abstract

Purpose

To examine the relationship of 5-min Apgar score with maternal socio-economic and biological factors.

Methods

We analyzed data from 465,964 singleton pregnancies (37–41 weeks’ gestation) from the German perinatal statistics of 1998–2000. Using a logistic regression model we analyzed the incidence of low (0–6) 5-min Apgar scores in relation to these maternal factors: body mass index (BMI), age, previous live births, country of origin, occupation, single mother status, working during pregnancy, and smoking.

Results

A low Apgar score was more common in overweight [adjusted odds ratio (OR) 1.24; 95% confidence interval (CI) 1.10–1.40; P < 0.001] and obese [OR 1.92 (95% CI 1.67–2.20); P < 0.001] compared to normal weight women. A low Apgar score was also more common for women aged >35 years compared to those aged 20–35 years [OR 1.35 (95% CI 1.16–1.58); P < 0.001]. Furthermore, odds of a low Apgar score were higher for women with no previous live births compared to those with one or more previous live births [OR 1.52 (95% CI 1.37–1.70); P < 0.001]. Socio-economic factors did not convincingly influence Apgar scores.

Conclusions

There was an influence of the biological maternal factors age, BMI, and parity on the 5-min Apgar score. There was no convincing effect of socio-economic factors on Apgar score in our study population. Possible reasons for this are discussed.

Introduction

The Apgar score [1] is commonly used to evaluate neonatal well-being immediately after birth. A total score of seven or more out of ten is considered an indication of a normal neonatal condition and a score of three or less is taken as a reason for especial concern. For its original use of predicting outcome in the neonatal period, the Apgar score is as useful today as it was when Virginia Apgar first described it. Taken individually, the 5-min Apgar score has been shown to be a better predictor of neonatal outcome than umbilical-artery blood pH [2], although it may be useful to combine these two predictors.

Even though the Apgar score was not originally intended to predict long-term health outcomes, it does nonetheless inform about prognosis beyond the neonatal period. It has been known for a while that the 5-min Apgar score is a good predictor of survival in infancy [3]. Likewise, it has been known for some time that a low Apgar score (0–3) for a prolonged period of time is predictive of subsequent disability [4]. A recent meta-analysis confirms that the outcome of neonates with a score of zero at 10 min is almost universally poor [5]. Interestingly, recent work showed that even transiently low Apgar scores are associated with lower IQ in later life [6].

Because the Apgar score is such an important indicator of subsequent outcome, knowing parameters associated with a low Apgar score is of clinical and epidemiological interest. Predicting low Apgar scores may allow the appropriate planning of neonatal care. Previous work showed that socio-economic as well as biological factors of the mother can be predictors of Apgar scores. For example, low social class, poor educational level and adverse social circumstances have been associated with lower Apgar scores in previous studies [7–9]. Of course adverse events during pregnancy and birth such as maternal infection can also result in a low Apgar score.

Our database constructed from data collected for German perinatal statistics provides a suitable means to investigate the influence of maternal biological and socio-economic factors on Apgar scores. The collection of perinatal statistics is mandatory in Germany. Data are compiled on a variety of maternal biological and socio-economic parameters throughout pregnancy. Data are also collected regarding the condition and well-being of the neonate following delivery, including Apgar scores. In this paper we aimed to analyze the relationship between 5-min Apgar scores and maternal biological and socio-economic parameters.

Materials and methods

We analyzed data of 465,964 singleton pregnancies and births from the perinatal statistics of eight German federal states: Bavaria, Brandenburg, Hamburg, Lower Saxony, Mecklenburg-Western Pomerania, Saxony, Saxony-Anhalt, and Thuringia. Data were collected between 1998 and 2000 and kindly passed on to us for analysis. We analyzed 5-min Apgar scores and their relation to a number of maternal biological and socio-economic factors: body mass index (BMI), age, previous live births, country of origin, occupation, whether the mother was a single parent or not, whether the mother worked during pregnancy or not, and number of cigarettes smoked per day (if any). To exclude length of gestation as a confounding factor, we restricted our analysis to cases with a duration of pregnancy of 37–41 completed weeks. This left 465,964 out of a total of 508,926 cases of singleton pregnancies in out database.

Nominal data are expressed as percent values. For bivariate analyses, the χ2 test was used. Multivariable logistic regression was used to assess the association between Apgar scores and maternal biological as well as socio-economic factors. Odds ratios (OR) with regard to having a neonate with a 5-min Apgar score of 0–6 were calculated and adjusted for the following parameters:

  • BMI Underweight (BMI < 18.5), overweight (BMI 25–29.99), or obese (BMI ≥ 30) women with reference to those of normal weight (BMI 18.5–24.99);

  • Age Women aged <20 or >35 years with reference to those aged 20–35 years;

  • Previous live births Women with no previous live births with reference to those with previous live births;

  • Smoking status Smokers consuming 10 or less cigarettes a day and smokers consuming 11 or more cigarettes a day with reference to non-smokers;

  • Maternal country of origin Women with a country of origin other than Germany with reference to women born in Germany (see Fig. 1);

    Fig. 1

    What factors can affect Apgar score?

