挖掘胎儿心脏磁图数据的高危胎儿

D. Snider, Xiaowei Xu
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引用次数: 0

摘要

胎儿心脏磁图(fMCG)包含关于胎儿健康的丰富信息。本研究的目的是将快速消费品数据分为以下两组:高风险组和正常组。在本报告中,作者首先描述了如何从时间序列fMCG数据中构建包含时域和频域属性的特征向量。其次,描述了使用支持向量机(SVM)工具识别高危胎儿的分类过程。来自118个胎儿的272个数据集的实验结果证明了SVM分类器区分高危胎儿和正常胎儿的能力。采用人工神经网络和决策树对SVM结果进行验证,并采用接收者工作特征曲线分析和盲测试来验证模型的强度。该模型目前的灵敏度为0.67,特异性为0.65。虽然这项研究仍在进行中,但作者正在改进这一过程,以改善上述结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mining fetal magnetocardiogram data for high-risk fetuses
The fetal magnetocardiogram (fMCG) contains a wealth of information regarding the health of a fetus. The purpose of this study is to classify fMCG data into the following two groups: high-risk and normal. In this presentation the authors first describe how the feature vector containing both time and frequency domain attributes is built from the time-series fMCG data. Second, the classification process using support vector machine (SVM) tools to identify the high-risk fetuses is described. Experimental results from 272 data sets taken from 118 fetuses demonstrate the SVM classifier's ability to distinguish between the high-risk and normal fetuses. Artificial neural networks and decision trees are used to validate the SVM results and receiver operating characteristic curve analysis and blind tests are employed to show the strength of the model. The model currently attains a sensitivity of 0.67 and a specificity of 0.65. While this study remains a work in progress, the authors are refining the process to improve the aforementioned results.
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