1.The mighty duck strategy: Remaining calm in the face of wide complex tachycardia
Journal of Medicine University of Santo Tomas 2025;9(1):1501-1514
In the field of medicine and cardiology, there is perhaps no other condition or situation that stimulates an adrenalin rush for the healthcare team than a patient presenting with wide QRS complex tachycardia. These cases may be potentially fatal and are usually associated with worse outcomes. While the real-world experience in the evaluation and management of these cases can be chaotic situations, a careful, systematic and organized scrutiny of the electrocardiographic tracing is key to obtaining a correct diagnosis and proceeding with the right therapeutic management. An understanding of the physiological mechanisms of arrhythmia, the appreciation of scientific basis for electrocardiographic features and recognition of different criteria for diagnosis provides endless opportunities and “teachable moments” in medicine. For both learners and teachers, the academic discussion of these points and features can be an exciting journey and electrifyingly educational experience. This article provides a simplified yet beautifully complicated approach to diagnosing wide complex tachycardia.
Human ; Tachycardia, Ventricular ; Electrocardiography ; Ecg
2.Electrocardiographic manifestations of hospitalized adult patients with coronavirus disease 19 (COVID-19): UP-PGH DCVM ECG study.
Felix Eduardo R. PUNZALAN ; Paul Anthony O. ALAD ; Tam Adrian P. AYA-AY ; Kaye Eunice L. LUSTESTICA ; Nigel Jeronimo C. SANTOS ; Jaime Alfonso M. AHERRERA ; Elmer Jasper B. LLANES ; Giselle G. GERVACIO ; Eugenio B. REYES ; John C. AÑONUEVO
Acta Medica Philippina 2025;59(Early Access 2025):1-5
BACKGROUND AND OBJECTIVE
COVID-19 has been associated with cardiac injury, often detectable through electrocardiographic (ECG) changes. This study seeks to characterize the cardiovascular and electrocardiographic profiles of adult patients diagnosed with COVID-19.
METHODSThis study included adult patients with confirmed COVID-19 from June 2021 to June 2022. Clinical profiles and 12-lead ECG tracings were obtained from electronic medical records and reviewed independently by three cardiologists. Descriptive analysis was performed to summarize the cardiovascular and electrocardiographic findings in this population.
RESULTSThe study included 998 COVID-19 patients (mean age: 50 years; 53.7% male). The most common comorbidities were hypertension, diabetes, and dyslipidemia. A majority (31.36%) presented with severe COVID-19 infection. The most frequent significant ECG abnormalities observed at admission were sinus tachycardia (22.8%), and atrial fibrillation (11.02%). Additional ischemic findings included ST segment depression (2.91%), T-wave inversion (1.70%), and ST segment elevation (2.71%).
CONCLUSIONThe baseline ECG findings among COVID-19 patients were predominantly normal; however, significant abnormalities were also identified. The most frequent abnormalities included sinus tachycardia, atrial fibrillation, and ischemic changes, all of which may have clinical implications.
Human ; Coronavirus Disease 19 ; Covid-19 ; Electrocardiography ; Atrial Fibrillation
3.Teachable moments in ECG: The physiology behind the pattern
Journal of Medicine University of Santo Tomas 2024;8(1):1377-1380
		                        		
		                        			
		                        			The electrocardiographic analysis of heart blocks provides great opportunities for the discussion of mechanisms of electrical cardiac conduction, serving as “teachable moments” in medicine. Recognition of heart blocks can sometimes be a challenge as they can present in many forms, different severities and levels of blocks that present as varied patterns on electrocardiographic tracing. The ultimate key to correct diagnosis rests on adequate understanding of normal electrophysiology of the electrical system of the heart. While it is vital to recognize the pattern, we should always know and understand the physiology behind the pattern. This article presents a detailed analysis of a case of heart block which can easily be misinterpreted on first look. The case is featured not for its rarity but for the interesting concepts in cardiac electrophysiology that are highlighted. Navigation of the different elements of tracing can be an adventure and a great learning experience enjoyed by both students and experts.
		                        		
