机器学习算法对胎儿心率基线进行分类的诊断性能评估

Pub Date : 2022-07-01 DOI:10.4018/ijban.292060
Sahana Das
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引用次数: 2

摘要

心脏造影(CTG)是一种广泛使用的低成本、无创技术,用于监测胎儿心脏和母亲子宫收缩压力,以评估胎儿的健康状况。胎儿心脏最重要的参数是基线,其他参数如加速、减速和变异性依赖于基线。因此,将基线准确分类为正常、心动过缓或心动过速对评估胎儿健康非常重要。由于视觉估计有其局限性,作者使用各种机器学习算法对基线进行分类。来自CTU-UHB数据集的110个CTG痕迹,使用分层抽样将其分为三个子集,以确保样本是对总体的准确描述。采用各种统计方法对结果进行分析,并与三位产科医生的目测结果进行比较。FURIA的准确度最高,为98.11%。从Bland-Altman Plot的分析中也发现FURIA与医生的估计最一致。
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Evaluation of Diagnostic Performance of Machine Learning Algorithms to Classify the Fetal Heart Rate Baseline from Cardiotocograph
Cardiotocography (CTG) is the widely used cost-effective, non-invasive technique to monitor the fetal heart and mother’s uterine contraction pressure to assess the wellbeing of the fetus. The most important parameters of fetal heart is the baseline upon which the other parameters viz. acceleration, deceleration and variability depend. Accurate classification of the baseline into either normal, bradycardia or tachycardia is thus important to assess the fetal-health. Since visual estimation has its limitations, the authors use various Machine Learning Algorithms to classify the baseline. 110 CTG traces from CTU-UHB dataset, were divided into three subsets using stratified sampling to ensure that the sample is the accurate depiction of the population. The results were analyzed using various statistical methods and compared with the visual estimation by three obstetricians. FURIA provided greatest accuracy of 98.11%. From the analysis of Bland-Altman Plot FURIA was also found to have best agreement with physicians’ estimation.
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