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Determining gestational age for public health care users in Brazil: comparison of methods and algorithm creation

Abstract

Background

A valid, accurate method for determining gestational age (GA) is crucial in classifying early and late prematurity, and it is a relevant issue in perinatology. This study aimed at assessing the validity of different measures for approximating GA, and it provides an insight into the development of algorithms that can be adopted in places with similar characteristics to Brazil. A follow-up study was carried out in two cities in southeast Brazil. Participants were interviewed in the first trimester of pregnancy and in the postpartum period, with a final sample of 1483 participants after exclusions. The distribution of GA estimates at birth using ultrasound (US) at 21–28 weeks, US at 29+ weeks, last menstrual period (LMP), and the Capurro method were compared with GA estimates at birth using the reference US (at 7–20 weeks of gestation). Kappa, sensitivity, and specificity tests were calculated for preterm (<37 weeks of gestation) and post-term (>=42 weeks) birth rates. The difference in days in the GA estimates between the reference US and the LMP and between the reference US and the Capurro method were evaluated in terms of maternal and infant characteristics, respectively.

Results

For prematurity, US at 21–28 weeks had the highest sensitivity (0.84) and the Capurro method the highest specificity (0.97). For postmaturity, US at 21–28 weeks and the Capurro method had a very high sensitivity (0.98). All methods of GA estimation had a very low specificity (≤0.50) for postmaturity. GA estimates at birth with the algorithm and the reference US produced very similar results, with a preterm birth rate of 12.5%.

Conclusions

In countries such as Brazil, where there is less accurate information about the LMP and lower coverage of early obstetric US examinations, we recommend the development of algorithms that enable the use of available information using methodological strategies to reduce the chance of errors with GA. Thus, this study calls into attention the care needed when comparing preterm birth rates of different localities if they are calculated using different methods.

Background

To determine gestational age (GA), clinicians rely on various antenatal and postnatal indicators, such as the last menstrual period (LMP) and/or birth weight and first-trimester ultrasound (US). Dating GA based on the LMP is a simple, low-cost method [1]. The LMP is a universally available piece of self-reported information and is the method most used to estimate GA, particularly in developing countries; it is also the method recommended by the World Health Organization [2]. However, it has been recognized that this method of estimating GA is fallible under many circumstances, such as irregularity or individual variations in the length of the menstrual cycle, short birth spacing, preconception amenorrhea after oral contraceptive use, implantation bleeding, and recall biases by the mother [35]. In both developed and developing countries, reliance on LMP alone has shown a tendency to overestimate GA at the extremes of gestation owing to recall bias, thereby overestimating postmaturity and underestimating preterm births [4, 611]. In developing countries, including Brazil, a large proportion of the population is of a low educational level—a well-known characteristic associated with poorer quality of LMP information [7, 12]. In developed countries, most women have access to at least one early US during pregnancy, and it is common for clinicians to confirm menstrual dates using this information [1].

According to the National Institute for Health and Clinical Excellence (NICE) of the United Kingdom, an US check performed at 10 weeks to 13 weeks 6 days of gestation is considered the most accurate method for estimating GA because the variation in fetal growth rate is very low in this period [13]. In most developing countries, seeking help from health services in the diagnosis of pregnancy and initiating antenatal care tends to be delayed, which hinders conducting US checks in the early stages of pregnancy [1416]. Moreover, in many countries, including Brazil, it is difficult to have immediate access to this type of examination [17].

Since the 1990s, several algorithms have been proposed, mainly in developed countries, aiming at calculating the GA using different available data sources. However, for countries with less favorable socioeconomic conditions, validation studies are still needed given the different characteristics of their populations in terms of access to social and health care services.

Therefore, we conducted the analysis presented here, which compares estimates of GA at birth using early US with such estimates obtained using later US examinations, LMP, the Capurro method, and anthropometric measures [18]. Our goal was to assess the validity of these measures for approximating GA among users of the public health sector from two municipalities of Rio de Janeiro State, Brazil. We also aimed to provide an insight into the development of algorithms to be adopted in places with similar characteristics.

