新生儿低出生体重:调查发病率、风险因素和用于风险估计的人工智能预测模型。

Q2 Medicine
Archana Maju, Sarita Shokandha, Sugandha Arya
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引用次数: 0

摘要

背景低出生体重是衡量全球孕产妇健康和产前护理效果的重要指标。本研究旨在评估新生儿低出生体重的发生率和危险因素。进一步开发预测模型,利用人工智能识别导致低出生体重的风险因素。方法本研究采用双重研究设计,结合描述性和病例对照方法。使用描述性和推断性统计对数据进行分析。通过人工智能的逻辑回归,建立了预测模型。结果低出生体重儿发生率约为304.7例(30.47%)/ 1000例活产。Logistic回归分析确定了低出生体重(LBW)的显著危险因素,调整后的优势比(AOR)显著较高。关键因素包括孕期体重增加不足
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Low birth weight among neonates: Investigating incidence, risk factors, and AI-enabled predictive modeling for risk estimation.

BackgroundLow birth weight serves as a vital measure of maternal health and the efficacy of prenatal care globally. The study was aimed to assess the incidence and risk factors of low birth weight among neonates. Further to develop a predictive model that identifies the risk factors contributing to low birth weight using artificial intelligence.MethodsThe study employed a dual research design, incorporating both descriptive and case-control methodologies. The data was analyzed using descriptive and inferential statistics. Further a predictive model was developed using logistic regression through artificial intelligence.ResultsThe incidence rate of low-birth-weight babies was approximately 304.7 (30.47%) per 1000 live births. Logistic regression analysis identified significant risk factors for low birth weight (LBW), with notably high adjusted odds ratios (AOR). Key factors included inadequate weight gain during pregnancy <9 kg (AOR = 11.89, 95% CI: 6.03-23.44), gestational age <37 weeks (AOR = 12.81, 95% CI: 6.55-25.02), fetal complications reported during pregnancy (AOR = 13.25, 95% CI: 6.81-25.77), and multiple gestation (AOR = 26.88, 95% CI: 3.31-217.99). The developed AI-enabled predictive model demonstrates a high overall accuracy of 90%.ConclusionMost identified risk factors are modifiable, and early prenatal care can greatly reduce LBW incidence and improve neonatal outcomes. The predictive model demonstrated strong accuracy in classifying newborns by birth weight. Integrating the model into healthcare systems can aid early risk detection, reducing low birth weight and improving neonatal outcomes.

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来源期刊
Journal of neonatal-perinatal medicine
Journal of neonatal-perinatal medicine Medicine-Pediatrics, Perinatology and Child Health
CiteScore
2.00
自引率
0.00%
发文量
124
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