应用堆叠法预测诱导后低血压

Koki Iwai, Chiaki Doi, Nanaka Asai, H. Shigeno, S. Ideno, Jungo Kato, Takashige Yamada, H. Morisaki, H. Seki
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引用次数: 1

摘要

已经积累了电子麻醉记录数据,并努力利用数据分析方法和机器学习解决医疗问题。诱导后低血压常发生在麻醉诱导后。术中低血压与各种不良事件相关,如心肌梗死和脑梗死。在一项相关研究中,使用八种机器学习方法构建低血压预测模型,并使用从美国一家机构收集的数据通过曲线下面积(AUC)进行评估。然而,它并没有把重点放在提高预测能力上。本文旨在利用1626份电子麻醉记录数据对诱导后低血压进行预测。本文介绍了用叠加法建立的低血压预测模型。通过评价,采用我们的方法f测量值达到0.60。
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Prediction of Post-induction Hypotension Using Stacking Method
Electronic anesthesia record data have been accumulated, and efforts to solve medical problems using data analysis methods and machine learning have been conducted. Post-induction hypotension frequently occurred after induction of anesthesia. Intraoperative hypotension is associated with various adverse events such as myocardial infarction and cerebral infarction. In a related study, eight machine learning methods were used to construct hypotension prediction models and evaluated by area under the curve (AUC), using data collected from an institution in the United States. Nevertheless, it was not focused on improving prediction power. This paper aims to predict post-induction hypotension with high prediction power using 1,626 electronic anesthesia record data. Our hypotension prediction model using a stacking method is introduced. F-measure 0.60 was achieved by using our method through the evaluation.
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