Lehtonen Eero, Teuho Jarmo, Vatandoust Monire, Knuuti Juhani, Knol Remco J J, van der Zant Friso M, Juárez-Orozco Luis Eduardo, Klén Riku
Turku PET Centre, Turku University Hospital and University of Turku, Turku, Finland.
Cardiac Imaging Division Alkmaar, Department of Nuclear Medicine, Northwest Clinics, Alkmaar, The Netherlands.
Eur J Clin Invest. 2025 Apr;55 Suppl 1(Suppl 1):e14391. doi: 10.1111/eci.14391.
Machine learning-based analysis can be used in myocardial perfusion imaging data to improve risk stratification and the prediction of major adverse cardiovascular events for patients with suspected or established coronary artery disease. We present a new machine learning approach for the identification of patients who develop major adverse cardiovascular events. The new method is robust against the deleterious effect of outliers in the training set stratification and training process.
The proposed sum-of-sigmoids model is obtained by averaging the contributions of various input variables in an ensemble of XGBoost models. To illustrate its performance, we have applied it to predict major adverse cardiovascular events from advanced imaging data extracted from rest and adenosine stress N-ammonia positron emission tomography myocardial perfusion imaging polar maps. There were 1185 individual studies performed, and the event occurrence was tracked over a follow-up period of 2 years.
The sum-of-sigmoids model achieved a prediction accuracy of .83 on the test set, matching the performance of significantly more complex and less interpretable models (whose accuracies were .83-.84).
The sum-of-sigmoids model is interpretable and simple, while achieving similar prediction accuracy to significantly more complex machine learning models in the considered prediction task. It should be suitable for applications such as automated clinical risk stratification, where clear and explicit justification of the classification procedure is highly pertinent.
基于机器学习的分析可用于心肌灌注成像数据,以改善疑似或确诊冠心病患者的风险分层和主要不良心血管事件的预测。我们提出了一种用于识别发生主要不良心血管事件患者的新机器学习方法。该新方法对训练集分层和训练过程中异常值的有害影响具有鲁棒性。
所提出的Sigmoid函数之和模型是通过对XGBoost模型集成中各种输入变量的贡献进行平均而获得的。为了说明其性能,我们将其应用于从静息和腺苷负荷N-氨正电子发射断层扫描心肌灌注成像极坐标图中提取的高级成像数据来预测主要不良心血管事件。共进行了1185项个体研究,并在2年的随访期内跟踪事件发生情况。
Sigmoid函数之和模型在测试集上的预测准确率达到0.83,与明显更复杂且难以解释的模型(其准确率为0.83 - 0.84)性能相当。
Sigmoid函数之和模型具有可解释性且简单,同时在考虑的预测任务中实现了与明显更复杂的机器学习模型相似的预测准确率。它应适用于诸如自动临床风险分层等应用,在这些应用中,分类程序的清晰明确的理由非常重要。