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Early prediction of acquiring acute kidney injury for older inpatients using most effective laboratory test results

机译:利用大多数有效实验室测试结果,早期预测较旧的住院患者的急性肾损伤

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Acute Kidney Injury (AKI) is common among inpatients. Severe AKI increases all-cause mortality especially in critically ill patients. Older patients are more at risk of AKI because of the declined renal function, increased comorbidities, aggressive medical treatments, and nephrotoxic drugs. Early prediction of AKI for older inpatients is therefore crucial. We use 80 different laboratory tests from the electronic health records and two types of representations for each laboratory test, that is, we consider 160 (laboratory test, type) pairs one by one to do the prediction. By proposing new similarity measures and employing the classification technique of the K nearest neighbors, we are able to identify the most effective (laboratory test, type) pairs for the prediction. Furthermore, in order to know how early and accurately can AKI be predicted to make our method clinically useful, we evaluate the prediction performance of up to 5?days prior to the AKI event. We compare our method with two existing works and it shows our method outperforms the others. In addition, we implemented an existing method using our dataset, which also shows our method has a better performance. The most effective (laboratory test, type) pairs found for different prediction times are slightly different. However, Blood Urea Nitrogen (BUN) is found the most effective (laboratory test, type) pair for most prediction times. Our study is first to consider the last value and the trend of the sequence for each laboratory test. In addition, we define the exclusion criteria to identify the inpatients who develop AKI during hospitalization and we set the length of the data collection window to ensure the laboratory data we collect is close to the AKI time. Furthermore, we individually select the most effective (laboratory test, type) pairs to do the prediction for different days of early prediction. In the future, we will extend this approach and develop a system for early prediction of major diseases to help better disease management for inpatients.
机译:急性肾损伤(AKI)在住院患者中是常见的。严重的aki增加了所有原因的死亡,尤其是在危重病人身上。由于肾功能下降,伴随的合并症,侵略性的医疗药物和肾毒性药物,老年患者更具患者的风险。因此,旧的住院患者的早期预测是至关重要的。我们使用80种不同的实验室测试从电子健康记录和每个实验室测试的两种类型的表现,即我们考虑160(实验室测试,类型)对进行一次,以进行预测。通过提出新的相似措施并采用K最近邻居的分类技术,我们能够识别预测的最有效(实验室测试,类型)对。此外,为了知道如何提前和准确地预测临床上的方法,我们评估了AKI事件前最多5天的预测性能。我们将我们的方法与两个现有的作品进行比较,并显示我们的方法优于其他方法。此外,我们使用我们的数据集实现了现有方法,该方法还显示了我们的方法具有更好的性能。为不同预测时间发现的最有效(实验室测试,类型)对略有不同。然而,血尿素氮(BUN)被发现最有效(实验室测试,型)对进行最多的预测时间。我们的研究首先要考虑每个实验室测试的最后一个值和序列的趋势。此外,我们还定义了排除标准,以确定在住院期间开发AKI的住院患者,并设置数据收集窗口的长度,以确保我们收集的实验室数据接近AKI时间。此外,我们单独选择最有效的(实验室测试,类型)对,以对早期预测的不同天进行预测。在未来,我们将扩展这种方法,并开发一种用于早期预测主要疾病的系统,以帮助更好的住院患者疾病管理。

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