Development and Validation of a Neural Network Model for Predicting Atrial Fibrillation and Detecting Silent Arrhythmias in Patients with Chronic Obstructive Pulmonary Disease Based on Echocardiography Data
Abstract
1. Introduction
2. Materials and Methods
2.1. Study Design and Ethical Approval
2.2. Stage 1. Development of a Neural Network Model
2.2.1. Participants
2.2.2. Echocardiography
- In the parasternal long-axis view: ascending aorta diameter (cm), left atrium diameter (cm), left ventricular end-diastolic diameter (cm);
- In the parasternal short-axis view: pulmonary artery diameter (cm), maximum thickness of the anterior and posterior walls of the left ventricle (cm);
- In the apical four- and five-chamber views: transverse dimension of the right atrium (cm), degree of regurgitation at the aortic, mitral, and tricuspid valves (assessed visually using color Doppler mapping and coded as a continuous variable: 0—absent, 1—minimal, 2—moderate, 3—severe); left ventricular ejection fraction (Simpson method, %).
2.2.3. Neural Network Architecture and Training
- Training sample: 500 vectors (200 without AF, 300 with AF);
- Validation set: 84 vectors (28 without AF, 56 with AF);
- Test set: 100 vectors (34 without AF, 66 with AF).
- Accuracy = 0.81;
- Precision = 0.87;
- Recall = 0.83;
- AUC ROC = 0.80 (95% CI 0.71–0.87).
2.3. Stage 2. Validation of the Predictive Ability of NN in Patients with COPD
2.3.1. Participants and Design
2.3.2. Follow-Up and Endpoints
2.4. Stage 3. Identification of Asymptomatic Arrhythmias in Patients with COPD
2.5. Statistical Analysis
3. Results
3.1. Predicting the Development of Atrial Fibrillation Using a Neural Network
3.1.1. Characteristics of Study Participants
3.1.2. Echocardiographic Differences
3.1.3. Logistic Regression Models
3.1.4. Analysis of High- and Low-Risk Subgroups in Patients with COPD
3.1.5. Selection of Threshold Values and Classification Metrics
3.2. Detection of Occult Arrhythmias Using a Neural Network
3.2.1. Participant Characteristics
3.2.2. Data from 24 h ECG Monitoring
3.2.3. Comparison of Groups Based on NN Output
3.2.4. ROC Analysis
- For the detection of atrial fibrillation during 24 h ECG monitoring based on the value of the first output of the neural network: 0.93.
- For detecting group supraventricular extrasystoles during 24 h ECG monitoring based on the value of the first output of the neural network: 0.79.
- For detecting a combined event (atrial fibrillation or group supraventricular extrasystoles) during 24 h ECG monitoring based on the value of the first output of the neural network: 0.81.
4. Discussion
Study Limitations
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
- Li, H.; Liu, P.; Shen, Q.; Chen, H.; Liu, H.; Hu, J. Global, Regional, and National Burden and Trends of Atrial Fibrillation and Flutter among Individuals Aged 55 and Older from 1990 to 2021: Results from the 2021 Global Burden of Disease Study. BMC Cardiovasc. Disord. 2026, 26, 147. [Google Scholar] [CrossRef] [PubMed]
