A predictive nomogram of bleeding risk in patients with atrial fibrillation after drug-eluting stent implantation
Original Article

A predictive nomogram of bleeding risk in patients with atrial fibrillation after drug-eluting stent implantation

Jun Qian1, Jiyong Zan2, Lijun Kuang3, Lin Che1, Yunan Yu1, Ting Shen1, Jiani Tang1, Fei Chen1, Xuebo Liu1

1Department of Cardiology, Tongji Hospital, Tongji University School of Medicine, Shanghai, China;2Department of Gastroenterology, Huazhong University of Science and Technology Union Shenzhen Hospital (Nanshan Hospital), Shenzhen, China;3Department of Ultrasound, Luwan Branch, Ruijin Hospital, Shanghai Jiao Tong University School of Medicine, Shanghai, China

Contributions: (I) Conception and design: J Qian, F Chen, J Zan; (II) Administrative support: F Chen, X Liu, L Che; (III) Provision of study materials or patients: J Qian, F Chen; (IV) Collection and assembly of data: J Qian, L Kuang, Y Yu, T Shen, J Tang; (V) Data analysis and interpretation: J Qian, L Kuang, J Zan, L Che, Y Yu, T Shen, J Tang; (VI) Manuscript writing: All authors; (VII) Final approval of manuscript: All authors.

Correspondence to: Xuebo Liu, MD; Fei Chen, MD. Department of Cardiology, Tongji Hospital, Tongji University School of Medicine, No. 389, Xincun Rd, Putuo District, Shanghai 200065, China. Email: liuxb70@hotmail.com; riverapt@126.com.

Background: The use of anticoagulants and antiplatelet therapies is associated with a higher risk of bleeding in atrial fibrillation (AF) patients after percutaneous coronary intervention, especially after stent implantation. However, no accurate bleeding risk prediction tool has been developed for these patients. The aim of this study was thus to establish a bleeding risk prediction model (predictive nomogram) for patients with AF after stent implantation.

Methods: Construction of the predictive nomogram was based on a retrospective study, which enrolled 943 AF patients who underwent drug-eluting stent implantation between May 2012 and September 2016. A range of factors, including demographics, comorbidities, medication strategies, arterial access, and laboratory tests, were collected as baseline data. The least absolute shrinkage and selection operator (LASSO) and multivariate logistic regression analysis were used to identify the key clinical features for construction of the predictive nomogram. The concordance index (C-index) and internal validation were used to evaluate the efficacy of the nomogram.

Results: Of the 943 AF patients that underwent stent implantation, the occurrence of bleeding events was 8.2% (77 out of 943). Key predictors included the number of antiplatelet drugs, peptic ulcer, cerebral infarction, type 2 diabetes, thrombocytopenia, anemia, prior myocardial infarction, sex (male), use of anticoagulant drugs, liver dysfunction, hypertension, and acute myocardial infarction. These predictors were used to construct the nomogram. The C-index for the prediction of bleeding risk by the nomogram was 0.841 (95% CI: 0.79–0.89), which indicated good discrimination and calibration. The C-index of internal validation was 0.795, which demonstrated good efficacy of the model.

Conclusions: This study suggests that our novel nomogram can accurately predict bleeding risk in AF patients after stent implantation during hospitalization, thereby helping to avoid complications. The nomogram may also be helpful for the creation of individualized post-discharge medication strategies.

Keywords: Atrial fibrillation (AF); stent implantation; bleeding risk; nomogram


Submitted May 15, 2020. Accepted for publication Nov 02, 2020.

doi: 10.21037/atm-20-3971


Introduction

Atrial fibrillation (AF) is the most common clinical arrhythmia, and the likelihood of its incidence increases gradually with age. According to the latest management guidelines, AF treatment should be based on an assessment of bleeding and stroke risk (1). Oral anticoagulants are used to prevent thrombosis in AF patients (2), whereas dual antiplatelet therapy (DAPT) is usually recommended for patients undergoing percutaneous coronary intervention (PCI) (3,4). However, an unavoidable practical problem is that approximately one-third of patients with AF also have concomitant coronary heart disease, which requires stent implantation. For AF patients with a high risk of thrombosis after stent implantation, a triple antithrombotic strategy combining oral anticoagulation and DAPT is recommended, although this strategy can result in a higher risk of bleeding compared to dual therapy or DAPT alone (5-7). This combined treatment strategy is still controversial for these patients. Therefore, it is necessary to find novel assessment methods for the early identification of patients at high risk of bleeding.

