基于患者斑块和临床特征的机器学习用于预测支架错位:回顾性研究

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-08-09 DOI:10.1002/clc.24332
Qianhang Xia, Chancui Deng, Shuangya Yang, Ning Gu, Youcheng Shen, Bei Shi, Ranzun Zhao
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引用次数: 0

摘要

背景:经皮冠状动脉介入治疗(PCI)治疗心肌梗死后支架错位(SM)仍是一项重大的临床挑战。近年来,机器学习(ML)模型在疾病风险分层和预测建模方面已显示出潜力:假设:基于光学相干断层扫描(OCT)成像、实验室检查和临床特征的 ML 模型可以预测 SM 的发生:我们研究了中国遵义医学院附属医院的337名患者,他们在2023年5月至10月期间接受了PCI和冠状动脉OCT检查。我们采用嵌套交叉验证将患者分为训练集和测试集。我们开发了五个 ML 模型:XGBoost、LR、RF、SVM 和基于钙化特征的 NB。使用 ROC 曲线对性能进行评估。Lasso 回归从 46 个临床特征和 21 个 OCT 成像特征中选择特征,并用五种 ML 算法对其进行优化:结果:在基于钙化特征的预测模型中,XGBoost 模型和 SVM 模型的 AUC 值较高。Lasso 回归从临床和成像数据中识别出五个关键特征。将选定的特征纳入模型进行优化后,所有算法模型的 AUC 值都有显著提高。XGBoost 模型的校准精度最高。SHAP值显示,影响XGBoost模型的前五名特征是钙化长度、年龄、冠状动脉夹层、脂质角和肌钙蛋白:结论:利用斑块成像特征和临床特征开发的 ML 模型可以预测 SM 的发生。基于临床和成像特征的 ML 模型表现出更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Machine Learning Constructed Based on Patient Plaque and Clinical Features for Predicting Stent Malapposition: A Retrospective Study

Background

Stent malapposition (SM) following percutaneous coronary intervention (PCI) for myocardial infarction continues to present significant clinical challenges. In recent years, machine learning (ML) models have demonstrated potential in disease risk stratification and predictive modeling.

Hypothesis

ML models based on optical coherence tomography (OCT) imaging, laboratory tests, and clinical characteristics can predict the occurrence of SM.

Methods

We studied 337 patients from the Affiliated Hospital of Zunyi Medical University, China, who had PCI and coronary OCT from May to October 2023. We employed nested cross-validation to partition patients into training and test sets. We developed five ML models: XGBoost, LR, RF, SVM, and NB based on calcification features. Performance was assessed using ROC curves. Lasso regression selected features from 46 clinical and 21 OCT imaging features, which were optimized with the five ML algorithms.

Results

In the prediction model based on calcification features, the XGBoost model and SVM model exhibited higher AUC values. Lasso regression identified five key features from clinical and imaging data. After incorporating selected features into the model for optimization, the AUC values of all algorithmic models showed significant improvements. The XGBoost model demonstrated the highest calibration accuracy. SHAP values revealed that the top five ranked features influencing the XGBoost model were calcification length, age, coronary dissection, lipid angle, and troponin.

Conclusion

ML models developed using plaque imaging features and clinical characteristics can predict the occurrence of SM. ML models based on clinical and imaging features exhibited better performance.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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