Literature DB >> 18973673

Fetal age assessment based on 2nd trimester ultrasound in Africa and the effect of ethnicity.

Daniel Salpou1, Torvid Kiserud, Svein Rasmussen, Synnøve Lian Johnsen.   

Abstract

BACKGROUND: The African population is composed of a variety of ethnic groups, which differ considerably from each other. Some studies suggest that ethnic variation may influence dating. The aim of the present study was to establish reference values for fetal age assessment in Cameroon using two different ethnic groups (Fulani and Kirdi).
METHODS: This was a prospective cross sectional study of 200 healthy pregnant women from Cameroon. The participants had regular menstrual periods and singleton uncomplicated pregnancies, and were recruited after informed consent. The head circumference (HC), outer-outer biparietal diameter (BPDoo), outer-inner biparietal diameter and femur length (FL), also called femur diaphysis length, were measured using ultrasound at 12-22 weeks of gestation. Differences in demographic factors and fetal biometry between ethnic groups were assessed by t- and Chi-square tests.
RESULTS: Compared with Fulani women (N = 96), the Kirdi (N = 104) were 2 years older (p = 0.005), 3 cm taller (p = 0.001), 6 kg heavier (p < 0.0001), had a higher body mass index (BMI) (p = 0.001), but were not different with regard to parity. Ethnicity had no effect on BPDoo (p = 0.82), HC (p = 0.89) or FL (p = 00.24). Weight, height, maternal age and BMI had no effect on HC, BPDoo and FL (p = 0.2-0.58, 0.1-0.83, and 0.17-0.6, respectively). When comparing with relevant European charts based on similar design and statistics, we found overlapping 95% CI for BPD (Norway & UK) and a 0-4 day difference for FL and HC.
CONCLUSION: Significant ethnic differences between mothers were not reflected in fetal biometry at second trimester. The results support the recommendation that ultrasound in practical health care can be used to assess gestational age in various populations with little risk of error due to ethnic variation.

Entities:  

Mesh:

Year:  2008        PMID: 18973673      PMCID: PMC2585556          DOI: 10.1186/1471-2393-8-48

Source DB:  PubMed          Journal:  BMC Pregnancy Childbirth        ISSN: 1471-2393            Impact factor:   3.007


Background

Maternal and perinatal mortalities in sub-Saharan countries are among the highest in the world. In Cameroon the maternal mortality rate is 430 per 100 000 live births and the infant mortality rate 87 per 1000 under one year) [1]. Gestational age (GA) has emerged as one of the most important predictors of perinatal mortality and morbidity [2]. By combining GA and fundal height of the uterus, complications such as intra-uterine growth restriction (IUGR), oligohydramnion, macrosomia, multiple pregnancy and polyhydramnion may be identified [3]. Knowledge of GA is also a prerequisite in the management of conditions such as premature rupture of membranes, preterm labour, post dates, antepartum bleeding, preeclampsia etc. Last menstrual period (LMP) is simple and the most common method of calculating GA. However, 45–68% of pregnant women have been reported to have irregular periods or uncertain information regarding their LMP. The ultrasonographic measurements of the fetal BPD is a more reliable method, predicting date of spontaneous delivery with greater certainty than even a certain LMP [4-7]. Ultrasound is particularly useful in parts of the world where women often cannot account for their LMP [8,9]. In Cameroon the illiteracy rate is 68% among people older than 15 years [1], and many of the pregnant women who attend hospital clinics do not know the exact date of their LMP, but they count completed months. Biparietal diameter (BPD) is the most commonly used ultrasound measurement for fetal age assessment. Fetal age assessment in the second trimester can also be based on head circumference (HC) and femur length (FL). These methods are less influenced by maternal and fetal factors such as parity, age and fetal gender [10-15]. The African population is composed of a variety of ethnic groups, differing considerably from each other. Some studies suggest that population differences in fetal biometry are negligible and that separate studies are not essential [16,17]. Other studies however demonstrate morphometric variation among different population groups around the world [18-20] suggesting that ethnic variation may influence dating. The aim of the present study was therefore to establish reference values for fetal age assessment in Cameroon using two different ethnic groups. We also wanted to determine the effect of maternal morphometry on the age assessment and to compare these new reference charts with other relevant charts.

