医学
接收机工作特性
再狭窄
列线图
急性冠脉综合征
传统PCI
经皮冠状动脉介入治疗
逻辑回归
支架
内科学
心脏病学
机器学习
人工智能
计算机科学
心肌梗塞
作者
Alexandru Scafa‐Udriște,Lucian Itu,Andrei Puiu,Andreea Cristina Stoian,Horațiu Moldovan,Nicoleta‐Monica Popa‐Fotea
标识
DOI:10.3389/fcvm.2023.1270986
摘要
Background In acute coronary syndrome (ACS), a number of previous studies tried to identify the risk factors that are most likely to influence the rate of in-stent restenosis (ISR), but the contribution of these factors to ISR is not clearly defined. Thus, the need for a better way of identifying the independent predictors of ISR, which comes in the form of Machine Learning (ML). Objectives The aim of this study is to evaluate the relationship between ISR and risk factors associated with ACS and to develop and validate a nomogram to predict the probability of ISR through the use of ML in patients undergoing percutaneous coronary intervention (PCI). Methods Consecutive patients presenting with ACS who were successfully treated with PCI and who had an angiographic follow-up after at least 3 months were included in the study. ISR risk factors considered into the study were demographic, clinical and peri-procedural angiographic lesion risk factors. We explored four ML techniques (Random Forest (RF), support vector machines (SVM), simple linear logistic regression (LLR) and deep neural network (DNN)) to predict the risk of ISR. Overall, 21 features were selected as input variables for the ML algorithms, including continuous, categorical and binary variables. Results The total cohort of subjects included 340 subjects, in which the incidence of ISR observed was 17.68% ( n = 87). The most performant model in terms of ISR prediction out of the four explored was RF, with an area under the receiver operating characteristic (ROC) curve of 0.726. Across the predictors herein considered, only three predictors were statistically significant, precisely, the number of affected arteries (≥2), stent generation and diameter. Conclusion ML models applied in patients after PCI can contribute to a better differentiation of the future risk of ISR.
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