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使用个体化生长评估法评估围产期结局:与传统方法的比较。

Evaluation of perinatal outcome using individualized growth assessment: comparison with conventional methods.

作者信息

Ariyuki Y, Hata T, Kitao M

机构信息

Department of Obstetrics and Gynecology, Shimane Medical University, Izumo, Japan.

出版信息

Pediatrics. 1995 Jul;96(1 Pt 1):36-42.

PMID:7596719
Abstract

OBJECTIVE

To evaluate individualized growth assessment using the Rossavik growth model for detection of growth-retarded neonates with poor perinatal outcomes.

METHODS

Rossavik growth models derived from second-trimester ultrasound measurements were used to predict birth characteristics of 154 singleton neonates. Individual fetal growth curve standards for head and abdominal circumference and weight were determined from the data of two scans obtained before 25 weeks' menstrual age and separated by an interval of at least 5 weeks. Comparisons between actual and predicted birth characteristics were expressed by the Growth Potential Realization Index and the Neonatal Growth Assessment Score (NGAS). The proportions of perinatal outcomes (mechanical delivery, low Apgar score, abnormal fetal heart rate [FHR] patterns, neonatal acidosis, meconium staining of amniotic fluid, neonatal intensive care unit admission, and maternal complications), using NGAS, were compared with those by the traditional birth weight-for-gestational age method and the ponderal index, respectively.

RESULTS

Of the 154 fetuses studied, 120 had normal growth outcomes at birth; 18 showed evidence of intrauterine growth retardation; and 16 had macrosomia, based on NGAS. According to birth weight-for-gestational age classification, 32 fetuses were small for gestational age; 118 were appropriate for gestational age; and only 4 were large for gestational age. According to the ponderal index, 55 fetuses had growth retardation, 99 showed appropriate growth and there was no macrosomia. There was a significant increase in mechanical deliveries in cases of growth-retarded neonates, determined using the NGAS classification, when compared with events related to normally grown or macrosomic neonates. However, there were no significant differences in mechanical deliveries among the groups by birth weight classification or ponderal index. Both birth weight classification and NGAS classification showed a significant increase in the low Apgar score, abnormal FHR patterns, and neonatal acidosis in infants classified as growth retarded when compared with appropriately grown or macrosomic infants. However, there were no significant differences in the low Apgar score, abnormal FHR patterns, and neonatal acidosis between growth-retarded and appropriately grown infants when they had been so classified by ponderal index. Three growth category classification methods failed to reveal significant differences in meconium staining of amniotic fluid, neonatal intensive care unit admission, and maternal complications among the groups.

CONCLUSION

We do cast doubt on the usefulness of the ponderal index for detection of growth-retarded neonates with poor perinatal outcomes, and individualized growth assessment seems to perform at least as well as the traditional birth weight-for-gestational age method.

摘要

目的

使用罗萨维克生长模型评估个体化生长情况,以检测围产期结局不良的生长迟缓新生儿。

方法

采用孕中期超声测量得出的罗萨维克生长模型预测154例单胎新生儿的出生特征。根据孕龄25周前获得的两次扫描数据(间隔至少5周)确定头围、腹围和体重的个体胎儿生长曲线标准。实际出生特征与预测出生特征之间的比较通过生长潜力实现指数和新生儿生长评估评分(NGAS)来表示。分别将使用NGAS得出的围产期结局(剖宫产、阿氏评分低、异常胎心率[FHR]模式、新生儿酸中毒、羊水胎粪污染、新生儿重症监护病房收治及母体并发症)比例与传统的出生体重与孕龄方法及体重指数得出的比例进行比较。

结果

在研究的154例胎儿中,根据NGAS,120例出生时生长结局正常;18例有宫内生长迟缓迹象;16例为巨大儿。根据出生体重与孕龄分类,32例胎儿为小于胎龄儿;118例为适于胎龄儿;只有4例为大于胎龄儿。根据体重指数,55例胎儿生长迟缓,99例生长正常,无巨大儿。与正常生长或巨大儿相关事件相比,使用NGAS分类确定的生长迟缓新生儿剖宫产显著增加。然而,按出生体重分类或体重指数分组,各组剖宫产无显著差异。出生体重分类和NGAS分类均显示,与生长正常或巨大儿相比,生长迟缓婴儿的阿氏评分低、FHR模式异常及新生儿酸中毒显著增加。然而,按体重指数分类,生长迟缓婴儿与生长正常婴儿在阿氏评分低、FHR模式异常及新生儿酸中毒方面无显著差异。三种生长类别分类方法均未显示各组在羊水胎粪污染、新生儿重症监护病房收治及母体并发症方面存在显著差异。

结论

我们确实怀疑体重指数对检测围产期结局不良的生长迟缓新生儿的有用性,个体化生长评估似乎至少与传统的出生体重与孕龄方法效果相当。

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