Methods

This was a prospective cross sectional study of 200 pregnant women belonging to two different ethnic groups in the northern part of Cameroon: the Fulani people who are slender, and the Kirdi people who are in general stocky (Table 1). The participants were recruited from an antenatal clinic when they attended their routine prenatal care at 12–22 weeks of gestation. About 20 participants were recruited for each gestational week. The women were healthy with regular menstrual periods and certain information about LMP. They participated voluntarily after informed consent according to a protocol acknowledged by the hospital committee of Medical Research Ethics.
Table 1

Comparison between Fulani (N = 96) and Kirdi (N = 104) according to height, weight, body mass index (BMI), maternal age (A = ANOVA test).

HeightMean95% Confidence Intervalp = 0.001
Fulani1.571.561.58

Kirdi1.5951.5851.605

Total1.581.571.59

WeightMean95% Confidence Intervalp < 0.0001

Fulani59.9357.9061.95

Kirdi65.8763.9367.82

Total62.9061.5064.30

BMIMean95% Confidence Intervalp = 0.001

Fulani24.0323.2624.80

Kirdi25.8325.0926.57

Total24.9324.4025.46

AgeMean95% Confidence Intervalp = 0.005

Fulani25.3224.1926.45

Kirdi27.5926.5028.67

Total26.4626.6727.24
Comparison between Fulani (N = 96) and Kirdi (N = 104) according to height, weight, body mass index (BMI), maternal age (A = ANOVA test). One investigator (DS) trained at a Norwegian university hospital did all the ultrasound examinations using Shimasonic (Shimadzu) SDL-300, Japan, with a 3.5 MHz curvilinear probe. Fetal head measurements were obtained in a horizintal section at the level of the thalamus and the cavum septi pellucidi [21]. Measurements of the biparietal diameter were obtained by placing the callipers at the outer border of the cranium on both sides (BPD outer-outer, BPDoo) and at the leading edges (BPD outer-inner, BPDoi). The occipital-frontal diameter (OFD) was measured between the leading edge of the frontal bone and the outer border of the occiput. Head circumference (HC) was estimated from the measurement of the OFD and the BPDoo using the formula π(BPD+OFD)/2 [21]. The fetal femur length (FL) was obtained in a longitudinal section by placing the calliper at the end of the diaphysis on both sides [22], also called the femur diaphysis length (FDL) [23]. For each parameter three measurements were used to calculate a mean. Gestational age was calculated from the first day of the last menstrual period, and corrected for cycle length; i.e. corresponding number of days were added or subtracted according to menstrual cycle length shorter or longer than 28 days, respectively.

Statistics

The sample size was determined based on the power calculation and design of a corresponding previous study [24]. Fractional polynomial regression models were fitted to the data in order to construct the mean [24]. To construct the 2.5th, 5th, 10th, 25th, 75th, 90th, 95th, and 97.5th centiles, the method of scaled absolute residuals was applied [25]. Differences in demographic factors and fetal biometry between ethnic groups were assessed by t- and Chi-square tests. Continuous dependent variables were power transformed to normality were necessary. Intra-observer coefficient of variation was calculated based on the three repeat measurements of each parameter in all participants. The intra-observer variation was also analyzed as the intra-class correlation. The SPSS statistical package (SPSS, Chicago, IL, USA) was used, except for the intra-observer coefficient of variation, which was carried out according to the 'logarithmic method' of Bland [26].

