通过机器学习模型区分健康胎儿和IUGR胎儿

Beniamino Daniele, Giulio Steyde, Edoardo Spairani, G. Magenes, M. Signorini
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引用次数: 0

摘要

本研究的目的是开发和了解机器学习模型是否可以对健康胎儿或子宫内生长受限(IUGR)胎儿的心脏造影(CTG)记录进行分类,强调大量数据如何产生意想不到的影响。我们从文献中的其他发现开始,看看机器学习模型在大量数据下保持一致。本研究中使用的CTG记录于2013年至2021年在意大利那不勒斯Federico II大学医院产科收集。从这个数据集中,我们选择了1548个IUGR胎儿和1548个健康胎儿来训练我们的模型。每段记录包含几个参数,包括整个CTG追踪计算的特征,每记录3分钟和1分钟计算的特征,以及与孕妇相关的特征,如年龄和妊娠周。我们在这个数据集上训练了我们的机器学习模型,检查了调整超参数之前和之后获得的结果,注意到最好的模型之一是随机森林,它已经出现在其他研究中,多层感知器和AdaBoost分类器总体上表现最好。这项工作可以为今后的胎儿心率分类工作奠定基础,从而实现真正的临床应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discriminating Healthy and IUGR fetuses through Machine Learning models
The purpose of this study is to develop and understand whether Machine Learning models can classify Cardiotocographic (CTG) recordings of healthy fetuses or Intra Uterine Growth Restricted (IUGR) fetuses, highlighting how a large amount of data can have unexpected effects. We started from other findings in the literature to see what Machine Learning model remained consistent even with a large amount of data. The CTG records used in this study were collected at the Department of Obstetrics of the Federico II University Hospital in Naples, Italy, from 2013 to 2021. From this dataset, we chose 1548 IUGR fetuses and 1548 healthy fetuses to train our models. Each recording contained several parameters, ranging from features calculated on the entire CTG tracing, features calculated every 3 and 1 minute of recording and features related to the pregnant woman, such as age and week of gestation. We trained our machine-learning models on this dataset, checking the results obtained before and after adjusting the hyperparameters, noting that among the best models was Random Forest, which has already been present in other studies, and that the Multilayer Perceptron and the AdaBoost classifier were overall the best performing. This work can surely form a basis for future works in the fetal heart rate classification thus leading to real clinical applications.
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