AF risk factors include electrolyte disturbances, fluid imbalances, neurohormonal disturbances, arrhythmic drugs, and inflammatory reactions (8). Chronic heart failure, hypertension, valvular disease, and myocardial infarction can trigger various common inflammatory pathways, activation of the renin-angiotensin system, and the production of reactive oxygen species, which lead to atrial fibrosis and further promote the occurrence of AF (9). Hypertension, abnormal renal/liver function, stroke, bleeding history or predisposition, labile international normalized ratio (INR), age over 65 years old, drug or alcohol use (HAS-BLED) (10), Anticoagulation and Risk Factors in AF (ATRIA) (11), the modified Outpatient Bleeding Risk Index (mOBRI) (12), and the Reduction of Atherothrombosis for Continued Health (REACH) (13) are factors that have been validated for predicting bleeding risk in AF patients. Nevertheless, none of these factors can accurately predict bleeding risk in AF patients with stent implantation (14,15).

Nomograms are accurate tools for predicting disease or complication risk (16-18). In a recent clinical study on AF, the authors constructed a nomogram model to predict the event-free survival of AF patients before cardiac resynchronization therapy (19). In this study, our predictive nomogram was based on readily available clinical data, and we carried out least absolute shrinkage and selection operator (LASSO) regression analysis to aid in the selection of the best variables. Our aim was to provide a tool for determining personalized post-discharge treatment strategies for patients.

We present the following article in accordance with the STROBE reporting checklist (available at http://dx.doi.org/10.21037/atm-20-3971).


Methods

Patients

This retrospective study included AF patients from Shanghai Tongji Hospital between May 2012 and September 2016. The patient inclusion criteria were as follows: aged greater than 18 years old, diagnosis of non-valvular AF before hospitalization, and drug-eluting stent implantation during hospitalization. The exclusion criteria were as follows: aged less than 18 years old, bioprosthetic or mechanical heart valves, and incomplete clinical information. AF was diagnosed if the standard 12-lead electrocardiogram (ECG) recording or single-lead ECG tracing ≥30 seconds had unrecognized P-wave and irregular R-R interval (indicating atrioventricular conduction was not impaired). Non-valvular AF could be paroxysmal, persistent, or permanent, except for AF which was secondary to a reversible disease. Coronary angiography and stent implantation were performed via the radial or femoral arteries, and all stents were drug-eluting stents. The choice to use combined antithrombotic therapy after stent implantation was at the discretion of the treating physician. This study was performed in accordance with the Declaration of Helsinki (as revised in 2013). The Shanghai Tongji Hospital Institutional Review Board (IRB) approved the study (approval ID: 2018YYS093), and all patients signed written informed consent before enrollment.

Data collection

The dataset included demographics, comorbidities, medication strategies, arterial access, and laboratory examinations. Baseline variables were collected from the medical database before stent implantation. Data on anticoagulant drugs, including warfarin and low-molecular-weight heparin, were calculated based on whether they were used. Data on antiplatelet drugs, including aspirin and clopidogrel, were calculated by the numbers used by patients. Liver dysfunction was defined as alanine aminotransferase exceeding 3 times the normal limit value. Renal dysfunction was defined as an estimated glomerular filtration rate (eGFR) <30 mL/min/1.73 m2 or dialysis treatment. Anemia was defined as hemoglobin below 10 g/dL, and thrombocytopenia was defined as a platelet count below 100,000/µL. Bleeding events were defined as any fatal bleeding, including intracranial hemorrhage, intrapericardial hemorrhage, hypovolemic shock/severe hypotension caused by surgical bleeding, a drop in hemoglobin ≥3 g/dL, or an infusion of at least 2 units of red blood cells.

Bleeding events that occurred before discharge were analyzed. Indications for stent implantation included acute coronary syndrome and stable coronary heart disease. Enrolled patients had at least 1 coronary artery lesion in need of a stent. Antiplatelet drugs included aspirin and clopidogrel, and anticoagulant drugs included warfarin and low-molecular-weight heparin.