Results

Table 1 and Table 2 show the characteristics of the total population and the comparison between the 96 Fulani and 104 Kirdi with regard to maternal age, height, weight, BMI and parity. Compared with the Fulani women, the Kirdi were two years older (p = 0.005), three cm taller (p = 0.001), six kg heavier (p < 0.0001), had a higher BMI (p = 0.001), but were not different with regard to parity. Seventy (35%) of all the women had never been to school and 162 (81%) of them were housewives, while only one (0.5%) of their husbands was unemployed. All the women were married.
Table 2

Comparison between Fulani (N = 96) and Kirdi (N = 104) according to parity (B= Chi-square test)

ParityFulaniKirdiTotal
n%N%n%
02222.922423.084624.21Chi-square test:
12425.002625.005026.32P = 0.9
21414.581514.422915.26
31313.54109.622312.11
499.3898.65189.47
51414.582019.233417.90
Comparison between Fulani (N = 96) and Kirdi (N = 104) according to parity (B= Chi-square test) BPD, OFD and HC were successfully determined in all participants, while in 18 cases visualisation of the FL was not possible during early pregnancy. For the ethnic groups combined, raw data with fitted 2.5th, 50th and 97.5th centiles and 95% CI for mean gestational age as functions of BPDoo, BPDoi, HC and FL are presented in Figures 1, 2, 3, 4 and the corresponding charts for GA assessment according to biometrical measurements in Tables 3, 4, 5 and 6. Mean gestational age and standard deviation (SD) as functions of the anatomical parameters were: Mean gestational age (weeks)1.255 = 9.2309763061 + 0.6491253792 BPDoo (mm) + 0.0000166409 BPDoo3, SD = 1.1891063079 - 0.0000676577 BPDoo; mean gestational age (weeks)1.255 = 9.9633718109 + 0.6655891074 BPDoi (mm) + 0.0000165695 BPDoi3, SD = 1.0450011947 + 0.0018760334 BPDoi; mean gestational age (weeks)1.255 = 16.8857174784 + 0.0016547829 HC (mm)2 - 0.0000042242 HC3, SD = 1.2876967006 + 0.0004840074 HC and mean gestational age (weeks)1.255 = 1.2653359275 + 6.9440971709 FL (mm)0.5 + 0.0033225118 FL2, SD = 1.1872945587 + 0.0170042678 FL.
Figure 1

Raw data with fitted centiles of gestational age (2.5 Red dots are Fulani and blue dots Kirdi.

Figure 2

Raw data with fitted centiles of gestational age (2.5th, 50th and 97.5th) by biparietal diameter (outer-inner)) and 95% CI for the mean.

Figure 3

Raw data with fitted centiles of gestational age (2.5th, 50th and 97.5th) by head circumference and 95% CI for the mean.

Figure 4

Raw data with fitted centiles of gestational age (2.5th, 50th and 97.5%) by femur length and 95% CI for the mean.

Table 3

Gestational age assessment by biparietal diameter outer-outer (BPDoo)

Centiles

50th2.5th97.5th
BPDoo (mm)weeksdaysweeksdaysweeksdays

20116106126
21121111130
22123113132
23125115134
24130120136
25132122141
26134124143
27135126145
28140131150
29142133152
30144135154
31146140156
32151142161
33153144163
34155146165
35160151166
36162153171
37164155173
38166160175
39171162180
40173164182
41175166184
42180171186
43182173191
44184175193
45186180195
46191182200
47193184202
48195186204
49200191206
50202193211
51204195213
52206200215
53211202220
54213204222
55215206224
56220211226
57222213231
58224215233
Table 4

Gestational age asssessment by biparietal diameter outer-inner (BPDoi)

Centiles

50th2.5th97.5th
BPDoi (mm)weeksdaysweeksdaysweeksdays

20122113131
21124115133
22126120135
23131122140
24133124142
25135126144
26140131146
27142133151
28144135153
29146140155
30151142160
31153144162
32155146164
33160151166
34162153171
35164155173
36166160175
37171162176
38173164181
39175166183
40180171185
41182173190
42184175192
43186180194
44191182196
45193184201
46195186203
47200191205
48202193210
49204195212
50206200214
51211202216
52213204221
53215206223
54220211225
55222213231
56224215233
57226220235
58231222240
Table 5

Gestational age ssessment by head circumference (HC)