Methods

Design and sample size

A prospective cohort study was conducted with pregnant women in two urban middle-sized cities (populations between 100,000 and 300,000) in the state of Rio de Janeiro, Brazil. Since the number of pregnant women available for analysis was based on the number available on the primary study (based on the prevalence of low birth weight), post-hoc sample size calculation was performed. Considering the prevalence of 10% of prematurity in Rio de Janeiro State, the postpartum sample (1483) had 90% power to detect differences of at least 5%.

Study participants

The selection criteria included pregnant women in the first trimester of pregnancy living in one of the two cities who sought antenatal care in public health care units (state-funded) from December 2007 to November 2008. The antenatal care units selected included both primary and referral health centers and were identified through the Brazilian National Register of Health Establishments. All eligible women in these units were invited to participate and informed about the aims of this study. Participants gave their consent and were interviewed at three antenatal care units in city 1 and eight antenatal care units in city 2, which correspond to 90% of the public antenatal care coverage in both cities.

Different strategies were established in the study to reduce losses to follow-up, including particular attention in obtaining contact details of the participants. Furthermore, all women were requested to make a free call to one of the research workers to inform them when they were admitted to a maternity unit to give birth. The women were also asked to inform the researchers when changing addresses or telephone numbers.

Overall, 1750 pregnant women were invited to participate, and 1680 (96%) were enrolled and available for assessment. We excluded 118 women (7.5%) owing to withdrawal or loss to follow-up, 62 (3.7%) owing to miscarriage, and 30 (1%) owing to multiple pregnancies. This analysis includes 1483 singleton pregnancies with additional exclusions made when data were missing for each method of GA estimation used in the comparison (Figure 1).

Figure 1
figure 1

The flow chart of the sample.

This study is in compliance with the Helsinki Declaration and was approved by the Committee of Ethics and Research of the National School of Public Health—ENSP/FIOCRUZ (protocol no 158/06).

Data collection

At the baseline, in a face-to-face interview, the women reported their demographic and socioeconomic characteristics, obstetric history, maternal pregestational anthropometric measures, and LMP. The women were asked, “What was the first day of your last menstrual period?” If necessary, they were prompted by being asked to think of an event that happened around the time of their last period (e.g., a holiday, vacation, or weekend) to facilitate recall. The mean GA at the first interview was 12.9 weeks (3–16 weeks). At this interview, data relating to US examinations were copied directly from the original results kept by the pregnant women.

The postpartum data collection took place at the health care units (80%) or at the women’s homes up to 30 days after hospital discharge (20%). Information concerning the mode of birth, sex of the neonate, neonatal birth weight and length, and GA estimates using the Capurro method (carried out by neonatologists according to the standard procedure of the health center and registered in the medical records) were collected from medical records when the mothers were interviewed during their hospital stay and from the birth certificate if they were interviewed after hospital discharge. The data for the birth certificate are transcribed from medical records and are of high quality in Rio de Janeiro State. In both cases, US data from previous examinations were copied directly from original results kept by the mothers.

In city 1, the majority of US examinations (90%) were performed by clinical sonographers at the public hospital where most of the women were interviewed. In city 2, the majority of US examinations (80%) were performed by a clinical sonographer from our research team.

GA, birth weight and weight-for-GA assessment

The GA at birth estimated from the LMP was calculated by subtracting the LMP from the date of birth [19]. For the US examinations, it was calculated by subtracting the date of the examination from the date of birth and adding the estimated clinical GA in days at the time of examination.

The US results were grouped into three gestational periods: the first, at 7–20 weeks of gestation; the second, at 21–28 weeks of gestation; and the third, at 29 and more weeks of gestation. As the reference method for estimating GA at birth, we took the earliest US result, performed at 7–20 weeks of gestation. According to NICE, the most accurate method is the US examination performed at 10 weeks to 13 weeks 6 days of gestation [13]. However, in the public health care sector in Brazil, a high proportion of women initiate antenatal care after this period. We opted to include US results of up to 20 weeks GA in the reference group since before 20 weeks of gestation, some authors consider US a more accurate method than the LMP [2023]. US conducted at 21–28 weeks signifies the remainder of the second trimester and US conducted at 29 weeks and beyond refers to the third trimester of pregnancy, during which US examination is prone to larger errors. For the second- and third-gestational period US examinations, we selected the earliest one; for example, if a woman had one US at 22 weeks of gestation and another at 27, we used the information from the former.