		                        		
		                        		
		                        			Heart Block
		                        			;
		                        		
		                        			 Electrocardiography 
		                        			
		                        		
		                        	
4.Association of electrocardiographic abnormalities with in-hospital mortality in adult patients with COVID-19 infection
Jannah Lee Tarranza ; Marcellus Francis Ramirez ; Milagros Yamamoto
Philippine Journal of Cardiology 2024;52(2):32-42
OBJECTIVES
The study aimed to determine the association of electrocardiographic (ECG) abnormalities and in-hospital mortality of patients with coronavirus disease 2019 (COVID-19) infection admitted in a tertiary care hospital in the Philippines.
METHODSWe conducted a retrospective study of confirmed COVID-19–infected patients. Demographic and clinical characteristics and clinical outcomes were extracted from the medical records. Electrocardiographic analysis was derived from the 12-lead electrocardiogram recorded upon admission. The frequencies and distributions of various clinical characteristics were described, and the ECG abnormalities associated with in-hospital mortality were investigated.
RESULTSA total of 163 patients were included in the study; most were female (52.7%) with a median age of 55 years. Sinus rhythm with any ECG abnormality (65%), nonspecific ST and T-wave changes (35%), and sinus tachycardia (22%) were the frequently reported ECG findings. The presence of any ECG abnormality was detected in 78.5% of patients, and it was significantly associated with in-hospital mortality (P = 0.038). The analysis revealed a statistically significant association between in-hospital mortality and having atrial fibrillation or flutter (P = 0.002), supraventricular tachycardia (P = 0.011), ventricular tachycardia (P = 0.011), third-degree atrioventricular block (P = 0.011), T-wave inversion (P = 0.005), and right ventricular hypertrophy (P = 0.011).
The presence of any ECG abnormality in patients with COVID-19 infection was associated with in-hospital mortality. Electrocardiographic abnormalities that were associated with mortality were atrial fibrillation or flutter, supraventricular tachycardia, ventricular tachycardia, third-degree atrioventricular block, T-wave inversion, and right ventricular hypertrophy.
Human ; Covid-19 ; Electrocardiography ; Mortality ; Philippines
5.An image classification method for arrhythmias based on Gramian angular summation field and improved Inception-ResNet-v2.
Xiangkui WAN ; Jing LUO ; Yang LIU ; Yunfan CHEN ; Xingwei PENG ; Xi WANG
Journal of Biomedical Engineering 2023;40(3):465-473
		                        		
		                        			
		                        			Arrhythmia is a significant cardiovascular disease that poses a threat to human health, and its primary diagnosis relies on electrocardiogram (ECG). Implementing computer technology to achieve automatic classification of arrhythmia can effectively avoid human error, improve diagnostic efficiency, and reduce costs. However, most automatic arrhythmia classification algorithms focus on one-dimensional temporal signals, which lack robustness. Therefore, this study proposed an arrhythmia image classification method based on Gramian angular summation field (GASF) and an improved Inception-ResNet-v2 network. Firstly, the data was preprocessed using variational mode decomposition, and data augmentation was performed using a deep convolutional generative adversarial network. Then, GASF was used to transform one-dimensional ECG signals into two-dimensional images, and an improved Inception-ResNet-v2 network was utilized to implement the five arrhythmia classifications recommended by the AAMI (N, V, S, F, and Q). The experimental results on the MIT-BIH Arrhythmia Database showed that the proposed method achieved an overall classification accuracy of 99.52% and 95.48% under the intra-patient and inter-patient paradigms, respectively. The arrhythmia classification performance of the improved Inception-ResNet-v2 network in this study outperforms other methods, providing a new approach for deep learning-based automatic arrhythmia classification.
		                        		
		                        		
		                        		
		                        			Humans
		                        			;
		                        		
		                        			Arrhythmias, Cardiac/diagnostic imaging*
		                        			;
		                        		
		                        			Cardiovascular Diseases
		                        			;
		                        		
		                        			Algorithms
		                        			;
		                        		
		                        			Databases, Factual
		                        			;
		                        		
		                        			Electrocardiography
		                        			
		                        		
		                        	
6.Electrocardiogram signal classification based on fusion method of residual network and self-attention mechanism.
Chengcheng YUAN ; Zijie LIU ; Changqing WANG ; Fei YANG
Journal of Biomedical Engineering 2023;40(3):474-481
		                        		
		                        			
		                        			In the diagnosis of cardiovascular diseases, the analysis of electrocardiogram (ECG) signals has always played a crucial role. At present, how to effectively identify abnormal heart beats by algorithms is still a difficult task in the field of ECG signal analysis. Based on this, a classification model that automatically identifies abnormal heartbeats based on deep residual network (ResNet) and self-attention mechanism was proposed. Firstly, this paper designed an 18-layer convolutional neural network (CNN) based on the residual structure, which helped model fully extract the local features. Then, the bi-directional gated recurrent unit (BiGRU) was used to explore the temporal correlation for further obtaining the temporal features. Finally, the self-attention mechanism was built to weight important information and enhance model's ability to extract important features, which helped model achieve higher classification accuracy. In addition, in order to mitigate the interference on classification performance due to data imbalance, the study utilized multiple approaches for data augmentation. The experimental data in this study came from the arrhythmia database constructed by MIT and Beth Israel Hospital (MIT-BIH), and the final results showed that the proposed model achieved an overall accuracy of 98.33% on the original dataset and 99.12% on the optimized dataset, which demonstrated that the proposed model can achieve good performance in ECG signal classification, and possessed potential value for application to portable ECG detection devices.
		                        		