CentilesCentiles
50th2.5th97.5th50th2.5th97.5th

HC (mm)weeksdaysweeksdaysweeksdaysHC (mm)weeksdaysweeksdaysweeksdays

70122112133140180170190
72123113134142181171191
74124114135144182172192
76125115136146183173193
78126116140148184174194
80130120141150185175195
82131121142152190176200
84133122143154191181201
86134123144156192182202
88135124145158193183203
90136125146160194184204
92140126150162195185205
94141131151164196186206
96142132153166200190210
98143133154168201191211
100145134155170202192212
102146135156172203193213
104150136160174204194214
106151141161176205195215
108152142162178206196216
110153143164180210200220
112154144165182211201221
114156145166184212202222
116160150170186213203223
118161151171188214204224
120162152172190215205224
122163153173192215206225
124165154175194216206226
126166155176196220210230
128170160180198221211231
130171161181200222212232
132172162182202223213232
134173163183204223213233
136174164185206224214234
138176166186208225215235
210225216235
Table 6

Gestational age assessment by femur length (FL)

Centiles

50th2.5th97.5th
FL (mm)weeksdaysWeeksdaysweeksdays

11115120136
12121124143
13124130146
14130133152
15133135155
16135141160
17141144163
18144146166
19146152171
20152154174
21154160176
22156162182
23162165184
24164170190
25166172192
26171174194
27174180200
28176182202
29181184204
30183186206
31185191212
32190193214
33192195216
34194201221
35196203223
36202205225
37204210231
38206212233
39211214235
40213216240
Gestational age assessment by biparietal diameter outer-outer (BPDoo) Gestational age asssessment by biparietal diameter outer-inner (BPDoi) Gestational age ssessment by head circumference (HC) Gestational age assessment by femur length (FL) Raw data with fitted centiles of gestational age (2.5 Red dots are Fulani and blue dots Kirdi. Raw data with fitted centiles of gestational age (2.5th, 50th and 97.5th) by biparietal diameter (outer-inner)) and 95% CI for the mean. Raw data with fitted centiles of gestational age (2.5th, 50th and 97.5th) by head circumference and 95% CI for the mean. Raw data with fitted centiles of gestational age (2.5th, 50th and 97.5%) by femur length and 95% CI for the mean. In supplementary analyzes, we compared z-scores of gestational age in the two ethnical groups. For both groups, mean z-scores for each anatomical parameter was non-different from zero (General Linear Models, SPSS). Nor did inclusion of ethnicity as an independent variable in the functions, which describe the estimated mean gestational age, reveal significant effects. Mean z-scores of gestational age as function of HC in Fulani and Kirdi women were -0.02 (95% CI: -0.22, 0.18), SD 0.98, and 0.02 (95% CI: -0.19, 0.22), SD 1.05, respectively. Correspondingly, mean z-scores of gestational age according to BPDoo in Fulani and Kirdi were 0.00 (95% CI: -0.19, 0.19), SD 0.92, and 0.00 (95% CI: -0.22, 0.23), SD 1.15, respectively. For BPDoo mean gestational age z-scores in Fulani and Kirdi women were -0.02 (95% CI: -0.21, 0.17), SD 0.94 and 0.02 (95% CI: -0.21, 0.25), SD 1.18, respectively. For FL mean gestational age z-scores in Fulani and Kirdi women were -0.12 (95% CI: -0.39, 0.15), SD 1.30 and 0.12 (95% CI: -0.08, 0.32), SD 0.97, respectively. Prediction of gestational age from BPD (22–59 mm) was fairly similar in three studies using outer-outer measurement technique (Fig 5). In practical terms, differences in predicted gestational age between the British and the Norwegian studies compared with the present study ranged from -0.03 to 0.4 weeks and -0,2 to 0.5 weeks, respectively. The 95% CI for the mean in the present study generally overlapped with the means of the other two studies. Predicted gestational age in the present study from HC (80–200 mm) was generally higher than those in the British and the Norwegian (Fig. 6). The difference from the British and the Norwegian studies ranged from -0.7 to -0.3 and -0.7 to 0.07 weeks, respectively. Predictions of gestational age from FL (13–40 mm) in the present and the Norwegian studies were similar and the difference ranged from -0.3 to 0.6 weeks (Fig. 7). However, predicted gestational age in the British study was generally lower than in the present (difference -0.6 to -0.1 weeks). The 95% CI for the mean in the present study generally overlapped with the mean in the Norwegian study. Design and statistical methods are comparable in these three studies. The 5th and 95th centiles were used to reflect uncertainty of gestational age estimation in the three methods (Table 7).
Figure 5

