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Comparison of data mining techniques applied to fetal heart rate parameters for the early identification of IUGR fetuses

机译:数据挖掘技术对胎儿心率参数的比较,用于早期鉴定IUGR胎儿

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The onset of fetal pathologies can be screened during pregnancy by means of Fetal Heart Rate (FHR) monitoring and analysis. Noticeable advances in understanding FHR variations were obtained in the last twenty years, thanks to the introduction of quantitative indices extracted from the FHR signal. This study searches for discriminating Normal and Intra Uterine Growth Restricted (IUGR) fetuses by applying data mining techniques to FHR parameters, obtained from recordings in a population of 122 fetuses (61 healthy and 61 IUGRs), through standard CTG non-stress test. We computed N=12 indices (N=4 related to time domain FHR analysis, N=4 to frequency domain and N=4 to non-linear analysis) and normalized them with respect to the gestational week. We compared, through a 10-fold crossvalidation procedure, 15 data mining techniques in order to select the more reliable approach for identifying IUGR fetuses. The results of this comparison highlight that two techniques (Random Forest and Logistic Regression) show the best classification accuracy and that both outperform the best single parameter in terms of mean AUROC on the test sets.
机译:通过胎儿心率(FHR)监测和分析,可以在妊娠期间筛选胎儿病理发生。在过去的二十年里,在过去的二十年里获得了明显的进展,因此由于引入了从FHR信号中提取的定量指标而获得了FHR变化。该研究通过将数据挖掘技术应用于FHR参数,从122胎的群体(61 Healthy和61 IGRS)中的录像,通过标准CTG非应力测试来鉴别正常和子宫内生长受限制(IUGR)胎儿的鉴定(IUGR)胎儿。我们计算了n = 12索引(n = 4与时域fhr分析相关,n = 4到频域,n = 4到非线性分析)并相对于妊娠周归一成。我们通过10倍的交叉验证程序进行比较,15个数据挖掘技术,以选择更可靠的方法来识别IUGR胎儿。这种比较的结果突出显示两种技术(随机林和逻辑回归)显示了最佳的分类准确性,并且在测试集上的平均菌膜方面均优于最佳单个参数。

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