- Hindricks, G.; Potpara, T.; Dagres, N.; Arbelo, E.; Bax, J.J.; Blomström-Lundqvist, C.; Boriani, G.; Castella, M.; Dan, G.-A.; Dilaveris, P.E.; et al. 2020 ESC Guidelines for the Diagnosis and Management of Atrial Fibrillation Developed in Collaboration with the European Association for Cardio-Thoracic Surgery (EACTS): The Task Force for the Diagnosis and Management of Atrial Fibrillation of the European Society of Cardiology (ESC) Developed with the Special Contribution of the European Heart Rhythm Association (EHRA) of the ESC. Eur. Heart J. 2021, 42, 373–498. [Google Scholar] [CrossRef]
- Manetas-Stavrakakis, N.; Sotiropoulou, I.M.; Paraskevas, T.; Maneta Stavrakaki, S.; Bampatsias, D.; Xanthopoulos, A.; Papageorgiou, N.; Briasoulis, A. Accuracy of Artificial Intelligence-Based Technologies for the Diagnosis of Atrial Fibrillation: A Systematic Review and Meta-Analysis. J. Clin. Med. 2023, 12, 6576. [Google Scholar] [CrossRef]
- Sener, Y.Z.; Ceasovschih, A.; Murzalieva, E.; Oksul, M.; Uzun, H.G.; Yilmaz, O.F.; Belancic, A.; Allamsetty, S.; Piotrowski, R.; Corlateanu, A.; et al. A Deep Dive into Atrial Fibrillation in Chronic Obstructive Pulmonary Disease. npj Prim. Care Respir. Med. 2026, 36, 11. [Google Scholar] [CrossRef]
- Ding, N.; Qiu, W.; Chen, J.; Wang, K.; Chen, Z.; Cai, R.; Chen, A. Prevalence and Risk Factors of Arrhythmias in Patients with Acute Exacerbations of Chronic Obstructive Pulmonary Disease: A Systematic Review and Meta-Analysis. Int. J. Chron. Obs. Pulmon. Dis. 2025, 20, 3059–3072. [Google Scholar] [CrossRef] [PubMed]
- Kotlyarov, S.; Lyubavin, A. Structure of Comorbidities and Causes of Death in Patients with Atrial Fibrillation and Chronic Obstructive Pulmonary Disease. J. Clin. Med. 2025, 14, 5045. [Google Scholar] [CrossRef] [PubMed]
- Eltawansy, S.; Ahmed, F.; Sharma, G.; Lajczak, P.; Obi, O.; Valand, H.A.; Patel, B.; Shehzad, D.; Abugrin, M.; Mubasher, A.; et al. Impact of Chronic Obstructive Pulmonary Disease Burden on Patients With Atrial Fibrillation: A Nationwide Study. J. Clin. Med. Res. 2025, 17, 309–319. [Google Scholar] [CrossRef]
- Pham, H.N.; Kanaan, C.; Ibrahim, R.; Abdelnabi, M.; Soin, S.; Bcharah, G.; Habib, E.; Baqal, O.; Farina, J.; Xie, J.; et al. Incidence of Arrhythmias in Chronic Obstructive Pulmonary Disease, Obstructive Sleep Apnea, and Overlap Syndrome: A Retrospective Cohort Study. Heart Rhythm 2025, 22, e650–e657. [Google Scholar] [CrossRef]
- Karakasis, P.; Theofilis, P.; Sagris, M.; Pamporis, K.; Stachteas, P.; Sidiropoulos, G.; Vlachakis, P.K.; Patoulias, D.; Antoniadis, A.P.; Fragakis, N. Artificial Intelligence in Atrial Fibrillation: From Early Detection to Precision Therapy. J. Clin. Med. 2025, 14, 2627. [Google Scholar] [CrossRef]
- Noseworthy, P.A.; Attia, Z.I.; Behnken, E.M.; Giblon, R.E.; Bews, K.A.; Liu, S.; Gosse, T.A.; Linn, Z.D.; Deng, Y.; Yin, J.; et al. Artificial Intelligence-Guided Screening for Atrial Fibrillation Using Electrocardiogram during Sinus Rhythm: A Prospective Non-Randomised Interventional Trial. Lancet 2022, 400, 1206–1212. [Google Scholar] [CrossRef]
