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Accepted for/Published in: JMIR Research Protocols

Date Submitted: Jan 4, 2023
Date Accepted: Apr 25, 2023

The final, peer-reviewed published version of this preprint can be found here:

Internet of Things and New Technologies for Tracking Perioperative Patients With an Innovative Model for Operating Room Scheduling: Protocol for a Development and Feasibility Study

Bottani E, Bellini V, Mordonini M, Pellegrino M, Lombardo G, Franchi B, Craca M, Bignami E

Internet of Things and New Technologies for Tracking Perioperative Patients With an Innovative Model for Operating Room Scheduling: Protocol for a Development and Feasibility Study

JMIR Res Protoc 2023;12:e45477

DOI: 10.2196/45477

PMID: 37405821

PMCID: 10357371

INTERNET OF THINGS AND NEW TECHNOLOGIES FOR PERIOPERATIVE TRACKING PATIENTS: TOWARDS A INNOVATIVE MODEL FOR OPERATING ROOM SCHEDULING

  • Eleonora Bottani; 
  • Valentina Bellini; 
  • Monica Mordonini; 
  • Mattia Pellegrino; 
  • Gianfranco Lombardo; 
  • Beatrice Franchi; 
  • Michelangelo Craca; 
  • Elena Bignami

ABSTRACT

Background:

Operating rooms management is a critical point in healthcare organizations; inefficient scheduling and allocation of human and physical resources are often present.

Objective:

This study aims to automatically collect data from a real surgical scenario to develop an integrated technological-organizational model that optimizes the operating block resources.

Methods:

Each patient is real-time tracked and located by wearing a bracelet sensor with a unique identifier. Exploiting indoor localization, the software architecture is able to collect the time spent in every steps inside the surgical block.

Results:

The preliminary results are promising, making the study feasible and functional. Times automatically recorded are much more precise than those collected by humans and reported in the organization's information system. In addition, Machine Learning can exploit the historical data collection to predict the surgery time required for each patient according to the patient’s specific profile.

Conclusions:

This approach will make it possible to plan short and long-term strategies optimizing the available resources. Clinical Trial: The study was approved by the Local Ethics Committee (protocol nr. 1284/2020/OSS/AOUPR, Comitato Etico Unico per l’Area Vasta Emilia Nord; AN INTELLIGENT MODEL FOR THE OPERATIVE BLOCK (BLOC-OP),NCT05106621, registration 1/11/2021, https://clinicaltrials.gov/)


 Citation

Please cite as:

Bottani E, Bellini V, Mordonini M, Pellegrino M, Lombardo G, Franchi B, Craca M, Bignami E

Internet of Things and New Technologies for Tracking Perioperative Patients With an Innovative Model for Operating Room Scheduling: Protocol for a Development and Feasibility Study

JMIR Res Protoc 2023;12:e45477

DOI: 10.2196/45477

PMID: 37405821

PMCID: 10357371

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