		                        		
		                        		
		                        			Humans
		                        			;
		                        		
		                        			Electrocardiography
		                        			;
		                        		
		                        			Algorithms
		                        			;
		                        		
		                        			Cardiovascular Diseases
		                        			;
		                        		
		                        			Databases, Factual
		                        			;
		                        		
		                        			Neural Networks, Computer
		                        			
		                        		
		                        	
7.Intelligent Electrocardiogram Analysis in Medicine: Data, Methods, and Applications.
Yu-Xia GUAN ; Ying AN ; Feng-Yi GUO ; Wei-Bai PAN ; Jian-Xin WANG
Chinese Medical Sciences Journal 2023;38(1):38-48
		                        		
		                        			
		                        			Electrocardiogram (ECG) is a low-cost, simple, fast, and non-invasive test. It can reflect the heart's electrical activity and provide valuable diagnostic clues about the health of the entire body. Therefore, ECG has been widely used in various biomedical applications such as arrhythmia detection, disease-specific detection, mortality prediction, and biometric recognition. In recent years, ECG-related studies have been carried out using a variety of publicly available datasets, with many differences in the datasets used, data preprocessing methods, targeted challenges, and modeling and analysis techniques. Here we systematically summarize and analyze the ECG-based automatic analysis methods and applications. Specifically, we first reviewed 22 commonly used ECG public datasets and provided an overview of data preprocessing processes. Then we described some of the most widely used applications of ECG signals and analyzed the advanced methods involved in these applications. Finally, we elucidated some of the challenges in ECG analysis and provided suggestions for further research.
		                        		
		                        		
		                        		
		                        			Humans
		                        			;
		                        		
		                        			Arrhythmias, Cardiac/diagnosis*
		                        			;
		                        		
		                        			Electrocardiography/methods*
		                        			;
		                        		
		                        			Algorithms
		                        			
		                        		
		                        	
8.An Atrial Fibrillation Classification Method Study Based on BP Neural Network and SVM.
Chenqin LIU ; Gaozang LIN ; Jingjing ZHOU ; Jilun YE ; Xu ZHANG
Chinese Journal of Medical Instrumentation 2023;47(3):258-263
		                        		
		                        			
		                        			Atrial fibrillation is a common arrhythmia, and its diagnosis is interfered by many factors. In order to achieve applicability in diagnosis and improve the level of automatic analysis of atrial fibrillation to the level of experts, the automatic detection of atrial fibrillation is very important. This study proposes an automatic detection algorithm for atrial fibrillation based on BP neural network (back propagation network) and support vector machine (SVM). The electrocardiogram (ECG) segments in the MIT-BIH atrial fibrillation database are divided into 10, 32, 64, and 128 heartbeats, respectively, and the Lorentz value, Shannon entropy, K-S test value and exponential moving average value are calculated. These four characteristic parameters are used as the input of SVM and BP neural network for classification and testing, and the label given by experts in the MIT-BIH atrial fibrillation database is used as the reference output. Among them, the use of atrial fibrillation in the MIT-BIH database, the first 18 cases of data are used as the training set, and the last 7 cases of data are used as the test set. The results show that the accuracy rate of 92% is obtained in the classification of 10 heartbeats, and the accuracy rate of 98% is obtained in the latter three categories. The sensitivity and specificity are both above 97.7%, which has certain applicability. Further validation and improvement in clinical ECG data will be done in next study.
		                        		
		                        		
		                        		
		                        			Humans
		                        			;
		                        		
		                        			Atrial Fibrillation/diagnosis*
		                        			;
		                        		
		                        			Support Vector Machine
		                        			;
		                        		
		                        			Heart Rate
		                        			;
		                        		
		                        			Algorithms
		                        			;
		                        		
		                        			Neural Networks, Computer
		                        			;
		                        		
		                        			Electrocardiography
		                        			
		                        		
		                        	
9.Summary of evidence for threshold setting of multi-parameter electrocardiograph monitor in intensive care unit.
Ting LI ; Huiling HU ; Xue WU
Chinese Critical Care Medicine 2023;35(6):643-650
		                        		
		                        			OBJECTIVE:
		                        			To retrieve the evidence for threshold setting of multi-parameter electrocardiograph (ECG) monitors in intensive care unit (ICU), and summarize the best evidence.
		                        		