- Antoun, I.; Abdelrazik, A.; Eldesouky, M.; Li, X.; Layton, G.R.; Zakkar, M.; Somani, R.; Ng, G.A. Artificial Intelligence in Atrial Fibrillation: Emerging Applications, Research Directions and Ethical Considerations. Front. Cardiovasc. Med. 2025, 12, 1596574. [Google Scholar] [CrossRef] [PubMed]
- Attia, Z.I.; Noseworthy, P.A.; Lopez-Jimenez, F.; Asirvatham, S.J.; Deshmukh, A.J.; Gersh, B.J.; Carter, R.E.; Yao, X.; Rabinstein, A.A.; Erickson, B.J.; et al. An Artificial Intelligence-Enabled ECG Algorithm for the Identification of Patients with Atrial Fibrillation during Sinus Rhythm: A Retrospective Analysis of Outcome Prediction. Lancet 2019, 394, 861–867. [Google Scholar] [CrossRef]
- Fredriksson, T.; Gudmundsdottir, K.K.; Frykman, V.; Friberg, L.; Al-Khalili, F.; Engdahl, J.; Svennberg, E. Brief Episodes of Rapid Irregular Atrial Activity (Micro-AF) Are a Risk Marker for Atrial Fibrillation: A Prospective Cohort Study. BMC Cardiovasc. Disord. 2020, 20, 167. [Google Scholar] [CrossRef]
- Andersson, T.; Magnuson, A.; Bryngelsson, I.-L.; Frøbert, O.; Henriksson, K.M.; Edvardsson, N.; Poçi, D. All-Cause Mortality in 272,186 Patients Hospitalized with Incident Atrial Fibrillation 1995-2008: A Swedish Nationwide Long-Term Case-Control Study. Eur. Heart J. 2013, 34, 1061–1067. [Google Scholar] [CrossRef]
- Nagorni-Obradovic, L.M.; Vukovic, D.S. The Prevalence of COPD Co-Morbidities in Serbia: Results of a National Survey. npj Prim. Care Respir. Med. 2014, 24, 14008. [Google Scholar] [CrossRef]
- Feary, J.R.; Rodrigues, L.C.; Smith, C.J.; Hubbard, R.B.; Gibson, J.E. Prevalence of Major Comorbidities in Subjects with COPD and Incidence of Myocardial Infarction and Stroke: A Comprehensive Analysis Using Data from Primary Care. Thorax 2010, 65, 956–962. [Google Scholar] [CrossRef]
- Himmelreich, J.C.L.; Lucassen, W.A.M.; Harskamp, R.E.; Aussems, C.; van Weert, H.C.P.M.; Nielen, M.M.J. CHARGE-AF in a National Routine Primary Care Electronic Health Records Database in the Netherlands: Validation for 5-Year Risk of Atrial Fibrillation and Implications for Patient Selection in Atrial Fibrillation Screening. Open Heart 2021, 8, e001459. [Google Scholar] [CrossRef]
- de Caram, L.M.O.; Ferrari, R.; Naves, C.R.; Tanni, S.E.; Coelho, L.S.; Zanati, S.G.; Minicucci, M.F.; Godoy, I. Association between Left Ventricular Diastolic Dysfunction and Severity of Chronic Obstructive Pulmonary Disease. Clinics 2013, 68, 772–776. [Google Scholar] [CrossRef]
- Roh, S.-Y.; Choi, J.-I.; Lee, J.Y.; Kwak, J.-J.; Park, J.-S.; Kim, J.-B.; Lim, H.-E.; Kim, Y.-H. Catheter Ablation of Atrial Fibrillation in Patients with Chronic Lung Disease. Circ. Arrhythm. Electrophysiol. 2011, 4, 815–822. [Google Scholar] [CrossRef] [PubMed]
