Vitral Gabriela Luiza Nogueira, Romanelli Roberta Maia de Castro, Reis Zilma Silveira Nogueira, Guimarães Rodney Nascimento, Dias Ivana, Mussagy Nilza, Taunde Sergio, Neves Gabriela Silveira, de São José Carolina Nogueira, Pantaleão Alexandre Negrão, Pappa Gisele Lobo, Gaspar Juliano de Souza, de Aguiar Regina Amélia Pessoa Lopes
Faculty of Medicine, Universidade Federal de Minas Gerais, Belo Horizonte, Brazil.
Faculdade Ciências Médicas de Minas Gerais, Belo Horizonte, Brazil.
Front Pediatr. 2023 Mar 28;11:1141894. doi: 10.3389/fped.2023.1141894. eCollection 2023.
A new medical device was previously developed to estimate gestational age (GA) at birth by processing a machine learning algorithm on the light scatter signal acquired on the newborn's skin. The study aims to validate GA calculated by the new device (test), comparing the result with the best available GA in newborns with low birth weight (LBW).
We conducted a multicenter, non-randomized, and single-blinded clinical trial in three urban referral centers for perinatal care in Brazil and Mozambique. LBW newborns with a GA over 24 weeks and weighing between 500 and 2,500 g were recruited in the first 24 h of life. All pregnancies had a GA calculated by obstetric ultrasound before 24 weeks or by reliable last menstrual period (LMP). The primary endpoint was the agreement between the GA calculated by the new device (test) and the best available clinical GA, with 95% confidence limits. In addition, we assessed the accuracy of using the test in the classification of preterm and SGA. Prematurity was childbirth before 37 gestational weeks. The growth standard curve was Intergrowth-21st, with the 10th percentile being the limit for classifying SGA.
Among 305 evaluated newborns, 234 (76.7%) were premature, and 139 (45.6%) were SGA. The intraclass correlation coefficient between GA by the test and reference GA was 0.829 (95% CI: 0.785-0.863). However, the new device (test) underestimated the reference GA by an average of 2.8 days (95% limits of agreement: -40.6 to 31.2 days). Its use in classifying preterm or term newborns revealed an accuracy of 78.4% (95% CI: 73.3-81.6), with high sensitivity (96.2%; 95% CI: 92.8-98.2). The accuracy of classifying SGA newborns using GA calculated by the test was 62.3% (95% CI: 56.6-67.8).
The new device (test) was able to assess GA at birth in LBW newborns, with a high agreement with the best available GA as a reference. The GA estimated by the device (test), when used to classify newborns on the first day of life, was useful in identifying premature infants but not when applied to identify SGA infants, considering current algohrithm. Nonetheless, the new device (test) has the potential to provide important information in places where the GA is unknown or inaccurate.
先前研发了一种新型医疗设备,通过对新生儿皮肤上获取的光散射信号进行机器学习算法处理来估算出生时的胎龄(GA)。本研究旨在验证该新设备(测试)计算出的GA,并将结果与低出生体重(LBW)新生儿中现有的最佳GA进行比较。
我们在巴西和莫桑比克的三个城市围产期护理转诊中心进行了一项多中心、非随机、单盲临床试验。招募出生后24小时内GA超过24周且体重在500至2500克之间的LBW新生儿。所有妊娠在24周前通过产科超声或通过可靠的末次月经日期(LMP)计算GA。主要终点是新设备(测试)计算出的GA与现有的最佳临床GA之间的一致性,并给出95%置信区间。此外,我们评估了该测试在早产和小于胎龄儿(SGA)分类中的准确性。早产是指妊娠37周前分娩。生长标准曲线采用Intergrowth-21st,第10百分位数作为SGA分类的界限。
在305名评估的新生儿中,234名(76.7%)为早产,139名(45.6%)为SGA。测试得出的GA与参考GA之间的组内相关系数为0.829(95%CI:0.785 - 0.863)。然而,新设备(测试)平均低估参考GA 2.8天(95%一致性界限:-40.6至31.2天)。其用于早产或足月新生儿分类时的准确率为78.4%(95%CI:73.3 - 81.6),敏感性较高(96.2%;95%CI:92.8 - 98.2)。使用测试计算出的GA对SGA新生儿进行分类的准确率为62.3%(95%CI:56.6 - 67.8)。
新设备(测试)能够评估LBW新生儿的出生时GA,与现有的最佳GA作为参考具有高度一致性。该设备(测试)估算的GA在用于出生第一天的新生儿分类时,有助于识别早产儿,但按照当前算法应用于识别SGA婴儿时则不然。尽管如此,在GA未知或不准确的地方,新设备(测试)有潜力提供重要信息。