Towards an affordable magnetomyography instrumentation and low model complexity approach for labour imminency prediction using a novel multiresolution analysis

Applied AI letters Pub Date : 2021-06-26 DOI:10.1002/ail2.34
Ejay Nsugbe, Ibrahim Sanusi
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Abstract

The ability to predict the onset of labour is seen to be an important tool in a clinical setting. Magnetomyography has shown promise in the area of labour imminency prediction, but its clinical application remains limited due to high resource consumption associated with its broad number of channels. In this study, five electrode channels, which account for 3.3% of the total, are used alongside a novel signal decomposition algorithm and low complexity classifiers (logistic regression and linear-SVM) to classify between labour imminency due within 0 to 48 hours and >48 hours. The results suggest that the parsimonious representation comprising of five electrode channels and novel signal decomposition method alongside the candidate classifiers could allow for greater affordability and hence clinical viability of the magnetomyography-based prediction model, which carries a good degree of model interpretability. The results showed around a 20% increase on average for the novel decomposition method, alongside a reduced group of features across the various classification metrics considered for both the logistic regression and support vector machine.

Abstract Image

使用新颖的多分辨率分析,实现负担得起的磁断层成像仪器和低模型复杂性的劳动迫切性预测方法
预测分娩开始的能力被认为是临床环境中的一个重要工具。磁断层成像在临产预测领域显示出前景,但其临床应用仍然有限,因为其通道数量多,资源消耗高。在这项研究中,五个电极通道(占总数的3.3%)与一种新的信号分解算法和低复杂度分类器(逻辑回归和线性支持向量机)一起使用,在0至48小时内和48小时内进行劳动迫在眉睫的分类。结果表明,由五个电极通道和新的信号分解方法组成的简约表示以及候选分类器可以允许更高的可负担性,因此基于磁层图的预测模型的临床可行性,该模型具有良好的模型可解释性。结果显示,新的分解方法平均提高了20%左右,同时逻辑回归和支持向量机考虑的各种分类指标的特征组也减少了。
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