Abstract

Introduction. Postoperative atrial fibrillation (POAF) is one of the most common complications of coronary artery bypass grafting (CABG) and occurs in 25–65% of patients.Aim. The study aimed to assess the predictive potential of preoperative risk factors for POAF in patients with coronary artery disease (CAD) after CABG based on machine learning (ML) methods.Material and Methods. An observational retrospective study was carried out based on data from 866 electronic case histories of CAD patients with a median age of 63 years and a 95% confidence interval [63; 64], who underwent isolated CABG on cardiopulmonary bypass. Patients were assigned to two groups: group 1 comprised 147 (18%) patients with newly registered atrial fibrillation (AF) paroxysms; group 2 included 648 (81.3%) patients without cardiac arrhythmia. The preoperative clinical and functional status was assessed using 100 factors. We used statistical analysis methods (Chi-square, Fisher, Mann – Whitney, and univariate logistic regression (LR) tests) and ML tests (multivariate LR and stochastic gradient boosting (SGB)) for data processing and analysis. The models’ accuracy was assessed by three quality metrics: area under the ROC-curve (AUC), sensitivity, and specificity. The cross-validation procedure was performed at least 1000 times on randomly selected data.Results. The processing and analysis of preoperative patient status indicators using ML methods allowed to identify 10 predictors that were linearly and nonlinearly related to the development of POAF. The most significant predictors were the anteroposterior dimension of the left atrium, tricuspid valve insufficiency, ejection fraction <40%, duration of the P–R interval, and chronic heart failure of functional class III–IV. The accuracy of the best predictive multifactorial model of LR was 0.61 in AUC, 0.49 in specificity, and 0.72 in sensitivity. The values of similar quality metrics for the best model based on SGB were 0.64, 0.6, and 0.68, respectively.Conclusion. The use of SGB made it possible to verify the nonlinearly related predictors of POAF. The prospects for further research on this problem require the use of modern medical care methods that allow taking into account the individual characteristics of patients when developing predictive models.

Highlights

  • Postoperative atrial fibrillation (POAF) is one of the most common complications of coronary artery bypass grafting (CABG) and occurs in 25–65% of patients

  • The study aimed to assess the predictive potential of preoperative risk factors for POAF

  • after CABG based on machine learning

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Summary

Материал и методы

Для реализации которого были получены данные из 866 электронных историй болезни (ЭИБ) больных ИБС (181 женщина и 685 мужчин) в возрасте от 35 до 81 года с медианой (Мe) 63 года и 95% доверительным интервалом (ДИ) [63; 64], которым выполнялось изолированное КШ в условиях искусственного кровообращения (ИК) в период с 2008 по 2019 г. на базе кардиохирургического отделения ГБУЗ «Приморская краевая клиническая больница No 1» (Владивосток). Для реализации которого были получены данные из 866 электронных историй болезни (ЭИБ) больных ИБС (181 женщина и 685 мужчин) в возрасте от 35 до 81 года с медианой (Мe) 63 года и 95% доверительным интервалом (ДИ) [63; 64], которым выполнялось изолированное КШ в условиях искусственного кровообращения (ИК) в период с 2008 по 2019 г. В первую из них вошли 147 (18,7%) больных, у которых в послеоперационном периоде были зарегистрированы пароксизмы ФП, во вторую – 638 (81,3%) пациентов без нарушений сердечного ритма. Для обработки и анализа данных ЭИБ были преобразованы в датасет. В процессе статистической обработки данных у всех больных рассчитывали индекс массы тела (ИМТ), индекс коморбидности по шкале Чарлсона [18], а также эхокардиографические индикаторы гипертрофии ЛЖ: индекс относительной толщины (ИОТ) задней стенки ЛЖ и индекс массы миокарда ЛЖ (ИММЛЖ).

Индекс коморбидности Comorbidity index
Показатели Parameters
ИОТ RTI
Sensitivity Specificity
Информация о вкладе авторов
Information on author contributions
Findings
Information about the authors
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