    Five-minute Apgar score according to country of origin of the mother. The terms for the geographical regions were translated as closely as possible from the German data collection form. “Central and Northern Europe” includes Austria, Switzerland, France, Belgium, the Netherlands, Luxembourg, Great Britain, Denmark, Sweden, Norway, and Finland. “Eastern Europe” includes the countries east of Germany

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  • Maternal occupation Women in one of the first six occupational categories used in German perinatal statistics (Fig. 2) with reference to those in the most qualified occupational category (high level public employee, very highly skilled employee, etc.);

    Fig. 2

    What factors can affect Apgar score?

    Five-minute Apgar score according to maternal occupation

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  • Single mother status Women who described themselves as single mothers with reference to those who did not;

  • Working during pregnancy Women who worked during pregnancy with reference to those who did not work.

OR were calculated with 95% confidence intervals (CI). A value of P < 0.05 was considered statistically significant. All statistical analyses were performed with SPSS software, version 15.0.

Results

Table 1 illustrates that the distribution of 5-min Apgar scores is significantly influenced by maternal BMI, age, the presence or absence of previous live births, smoking status and number of cigarettes smoked per day, maternal occupation, maternal country of origin, being a single mother or not, and working during pregnancy or not. This means that these factors need to be considered in our logistic regression analysis (Table 2).

Table 1 Distribution of Apgar scores in the population

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Table 2 Multivariate regression analysis

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Socio-economic factors

Our regression analysis revealed that maternal occupation was not significantly associated with 5-min Apgar scores (Table 2; Fig. 1). Regarding maternal country of origin, only the comparison of the group of “other” countries (i.e., countries not otherwise classified in German perinatal statistics) with Germany yielded a statistically significant result [OR 1.73 (95% CI 1.05–2.86)], see Table 2 and Fig. 2. Working during pregnancy or not and whether the mother was a single parent or not had no significant impact on the odds of having low Apgar scores. Similarly, for cigarette smoking our full model regression analysis did not reveal a significant association (Table 2). However, neonates of heavy smokers had significantly worse Apgar scores when a simpler regression model was used for analysis (not taking maternal country of origin and occupation into account, data not shown).

Biological factors

BMI was significantly associated with Apgar score. Both overweight [OR 1.24 (95% CI 1.10–1.40); P < 0.001] and obese women [OR 1.92 (95% CI 1.67–2.20); P < 0.001] had significantly higher odds of low Apgar scores (0–6) compared to normal weight women, as seen in Table 2. Figure 3 shows the distribution of Apgar scores according to BMI. It is evident that lower Apgar scores are more common in the overweight and obese compared with the normal weight category. Maternal age and parity had significant influences on Apgar scores. Older women (above 35 years) had higher odds of low Apgar scores compared to women aged 20–35 years [OR 1.35 (95% CI 1.16–1.58); P < 0.001]. Absence of previous live births was also associated with higher odds of low Apgar scores [OR 1.52 (95% CI 1.37–1.70); P < 0.001].

Fig. 3

What factors can affect Apgar score?

Five-minute Apgar score according to maternal BMI

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Discussion

Overall, we found no convincing associations between 5-min Apgar score and a variety of socio-economic factors of the mothers including country of origin, occupation, and smoking. In our full regression model only the comparison of the heterogeneous group of “other” maternal countries of origin with Germany as a country of origin yielded a result that was just statistically significant. However, we did find a number of significant associations between biological parameters such as age, BMI and parity and 5-min Apgar scores.

Some limitations to our study need discussion. Our analysis relied on self-reporting of socio-economic parameters by the pregnant women. Self-reporting of socio-economic status and lifestyle habits (smoking) will not always be accurate. We also relied on the pre-existing classification of socio-economic parameters such as country of origin and occupation into rather broad categories. Some categories, for example, the German term “Mittlerer Osten” (Middle Asia) that was used in the classification system for maternal country of origin, are not precisely defined and thus may be open to interpretation. Likewise, the occupational categories are broad and accurate classification might be difficult in individual cases.

We are not alone in finding that associations of Apgar score with socio-economic parameters or lifestyle factors may be difficult to prove. For example, a recent study of a large cohort of over 50,000 children reported that the association between maternal smoking and Apgar score was eliminated after adjustment for confounders [10]. However, while we did not, with one exception, find significant associations of socio-economic factors with Apgar score in our full regression model, others did find such associations. A Finnish study of 2,912 women demonstrated a link between belonging to a lower social class, as evidenced by occupation and years of education, and having more infants with poor Apgar scores [7]. Another Finnish study confirmed the association between adverse social circumstances and low Apgar scores: children taken into custody and placed in foster care had lower Apgar scores compared with population-based controls [8]. A Swedish study of 183,637 males born between 1973 and 1976 reported that mothers working in non-manual and self-employed occupations were less likely to have an infant with a low Apgar score than manual workers [9]. That study also found that the risk of a low Apgar score decreased with increasing maternal level of education.

