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Identifying diseases assciated with a high risk for acute kidney injury using a hospital information system database

机译:使用医院信息系统数据库识别与急性肾损伤高风险相关的疾病

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Acute kidney injury (AKI) occurs when a patient cannot maintain fluid homeostasis because of acute deterioration in renal function. Several studies have indicated that patients with AKI have higher risks for developing chronic kidney disease and mortality compared with patients without AKI. Although AKI is a serious disorder, few studies have identified the diseases that cause AKI. The purpose of this study was to identify the diseases associated with AKI. METHODS The data of 68,504 hospitalized patients at Kochi Medical School Hospital from 1981 to 2010 were analyzed. All laboratory test results were automatically processed and saved in a hospital information system database. Episodes of AKI were identified by the serum creatinine level as defined by Acute Kidney Injury Network (AKIN) criteria. All diseases that were diagnosed within 30 days prior to the development of AKI were collected from the hospital information system database. Compared with patients who were not affected with AKI, the odds ratios were calculated, and a multivariate analysis was conducted. RESULTS AND DISCUSSION The highest odds ratio was AKI (odds ratio 46.44, 95% confidence interval 36.88–58.49) This means that our method has enough usability and validity to identify the diseases associated with a high risk for AKI. In addition, cardiovascular diseases (e.g., shock syndrome), respiratory diseases (e.g., pneumonia), and infection diseases (e.g., septicemia) showed high odds ratio for AKI as expected (odds ratio 4.44, 95% confidence interval 4.07–4.84; odds ratio 2.38, 95% confidence interval 2.23–2.56; odds ratio 4.54, 95% confidence interval 4.17–4.93 respectively). Furthermore, hyperuricemia also had a significant odds ratio (odds ratio 1.79, 95% confidence interval 1.62–1.98). Few studies have shown a relationship between AKI and hyperuricemia. This study identified not only diseases expected to be risks for AKI, but also diseases that have never b- en regarded as risks for AKI.
机译:当患者由于肾功能的急性恶化而无法维持体液稳态时,就会发生急性肾损伤(AKI)。几项研究表明,与没有AKI的患者相比,患有AKI的患者发生慢性肾脏疾病和死亡的风险更高。尽管AKI是一种严重的疾病,但很少有研究确定引起AKI的疾病。这项研究的目的是确定与AKI相关的疾病。方法分析1981年至2010年高知医学院附属医院68 504例住院患者的数据。所有实验室测试结果均被自动处理并保存在医院信息系统数据库中。通过急性肾损伤网络(AKIN)标准定义的血清肌酐水平来确定AKI发作。从医院信息系统数据库收集在AKI发生前30天内诊断出的所有疾病。与未受AKI影响的患者相比,计算了优势比,并进行了多变量分析。结果与讨论最高的优势比是AKI(优势比46.44,95%置信区间36.88–58.49),这意味着我们的方法具有足够的可用性和有效性来识别与AKI高风险相关的疾病。此外,心血管疾病(例如休克综合症),呼吸系统疾病(例如肺炎)和感染性疾病(例如败血病)显示出AKI的比值比很高(比值比为4.44,95%置信区间为4.07-4.84;比值)比率2.38,95%置信区间2.23–2.56;比值比4.54,95%置信区间4.17–4.93)。此外,高尿酸血症也具有明显的优势比(优势比1.79,95%置信区间1.62-1.98)。很少有研究显示出AKI与高尿酸血症之间的关系。这项研究不仅确定了有望成为AKI风险的疾病,而且还确定了从未被视为AKI风险的疾病。

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