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Combining latent class analysis labeling with multiclass approach for fetal heart rate categorization

机译:结合潜在类别分析标记和多类别方法进行胎儿心率分类

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摘要

The most common approach to assess fetal well-being during delivery is monitoring of fetal heart rate and uterine contractions-the cardiotocogram (CTG). Nevertheless, 40 years since the introduction of CTG to clinical practice, its evaluation is still challenging with high inter-and intra-observer variability. Therefore the development of more objective methods has become an issue of major importance in the field. Unlike the usually proposed approaches to assign classes for classification methods that rely either on biochemical parameters (e.g. pH value) or a simple aggregation of expert judgment, this work investigates the use of an alternative labeling system using latent class analysis (LCA) along with an ordinal classification scheme. The study is performed on a well-documented open-access database, where nine expert obstetricians provided CTG annotations. The LCA is proposed here to produce more objective class labels while the ordinal classification aims to explore the natural ordering, and representation of increased severity, for obtaining the final results. The results are promising suggesting that more effort should be put into this proposed approach.
机译:评估分娩过程中胎儿健康的最常见方法是监测胎儿心率和子宫收缩-心电图(CTG)。然而,自将CTG引入临床实践以来已有40年,由于观察者之间和观察者内部的高变异性,其评估仍然具有挑战性。因此,开发更客观的方法已成为该领域的重要课题。与通常提出的根据生化参数(例如pH值)或专家判断的简单汇总为分类方法分配类别的方法不同,这项工作研究了利用潜在类别分析(LCA)结合替代标记系统的使用。顺序分类方案。这项研究是在一个有据可查的开放访问数据库中进行的,其中有9位专家产科医生提供了CTG注释。本文提出的LCA可以产生更多客观的类别标签,而序数分类的目的是探索自然排序和增加严重性的表示形式以获得最终结果。结果令人鼓舞,表明应该为这种提议的方法付出更多的努力。

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