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A Collaborative Platform for Advancing Automatic Interpretation in ECG Signals.

Luis Alberto Gordillo-RobleroJorge Alberto Soto-CajigaDaniela Díaz AlonsoFrancisco David Pérez-ReynosoHugo Jiménez-Hernández
Published in: Diagnostics (Basel, Switzerland) (2024)
Numerous papers report the efficiency of the automatic interpretation capabilities of commercial algorithms. Unfortunately, these algorithms are proprietary, and academia has no means of directly contributing to these results. In fact, nothing at the same stage of development exists in academia. Despite the extensive research in ECG signal processing, from signal conditioning to expert systems, a cohesive single application for clinical use is not ready yet. This is due to a serious lack of coordination in the academic efforts, which involve not only algorithms for signal processing, but also the signal acquisition equipment itself. For instance, the different sampling rates and the different noise levels frequently found in the available signal databases can cause severe incompatibility problems when the integration of different algorithms is desired. Therefore, this work aims to solve this incompatibility problem by providing the academic community with a diagnostic-grade electrocardiograph. The intention is to create a new standardized ECG signals database in order to address the automatic interpretation problem and create an electrocardiography system that can fully assist clinical practitioners, as the proprietary systems do. Achieving this objective is expected through an open and coordinated collaboration platform for which a webpage has already been created.
Keyphrases
  • machine learning
  • deep learning
  • heart rate variability
  • mental health
  • heart rate
  • artificial intelligence
  • big data
  • primary care
  • quality improvement
  • air pollution
  • emergency department
  • early onset
  • drug induced