用高斯过程提取胎儿心率记录的可解释特征。

Guanchao Feng, J Gerald Quirk, Petar M Djurić
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引用次数: 1

摘要

在分娩过程中,胎儿心率(FHR)和子宫活动(UA)持续监测与心脏摄影(CTG)。FHR和UA信号由产科医生目视检查以评估胎儿的健康状况。然而,由于目视检查的主观性,产科医生对CTG记录的评估具有很高的内部和内部变异性。FHR的计算机化分析依赖于专家手工制作或机器学习方法自动学习的特征。然而,一般来说,流行的可解释的FHR特征与出生时脐带血的pH值相关性较低,这是目前在FHR计算机分析中标记FHR的金标准。相比之下,机器学习方法发现的特征通常具有有限的可解释性。在本文中,在我们之前使用高斯过程(gp)进行FHR分析的工作的基础上,我们探索了使用gp超参数作为可解释特征的可能性。我们的研究结果表明,一些GP特征与pH值具有较高的相关性,而与其他常用特征的相关性不高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EXTRACTING INTERPRETABLE FEATURES FOR FETAL HEART RATE RECORDINGS WITH GAUSSIAN PROCESSES.

During labor, fetal heart rate (FHR) and uterine activity (UA) are continuously monitored with Cardiotocography (CTG). The FHR and UA signals are visually inspected by obstetricians to assess the fetal well-being. However, due to the subjectivity of the visual inspection, the evaluations of CTG recordings performed by obstetricians have high inter- and intra-variability. The computerized analysis of FHR relies on features either hand-crafted by experts or automatically learned by machine learning methods. However, the popular interpretable FHR features, in general, have low correlation with the pH value of the umbilical cord blood at birth, which is the current gold standard for labeling FHRs in the computerized analysis of FHRs. The features found by machine learning methods, by contrast, usually have limited interpretability. In this paper, in a follow up of our previous work on FHR analysis using Gaussian processes (GPs), we explore the possibility of using the hyperparameters of GPs as interpretable features. Our results indicate that some GP features achieve high correlation with the pH values, while at the same time they are not highly correlated with other popular features.

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