The influence of socio-economic factors on Apgar scores seems to depend on the population studied and on precisely what socio-economic parameter is investigated. For example, a study from Spain found that perinatal complications, including an Apgar score of six or below, were not more frequent in the newborns of immigrant mothers compared to Spanish mothers [11]. An Australian study, however, reported that only 76.7% of babies born to indigenous Australian mothers fell into a “healthy baby” category, as characterized by being a live birth, a singleton, born after 37–41 completed weeks’ gestation, having a birthweight of 2,500–4,499 g, and a 5-min Apgar score of at least 7 [12]. For non-indigenous mothers the rate of “healthy babies” was 85.0%. A study from Washington State compared newborns of Somali immigrant women with those of black and white US-born women. Neonates born to Somali women were at increased risk of lower 5-min Apgar scores [13]. Given this dependence on study population, it is perhaps not surprising that we could not demonstrate a convincing influence of socio-economic factors on Apgar scores even though we analyzed a large dataset. Our inability to find significant correlations may have to do with the above-mentioned limitations inherent in our data or it may be that socio-economic differences and their impact on perinatal outcomes are less in Germany than in some other populations mentioned above. Another possible explanation is that our regression analysis, by taking confounding factors into account, eliminated some apparent influences of socio-economic factors. Confounding and lifestyle factors may also provide an at least partial explanation of the results of the other studies. For example, in the study of indigenous Australian mothers more than half of these were smokers [12]. Alcohol consumption, although not mentioned in that study, may also have played a role.

Our result that working during pregnancy did not significantly increase the odds of having a newborn with a low Apgar score is encouraging. Employment during pregnancy does not seem to adversely affect neonatal outcome. This is in agreement with other work. Marbury and colleagues compared pregnancy outcomes of 7,155 women who worked between 1 and 9 months of pregnancy with outcomes of 4,018 women who were not employed. They found no differences in a range of parameters of neonatal health, including Apgar score [14].

A comparison of women aged 20–30 years with women over 40 from Taiwan (n = 400) found that the incidence of 5-min Apgar scores below 7 was significantly higher in the older group [15]. Similarly, we demonstrated increased odds of low Apgar scores for older mothers. A retrospective cohort study of nearly 3.9 million pregnancies and births from the USA found that infants born to teenage mothers of 17 or younger had a higher risk of low 5-min Apgar scores [16]. In contrast, we did not find a significant difference between mothers aged below 20 and those aged 20–35.

We also demonstrated an influence of maternal BMI on Apgar scores. This stands in contrast to some previous work. A population-based study of 60,167 deliveries from Wales found that a 5-min Apgar score below 7 was not significantly more common in the obese compared to normal weight women [17]. Likewise, a Danish study of 8,092 women found no differences between normal weight, overweight, and obese women with regard to Apgar score [18].

In conclusion, we demonstrated an effect of the biological parameters age, BMI, and parity on the 5-min Apgar score. We could not convincingly demonstrate an effect of socio-economic factors on Apgar score in our study population.

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Authors and Affiliations

  1. Department of Occupational and Social Medicine, University of Göttingen, Waldweg 37 B, 37073, Göttingen, Germany

    Sebastian Straube & Ernst Hallier

  2. Institute for Perinatal Auxology, Klinikum Südstadt, Rostock, Germany

    Manfred Voigt

  3. Department of Pediatrics, University of Magdeburg, Magdeburg, Germany

    Gerhard Jorch

  4. Department of Obstetrics and Gynecology, University of Rostock, Rostock, Germany

    Volker Briese

  5. Research Institute for the Biology of Farm Animals (FBN), Research Unit Genetics and Biometry, Dummerstorf, Germany

    Ulrike Borchardt

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  1. Sebastian Straube

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Straube, S., Voigt, M., Jorch, G. et al. Investigation of the association of Apgar score with maternal socio-economic and biological factors: an analysis of German perinatal statistics. Arch Gynecol Obstet 282, 135–141 (2010). https://doi.org/10.1007/s00404-009-1217-7

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  • Received: 29 January 2009

  • Accepted: 17 August 2009

  • Published: 28 August 2009

  • Issue Date: August 2010

  • DOI: https://doi.org/10.1007/s00404-009-1217-7

Keywords

  • Apgar score
  • Body mass index
  • Maternal age
  • Parity
  • Socio-economic factors

What is a common cause of a low Apgar score?

Causes of Low APGAR Scores Fetal heart rate monitoring errors. Maternal medical conditions. Infections. Placental abruption.

How does maternal medication affect Apgar score?

If the mother had taken medication other than antidepressants, lithium, anti-epileptics or antipsychotics, the OR for a low Apgar score was slightly increased (OR = 1.11, 95% CI 1.04-1.19). All analyses were repeated without correcting for gestational age and birth weight.

What is the most important in Apgar score?

Heart rate is evaluated by stethoscope. This is the most important assessment: If there is no heartbeat, the infant scores 0 for heart rate. If heart rate is less than 100 beats per minute, the infant scores 1 for heart rate.

What determines Apgar?

The Apgar score is a test given to newborns soon after birth. This test checks a baby's heart rate, muscle tone, and other signs to see if extra medical care or emergency care is needed. Babies usually get the test twice: 1 minute after birth, and again 5 minutes after they're born.