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A Clinical Decision Support System (CDSS) for Unbiased Prediction of Caesarean Section Based on Features Extraction and Optimized Classification

机译:基于特征提取和优化分类的剖宫产无偏预测临床决策支持系统(CDSS)

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摘要

Nowadays, caesarean section (CS) is given preference over vaginal birth and this trend is rapidly rising around the globe, although CS has serious complications such as pregnancy scar, scar dehiscence, and morbidly adherent placenta. Thus, CS should only be performed when it is absolutely necessary for mother and fetus. To avoid unnecessary CS, researchers have developed different machine-learning- (ML-) based clinical decision support systems (CDSS) for CS prediction using electronic health record of the pregnant women. However, previously proposed methods suffer from the problems of poor accuracy and biasedness in ML. To overcome these problems, we have designed a novel CDSS where random oversampling example (ROSE) technique has been used to eliminate the problem of minority classes in the dataset. Furthermore, principal component analysis has been employed for feature extraction from the dataset while, for classification purpose, random forest (RF) model is deployed. We have fine-tuned the hyperparameter of RF using a grid search algorithm for optimal classification performance. Thus, the newly proposed system is named ROSE-PCA-RF and it is trained and tested using an online CS dataset available on the UCI repository. In the first experiment, conventional RF model is trained and tested on the dataset while in the second experiment, the proposed model is tested. The proposed ROSE-PCA-RF model improved the performance of traditional RF by 4.5 with reduced time complexity, while only usingtwo extracted features through the PCA. Moreover, the proposed model has obtained 96.29 accuracy on training data while improving the accuracy of 97.12 on testing data.
机译:如今,剖腹产 (CS) 优先于阴道分娩,尽管 CS 有严重的并发症,例如妊娠疤痕、疤痕裂开和病态粘连胎盘,但这种趋势在全球范围内正在迅速上升。因此,只有在母亲和胎儿绝对必要时才应进行 CS。为了避免不必要的 CS,研究人员开发了不同的基于机器学习 (ML) 的临床决策支持系统 (CDSS),用于使用孕妇的电子健康记录进行 CS 预测。然而,以前提出的方法在ML中存在准确性差和偏倚性差的问题。为了克服这些问题,我们设计了一种新颖的CDSS,其中使用随机过采样示例(ROSE)技术来消除数据集中少数类的问题。此外,还采用主成分分析从数据集中提取特征,同时部署随机森林(RF)模型进行分类。我们使用网格搜索算法对射频的超参数进行了微调,以获得最佳的分类性能。因此,新提出的系统被命名为 ROSE-PCA-RF,并使用 UCI 存储库上提供的在线 CS 数据集进行训练和测试。在第一个实验中,在数据集上训练和测试了传统的射频模型,而在第二个实验中,对所提出的模型进行了测试。所提出的ROSE-PCA-RF模型将传统射频的性能提高了4。5%,降低了时间复杂度,同时仅通过 PCA 使用两个提取的特征。此外,所提模型在训练数据上获得了96.29%的准确率,同时在测试数据上提高了97.12%的准确率。

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