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澳大利亚人群中基于体重增加的早产儿视网膜病变预测模型的比较。

Comparison of Weight-Gain-Based Prediction Models for Retinopathy of Prematurity in an Australian Population.

作者信息

Bremner Alexander, Chan Li Yen, Jones Courtney, Shah Shaheen P

机构信息

University of Sydney, Ophthalmology, Camperdown 2006, NSW, Australia.

Mater Mother's Hospital Brisbane, Raymond Tce, South Brisbane 4101, QLD, Australia.

出版信息

J Ophthalmol. 2023 Aug 17;2023:8406287. doi: 10.1155/2023/8406287. eCollection 2023.

Abstract

PURPOSE

Four weight-gain-based algorithms are compared for the prediction of type 1 ROP in an Australian cohort: the weight, insulin-like growth factor, neonatal retinopathy of prematurity (WINROP) algorithm, the Children's Hospital of Philadelphia Retinopathy of Prematurity (CHOPROP), the Colorado Retinopathy of Prematurity (CO-ROP) algorithm, and the postnatal growth, retinopathy of prematurity (G-ROP) algorithm.

METHODS

A four-year retrospective cohort analysis of infants screened for ROP in a tertiary neonatal intensive care unit in Brisbane, Australia. The main outcome measures were sensitivities, specificities, and positive and negative predictive values.

RESULTS

531 infants were included (mean gestational age 28 + 3). 24 infants (4.5%) developed type 1 ROP. The sensitivities, specificities, and negative predictive values, respectively, for type 1 ROP (95% confidence intervals) were for WINROP 83.3% (61.1-93.3%), 52.3% (47.8-56.7%), and 98.4% (96.1-99.4%); for CHOPROP 100% (86.2-100%), 46.0% (41.7-50,3%), and 100% (98.4-100%); for CO-ROP 100% (86.2-100%), 32.0% (28.0%-36.1%), and 100% (98.3-100%); and for G-ROP 100% (86.2-100%), 28.2% (24.5-32.3%), and 100% (97.4-100%). Of the five infants with persistent nontype 1 ROP that underwent treatment, only CO-ROP was able to successfully identify all.

CONCLUSIONS

CHOPROP, CO-ROP, and G-ROP performed well in this Australian population. CHOPROP, CO-ROP, and G-ROP would reduce the number of infants requiring examinations by 43.9%, 30.5%, and 26.9%, respectively, compared to current ROP screening guidelines. Weight-gain-based algorithms would be a useful adjunct to the current ROP screening.

摘要

目的

比较四种基于体重增加的算法,以预测澳大利亚队列中的1型早产儿视网膜病变(ROP):体重、胰岛素样生长因子、早产儿视网膜病变(WINROP)算法、费城儿童医院早产儿视网膜病变(CHOPROP)、科罗拉多早产儿视网膜病变(CO - ROP)算法以及出生后生长、早产儿视网膜病变(G - ROP)算法。

方法

对澳大利亚布里斯班一家三级新生儿重症监护病房中接受ROP筛查的婴儿进行为期四年的回顾性队列分析。主要结局指标为敏感性、特异性以及阳性和阴性预测值。

结果

纳入531例婴儿(平均胎龄28 + 3)。24例婴儿(4.5%)发生1型ROP。1型ROP的敏感性、特异性和阴性预测值(95%置信区间)分别为:WINROP为83.3%(61.1 - 93.3%)、52.3%(47.8 - 56.7%)和98.4%(96.1 - 99.4%);CHOPROP为100%(86.2 - 100%)、46.0%(41.7 - 50.3%)和100%(98.4 - 100%);CO - ROP为100%(86.2 - 100%)、32.0%(28.0% - 36.1%)和100%(98.3 - 100%);G - ROP为100%(86.2 - 100%)、28.2%(24.5 - 32.3%)和100%(97.4 - 100%)。在接受治疗的5例持续性非1型ROP婴儿中,只有CO - ROP能够成功识别所有病例。

结论

CHOPROP、CO - ROP和G - ROP在该澳大利亚人群中表现良好。与当前ROP筛查指南相比,CHOPROP、CO - ROP和G - ROP分别可将需要检查的婴儿数量减少43.9%、30.5%和26.9%。基于体重增加 的算法将是当前ROP筛查的有用辅助手段。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2108/10477029/6d5f6909a75e/JOPH2023-8406287.001.jpg

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