Statistical analysis

Statistical analyses were carried out using R software (version 3.6.1; http://www.R-project.org, R Foundation for Statistical Computing, Vienna, Austria) and the Statistical Package for the Social Sciences (SPSS) 22.0 (SPSS Inc., Armonk, NY, USA). Categorical data are presented as frequencies. Dichotomous variables were compared using the chi-square test or Fisher’s exact test. Continuous variables are reported as mean ± standard deviation. Differences in continuous variables were compared by the Mann-Whitney U test. The optimal variables for predicting bleeding risk in patients with AF after stent implantation were selected by the LASSO method (20). Non-zero coefficient variables were chosen in the LASSO regression model (21). A prediction model was established using multivariable logistic regression analysis and the combination of the chosen variables. The rms package was used to construct a nomogram based on the logistic regression analysis results. All key predictors were used to construct the predictive nomogram (22), and its efficiency was evaluated using the concordance index (C-index) and a calibration chart. The C-index was used to measure the goodness-of-fit of the model, and a C-index >0.7 indicated that the predictive model was a good fit. Internal validation was performed via a calibration chart with 1,000 bootstrapped resamples. The clinical efficacy of the nomogram for predicting bleeding risk was determined by identifying the net benefit under different threshold probabilities and performing decision-curve analysis (23). Net benefit was calculated by subtracting the proportion of false positives from the proportions of true positives and equilibrating the relative risk of giving up interference against the adverse effects of needless interference (24). The bootstrap method (1,000 resampling) was used for internal verification to avoid potential overfitting, and then a corrected C-index was calculated, which showed that our nomogram model would be useful for predicting bleeding risk. A risk-scoring system was constructed based on the nomogram, and the total scores of all patients were calculated. The bleeding risks of the patients were evaluated according to their different scores.


Results

Baseline characteristics

Among 943 patients in the study, bleeding was observed in 77 (8.2%) cases (bleeding group), while the remaining 866 (91.8%) were included in the non-bleeding group. Baseline characteristics, including demographics, comorbidities, medication strategies, arterial access, and laboratory examinations, are listed in Table 1. The average length of hospital stay was 9 days. There were more female and elderly patients in the non-bleeding group than in the bleeding group (P<0.001 and P=0.026, respectively). Moreover, the bleeding group had more complications, including type 2 diabetes, prior cerebral infarction, prior myocardial infarction, liver dysfunction, peptic ulcer, thrombocytopenia, and anemia, compared with the non-bleeding group (all P<0.05). In addition, more antiplatelet and anticoagulant drugs were used by the bleeding group compared with the non-bleeding group (P=0.004 and P=0.032, respectively). There was no difference in radial and femoral artery access between the two groups (P=0.122).

Table 1
Table 1 Difference between demographic and clinical characteristics of bleeding and non-bleeding groups
Full table

