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Temporal Pattern Detection to Predict Adverse Events in Critical Care: Case Study With Acute Kidney Injury

机译:时间模式检测以预测批判性护理中不良事件:急性肾损伤的情况研究

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Background More than 20% of patients admitted to the intensive care unit (ICU) develop an adverse event (AE). No previous study has leveraged patients’ data to extract the temporal features using their structural temporal patterns, that is, trends. Objective This study aimed to improve AE prediction methods by using structural temporal pattern detection that captures global and local temporal trends and to demonstrate these improvements in the detection of acute kidney injury (AKI). Methods Using the Medical Information Mart for Intensive Care dataset, containing 22,542 patients, we extracted both global and local trends using structural pattern detection methods to predict AKI (ie, binary prediction). Classifiers were built on 17 input features consisting of vital signs and laboratory test results using state-of-the-art models; the optimal classifier was selected for comparisons with previous approaches. The classifier with structural pattern detection features was compared with two baseline classifiers that used different temporal feature extraction approaches commonly used in the literature: (1) symbolic temporal pattern detection, which is the most common approach for multivariate time series classification; and (2) the last recorded value before the prediction point, which is the most common approach to extract temporal data in the AKI prediction literature. Moreover, we assessed the individual contribution of global and local trends. Classifier performance was measured in terms of accuracy (primary outcome), area under the curve, and F-measure. For all experiments, we employed 20-fold cross-validation. Results Random forest was the best classifier using structural temporal pattern detection. The accuracy of the classifier with local and global trend features was significantly higher than that while using symbolic temporal pattern detection and the last recorded value (81.3% vs 70.6% vs 58.1%; P .001). Excluding local or global features reduced the accuracy to 74.4% or 78.1%, respectively ( P .001). Conclusions Classifiers using features obtained from structural temporal pattern detection significantly improved the prediction of AKI onset in ICU patients over two baselines based on common previous approaches. The proposed method is a generalizable approach to predict AEs in critical care that may be used to help clinicians intervene in a timely manner to prevent or mitigate AEs.
机译:背景,超过20%的患者录取了重症监护室(ICU)制定了不良事件(AE)。没有以前的研究利用患者的数据使用其结构时间模式提取时间特征,即趋势。目的本研究旨在通过使用结构时间模式检测来改善AE预测方法,以捕获全球和局部时间趋势,并证明在急性肾损伤(AKI)检测中的这些改进。方法采用医疗信息MART为重型护理数据集,含有22,542名患者,我们利用结构模式检测方法提取全球和本地趋势,以预测AKI(即二进制预测)。分类器建立在17个输入功能上,包括使用最先进的模型组成的重要标志和实验室测试结果;选择最佳分类器以与先前的方法进行比较。将具有结构模式检测特征的分类器与两个基线分类器进行比较,该分类器使用了文献中常用的不同时间特征提取方法:(1)符号时间模式检测,这是多变量时间序列分类的最常见方法; (2)预测点之前的最后记录值,这是提取AKI预测文献中的时间数据的最常见方法。此外,我们评估了全球和当地趋势的个人贡献。在精度(主要结果),曲线下的区域和F测量方面测量分类器性能。对于所有实验,我们使用了20倍的交叉验证。结果随机森林是使用结构时间模式检测的最佳分类器。使用本地和全局趋势特征的分类器的准确性明显高于使用符号时间模式检测的趋势特征,最后记录值(81.3%与70.6%Vs 58.1%; P <.001)。不包括本地或全球特征将准确性降低至74.4%或78.1%(P <.001)。结论基于共同的先前方法,使用结构时间图案检测中获得的特征的分类器显着改善了两种基线的ICU患者AKI发作的预测。所提出的方法是预测可用于帮助临床医生干预的关键护理中的AES的概括方法,以及时介入以防止或减轻AES。

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