The 50[10]and Johnsen [14].

Figure 6

The 50[10]and Johnsen [14].

Figure 7

The 50[10]and Johnsen [15].

Table 7

Uncertainty of gestational age assessment, expressed as the distance between the 5th and 95th centile, when using outer-outer biparietal diameter (BPDoo), head circumference (HC) and femur length (FL) based on the present study, the study of Altman and Chitty [10] and that of Johnsen et al. [14]

Present studyAltman and ChittyJohnsen et al

Measurement50th centileUncertainty50th centileUncertainty50th centileUncertainty
(mm)(weeks + days)(± days)(weeks + days)(± days)(weeks + days)(± days)
BPDoo2212 + 3612 + 4712 + 36
5020 + 2520 + 31320 + 29

HC9013 + 6613 + 2513 + 36
18021 + 0620 + 51020 + 48

FL1414 + 1714 + 1714 + 36
3220 + 2820 + 01120 + 28
Uncertainty of gestational age assessment, expressed as the distance between the 5th and 95th centile, when using outer-outer biparietal diameter (BPDoo), head circumference (HC) and femur length (FL) based on the present study, the study of Altman and Chitty [10] and that of Johnsen et al. [14] The 50[10]and Johnsen [14]. The 50[10]and Johnsen [14]. The 50[10]and Johnsen [15]. In Tables 8, 9 and 10 the effects of maternal characteristics on fetal age assessment are presented. There was no significant effect of weight, height, maternal age or BMI on fetal biometry, but parity seemed to increase fetal BPDoo for the first three babies (p = 0.01), but not for HC or FL (p = 0.01, 0.27 and 0.11, respectively).
Table 8

Effects of maternal ethnicity, weight, height, body mass index (BMI), parity, and age on biparietal diameter outer – outer (BPDoo)

Maternal factorMean95%CISDp-value
Ethnicity0.82
Fulani40.5240.1940.859.8
Kirdi40.4740.1540.7811.2

Weight (centiles)0.39
< 1040.3039.6440.9710.1
10–9040.4440.1840.6910.6
90+41.1140.4041.8310.6

Height (centiles)0.83
< 1040.4739.7741.179.7
10–9040.5440.2740.8010.7
90+40.2539.6440.8610.6

BMI (centiles)0.33
< 1040.4739.7441.198.5
10–9040.4440.1940.6910.7
90+40.9140.1941.6310.7

Parity0.01
038.6737.9739.3811.4
139.0438.3939.6910.1
239.7038.8540.5511.2
340.4139.5541.2711.5
439.4538.5140.4010.3
5+39.9939.1240.879.3

Age0.10
-1940.2539.1641.3512.3
20–2439.9839.3740.5810.4
25–2939.5339.0140.0610.0
30–3438.5537.8139.2811.9
35+39.4138.2840.559.7
Table 9

Effects of maternal ethnicity, weight, height, body mass index (BMI), parity, and age on head circumference (HC)

Maternal factorMean95%CISDp-value
Ethnicity0.89
Fulani136.59135.21137.9736.6
Kirdi136.46135.13137.7840.4

Weight (centiles)0.22
< 10135.47132.66138.2739.4
10–90136.30135.23137.3738.2
90+139.45136.43142.4639.0

Height (centiles)0.58
< 10136.10133.17139.0337.5
10–90137.05135.95138.1439.6
90+134.00131.46136.5539.6

BMI (centiles)0.20
< 10135.68132.62138.7332.9
10–90136.42135.35137.4938.8
90+138.19135.16141.2238.1

Parity0.27
0132.01129.21134.8141.8
1131.25128.68133.8236.3
2132.64129.26136.0240.9
3135.78132.38139.1740.8
4132.05128.30135.8140.0
5+134.50131.04137.9734.0

Age0.34
-19134.81130.45139.1645.6
20–24134.26131.85136.6638.1
25–29132.09130.00134.1736.7
30–34132.44129.52135.3643.1
35+131.60127.09136.1133.9

Analysis of variance (ANOVA), adjustments for gestational age.