The GA at birth estimated using the Capurro method was obtained from medical records as well as the birth weight, which was categorized as follows: <2500 g, 2500–3499 g, 3500–3999 g, and ≥4000 g. Estimating the GA using the Capurro method was carried out by neonatologists according to the standard procedure of the health center, and the results were registered in the medical records. It is based on an inspection of physical signs during the first 12 hours of life; the following five characteristics of the newborn are examined and placed on a maturation scale: skin texture, shape of the ear, size of the mammary nodule, formation of the nipple, and the folds of the sole of the foot.

The Z scores of birth weight for GA were calculated using the American curve of intrauterine growth divided by sex [24]. All newborns classified under −3 standard deviation (SD) or over +3 SD were grouped into two categories (≤ −3 SD outliers and ≥ +3 SD outliers) for graphical presentation purposes.

Statistical analysis

We compared the distribution of GA estimates at birth using the reference US with the estimates using US at 21–28 weeks, US at 29+ weeks, LMP, and the Capurro method. Prematurity (<37 weeks of gestation) and postmaturity (>=42 weeks of gestation) rates were compared using chi-square tests with a significance level of 0.05. For kappa, sensitivity, specificity, positive predictive value, and negative predictive value were compared between women for whom the GA was estimated by the reference US and by the other method. All comparisons were performed including and excluding outliers of Z scores for birth weight for GA. The agreement rate of the kappa statistic was considered almost perfect at 0.81–1.00, substantial at 0.61–0.80, moderate at 0.41–0.6, fair at 0.2–0.4, slight at 0–0.2, and poor at <0 [25, 26].

The difference in days when comparing the reference US with the LMP or the Capurro method estimates was calculated (the LMP or the Capurro estimate against the US estimate, hereafter referred to as the GA difference); it was analyzed as a continuous variable and categorized into five groups: <−14; –14 to −8; –7 to +7; +8 to +14; and >+14 days. We chose those categories because they are cut-off points of discrepancy at which a clinician would replace an estimate of GA derived from the LMP with the US estimate: +/−7 days for first-trimester US and +/−14 days for second-trimester US [12]. Positive values indicate that the LMP- or Capurro-based GA estimate is earlier than the US-based estimate, and negative values indicate that the LMP- or Capurro-based GA estimate is later than the US-based estimate. Mean and SD values for the GA difference and the proportion of births within the categories of the GA difference were calculated within and compared across strata of maternal characteristics (for LMP) and infant characteristics (for the Capurro method). Analyses were performed using SPSS version 17.

Results

Of the 1483 pregnant women studied, 1427 (97.4%) had information about the LMP; among those with this information, 1097 (76.9%) were certain about the date. Almost all the women (1401, 97.4%) had undergone at least one US examination during pregnancy and 1130 (78.6%) had undergone at least one US result at 7–20 weeks of gestation; however, only 256 (17.8%) had a US result from 10 weeks to 13 weeks 6 days of gestation. In all, 856 women (59.8%) had at least one US examination at 21–28 weeks of gestation, and 884 (61.7%) had at least one US examination at 29 or more weeks of gestation. The Capurro method was available for 1250 (87.5%) of the pregnancies (Figure 1).

The prematurity rate varied from 9.4% with the Capurro method to 20.9% with the LMP. For the reference US at 7 to 20 weeks of gestation, the rate was 13.2%; for US at 21–28 weeks and 29+ weeks, the rates were 14.0% and 12.4%, respectively (Figure 2).

Figure 2
figure 2

Gestational age (GA) at birth and Z-score of birthweight for GA distributions according to different methods of estimation.

In Table 1 the reference US result was compared with the other methods in two different ways: first, for all women that had undergone the two methods being compared; and second, excluding outlier values of Z scores for birth weight for GA (≤ −3 and ≥ +3 SD). For each method in the comparison, the sample in Table 1 is smaller than that in Figure 2 since the women had to have had an US examination at 7–20 weeks of gestation to be eligible for the comparison.