- Hirose, T.; Kawasaki, M.; Tanaka, R.; Ono, K.; Watanabe, T.; Iwama, M.; Noda, T.; Watanabe, S.; Takemura, G.; Minatoguchi, S. Left Atrial Function Assessed by Speckle Tracking Echocardiography as a Predictor of New-Onset Non-Valvular Atrial Fibrillation: Results from a Prospective Study in 580 Adults. Eur. Heart J. Cardiovasc. Imaging 2012, 13, 243–250. [Google Scholar] [CrossRef] [PubMed]
- De Vos, C.B.; Weijs, B.; Crijns, H.J.G.M.; Cheriex, E.C.; Palmans, A.; Habets, J.; Prins, M.H.; Pisters, R.; Nieuwlaat, R.; Tieleman, R.G. Atrial Tissue Doppler Imaging for Prediction of New-Onset Atrial Fibrillation. Heart 2009, 95, 835–840. [Google Scholar] [CrossRef]
- Na, J.; Garapati, S.S.; Lador, A. Obesity and Atrial Fibrillation: A Comprehensive Review. Methodist Debakey Cardiovasc. J. 2025, 21, 35–43. [Google Scholar] [CrossRef]
- Nantsupawat, T.; Li, Y.; Li, S.; Sathnur, N.; Chesdachai, S.; Adabag, S.; Benditt, D.G.; Tholakanahalli, V.N. Addition of Atrial Myopathy to HATCH Score for Predicting New-Onset Atrial Fibrillation After Ablation of Atrial Flutter. Pacing Clin. Electrophysiol. 2025, 48, 1167–1175. [Google Scholar] [CrossRef]
- de Vos, C.B.; Pisters, R.; Nieuwlaat, R.; Prins, M.H.; Tieleman, R.G.; Coelen, R.-J.S.; van den Heijkant, A.C.; Allessie, M.A.; Crijns, H.J.G.M. Progression from Paroxysmal to Persistent Atrial Fibrillation Clinical Correlates and Prognosis. J. Am. Coll. Cardiol. 2010, 55, 725–731. [Google Scholar] [CrossRef]
- Schnabel, R.B.; Sullivan, L.M.; Levy, D.; Pencina, M.J.; Massaro, J.M.; D’Agostino, R.B.; Newton-Cheh, C.; Yamamoto, J.F.; Magnani, J.W.; Tadros, T.M.; et al. Development of a Risk Score for Atrial Fibrillation in the Community; The Framingham Heart Study. Lancet 2009, 373, 739–745. [Google Scholar] [CrossRef]
- Chamberlain, A.M.; Agarwal, S.K.; Folsom, A.R.; Soliman, E.Z.; Chambless, L.E.; Crow, R.; Ambrose, M.; Alonso, A. A Clinical Risk Score for Atrial Fibrillation in a Biracial Prospective Cohort (From the Atherosclerosis Risk in Communities (ARIC) Study). Am. J. Cardiol. 2011, 107, 85–91. [Google Scholar] [CrossRef] [PubMed]
- Alonso, A.; Krijthe, B.P.; Aspelund, T.; Stepas, K.A.; Pencina, M.J.; Moser, C.B.; Sinner, M.F.; Sotoodehnia, N.; Fontes, J.D.; Janssens, A.C.J.W.; et al. Simple Risk Model Predicts Incidence of Atrial Fibrillation in a Racially and Geographically Diverse Population: The CHARGE-AF Consortium. J. Am. Heart Assoc. 2013, 2, e000102. [Google Scholar] [CrossRef]
- Tiwari, P.; Colborn, K.L.; Smith, D.E.; Xing, F.; Ghosh, D.; Rosenberg, M.A. Assessment of a Machine Learning Model Applied to Harmonized Electronic Health Record Data for the Prediction of Incident Atrial Fibrillation. JAMA Netw. Open 2020, 3, e1919396. [Google Scholar] [CrossRef] [PubMed]
- Kotlyarov, S.; Lyubavin, A. Early Detection of Atrial Fibrillation in Chronic Obstructive Pulmonary Disease Patients. Medicina 2024, 60, 352. [Google Scholar] [CrossRef] [PubMed]
- Yaroslavskaya, E.I.; Dyachkov, S.M.; Gorbatenko, E.A. Artificial Neural Networks in Prediction of Atrial Fibrillation in Men with Coronary Artery Disease. Sib. J. Clin. Exp. Med. 2020, 35, 119–127. [Google Scholar] [CrossRef]







