Enhancing the prediction of acute kidney injury risk after percutaneous coronary intervention using machine learning techniques: A retrospective cohort study

医学 经皮冠状动脉介入治疗 传统PCI 逻辑回归 队列 回顾性队列研究 逐步回归 Lasso(编程语言) 急性肾损伤 内科学 心肌梗塞 计算机科学 万维网
作者
Chenxi Huang,Karthik Murugiah,Shiwani Mahajan,Shu-Xia Li,Sanket S. Dhruva,Julian S. Haimovich,Yongfei Wang,Wade L. Schulz,Jeffrey M. Testani,F. F. Wilson,Carlos Mena,Frederick A. Masoudi,John S. Rumsfeld,John A. Spertus,Bobak J. Mortazavi,Harlan M. Krumholz
出处
期刊:PLOS Medicine [Public Library of Science]
卷期号:15 (11): e1002703-e1002703 被引量:71
标识
DOI:10.1371/journal.pmed.1002703
摘要

Background The current acute kidney injury (AKI) risk prediction model for patients undergoing percutaneous coronary intervention (PCI) from the American College of Cardiology (ACC) National Cardiovascular Data Registry (NCDR) employed regression techniques. This study aimed to evaluate whether models using machine learning techniques could significantly improve AKI risk prediction after PCI. Methods and findings We used the same cohort and candidate variables used to develop the current NCDR CathPCI Registry AKI model, including 947,091 patients who underwent PCI procedures between June 1, 2009, and June 30, 2011. The mean age of these patients was 64.8 years, and 32.8% were women, with a total of 69,826 (7.4%) AKI events. We replicated the current AKI model as the baseline model and compared it with a series of new models. Temporal validation was performed using data from 970,869 patients undergoing PCIs between July 1, 2016, and March 31, 2017, with a mean age of 65.7 years; 31.9% were women, and 72,954 (7.5%) had AKI events. Each model was derived by implementing one of two strategies for preprocessing candidate variables (preselecting and transforming candidate variables or using all candidate variables in their original forms), one of three variable-selection methods (stepwise backward selection, lasso regularization, or permutation-based selection), and one of two methods to model the relationship between variables and outcome (logistic regression or gradient descent boosting). The cohort was divided into different training (70%) and test (30%) sets using 100 different random splits, and the performance of the models was evaluated internally in the test sets. The best model, according to the internal evaluation, was derived by using all available candidate variables in their original form, permutation-based variable selection, and gradient descent boosting. Compared with the baseline model that uses 11 variables, the best model used 13 variables and achieved a significantly better area under the receiver operating characteristic curve (AUC) of 0.752 (95% confidence interval [CI] 0.749–0.754) versus 0.711 (95% CI 0.708–0.714), a significantly better Brier score of 0.0617 (95% CI 0.0615–0.0618) versus 0.0636 (95% CI 0.0634–0.0638), and a better calibration slope of observed versus predicted rate of 1.008 (95% CI 0.988–1.028) versus 1.036 (95% CI 1.015–1.056). The best model also had a significantly wider predictive range (25.3% versus 21.6%, p < 0.001) and was more accurate in stratifying AKI risk for patients. Evaluated on a more contemporary CathPCI cohort (July 1, 2015–March 31, 2017), the best model consistently achieved significantly better performance than the baseline model in AUC (0.785 versus 0.753), Brier score (0.0610 versus 0.0627), calibration slope (1.003 versus 1.062), and predictive range (29.4% versus 26.2%). The current study does not address implementation for risk calculation at the point of care, and potential challenges include the availability and accessibility of the predictors. Conclusions Machine learning techniques and data-driven approaches resulted in improved prediction of AKI risk after PCI. The results support the potential of these techniques for improving risk prediction models and identification of patients who may benefit from risk-mitigation strategies.
最长约 10秒,即可获得该文献文件

科研通智能强力驱动
Strongly Powered by AbleSci AI
更新
大幅提高文件上传限制,最高150M (2024-4-1)

科研通是完全免费的文献互助平台,具备全网最快的应助速度,最高的求助完成率。 对每一个文献求助,科研通都将尽心尽力,给求助人一个满意的交代。
实时播报
刚刚
NexusExplorer应助陈大大采纳,获得10
刚刚
失眠迎蕾发布了新的文献求助10
1秒前
江涛应助喜汁郎采纳,获得10
1秒前
华仔应助我怕好时光采纳,获得10
1秒前
田様应助YZZ采纳,获得10
1秒前
Jacky77发布了新的文献求助20
2秒前
2秒前
领导范儿应助邓代容采纳,获得10
2秒前
2秒前
马凯来完成签到,获得积分10
3秒前
跳跃的襄发布了新的文献求助10
3秒前
zhongjiaa发布了新的文献求助10
3秒前
透明人完成签到,获得积分10
4秒前
Hello应助ydfqlzj采纳,获得30
4秒前
微微发布了新的文献求助10
5秒前
5秒前
5秒前
6秒前
敏感时光完成签到 ,获得积分10
6秒前
猪猪女孩发布了新的文献求助10
7秒前
xiaoxiao完成签到 ,获得积分10
7秒前
不安青牛应助Li采纳,获得10
8秒前
8秒前
8秒前
8秒前
9秒前
wxwang发布了新的文献求助10
9秒前
哒哒哒发布了新的文献求助10
9秒前
bxl发布了新的文献求助10
10秒前
kbc完成签到,获得积分10
10秒前
曾欢发布了新的文献求助10
10秒前
SSSSYYYY发布了新的文献求助10
10秒前
CipherSage应助曹阿四采纳,获得10
10秒前
xyzhang完成签到,获得积分10
11秒前
单薄茗发布了新的文献求助10
11秒前
11秒前
冷静剑成发布了新的文献求助10
12秒前
微不足道发布了新的文献求助10
13秒前
14秒前
高分求助中
Exploring Chemical Concepts Through Theory and computation 500
Atomic Collisions Eleciron & Photan Prejectiles 500
A labyrinthodont from the Lower Gondwana of Kashmir and a new edestid from the Permian of the Salt Range 500
The Generic Challenge: Understanding Patents, FDA and Pharmaceutical Life-Cycle Management(第4版,第5版,第6版均可) 400
Nomenclature and Criteria for Diagnosis of Diseases of the Heart and Great Vessels 9th Edition 300
Observations by transmission electron microscopy on the subsurface damage produced in aluminium oxide by mechanical polishing and grinding 300
Stance, Inter/Subjectivity and Identity in Discourse 300
热门求助领域 (近24小时)
化学 材料科学 医学 生物 有机化学 工程类 生物化学 纳米技术 物理 内科学 计算机科学 化学工程 复合材料 遗传学 基因 物理化学 催化作用 电极 光电子学 量子力学
热门帖子
关注 科研通微信公众号,转发送积分 2307395
求助须知:如何正确求助?哪些是违规求助? 1969712
关于积分的说明 4954789
捐赠科研通 1746164
什么是DOI,文献DOI怎么找? 877113
版权声明 553657
科研通“疑难数据库(出版商)”最低求助积分说明 465914