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Related Experiment Video

Updated: Nov 22, 2025

Recording Human Electrocorticographic ECoG Signals for Neuroscientific Research and Real-time Functional Cortical Mapping
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ReportFlow: an application for EEG visualization and reporting using cloud platform.

S Bertuccio1, G Tardiolo1, F M Giambò1

  • 1IRCCS Centro Neurolesi "Bonino Pulejo", S.S. 113, Contrada Casazza, 98124, Messina, Italy.

BMC Medical Informatics and Decision Making
|January 7, 2021
PubMed
Summary
This summary is machine-generated.

ReportFlow, a cloud-based system, significantly reduces electroencephalogram reporting and delivery times. This innovation enhances healthcare efficiency and digital delivery of patient reports, improving data security.

Keywords:
CloudData sharingMedical reportsPrivacyPublic keyRole-based access controlSecurity

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Area of Science:

  • Healthcare Informatics
  • Cloud Computing Security

Background:

  • Cloud technology offers optimization for data sharing and computing in various sectors.
  • Healthcare adoption of cloud systems reduces infrastructure costs and staff mobility needs.
  • Patient data protection is a critical challenge in public cloud environments.

Purpose of the Study:

  • To introduce ReportFlow, a cloud-based system designed to enhance electroencephalogram (EEG) reporting and delivery.
  • To evaluate the efficiency and security improvements offered by ReportFlow in a clinical setting.

Main Methods:

  • A use-case scenario in an Italian hospital illustrated ReportFlow's functionality.
  • Key encryption and key management techniques were employed for data security.
  • Statistical analysis (X² test, unpaired Student t test) compared pre- and post-implementation metrics.

Main Results:

  • ReportFlow significantly reduced EEG exam reporting time (t=19.94; p<0.001) and delivery time (t=14.95; p<0.001).
  • The number of neurophysiological examinations performed increased by approximately 20%.
  • 68% of exam reports were delivered entirely digitally, ensuring data integrity and security.

Conclusions:

  • ReportFlow provides an optimal solution for optimizing legacy reporting processes in healthcare.
  • The system demonstrates promising preliminary results in performance enhancement.
  • Future development includes automated certificate generation and release.