| Characteristic | Value |
|---|---|
| Age and gender distribution of the sample, risks of developing AF | |
| Mean age of participants, years | 64.27 ± 14.27 |
| Women | 148 (47.59%) |
| Median follow-up, months | 18.0 [14.0; 21.0] |
| Participants who developed AF | 18 (5.79%) |
| Median time to AF onset, months | 6.5 [5.25–10.5] |
| Participants who died during the study | 28 (9.0%) |
| Risk of developing AF according to the HATCH scale | 1.85 ± 1.14 |
| Comorbidities | |
| Malignant neoplasms | 14 (4.5%) |
| Hypothyroidism | 9 (2.89%) |
| Diabetes mellitus | 39 (12.54%) |
| History of stroke | 10 (3.22%) |
| Cerebrovascular disease | 46 (14.79%) |
| Dilated cardiomyopathy | 7 (2.25%) |
| COPD | 99 (31.83%) |
| Aortic valve stenosis | 3 (0.96%) |
| Congestive heart failure | 18 (5.79%) |
| Gastric ulcer | 1 (0.32%) |
| Moderate or severe chronic kidney disease (creatinine > 270 μmol/L) | 1 (0.32%) |
| Charlson Comorbidity Index | 2.63 ± 1.54 |
| Causes of death | |
| Chronic heart failure | 13 (46.43%) |
| Malignant neoplasms | 5 (17.86%) |
| Chronic respiratory failure | 3 (10.71%) |
| Ischemic (cardioembolic) stroke | 3 (10.71%) |
| Chronic cerebral insufficiency | 2 (7.14%) |
| Gastrointestinal bleeding | 1 (3.57%) |
| Hemorrhagic stroke | 1 (3.57%) |
| Total due to cardiovascular disease | 19 (67.86%) |
| Characteristic | Patients With COPD (n = 99) | Patients Without COPD (n = 212) | Significance of Differences |
|---|---|---|---|
| Mean age of participants, years | 69.55 ± 5.73 | 61.81 ± 16.79 | p = 0.0002 |
| Women | 16 (16.16%) | 132 (62.26%) | p < 0.0001 |
| Median follow-up, months | 19 [17–21] | 16 [14–21] | p < 0.0001 |
| Participants who developed AF | 8 (8.08%) | 10 (4.72%) | p = 0.2967 |
| Median time to AF onset, months | 7.5 [5.75–11.25] | 6 [5.25–8.75] | p = 0.5764 |
| Participants who died during the study | 7 (7.07%) | 21 (9.91%) | p = 0.014 |
| Median time to death, months | 16.5 [15.0–20.5] | 5.0 [3.0–10.0] | p < 0.0001 |
| Arterial hypertension | 94 (94.94%) | 196 (92.45%) | p = 0.4770 |
| Cancer | 4 (4.04%) | 10 (4.72%) | p = 1.0 |
| Hypothyroidism | 0 | 9 (4.25%) | p = 0.0619 |
| Diabetes mellitus | 7 (7.07%) | 32 (15.09%) | p = 0.0646 |
| Cerebrovascular disease | 10 (10.1%) | 36 (16.98%) | p = 0.125 |
| Ischemic stroke | 3 (3.03%) | 7 (3.30%) | p = 1.0 |
| Dilated cardiomyopathy | 0 | 7 (3.30%) | p = 0.1017 |
| Aortic valve stenosis | 0 | 3 (1.42%) | p = 0.5540 |
| Congestive heart failure | 3 (3.03%) | 15 (7.08%) | p = 0.1972 |
| Stomach ulcer | 0 | 1 (0.47%) | p = 1.0 |
| Moderate or severe chronic kidney disease (creatinine > 270 mmol/L) | 0 | 1 (0.47%) | p = 1.0 |
| Charlson Comorbidity Index | 3.45 ± 1.05 | 2.31 ± 1.58 | p < 0.0001 |
| Death from cardiovascular diseases | 4 (4.04%) | 14 (6.60%) | p = 0.4439 |
| Death from heart failure | 3 (3.03%) | 9 (4.25%) | p = 0.7583 |
