Suppr超能文献

[机器学习方法与逻辑回归模型在预测重度烧伤患者急性肾损伤中的比较]

[Comparison of machine learning method and logistic regression model in prediction of acute kidney injury in severely burned patients].

作者信息

Tang C Q, Li J Q, Xu D Y, Liu X B, Hou W J, Lyu K Y, Xiao S C, Xia Z F

机构信息

Burn Institute of PLA, Department of Burn Surgery, the First Affiliated Hospital, Naval Military Medical University, Shanghai 200433, China.

出版信息

Zhonghua Shao Shang Za Zhi. 2018 Jun 20;34(6):343-348. doi: 10.3760/cma.j.issn.1009-2587.2018.06.006.

Abstract

To build risk prediction models for acute kidney injury (AKI) in severely burned patients, and to compare the prediction performance of machine learning method and logistic regression model. The clinical data of 157 severely burned patients in August 2nd Kunshan factory aluminum dust explosion accident conforming to the inclusion criteria were collected. Patients suffering AKI within 90 days after admission were enrolled in group AKI, while the others were enrolled in non-AKI group. Single factor analysis was used to choose independent factors associated with AKI, including sex, age, admission time, features of basic injuries, initial score on admission, treatment condition, and mortality on post injury days 30, 60, and 90. Data were processed with Mann-Whitney test, chi-square test, and Fisher's exact test. Variables with <0.1 in single factor analysis and those with possible clinical significance were brought into the establishment of prediction model. Logistic regression and XGBoost machine learning algorithm were used to build the prediction model of AKI. The area under receiver operating characteristic curve (AUC) was calculated, and the sensitivity and specificity for optimal threshold value were also calculated for each model. Nonparametric resampling test was used to compare the significance of difference of AUC of the two models. (1) Eighty-nine (56.7%) patients developed AKI within 90 days from admission. Compared with 68 patients in non-AKI group, 89 patients in group AKI were older (=-2.203, <0.05), with larger total burn area and full-thickness burn area (=-5.200, -6.297, <0.01), worse acute physical and chronic health evaluation (APACHE) Ⅱ score, abbreviated burn severity index score, and sequential organ failure assessment (SOFA) score on admission (=-7.485, -4.739, -4.590, <0.01), higher occurrence rate of sepsis ((2)=33.087, <0.01), higher rates of accepting tracheotomy, mechanical ventilation, and continuous renal replacement therapy ((2)=12.373, 17.201, 43.763, <0.01), larger first excision area (=-2.191, <0.05), and higher mortality on post injury days 30, 60, and 90 ((2)=7.483, 37.259, 45.533, <0.01). There were no statistically significant differences in sex, open decompression, admission time, 24-hour fluid volume after admission, 48-hour fluid volume after admission, the first 24-hour urine volume, the second 24 hour urine volume, the first excision time, and inhalation injury ((2)=0.529, 3.318, =-1.746, -0.016, -1.199, -1.824, -0.625, -1.747, >0.05). The rates of deep vein catheterization of patients in the two groups were both 100%. (2) There were twenty possible prediction variables for preliminary establishment of model according to the difference results of single factor analysis and clinical significance of variables. (3) The logistic regression prediction model had three variables: APACHE Ⅱ score [odds ratio (OR)=1.36, 95% confidence interval (CI)=1.20-1.53, <0.001], sepsis (OR=2.63, 95% CI=0.90-7.66, >0.05), and the first 24-hour urine volume (OR=0.71, 95% CI=0.50-1.01, >0.05). The AUC of the logistic regression prediction model was 0.875 (95% CI=0.821-0.930), with the specificity and sensitivity of optimal threshold value 84.4% and 77.7%, respectively. (4) XGBoost machine learning model had seven main predictive variables: APACHE Ⅱ score, full-thickness burn area, 24-hour fluid volume after admission, sepsis, the first 24-hour urine volume, SOFA score, and 48-hour fluid volume after admission. The AUC of machine learning model was 0.920 (95% CI=0.879-0.962), higher than that of logistic regression model (<0.001), with the specificity and sensitivity of optimal threshold value 89.7% and 82.0%, respectively. Sepsis and fluid resuscitation are two important predictive variables that can be intervened for AKI in severely burned patients. Machine learning method has a better performance and can provide more accurate prediction for individuals than logistic regression prediction model, and therefore has good clinical application prospect.

摘要

构建重度烧伤患者急性肾损伤(AKI)的风险预测模型,并比较机器学习方法和逻辑回归模型的预测性能。收集了昆山工厂铝粉尘爆炸事故中157例符合纳入标准的重度烧伤患者的临床资料。入院后90天内发生AKI的患者纳入AKI组,其余患者纳入非AKI组。采用单因素分析选择与AKI相关的独立因素,包括性别、年龄、入院时间、基本损伤特征、入院初始评分、治疗情况以及伤后30天、60天和90天的死亡率。数据采用Mann-Whitney检验、卡方检验和Fisher精确检验进行处理。单因素分析中P<0.1且具有可能临床意义的变量被纳入预测模型的构建。采用逻辑回归和XGBoost机器学习算法构建AKI的预测模型。计算受试者工作特征曲线(AUC)下面积,并计算每个模型最佳阈值的敏感性和特异性。采用非参数重采样检验比较两个模型AUC差异的显著性。(1)89例(56.7%)患者在入院后90天内发生AKI。与非AKI组的68例患者相比,AKI组的89例患者年龄更大(Z=-2.203,P<0.05),烧伤总面积和Ⅲ度烧伤面积更大(Z=-5.200,-6.297,P<0.01),入院时急性生理与慢性健康状况评估(APACHE)Ⅱ评分、简化烧伤严重程度指数评分和序贯器官衰竭评估(SOFA)评分更差(Z=-7.485,-4.739,-4.590,P<0.01),脓毒症发生率更高(χ2=33.087,P<0.01),接受气管切开、机械通气和连续性肾脏替代治疗的比例更高(χ2=12.373,17.201,43.763,P<0.01),首次切痂面积更大(Z=-2.191,P<0.05),伤后30天、60天和90天的死亡率更高(χ2=7.483,37.259,45.533,P<0.01)。性别、切开减张、入院时间、入院后24小时补液量、入院后48小时补液量、首次24小时尿量、第二次24小时尿量、首次切痂时间和吸入性损伤差异无统计学意义(χ2=0.529,3.318,Z=-1.746,-0.016,-1.199,-1.824,-0.625,-1.747,P>0.05)。两组患者深静脉置管率均为100%。(2)根据单因素分析差异结果和变量临床意义,初步建立模型时有20个可能的预测变量。(3)逻辑回归预测模型有3个变量:APACHEⅡ评分[比值比(OR)=1.36,95%置信区间(CI)=1.20-1.53,P<0.001]、脓毒症(OR=2.63,95%CI=0.90-7.66,P>0.05)和首次24小时尿量(OR=0.71,95%CI=0.50-1.01,P>0.

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验