Table 1 Distribution of prematurity and postmaturity rates along selected methods and comparison with 720-week ultrasound-based estimates of gestational age at birthexcluding outliers of birth weight for gestational age

For prematurity, the kappa coefficient indicated a substantial or moderate agreement of all methods compared with the reference US. For postmaturity, the kappa coefficient indicated a fair agreement for 20–28 weeks US and a slight or poor agreement for the other methods (Table 1).

Regarding sensitivity and specificity measurements, US at 21–28 weeks had the highest sensitivity and the Capurro the highest specificity for evaluating prematurity. For postmaturity, US at 20–28 weeks and the Capurro method had a very high sensitivity (0.98). However, all methods had a very low specificity, with the highest value being for US at 21–28 weeks (0.50) (Table 1).

Considering the difference in days for the GA estimate at birth, we compared the agreement rate of the LMP and the reference US in terms of the mother’s characteristics. In general, the agreement rate (+/− 7 days) was 65%; the disagreement was greater when over 14 days (<−14 days or > + 14 days) (Table 2). Compared with women aged 20–34 years, there was a tendency for greater over- or underestimation of the GA among adolescents; among the oldest women, the tendency to underestimate the GP was the most frequent (P= 0.007). The women who reported being certain of the LMP showed a higher rate of agreement with the reference US (68.7%) than the ones who were not sure (P <0.001). For all other variables studied, we did not find any statistically significant differences (Table 2).

Table 2 Difference between the LMP and 720-week ultrasound-based estimates of gestational age at birth according to maternal characteristics and differences between the Capurro method and 720-week ultrasound-based estimates according to infant characteristics

We also compared the agreement rate between the Capurro method and the reference US in strata of birth weight and GA at birth. For the babies classified by the reference US as premature or with 37 weeks of GA, the Capurro method was more likely to overestimate the GA (37.7%); for postmature babies (≥ 42 weeks), the Capurro method was more likely to underestimate the GA (92.9%). The agreement rate (+/− 7 days) was also more frequent for babies weighing 3500–3999 g (71.9%) (Table 2).

Based on the comparisons shown in Tables 1 and 2, the entrance criteria in the algorithm of GA at birth estimation were as follows: US at 7–20 weeks (n= 1110, 77.2%); US at 21–28 weeks (n= 234, 16.3%); US at 29+ weeks (n=47, 3.3%); and LMP (n=47, 3.3%), with a total of 1438 newborns classified. Owing to the poor agreement rate between the reference US and the Capurro method for prematurity (even after excluding outliers of birth weight for GA; Table 1), the data were not used in the algorithm. Only 45 newborns (3%) were not classified, either because there was no information available for the GA or the available information was excluded as a result of being an outlier of birth weight for GA.

Finally, Table 3 shows that GA estimates at birth using the algorithm were very similar to those of the reference US. The prematurity rate estimate was of 12.5% with both methods.

Table 3 Detailed comparison of 720-week ultrasound-based and algorithm-based estimates of gestational age at birthexcluding outliers of birth weight for gestational age

Discussion

This study found differences in GA estimates for all methods compared with 7–20 weeks US-based GA estimates (used as the reference). We were concerned about using birth weight distributions to minimize possible errors. Some studies have also used birth weight distributions when comparing different methods of GA estimation [2729]. In our population, this method was very appropriate since we found considerable evidence of misclassification of GA based on LMP, with 6% outliers in the curve for birth weight for GA.

A limitation of this study is that only users of the public health care system were included in our sample, so we cannot generalize this finding for users of the private care sector. They would differ from the group studied in terms of socioeconomic and obstetric characteristics. Another limitation is that the US examinations used in the comparisons were not always performed by the same individual, and there was a difference in the personnel performing the US between the two cities. A classification bias in the US GA estimates could have been introduced because only in city 2 did a sonographer from our research team take measurements, and that individual would have been more dedicated to the research effort, producing less GA classification errors. Moreover, as the reference group, we used US examinations carried out at 14–20 weeks of gestation, though the ideal period is at 10–13 weeks. For these matters our results of sensitivity and specificity for prematurity may have been under or overestimated. In addition, this study was unable to compare postmaturity rates owing to the very low incidence (1.5%).