| Group | Coefficient | Statistical Significance |
|---|---|---|
| Patients with COPD (n = 99) | −3.06 ± 0.59 | p < 0.0001 |
| Patients without COPD (n = 212) | −4.11 ± 0.48 | p < 0.0001 |
| The entire sample | −3.72 ± 0.36 | p < 0.0001 |
| Characteristic | Group Low Risk of AF with COPD, First NN Output Value < 0.75 (n = 45) | Group High Risk of AF with COPD, First NN Output Value ≥ 0.75 (n = 54) | Statistical Significance |
|---|---|---|---|
| The average age of the participants, years | 67.6 ± 6.39 | 71.17 ± 4.58 | p = 0.0017 |
| Women | 11 (24.44%) | 5 (9.26%) | p = 0.0554 |
| Median follow-up, months | 19.0 [17.0; 21.0] | 19.0 [16.0; 22.0] | p = 0.8546 |
| The risk of developing AF on the HATCH scale | 3.18 ± 0.44 | 3.26 ± 0.59 | p = 0.4456 |
| Participants who developed AF | 0 | 8 (14.81%) | p = 0.0073 |
| Number of deaths during the study | 2 (4.44%) | 5 (9.26%) | p = 0.4503 |
| Median onset of death, months | 20.5 [19.75; 21.25] | 17.0 [16.0; 18.0] | p < 0.001 |
| Parameter | Mean Median | Normality of Distribution |
|---|---|---|
| Demographic characteristics | ||
| Age, years | 59.91 ± 17.91 64.0 [50.0; 72.5] | p < 0.0001 |
| Women | 25 (12.1%) | |
| COPD course | ||
| HATCH score | 3.93 ± 0.95 4.0 [3.0; 4.0] | p < 0.0001 |
| Duration of smoking, years | 33.67 ± 8.33 32.0 [30.0; 41.0] | p = 0.0002 |
| Pack-years | 34.19 ± 8.79 34.0 [29.0; 42.0] | p = 0.0017 |
| FEV1, % | 54.24 ± 11.47 58.0 [55.0; 60.0] | p < 0.0001 |
| Dyspnea severity according to mMRC | 1.3 ± 0.71 1.0 [1.0; 2.0] | p < 0.0001 |
| Number of COPD exacerbations per year | 0.63 ± 0.73 0.0 [0.0; 1.0] | p < 0.0001 |
| ADO scale scores | 4.29 ± 1.39 4.0 [3.0; 5.0] | p < 0.0001 |
| Scores on the CODEX scale | 2.29 ± 1.77 2.0 [1.0; 3.0] | p < 0.0001 |
| Transthoracic echocardiography, AF prognosis | ||
| Aorta, cm | 3.54 ± 0.14 3.5 [3.4; 3.6] | p = 0.0001 |
| Left atrium, cm | 3.91 ± 0.42 3.8 [3.6; 4.1] | p < 0.0001 |
| LVEDD, cm | 5.0 ± 0.6 4.9 [4.6; 5.1] | p = 0.0131 |
| Right ventricle, cm | 2.7 ± 0.56 2.5 [2.4; 2.7] | p < 0.0001 |
| Right atrium, cm | 3.7 ± 0.56 3.4 [3.4; 3.6] | p < 0.0001 |
| Pulmonary artery, cm | 2.14 ± 0.24 2.0 [1.9; 2.2] | p = 0.0038 |
| IVS, cm | 1.09 ± 0.18 1.0 [1.0; 1.2] | p = 0.0107 |
| LVPW, cm | 1.07 ± 0.16 1.0 [1.0; 1.2] | p = 0.0059 |
| LVEF, % | 57.71 ± 10.91 61.0 [57.0; 66.0] | p < 0.0001 |
| AR, degree | 0.15 ± 0.47 0.0 [0.0; 0.0] | p = 0.3607 |
| MR, degree | 1.49 ± 0.64 1.0 [1.0; 2.0] | p < 0.0001 |
| TR, degree | 1.54 ± 0.69 1.0 [1.0; 2.0] | p < 0.0001 |
| Inferior vena cava, cm | 1.3 ± 0.71 1.0 [1.0; 2.0] | p < 0.0001 |
| Value of the first output of the neural network | 0.6 ± 0.21 0.61 [0.47; 0.72] | p < 0.0001 |
| Parameter | Mean ± SD; Median [IQR] | p-Value for Normality |
|---|---|---|
| Minimum HR per minute | 56.65 ± 32.1 55.0 [47.5; 60.0] | p < 0.0001 |
| Maximum heart rate per minute | 108.12 ± 23.34 106.0 [90.5; 120.0] | p = 0.0031 |
| Average heart rate per minute | 71.66 ± 13.94 69.0 [62.0; 82.0] | p = 0.0004 |
