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Background: A 12-lead electrocardiogram (ECG) is the most commonly used method to diagnose patients with cardiovascular diseases. However, there are a number of possible misinterpretations of the ECG that can be caused by several different factors, such as the misplacement of chest electrodes.
Objective: The aim of this study is to build advanced algorithms to detect precordial (chest) electrode misplacement.
Methods: In this study, we used traditional machine learning (ML) and deep learning (DL) to autodetect the misplacement of electrodes V1 and V2 using features from the resultant ECG. The algorithms were trained using data extracted from high-resolution body surface potential maps of patients who were diagnosed with myocardial infarction, diagnosed with left ventricular hypertrophy, or a normal ECG.
Results: DL achieved the highest accuracy in this study for detecting V1 and V2 electrode misplacement, with an accuracy of 93.0% (95% CI 91.46-94.53) for misplacement in the second intercostal space. The performance of DL in the second intercostal space was benchmarked with physicians (n=11 and age 47.3 years, SD 15.5) who were experienced in reading ECGs (mean number of ECGs read in the past year 436.54, SD 397.9). Physicians were poor at recognizing chest electrode misplacement on the ECG and achieved a mean accuracy of 60% (95% CI 56.09-63.90), which was significantly poorer than that of DL (P<.001).
Conclusions: DL provides the best performance for detecting chest electrode misplacement when compared with the ability of experienced physicians. DL and ML could be used to help flag ECGs that have been incorrectly recorded and flag that the data may be flawed, which could reduce the number of erroneous diagnoses.
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http://dx.doi.org/10.2196/25347 | DOI Listing |
Nurse Educ Pract
August 2025
Faculty of Nursing, Universidad de Cantabria, IDIVAL Nursing Research Group, Avda. Valdecilla s/n., Santander 39008, Spain.
Background: Gender inequalities in care of women with cardiopulmonary arrest may be due to lack of training with manikins representing the female thorax. Incorporating this feature in basic life support (BLS) training would support a more equitable and effective response.
Aim: To evaluate the impact of using female torso mannikins in BLS training for nursing students.
BMJ Open
August 2025
Department of Paediatric Respiratory and Sleep Medicine, Royal Hospital for Children, Glasgow, UK.
Introduction: Accurate evaluation of respiratory rate and pattern is important in health and disease; however, it can be challenging in children and babies due to small size and poor tolerability of existing monitoring equipment. This protocol outlines a study evaluating the feasibility of collecting respiratory data using a chest-worn accelerometer-based motion sensor in paediatric patients at risk of apnoea, respiratory failure and sudden death.
Methods And Analysis: This is an observational feasibility study over a 2-year period.
Background: Radiation therapy (RT) can cause cardiac implantable electronic device (CIED) malfunction, primarily reset. Given changes in RT and CIED technologies, large observational studies examining malfunction of contemporary CIEDs during modern-day RT are needed to guide clinical practice.
Methods: Electronic medical records of all consecutive patients with CIEDs who underwent RT at a large tertiary cancer center between January 2015 and January 2022 were reviewed.
IEEE Trans Biomed Eng
August 2025
The diaphragmatic electromyogram (EMGdi) holds critical information about human respiration and can be employed to monitor respiratory conditions. Recording EMGdi noninvasively using surface electrodes placed on the chest is convenient. However, the extraction of the weak surface EMGdi (sEMGdi) from a noisy environment remains challenging, limiting its clinical application compared to esophageal EMGdi.
View Article and Find Full Text PDFZhonghua Wei Zhong Bing Ji Jiu Yi Xue
May 2025
Department of Emergency, Kweichow Moutai Hospital, Renhuai 564500, Guizhou, China.
Objective: To compare the effects of different chest compression rates (60-140 times/min) on hemodynamic parameters, return of spontaneous circulation (ROSC), resuscitation success, and survival in a porcine model of cardiac arrest (CA) followed by cardiopulmonary resuscitation (CPR).
Methods: Forty healthy male domestic pigs were randomly divided into five groups based on chest compression rate: 60, 80, 100, 120, and 140 times/min (n = 8). All animals underwent standard anesthesia and tracheal intubation.