NEFROCLOUD A Cloud-Based Service Supporting Predictive Medicine For Hemodialysis Patients

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Project Overview

NefroCloud is an advanced digital solution designed to support predictive medicine in the field of nephrology

By collecting and analyzing data from dialysis machines, NefroCloud enables healthcare professionals   to anticipate a potential decline in dialysis efficiency before it becomes clinically significant, offering a   valuable decision-support resource

Please note: Albeit functioning as a digital health device, NefroCloud is not classified as a medical device since it   provides early warning signals rather than clinical diagnoses

 

AIM

To improve the quality and safety of dialysis treatment by reducing the incidence of inadequate dialysis   efficiency, through the development of a comprehensive software and cloud infrastructure that enables:

Automated real-time data acquisition from dialysis equipment

Secure cloud-based environment to store and process clinical and device-generated data

Implementation of predictive algorithms to estimate dialysis efficiency and detect anomalies early

User-friendly web interface for healthcare staff to input relevant clinical data and receive alerts   and recommendations generated by the system

 

Method

System architecture and data flow:
both on-premises and cloud components;

the only local element is the interface connected to the dialysis devices (which transmits data securely   to the cloud infrastructure);

the cloud hosts the web interface for healthcare providers, the data storage system and the predictive   analytics engine

Validation roadmap:

will be conducted in collaboration with NefroCenter, the lead partner in the project, through its   extensive dialysis network, providing with access to over 24,000 dialysis sessions per month for a   significant and clinically relevant dataset;

will start at Technology Readiness Level (TRL) 4, with the aim of reaching TRL 6 by project completion,   demonstrating real-world applicability and scalability

 

Results

  •   Measurable improvements across multiple levels of patient care and organizational performance:
    •   Streamlined patient management, with improved workflow efficiency for dialysis centers
    •   Continuous patient monitoring, ensuring better tracking of treatment quality
    •   Proactive identification and communication of issues during or after dialysis sessions
    •   Early detection of potential treatment risks, allowing clinicians to intervene before complications arise.
  • Ultimately contribute to:
    •  Enhanced clinical outcomes
    •  Reduced risk of adverse events
    • Optimized use of healthcare resources

 

Conclusion

  • Expected benefits directly impacting end-users and various stakeholders:
    •   Simplification and optimization of patient management
    •   Active monitoring of the patient during dialysis sessions
    •   Timely communication of treatment-related issues
    •   Early detection of potential risks related to reduced dialysis efficiency