| Supraventricular extrasystoles (total) | 440.49 ± 1337 18.0 [5.0; 161.5] | p < 0.0001 |
| Isolated supraventricular extrasystoles | 416.1 ± 1233 17.0 [5.0; 145.5] | p < 0.0001 |
| Paired supraventricular extrasystoles | 20.08 ± 136.83 0.0 [0.0; 3.0] | p < 0.0001 |
| Group supraventricular extrasystoles | 3.18 ± 15.75 0.0 [0.0; 1.0] | p < 0.0001 |
| Ventricular premature beats (total) | 428.34 ± 2811 4.0 [0.0; 32.5] | p < 0.0001 |
| Isolated ventricular premature beats | 420.91 ± 2803 3.0 [0.0; 30.0] | p < 0.0001 |
| Paired ventricular premature beats | 3.94 ± 29.52 0.0 [0.0; 0.0] | p < 0.0001 |
| Parameter | Participants with a High Probability of AF, Value of the First Output of the NN ≥ 0.75 (n = 47) | Participants with a Low Probability of AF, Value of the First Output of the NN < 0.75 (n = 160) | Significance of Differences |
|---|---|---|---|
| Age, years | 63.79 ± 13.65 | 58.78 ± 18.86 | p = 0.0916 |
| Women | 9 (19.12%) | 16 (10.0%) | p = 0.0427 |
| HATCH score | 4.06 ± 1.01 | 3.89 ± 0.93 | p = 0.2643 |
| COPD stage | 3.3 ± 0.69 | 3.05 ± 0.64 | p = 0.0232 |
| Duration of smoking, years | 34.72 ± 9.33 | 33.36 ± 8.01 | p = 0.3257 |
| Pack-years index | 34.77 ± 9.59 | 34.02 ± 8.56 | p = 0.6094 |
| FEV1 | 54.21 ± 10.75 | 54.25 ± 11.71 | p = 0.9845 |
| Severity of dyspnea according to mMRC | 1.53 ± 0.72 | 1.24 ± 0.70 | p = 0.0121 |
| Number of COPD exacerbations per year | 0.81 ± 0.77 | 0.58 ± 0.71 | p = 0.0608 |
| ADO scale scores | 4.45 ± 1.32 | 4.24 ± 1.41 | p = 0.3655 |
| CODEX scale score | 2.28±1.54 | 2.30 ± 1.84 | p = 0.9369 |
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content. |
© 2026 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license.
Share and Cite
Kotlyarov, S.; Lyubavin, A. Development and Validation of a Neural Network Model for Predicting Atrial Fibrillation and Detecting Silent Arrhythmias in Patients with Chronic Obstructive Pulmonary Disease Based on Echocardiography Data. Diseases 2026, 14, 206. https://doi.org/10.3390/diseases14060206
Kotlyarov S, Lyubavin A. Development and Validation of a Neural Network Model for Predicting Atrial Fibrillation and Detecting Silent Arrhythmias in Patients with Chronic Obstructive Pulmonary Disease Based on Echocardiography Data. Diseases. 2026; 14(6):206. https://doi.org/10.3390/diseases14060206
Chicago/Turabian StyleKotlyarov, Stanislav, and Alexander Lyubavin. 2026. "Development and Validation of a Neural Network Model for Predicting Atrial Fibrillation and Detecting Silent Arrhythmias in Patients with Chronic Obstructive Pulmonary Disease Based on Echocardiography Data" Diseases 14, no. 6: 206. https://doi.org/10.3390/diseases14060206
APA StyleKotlyarov, S., & Lyubavin, A. (2026). Development and Validation of a Neural Network Model for Predicting Atrial Fibrillation and Detecting Silent Arrhythmias in Patients with Chronic Obstructive Pulmonary Disease Based on Echocardiography Data. Diseases, 14(6), 206. https://doi.org/10.3390/diseases14060206

