An Efficient Small for Gestational Age Prognosis System Using Stacked Generalization Scheme (SGS)

F. Akhtar, Jianqiang Li, Z. Khand, Yu-Chih Wei, Khalid Hussain, Sana Fatima
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引用次数: 1

Abstract

Background: Classification of infants has always been considered a crucial task in the literature related to predicting small for gestational age (SGA) infants. Traditional medical guidance becomes increasingly unsatisfactory, as patients' care should be centered not only on clinical symptoms but also on socio-economic and demographic factors. Infants with excessive gestational weight exhibit serious maternal complications that require early intervention to stream-line the progression of the disease. Methods: This research proposes to use the Stacked Generalization Scheme (SGS) to predict Small for Gestational (SGA) Infants on the dataset collected from the National Pre-Pregnancy and Examination Program of China. A Cleaned Feature Vector (CFV) is created that entertains issues related to missing values, discretization of fields, and data imbalance. Later, Knowledge-Driven Data (KDD) Features are extracted from the obtained CFV, and the proposed scheme is applied to predict SGA infants. The proposed scheme superposed the existing baseline approaches by achieving the highest precision, recall, and AUC scores of 0.94, 0.85, and 0.89, respectively. Conclusion: The proposed SGS can predict SGA infants accurately compared to existing baseline schemes using KDD parameters, which can help pediatricians develop an efficient SGA Prognosis process.
基于堆叠概化方案的有效胎龄预测系统
背景:在预测小胎龄(SGA)婴儿的相关文献中,婴儿分类一直被认为是一项关键任务。传统的医学指导越来越不令人满意,因为患者的护理不仅要以临床症状为中心,还要以社会经济和人口因素为中心。妊娠体重过重的婴儿表现出严重的母体并发症,需要早期干预以简化疾病的进展。方法:基于中国国家孕前检查计划数据集,采用叠置概化方案(SGS)预测小胎儿(SGA)。创建一个清洁特征向量(CFV),处理与缺失值、字段离散化和数据不平衡相关的问题。然后,从获得的CFV中提取知识驱动数据(KDD)特征,并将该方法应用于SGA婴儿的预测。该方案叠加了现有的基线方法,分别实现了最高的精度、召回率和AUC得分,分别为0.94、0.85和0.89。结论:与使用KDD参数的现有基线方案相比,所提出的SGS可以准确预测SGA婴儿,有助于儿科医生制定有效的SGA预后流程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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