Parity and age were adjusted for each other.

Table 10

Effects of maternal ethnicity, weight, height, body mass index (BMI), parity, and age on fetal femur length (FL)

Maternal factorMean95%CISDp-value
Ethnicity0.24
Fulani24.5322.8926.177.7
Kirdi25.7924.1827.418.0

Weight (centiles)0.20
< 1023.3319.9526.728.4
10–9025.2623.9626.577.8
90+26.5322.9730.087.8

Height (centiles)0.22
< 1024.0520.6627.448.4
10–9025.1823.8426.527.8
90+26.0422.9929.097.6

BMI (centiles)0.60
< 1021.6117.9925.247.3
10–9025.4524.1726.737.7
90+26.4222.8929.958.3

Parity0.11
023.9523.0224.888.7
124.2123.3725.057.7
224.7723.6225.927.7
323.8822.7724.995.6
424.6323.4025.868.2
5+25.6324.5326.737.4

Age0.17
-1925.3223.9126.748.6
20–2424.9124.1525.667.8
25–2924.6223.9825.277.9
30–3423.9923.0324.968.3
35+23.7122.2725.157.1

Analysis of variance (ANOVA), adjustments for gestational age.

Parity and age were adjusted for each other.

Effects of maternal ethnicity, weight, height, body mass index (BMI), parity, and age on biparietal diameter outer – outer (BPDoo) Effects of maternal ethnicity, weight, height, body mass index (BMI), parity, and age on head circumference (HC) Analysis of variance (ANOVA), adjustments for gestational age. Parity and age were adjusted for each other. Effects of maternal ethnicity, weight, height, body mass index (BMI), parity, and age on fetal femur length (FL) Analysis of variance (ANOVA), adjustments for gestational age. Parity and age were adjusted for each other. The intra-observer variation, calculated as the coefficient of variation for BPDoo, BPDoi, HC and FL was 2.7 (95% CI 2.5–2.9), 2.7 (2.6–2.9), 3.8 (2.8–3.3) and 3.1 (2.8–3.3), respectively. The corresponding intra-class correlation was 99.1% (95% CI 98.9–99.3), 99.2 (99.0–99.4), 98.4 (97.9–98.7) and 99.3 (99.11–99.4), respectively.