In the United States, LMP-based measures for GA consistently produce high false-positive rates for preterm and high false rates for post-term. The results in this study are consistent with those conducted in the United States [12, 27]. However, the comparability with our population is limited owing to great differences in the socioeconomic conditions; for example, schooling and per capita income are much lower in Brazil than in the United States. Even in the United States, differences have been reported in the agreement rate according to socioeconomic level [12, 27] and ethnicity [7, 12, 27]. In the current study, the discrepancy found between LMP and early US-based GA estimates could be explained in part by the low socioeconomic level of the women who enrolled. Indeed, despite this being a homogeneous socioeconomic group (users of the public health system), we identified more accentuated patterns of discordance for adolescents and with regard to marital status.

We found that the LMP overestimated the prematurity rate and the Capurro method underestimated it, though later US showed good agreement with the reference US (at 7–20 weeks). Curiously, we found that the LMP overestimated the prematurity rate in 58% of cases; this is different to what has been found in other studies, where the prematurity rate was underestimated by the LMP [9, 27]. Another unusual finding was that the women in our study tended to produce errors of great magnitude: misclassification of over 2 weeks was more frequent than that for 1–2 weeks; this raises the possibility that these women made a mistake about the month of their LMP. Though the interviewers asked, “What was the first day of your last menstrual period?” the participants may have taken that to mean the first day when their LMP failed to occur, which would lead to an underestimation of the GA. We hypothesize that this misclassification of LMP is closely related to both the socioeconomic and reproductive characteristics of the study participants, for example, the lack of family planning and the inappropriate use of the contraceptive pill (the method most used in Brazil), which deregulates the menstrual cycle. A study in the city of Rio Grande, Rio Grande do Sul, Brazil, found that for the public health service users (in which most women belong to the low socioeconomic group) 65% of pregnancies were not planned [30].

Recent literature shows that later US results tend to overestimate the prematurity rate [31]. We found a slight, but not statistically significant, overestimation of the prematurity rate when we compared US at 21–28 weeks with the reference US (Table 2). Moreover, US at 29+ weeks did not overestimate the prematurity rate as had been expected. A possible explanation is that all premature babies under the age of 29 weeks were excluded when this method was taken into consideration, thereby reducing the prematurity rate to a level where it was similar to the reference US.

Conclusions

This study underlines the care that should be taken when comparing the distribution of the GA in different localities when they are calculated using different methods. Another important aspect to consider is the individual risk of health care professionals in assessing the GA when the indication of interruption of pregnancy in this population leads to an iatrogenic prematurity. This situation is even more critical if there is no clinical indication of pregnancy—an event not uncommon in Brazil, as other studies have shown [32].

Abbreviations

CE:

Clinical estimates

LMP:

Last menstrual period

NICE:

National Institute for Health and Clinical Excellence

NPV:

Negative predictive value

PPV:

Positive predictive value

US:

Ultrasound.

References

  1. Lynch CD, Zhang J: The research implications of the selection of a gestational age estimation method. Paediatr Perinat Epidemiol. 2007, 21: 86-96. 10.1111/j.1365-3016.2007.00865.x.

    Article  PubMed  Google Scholar 

  2. WHO: Home-based maternal records. Guidelines for development, adaptation and evaluation. 1994, World Health Organization, Geneva

    Google Scholar 

  3. Waller DK, Spears WD, Gu Y, Cunningham GC: Assessing number-specific error in the recall of onset of last menstrual period. Paediatr Perinat Epidemiol. 2000, 14 (3): 263-267. 10.1046/j.1365-3016.2000.00275.x.

    Article  PubMed  CAS  Google Scholar 

  4. Wegienka G, Baird DD: A comparison of recalled date of last menstrual period with prospectively recorded dates. J Womens Health (Larchmt). 2005, 14 (3): 248-252. 10.1089/jwh.2005.14.248.

    Article  Google Scholar 

  5. Gjessing HK, Skjaerven R, Wilcox AJ: Errors in gestational age: evidence of bleeding early in pregnancy. Am J Public Health. 1999, 89 (2): 213-218. 10.2105/AJPH.89.2.213.

