CatBoost-based improved detection of P-wave changes in sinus rhythm and tachycardia conditions: a lead selection study

被引:0
作者
N. Prasanna Venkatesh
R. Pradeep Kumar
Bala Chakravarthy Neelapu
Kunal Pal
J. Sivaraman
机构
[1] National Institute of Technology Rourkela,Department of Biotechnology and Medical Engineering
[2] Jaiprakash Hospital and Research Centre,Department of Cardiac Sciences
来源
Physical and Engineering Sciences in Medicine | 2023年 / 46卷
关键词
Atrial lead system ; Automated lead selection; CatBoost model; Improved atrial activity; Optimal leads; P-wave changes;
D O I
暂无
中图分类号
学科分类号
摘要
Examining P-wave morphological changes in Electrocardiogram (ECG) is essential for characterizing atrial arrhythmias. However, standard 12-lead ECGsuffer from diagnostic redundancy due to low signal-to-noise ratio of P-waves. To address this issue, various optimal leads have been proposed for improved atrial activity recording, but the right selection among these leads is crucial for enhancing diagnostic efficacy. This study proposes an automated lead selection technique using the CatBoost machine learning (ML) model to improve the detection of P-wave changes among optimal bipolar leads under different heart rates. ECGs were obtained from healthy participants with a mean age of 25 ± 3.81 years (34% women), including 114 in sinus rhythm (SR) and 38 in sinus tachycardia (ST). The recordings were made using a newly designed atrial lead system (ALS), standard limb lead (SLL), modified limb lead (MLL), modified Lewis lead (LLM) and P-lead. P-wave features and Atrioventricular (AV) ratio were extracted for statistical analysis and ML classification. The optimum ML model was chosen to identify the best-performing optimal lead, which was selected based on the SLL metrics among different ML classifiers. CatBoost was found to outperform the other ML models in SLL-II with the highest accuracy and sensitivity of 0.82 and 0.90, respectively. The CatBoost model, amid other optimal leads, gave the best results for AL-I and AL-II (0.86 and 0.83 in accuracy and 0.91 and 0.93 in sensitivity). The developed CatBoost model selected AL-I and AL-II as the top two best-performing optimal leads for the enhanced acquisition of P-wave changes, which may be useful for diagnosing atrial arrhythmias.
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页码:925 / 944
页数:19
相关论文
共 165 条
  • [1] Gerc V(2020)Cardiovascular diseases (CVDs) in COVID-19 pandemic era Mater Socio Medica 32 158-164
  • [2] Masic I(2012)The worldwide environment of cardiovascular disease: prevalence, diagnosis, therapy, and policy issues: a report from the American College of Cardiology J Am Coll Cardiol 60 S1-S49
  • [3] Salihefendic N(2004)New leads for P wave detection and arrhythmia classification J Electrocardiol 37 80-1519
  • [4] Zildzic M(2012)Catheter ablation of atrial arrhythmias: state of the art Lancet 380 1509-104
  • [5] Laslett LJ(2013)Atrial fibrillation in ischemic stroke: predicting response to thrombolysis and clinical outcomes Stroke 44 99-867
  • [6] Alagona P(2022)Atrial fibrillation and dementia: epidemiological insights on an undervalued association Medicina 58 361-73
  • [7] Clark BA(2007)Meta-analysis: antithrombotic therapy to prevent stroke in patients who have nonvalvular atrial fibrillation Ann Intern Med 146 857-9
  • [8] Lux RL(2008)Atrial remodeling and atrial fibrillation: mechanisms and implications Circ Arrhythm Electrophysiol 1 62-6
  • [9] Greg R(2020)P-wave indices as predictors of atrial fibrillation Ann Noninvasive Electrocardiol 25 1-1192
  • [10] Lee G(2006)Understanding atrial fibrillation: the signal processing contribution part II Synth Lect Biomed Eng 1999 1-588