基于机器学习的低出生体重预测分类器。

IF 2.3 Q3 MEDICAL INFORMATICS
Mahya Arayeshgari, Somayeh Najafi-Ghobadi, Hosein Tarhsaz, Sharareh Parami, Leili Tapak
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引用次数: 1

摘要

低出生体重(LBW)是一个全球关注的问题,与胎儿和新生儿死亡率以及智力残疾、认知发育受损和成年期慢性疾病等不良后果有关。许多因素会导致体重下降,并且因地区而异。本研究的主要目的是比较四种机器学习分类器对LBW的预测,并确定与伊朗哈马丹这种现象相关的最重要因素。方法:我们对2017年在Fatemieh医院收集的数据集进行回顾性横断面研究,其中包括741对母婴和13个潜在因素。使用决策树、随机森林、人工神经网络、支持向量机和逻辑回归(LR)方法预测LBW,并使用5个评价标准来比较性能。结果:我们的研究结果显示LBW的患病率为7%。所有模型的平均准确率为87%或更高。LR法的灵敏度、特异度、阳性似然比、阴性似然比和准确率分别为74%、89%、7.04%、29%和88%。使用LR,确定胎龄、流产次数、妊娠、血缘、产妇分娩年龄和新生儿性别是与LBW相关的六个最重要的变量。结论:我们的研究结果强调了及时诊断流产原因的重要性,为近亲夫妇提供遗传咨询,并加强孕前和孕期护理(特别是对年轻母亲)以减少低体重。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Machine Learning-based Classifiers for the Prediction of Low Birth Weight.

Machine Learning-based Classifiers for the Prediction of Low Birth Weight.

Objectives: Low birth weight (LBW) is a global concern associated with fetal and neonatal mortality as well as adverse consequences such as intellectual disability, impaired cognitive development, and chronic diseases in adulthood. Numerous factors contribute to LBW and vary based on the region. The main objectives of this study were to compare four machine learning classifiers in the prediction of LBW and to determine the most important factors related to this phenomenon in Hamadan, Iran.

Methods: We carried out a retrospective cross-sectional study on a dataset collected from Fatemieh Hospital in 2017 that included 741 mother-newborn pairs and 13 potential factors. Decision tree, random forest, artificial neural network, support vector machine, and logistic regression (LR) methods were used to predict LBW, with five evaluation criteria utilized to compare performance.

Results: Our findings revealed a 7% prevalence of LBW. The average accuracy of all models was 87% or higher. The LR method provided a sensitivity, specificity, positive likelihood ratio, negative likelihood ratio, and accuracy of 74%, 89%, 7.04%, 29%, and 88%, respectively. Using LR, gestational age, number of abortions, gravida, consanguinity, maternal age at delivery, and neonatal sex were determined to be the six most important variables associated with LBW.

Conclusions: Our findings underscore the importance of facilitating timely diagnosis of causes of abortion, providing genetic counseling to consanguineous couples, and strengthening care before and during pregnancy (particularly for young mothers) to reduce LBW.

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来源期刊
Healthcare Informatics Research
Healthcare Informatics Research MEDICAL INFORMATICS-
CiteScore
4.90
自引率
6.90%
发文量
44
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