Nomogram development and performance

Among the demographic characteristics, comorbidities, medication strategies, arterial access, and laboratory examinations, 12 key predictors were selected from 16 clinical features with non-zero coefficients in the LASSO regression analysis (Figure 1). These predictors included sex, hypertension, type 2 diabetes, cerebral infarction, acute myocardial infarction, prior myocardial infarction, number of antiplatelet drugs, use of anticoagulants, liver dysfunction, peptic ulcer, thrombocytopenia, and anemia (Table 2). Multivariate logistic regression analysis revealed that male sex [odds ratio (OR) 2.4341, 95% confidence interval (CI): 1.2891–4.1990, P=0.008], type 2 diabetes (OR 3.6463, 95% CI: 2.0888–6.5702, P<0.001), cerebral infarction (OR 4.2944, 95% CI: 2.4394–7.5794, P<0.001), prior myocardial infarction (OR 2.9385, 95% CI: 1.6129–5.3156, P<0.001), number of antiplatelet drugs (OR 3.0221, 95% CI: 0.8909–14.1893, P=0.002), use of anticoagulant drugs (OR 2.2181, 95% CI: 1.0729–4.5039, P=0.029), peptic ulcer (OR 4.5447, 95% CI: 2.3192–8.7596, P<0.001), thrombocytopenia (OR 3.2397, 95% CI: 1.6708–6.1665, P<0.001), and anemia (OR 3.1375, 95% CI: 1.3650–6.8569, P=0.005) were key predictors of bleeding risk in AF patients after stent implantation. The nomogram was constructed based on the above 12 predictors (Figure 2). Bleeding risk was calculated using the followings steps: First, each variable (2nd to the 13th lines) corresponded to the bleeding score. The bleeding scores of all variables were then summed on the total score axis, and the last line was used to determine bleeding risk (e.g., Total points = ‘Sex’ score + ‘Hypertension’ + ‘Type 2 diabetes’ + ‘Cerebral infarction’ + ‘Acute myocardial infarction’ + ‘Prior myocardial infarction’ + ‘Number of antiplatelet drugs’ + ‘Use of anticoagulant drugs’ +‘ Liver dysfunction’ + ‘Peptic ulcer’ + ‘Thrombocytopenia’ + ‘Anemia’). In Figure 3, the solid line of the nomogram is close to the dotted line on the diagonal, suggesting that the calibration curve has good consistency. The C-index, which is similar to the area under the receiver operating characteristic curve, was used to evaluate the goodness-of-fit of this model. The C-index of this nomogram was 0.841 (95% CI: 0.791–0.891), which suggested good discrimination, and the C-index of internal validation was 0.795, which further demonstrated good efficacy of the model. We also constructed a decision curve to guide clinical application of the nomogram (Figure 4). The decision curve indicated that if the threshold probabilities were >1% and <89%, the nomogram could be used to predict bleeding risk. These results verified the high predictive ability of this nomogram.

Figure 1 Demographic and clinical feature selection using the LASSO binary logistic regression model. (A) LASSO coefficient profiles of the 16 features. A coefficient profile plot was produced against the log (lambda) sequence. (B) Optimal parameter (lambda) selection in the LASSO model used five-fold cross-validation via minimum criteria. LASSO, least absolute shrinkage and selection operator.
Table 2
Table 2 Prediction factors for bleeding risk in AF patients after stent implantation
Full table
Figure 2 Nomogram of bleeding risk in AF after stent implantation. AF, atrial fibrillation; MI, myocardial infarction; APDs, antiplatelet drugs; ACGs, anticoagulant drugs.
Figure 3 Calibration curves of the nomogram to predict bleeding risk in the population. The x-axis represents the predicted risk of bleeding. The y-axis represents the actual diagnosed bleeding risk. The diagonal dotted line represents a perfect prediction by an ideal model. The solid line represents the performance of the nomogram, where a closer fit to the diagonal dotted line represents better prediction.
Figure 4 Decision curve analysis for the bleeding risk nomogram. The y-axis measures the net benefit. The blue line represents the bleeding risk nomogram. The solid grey line represents the assumption that all patients had bleeding events. The solid black line represents the assumption that no patients had bleeding events.

Discussion

Based on 12 key predictors screened by LASSO regression, a novel nomogram was constructed that could predict bleeding risk for hospitalized AF patients after stent implantation. Patients with AF may have a high risk of bleeding after stent implantation (25,26), especially when undergoing triple antithrombotic therapy (27,28). Bleeding events occurring after stent implantation are associated with poor prognosis (29). Previous studies have found that patients with medium/high HAS-BLED scores have an increased risk of all-cause death, major adverse cardiovascular events, and major bleeding events (30). HAS-BLED, ATRIA, mOBRI, and REACH are validated bleeding risk-prediction tools. However, their predictive performance in patients with AF receiving triple antithrombotic therapy after stent implantation is unknown.

Overall, the prediction of bleeding risk is complicated, although many clinically important determinants were incorporated into the low C-index in the initial studies (10,13). This nomogram demonstrated that sex (male), type 2 diabetes, cerebral infarction, acute myocardial infarction, prior myocardial infarction, hypertension, a greater number of antiplatelet drugs, use of anticoagulant drugs, liver dysfunction, peptic ulcer, thrombocytopenia, and anemia were the key predictors of bleeding in AF patients after stent implantation. Different access to the radial and femoral arteries did not affect bleeding risk. The selection of the 12 key predictors was based on the LASSO regression model, which is a compressed estimation method used to reduce the variable set (order reduction). By constructing a penalty function, it can compress the coefficients of variables and transform some regression coefficients to 0 to achieve the purpose of selecting variables. The recognition of bleeding events is based on the nomogram-scoring algorithm. As shown in Figure 2, the corresponding features of each patient are substituted into the nomogram to calculate the score of each feature. Finally, all the scores are added together, and the total score corresponds to the bleeding risk in the last row; thereby, the bleeding risk of the patient can be evaluated.