Discussion

We have established reference charts for gestational age assessment using three fetal ultrasonographic measurements in an African population composed of two different ethnic groups. We have shown that significant morphometric ethnic differences had no significant influence on gestational age assessment. The charts are in agreement with European charts based on corresponding design and statistics. Although ethnic groups (Kirdi and Fulani) differed significantly with respect to maternal age, height, weight and BMI (Table 1) we found no significant impact of ethnicity on fetal size at 12–22 weeks of gestation (Tables 8, 9 and 10). Additionally, supplementary analyses revealed no significant difference in distributions of z-scores of BPD, HC, or FL. Nor did we find any significant effects of ethnicity on predicted gestational age. These findings are very helpful in a country such as Cameroon, which has a variety of ethnic groups. It would be impractical to use different charts for all these groups. However, other studies [18-20] report clinically significant inter-ethnic morphometric differences, and a study among a multi-ethnic population in USA suggested accordingly that ethnicity and sex difference should be take into consideration to improve the accuracy of ultrasound estimation of GA [19]. However, we compared our new charts with those established for a Caucasian population and a mixed population in Europe [10,14,15] (Figures 5, 6 and 7) and found agreement for BPDoo-charts, the most commonly used measurement for this purpose. The method of assessing HC was different in Cameroon compared to the European studies (estimating circumference based on BPD and OFD compared to tracing or adjusting an ellipse to the fetal skull), which may explain some of the variance (Fig 6). The slightly different curvature of the means (Figures 6 and 7) may reflect that the fitted regression line would be different for the short time span of the present data compared the longer span of the other two studies. As for FL there was no difference compared with the Norwegian study (95% CI overlapped). These two studies used identical insonation and measurement techniques as all ultrasound operators had been trained in the same unit, but then applied this technique using different machines in different countries. In general, FL charts vary more from study to study than the fetal head biometry, which probably reflects an uncertainty in defining the landmarks for the femoral diaphysis. We believe the small differences compared with the British charts are due to measurement technique, since study design and statistical methods were otherwise identical. We have previously shown that morphometric differences at 18 weeks of gestation are related to body composition at birth [27]. Here we show that the ethnic impact on fetal morphometry at this stage of pregnancy is insignificant in the context of assessing gestational age. We acknowledge that ethnic differences are expressed during fetal development, but then mainly during the latter half of pregnancy. However, ethnical differences in mid gestation have been found for femur measurements in some studies [10,18-20], and we therefore recommend fetal age assessment in the second trimester to be based primarily on fetal head-measurements. The impact of weight, height, maternal age, and BMI on fetal biometry, was non-existent in the present study or so small that it can be ignored before 22 weeks of gestation. There was a significant effect of parity on BPDoo, but since there was no effect on HC and FL it may well be due to chance. A study of normal pregnancies in Papua New Guinea found that fetal biometry was hardly affected by socio-demographic characteristics, weight gain during pregnancy or the height of the mother [3]; which is in line with the present findings. In the present study all participants were married and lived with their husband, a sign of couple's stability. Although most of the women were housewives and dependent on their husbands, at least one member of the couple had income. This does not reflect the general population where more than 30% are believed to be unemployed, and this suggests that our study population was skewed. The fact that we included only women who knew their LMP probably augmented this skewed distribution as destitute pregnant women tend not to know their LMP and are therefore more likely to be excluded from the study. Recently established WHO standards for infant growth included children from optimal socioeconomic backgrounds at different locations around the world[28]. The present study should then be in line with such guidelines. This study can be criticised for lacking perinatal data. We could not collect the outcomes of pregnancy as this would have necessitated the investigator's presence at the study site for a longer period. Home birth is common and would have resulted in numerous dropouts. Secondly, if growth deviation or other complications had occurred, we would not have excluded these participants [24]. Constructing reference charts by excluding participants for complications occurring after enrolment is not considered prudent, and carries the risk of constructing "supernormal" reference charts that are not applicable for women with complications.

Conclusion

In countries such as Cameroon where the illiteracy is very high (68%) [1], only a few women know the date of their LMP. In general, even when educated, many women do not remember, or are uncertain of the date of their LMP [29]. Most pregnant women come to their first consultation around three months of gestation or later. GA assessed at this stage forms the base for growth assessment during the rest of the pregnancy and prediction of expected date of delivery. This study provides the tool for assessing GA by fetal biometry and makes it possible to determine IUGR and prematurity in Cameroon and other African populations. Although ultrasound machines are not readily available in antenatal care in developing countries, we believe that accurately assessed GA in risk groups would be important information at a time when ultrasound becomes increasingly available in these countries.

Competing interests

The authors declare that they have no competing interests.

Authors' contributions

DS contributed to conception and design of the study, acquisition of data, interpretation of data, revision of the manuscript, and approved the final version. TK contributed to conception and design of the study, analysis and interpretation of data, helped to draft the manuscript, and approved the final version. SR contributed to conception and design of the study, analysis and interpretation of data, helped to draft the manuscript, and approved the final version. SLJ contributed to analysis and interpretation of data, drafted the manuscript, and approved the final version.

Pre-publication history

The pre-publication history for this paper can be accessed here:
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