    Article  PubMed  CAS  PubMed Central  Google Scholar 

  6. Andersen HF, Johnson TR, Barclay ML, Flora JD: Gestational age assessment. I. analysis of individual clinical observations. Am J Obstet Gynecol. 1981, 139 (2): 173-177.

    PubMed  CAS  Google Scholar 

  7. Wingate MS, Alexander GR, Buekens P, Vahratian A: Comparison of gestational age classifications: date of last menstrual period vs. clinical estimate. Ann Epidemiol. 2007, 17 (6): 425-430. 10.1016/j.annepidem.2007.01.035.

    Article  PubMed  Google Scholar 

  8. Mongelli M, Gardosi J: Birth weight, prematurity and accuracy of gestational age. Int J Gynaecol Obstet. 1997, 56 (3): 251-256. 10.1016/S0020-7292(96)02835-4.

    Article  PubMed  CAS  Google Scholar 

  9. Alexander GR, Tompkins ME, Petersen DJ, Hulsey TC, Mor J: Discordance between LMP-based and clinically estimated gestational age: implications for research, programs, and policy. Public Health Rep. 1995, 110 (4): 395-402.

    PubMed  CAS  PubMed Central  Google Scholar 

  10. Taipale P, Hiilesmaa V: Predicting delivery date by ultrasound and last menstrual period in early gestation. Obstet Gynecol. 2001, 97 (2): 189-194. 10.1016/S0029-7844(00)01131-5.

    Article  PubMed  CAS  Google Scholar 

  11. Savitz DA, Terry JW, Dole N, Thorp JM, Siega-Riz AM, Herring AH: Comparison of pregnancy dating by last menstrual period, ultrasound scanning, and their combination. Am J Obstet Gynecol. 2002, 187 (6): 1660-1666. 10.1067/mob.2002.127601.

    Article  PubMed  Google Scholar 

  12. Hoffman CS, Messer LC, Mendola P, Savitz DA, Herring AH, Hartmann KE: Comparison of gestational age at birth based on last menstrual period and ultrasound during the first trimester. Paediatr Perinat Epidemiol. 2008, 22 (6): 587-596. 10.1111/j.1365-3016.2008.00965.x.

    Article  PubMed  Google Scholar 

  13. NICE: NICE clinical guideline 62. Antenatal Care. Routine care for the healthy pregnant woman. 2008

    Google Scholar 

  14. Ebeigbe PN, Igberase GO: Reasons given by pregnant women for late initiation of antenatal care in the niger delta, Nigeria. Ghana Med J. 2010, 44 (2): 47-51.

    PubMed  CAS  Google Scholar 

  15. Quelopana AM, Champion JD, Salazar BC: Factors predicting the initiation of prenatal care in Mexican women. Midwifery. 2009, 25 (3): 277-285. 10.1016/j.midw.2007.04.008.

    Article  PubMed  Google Scholar 

  16. Peralta CF, Barini R: Obstetric ultrasound between the 11th and 14th weeks: beyond the screening for chromosomal abnormalities. Rev Bras Ginecol Obstet. 2011, 33 (1): 49-57.

    Article  PubMed  Google Scholar 

  17. Dutra J, Gilabert M, Costa E: Evaluation of the gestational age: correlation between last mentrual period and ultrasonography. J bras ginecol. 1998, 108 (3): 55-57.

    Google Scholar 

  18. Capurro H, Konichezky S, Fonseca D, Caldeyro-Barcia R: A simplified method for diagnosis of gestational age in the newborn infant. J Pediatr. 1978, 93 (1): 120-122. 10.1016/S0022-3476(78)80621-0.

    Article  PubMed  CAS  Google Scholar 

  19. Berg AT: Menstrual cycle length and the calculation of gestational age. Am J Epidemiol. 1991, 133 (6): 585-589.

    PubMed  CAS  Google Scholar 

  20. Kramer MS, McLean FH, Boyd ME, Usher RH: The validity of gestational age estimation by menstrual dating in term, preterm, and postterm gestations. JAMA. 1988, 260 (22): 3306-3308. 10.1001/jama.1988.03410220090034.