		                        			METHODS:
		                        			After literature retrieval, clinical guidelines, expert consensus, evidence summary and systematic review that met the requirements were screened. Guidelines were evaluated by the appraisal of guidelines for research and evaluation II (AGREE II), expert consensus and systematic review were evaluated by the Australian JBI evidence-based health care center authenticity evaluation tool, and evidence summary was evaluated by the CASE checklist. High-quality literature was selected to extract evidence related to the use and setup of multi-parameter ECG monitors in the ICU.
		                        		
		                        			RESULTS:
		                        			A total of 19 literatures were included, including 7 guidelines, 2 expert consensus, 8 systematic reviews, 1 evidence summary, and 1 national industry standard. After evidence extraction, translation, proofreading and summary, a total of 32 pieces of evidence were integrated. The included evidence involved the environmental preparation for the application of the ECG monitor, the electrical requirements of the ECG monitor, ECG monitor use process, ECG monitor alarm setting principles, ECG monitor alarm heart rate or heart rhythm monitoring setting, ECG monitor alarm blood pressure monitoring setting, ECG monitor alarm respiratory and blood oxygen saturation threshold setting, alarm delay warning time setting, adjusting alarm setting method, evaluating alarm setting time, improving the comfort of monitoring patients, reducing nuisance alarm report the occurrence, alarm priority processing, alarm intelligent processing and so on.
		                        		
		                        			CONCLUSIONS
		                        			This summary of evidence involves many aspects of the setting and application of ECG monitor. According to the latest guidelines and expert consensus, it is updated and revised to guide healthcare workers to monitor patients more scientifically and safely, and aims to ensure patient safety.
		                        		
		                        		
		                        		
		                        			Humans
		                        			;
		                        		
		                        			Clinical Alarms
		                        			;
		                        		
		                        			Australia
		                        			;
		                        		
		                        			Intensive Care Units
		                        			;
		                        		
		                        			Arrhythmias, Cardiac
		                        			;
		                        		
		                        			Electrocardiography
		                        			;
		                        		
		                        			Monitoring, Physiologic
		                        			
		                        		
		                        	
10.Validation of MyDiagnostick tool to identify atrial fibrillation in a multi-ethnic Asian population.
Colin YEO ; Aye Aye MON ; Vern Hsen TAN ; Kelvin WONG
Singapore medical journal 2023;64(7):430-433
		                        		
		                        			INTRODUCTION:
		                        			MyDiagnostick is an atrial fibrillation (AF) screening tool that has been validated in the Caucasian population in the primary care setting.
		                        		
		                        			METHODS:
		                        			In our study, we compared MyDiagnostick with manual pulse check for AF screening in the community setting.
		                        		
		                        			RESULTS:
		                        			In our cohort of 671 candidates from a multi-ethnic Asian population, AF prevalence was found to be 1.78%. Of 12 candidates, 6 (50.0%) had a previous history of AF and another 6 (50.0%) were newly diagnosed with AF. Candidates found to have AF during the screening were older (72.0 ± 11.7 years vs. 56.0 ± 13.0 years, P < 0.0001) and had a higher CHADSVASC risk score (2.9 ± 1.5 vs. 1.5 ± 1.1, P = 0.0001). MyDiagnostick had a sensitivity of 100.0% and a specificity of 96.2%. In comparison, manual pulse check had a sensitivity of 83.3% and a specificity of 98.9%.
		                        		
		                        			CONCLUSION
		                        			MyDiagnostick is a simple AF screening device that can be reliably used by non-specialist professionals in the community setting. Its sensitivity and specificity are comparable and validated across various studies performed in different population cohorts.
		                        		
		                        		
		                        		
		                        			Humans
		                        			;
		                        		
		                        			Atrial Fibrillation/diagnosis*
		                        			;
		                        		
		                        			Heart Rate
		                        			;
		                        		
		                        			Sensitivity and Specificity
		                        			;
		                        		
		                        			Risk Factors
		                        			;
		                        		
		                        			Electrocardiography
		                        			;
		                        		
		                        			Mass Screening
		                        			
		                        		
		                        	
            

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