AI Article Synopsis

  • This study introduces a novel hybrid machine learning model that combines population-based and patient-specific approaches for pinpointing the origin of ventricular tachycardia using ECG data.
  • The model first employs a general deep learning system trained on data from multiple patients to account for anatomical differences before adapting in real-time to a patient's specific data, improving predictions with each pacing suggestion.
  • Testing on a new cohort demonstrated the model's effectiveness, achieving a precise localization error of just 5.3 mm, indicating it could significantly enhance the speed and accuracy of identifying VT targets in clinical settings.

Article Abstract

Background: Machine learning models may help localize the site of origin of ventricular tachycardia (VT) using 12-lead electrocardiograms. However, population-based models suffer from inter-subject anatomical variations within ECG data, while patient-specific models face the open challenge of what pacing data to collect for training.

Methods: This study presents and validates the first hybrid model that combines population and patient-specific machine learning for rapid "computer-guided pace-mapping". A population-based deep learning model was first trained offline to disentangle inter-subject variations and regionalize the site of VT origin. Given a new patient with a target VT, an on-line patient-specific model -- after being initialized by the population-based prediction -- was then built in real time by actively suggesting where to pace next and improving the prediction with each added pacing data, progressively guiding pace-mapping towards the site of VT origin.

Results: The population model was trained on pace-mapping data from 38 patients and the patient-specific model was subsequently tuned on one patient. The resulting hybrid model was tested on a separate cohort of eight patients in localizing 1) 193 LV endocardial pacing sites, and 2) nine VTs with clinically determined exit sites. The hybrid model achieved a localization error of 5.3 ± 2.6 mm using 5.4 ± 2.5 pacing sites in localizing LV pacing sites, achieving a significantly higher accuracy with a significantly smaller amount of training sites in comparison to models without active guidance.

Conclusion: The presented hybrid model has the potential to assist rapid pace-mapping of interventional targets in VT.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC7606703PMC
http://dx.doi.org/10.1016/j.compbiomed.2020.104013DOI Listing

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