Previous studies have generally focused on the number of antithrombotic drugs, suggesting that they significantly increase the risk of bleeding in AF patients after stent implantation (31-33), which was further confirmed by this study. An increasing number of studies have also confirmed that the combination of 2 antithrombotic drugs can be more effective in reducing bleeding risk without increasing adverse events (34-36). In this study, we included more clinical factors for better prediction of the bleeding risk in patients. Previous studies have shown that patients with recent or prior myocardial infarction and cerebral infarction have significantly increased bleeding risk (37,38). This is also in agreement with our results and might be related to the increased number of antithrombotic drugs combined with these diseases.

In this study, we also found that sex (male), type 2 diabetes, peptic ulcer, thrombocytopenia, and anemia were independent predictors of bleeding risk, which was consistent with previous research (3,10,14,38). However, in contrast to previous studies (30,38), we identified liver dysfunction, but not renal insufficiency, as a risk factor for bleeding. This could be because only the bleeding events occurring within a few days of stent implantation were counted, whereas liver dysfunction might have a greater impact on acute bleeding events. Overall, this study provides a novel and easy-to-use tool to predict the risk of bleeding more accurately in AF patients after stent implantation, which is of great significance for reducing the incidence of bleeding events in patients. Internal validation in this group indicated that the nomogram had good identification and calibration ability, and the high C-index in internal validation suggests that the nomogram has robust clinical utility.

This study has a few limitations. First, the retrospective design may only represent a small number of AF patients who underwent drug-eluting stent implantation in China. Second, we only validated our results by internal validation but not in a broad external population, which might have led to an overestimation of the nomogram’s performance. Third, we counted recent bleeding events that occurred during hospitalization, which might have resulted in bias or missing results.


Conclusions

Our novel nomogram can be used to predict the bleeding risk of AF patients more accurately after stent implantation during hospitalization. Our data suggests that patients with multiple complications and those using triple antithrombotic drugs have a higher risk of bleeding. By using this model to predict the risk of bleeding in AF patients, it is possible to reduce the bleeding risk in AF patients after stent implantation and provide guidance for subsequent medication and treatment strategies.


Acknowledgments

Funding: This study was supported by the National Natural Science Foundation of China (No. 81670403) and Grant of Shanghai Science and Technology Committee (No. 18411950300, 19XD1403300, and 19411963200).


Footnote

Reporting Checklist: The authors have completed the STROBE reporting checklist. Available at http://dx.doi.org/10.21037/atm-20-3971

Data Sharing Statement: Available at http://dx.doi.org/10.21037/atm-20-3971

Conflicts of Interest: All authors have completed the ICMJE uniform disclosure form (available at http://dx.doi.org/10.21037/atm-20-3971). The authors have no conflicts of interest to declare.

Ethical Statement: The authors are accountable for all aspects of the work in ensuring that questions related to the accuracy or integrity of any part of the work are appropriately investigated and resolved. This study was in line with the Declaration of Helsinki (as revised in 2013). The Shanghai Tongji Hospital Institutional Review Board (IRB) approved the study (approval ID: 2018YYS093), and all patients signed written informed consent before enrollment.

Open Access Statement: This is an Open Access article distributed in accordance with the Creative Commons Attribution-NonCommercial-NoDerivs 4.0 International License (CC BY-NC-ND 4.0), which permits the non-commercial replication and distribution of the article with the strict proviso that no changes or edits are made and the original work is properly cited (including links to both the formal publication through the relevant DOI and the license). See: https://creativecommons.org/licenses/by-nc-nd/4.0/.


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(English Language Editor: C. Betlazar-Maseh; Quality Control Editor: J. Gray)

Cite this article as: Qian J, Zan J, Kuang L, Che L, Yu Y, Shen T, Tang J, Chen F, Liu X. A predictive nomogram of bleeding risk in patients with atrial fibrillation after drug-eluting stent implantation. Ann Transl Med 2021;9(3):193. doi: 10.21037/atm-20-3971

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