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Incorporating association rule networks in feature category-weighted naive Bayes model to support weaning decision making

机译:将关联规则网络合并到特征类别加权的朴素贝叶斯模型中以支持断奶决策

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Mechanical ventilation is an invasive intervention commonly used in the intensive care unit to assist patients' respirations. Physicians' decisions to wean patients from ventilation are critical: Effective weaning decisions improve patient care and well-being, but ineffective decisions can create serious severe consequences and complications. Data-driven approaches, enabled by appropriate data mining techniques, can support physicians' weaning decisions. A review of the existing techniques reveals several gaps. Specifically, most techniques assume that a feature can contribute equally to different outcome classes, overlook the "fuzzy region" issue, and assess the importance of individual features holistically rather than scrutinize the discriminant power of distinctive categories of a feature toward each decision outcome class. To address these backdrops, we propose an association rule network-based feature category-weighted naive Bayes method capable of dealing with the inherent challenges in weaning decision making. Our method analyzes feature category weights for each decision outcome by incorporating association rule learning with weighted network analysis, then applies a category-weighted naive Bayes model that can assign differential weights to various feature categories. The results of our empirical evaluation, including several prevalent techniques-artificial neural network (ANN), ANN with backward feature selection, support vector machine (SVM), and SVM with logistical regression based feature selection-indicate that the proposed method consistently outperforms all the benchmark techniques in terms of accuracy, precision, recall and F measure. Published by Elsevier B.V.
机译:机械通气是重症监护病房常用的有创干预手段,可帮助患者呼吸。医师决定让患者断气的决定至关重要:有效的断奶决定可以改善患者的护理和福祉,但是无效的决定可能会导致严重的严重后果和并发症。由适当的数据挖掘技术支持的数据驱动方法可以支持医师的断奶决策。对现有技术的回顾揭示了几个差距。具体而言,大多数技术都假定要素可以对不同的结果类别做出同等的贡献,忽略“模糊区域”问题,并从整体上评估各个要素的重要性,而不是仔细研究要素的不同类别对每个决策结果类别的判别力。为了解决这些背景,我们提出了一种基于关联规则网络的特征类别加权朴素贝叶斯方法,该方法能够应对断奶决策中的固有挑战。我们的方法通过将关联规则学习与加权网络分析相结合来分析每个决策结果的特征类别权重,然后应用类别加权的朴素贝叶斯模型,该模型可以为各种特征类别分配差异权重。我们的经验评估结果包括几种流行的技术-人工神经网络(ANN),具有向后特征选择的ANN,支持向量机(SVM)和具有基于逻辑回归的特征选择的SVM-表明该方法始终优于所有方法基准技术的准确性,精确度,召回率和F量度。由Elsevier B.V.发布

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