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[重症监护医学信息集市III数据库中的疾病分布分析]

[Analysis of diseases distribution in Medical Information Mart for Intensive Care III database].

作者信息

Fan Yong, Zhao Yuzhuo, Li Peiyao, Liu Xiaoli, Jia Lijing, Li Kaiyuan, Feng Cong, Pan Fei, Li Tanshi, Zhang Zhengbo, Cao Desen

机构信息

Department of Biomedical Engineering and Maintenance Center, Chinese PLA General Hospital, Beijing 100853, China (Fan Y, Li PY, Zhang ZB, Cao DS); Department of Emergency, Chinese PLA General Hospital, Beijing 100853, China (Zhao YZ, Jia LJ, Li KY, Feng C, Pan F, Li TS); Medical Information Center, Chinese PLA General Hospital, Beijing 100853, China (Zhang ZB); School of Biological Science and Medical Engineering, Beihang University, Beijing 100191, China (Liu XL). Corresponding author: Zhang Zhengbo, Email:

出版信息

Zhonghua Wei Zhong Bing Ji Jiu Yi Xue. 2018 Jun;30(6):531-537. doi: 10.3760/cma.j.issn.2095-4352.2018.06.006.

Abstract

OBJECTIVE

To study the distribution of diseases in Medical Information Mart for Intensive Care (MIMIC-III) database in order to provide reference for clinicians and engineers who use MIMIC-III database to solve clinical research problems.

METHODS

The exploratory data analysis technologies were used to explore the distribution characteristics of diseases and emergencies of patients (excluding newborns) in MIMIC-III database were explored; then, neonatal gestational age, weight, length of hospital stay in intensive care unit (ICU) were analyzed with the same method.

RESULTS

In the MIMIC-III database, 46 428 patients were admitted for the first time, and 49 214 ICU records were recorded. There were 26 076 males and 20 352 females; the median age was 60.5 (38.6, 75.6) years, and most patients were between 60 and 80 years old. The first diagnosis in the disease spectrum analysis was firstly ranked by circulatory diseases (32%), followed by injury and poisoning (14%), digestive system disease (8%), tumor (7%), respiratory disease (6%) and so on. Patients with ischemic heart disease accounted for the largest proportion of circulatory disease (42%), the proportion of these patients gradually increased with age of 60-70 years old, then decreased. However, the proportion of patients with cerebrovascular disease declined first and then increased with age, which was the main cause of death of circulatory system disease (ICU mortality was 22.5%). Injury and poisoning patients showed a significant decrease with age. Digestive system diseases were younger than the general population (most people aged between 50 to 60 years), and non-infectious enteritis and colitis were the main causes of death (ICU mortality was 18.3%). Respiratory infections were predominant in infected patients (34%), but circulatory system infections were the main cause of death (ICU mortality was 25.6%). Secondly, in the neonatal care unit, premature infants accounted for the vast majority (82%). As the gestational age increased, the duration of ICU was decreased, and the mortality was decreased.

CONCLUSIONS

The diseases distribution of patients can be provided by MIMIC-III database, which helps to grasp the overview of the volume and age distribution of the target patients in advance, and carry out the next step of research. Meanwhile, it points out the important role of exploratory data analysis in electronic health records analysis.

摘要

目的

研究重症监护医学信息数据库(MIMIC-III)中疾病的分布情况,为使用MIMIC-III数据库解决临床研究问题的临床医生和工程师提供参考。

方法

采用探索性数据分析技术,探索MIMIC-III数据库中患者(不包括新生儿)的疾病和急症分布特征;然后,用同样的方法分析新生儿的胎龄、体重、在重症监护病房(ICU)的住院时间。

结果

在MIMIC-III数据库中,首次入院患者有46428例,记录的ICU记录有49214条。其中男性26076例,女性20352例;年龄中位数为60.5(38.6,75.6)岁,大多数患者年龄在60至80岁之间。疾病谱分析中首位诊断依次为循环系统疾病(32%),其次为损伤和中毒(14%)、消化系统疾病(8%)、肿瘤(7%)、呼吸系统疾病(6%)等。缺血性心脏病患者在循环系统疾病中占比最大(42%),这些患者的比例在60至70岁年龄段随年龄增长逐渐上升,之后下降。然而,脑血管疾病患者比例随年龄先下降后上升,是循环系统疾病的主要死亡原因(ICU死亡率为22.5%)。损伤和中毒患者随年龄显著减少。消化系统疾病患者比一般人群年轻(大多数人年龄在50至60岁之间),非感染性肠炎和结肠炎是主要死亡原因(ICU死亡率为18.3%)。感染患者中呼吸道感染占主导(34%),但循环系统感染是主要死亡原因(ICU死亡率为25.6%)。其次,在新生儿监护病房,早产儿占绝大多数(82%)。随着胎龄增加,ICU住院时长缩短,死亡率降低。

结论

MIMIC-III数据库可提供患者疾病分布情况,有助于提前掌握目标患者的数量和年龄分布概况,开展下一步研究。同时,指出了探索性数据分析在电子健康记录分析中的重要作用。

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