    Article  PubMed  CAS  Google Scholar 

  21. Gardosi J, Geirsson RT: Routine ultrasound is the method of choice for dating pregnancy. Br J Obstet Gynaecol. 1998, 105 (9): 933-936. 10.1111/j.1471-0528.1998.tb10253.x.

    Article  PubMed  CAS  Google Scholar 

  22. Whitworth M, Bricker L, Neilson JP, Dowswell T: Ultrasound for fetal assessment in early pregnancy. Cochrane Database Syst Rev. 2010, 4: CD007058-

    PubMed  Google Scholar 

  23. Caughey AB, Nicholson JM, Washington AE: First- vs second-trimester ultrasound: the effect on pregnancy dating and perinatal outcomes. Am J Obstet Gynecol. 2008, 198 (6): 703 e701-705; discussion 703 e705-706

    Google Scholar 

  24. Olsen IE, Groveman SA, Lawson ML, Clark RH, Zemel BS: New intrauterine growth curves based on United States data. Pediatrics. 2010, 125 (2): e214-e224. 10.1542/peds.2009-0913.

    Article  PubMed  Google Scholar 

  25. Cohen J: Weighted kappa: nominal scale agreement with provision for scaled disagreement or partial credit. Psychol Bull. 1968, 70 (4): 213-220.

    Article  PubMed  CAS  Google Scholar 

  26. Landis JR, Koch GG: The measurement of observer agreement for categorical data. Biometrics. 1977, 33 (1): 159-174. 10.2307/2529310.

    Article  PubMed  CAS  Google Scholar 

  27. Dietz PM, England LJ, Callaghan WM, Pearl M, Wier ML, Kharrazi M: A comparison of LMP-based and ultrasound-based estimates of gestational age using linked California livebirth and prenatal screening records. Paediatr Perinat Epidemiol. 2007, 21: 62-71. 10.1111/j.1365-3016.2007.00862.x.

    Article  PubMed  Google Scholar 

  28. Haglund B: Birthweight distributions by gestational age: comparison of LMP-based and ultrasound-based estimates of gestational age using data from the Swedish Birth Registry. Paediatr Perinat Epidemiol. 2007, 21: 72-78. 10.1111/j.1365-3016.2007.00863.x.

    Article  PubMed  Google Scholar 

  29. Callaghan WM, Dietz PM: Differences in birth weight for gestational age distributions according to the measures used to assign gestational age. Am J Epidemiol. 2010, 171 (7): 826-836. 10.1093/aje/kwp468.

    Article  PubMed  Google Scholar 

  30. Prietsch SO, Gonzalez-Chica DA, Cesar JA, Mendoza-Sassi RA: Unplanned pregnancy in Southern Brazil: prevalence and associated factors. Cad Saude Publica. 2011, 27 (10): 1906-1916. 10.1590/S0102-311X2011001000004.

    Article  PubMed  Google Scholar 

  31. Doubilet PM, Benson CB: Improved prediction of gestational age in the late third trimester. J Ultrasound Med. 1993, 12 (11): 647-653.

    PubMed  CAS  Google Scholar 

  32. Victora CG, Aquino EM, Leal MdC, Monteiro CA, Barros FC, Szwarcwald CL: Maternal and child health in Brazil: progress and challenges. Lancet. 2011, 377 (9780): 1863-1876. 10.1016/S0140-6736(11)60138-4.

    Article  PubMed  Google Scholar 

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Acknowledgments

This research received support from CNPq and FAPERJ.

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Correspondence to Ana Paula Esteves Pereira.

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The authors declare that they have no competing interests.

Authors’ contributions

MCL designed the study; MCL and APEP conducted the research; APEP analyzed the data; MCL, APEP, MHB, MABD and SGNG wrote the paper; APEP had primary responsibility for the final content. All authors read and approved the final manuscript.

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Pereira, A.P.E., Dias, M.A.B., Bastos, M.H. et al. Determining gestational age for public health care users in Brazil: comparison of methods and algorithm creation. BMC Res Notes 6, 60 (2013). https://0-doi-org.brum.beds.ac.uk/10.1186/1756-0500-6-60

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