HOW TO USE AIDOC STEP BY STEP

HOW TO USE AIDOC STEP BY STEP: COMPLETE TECHNICAL IMPLEMENTATION GUIDE

Executive Summary

AiDoc represents a revolutionary advancement in AI-powered medical imaging technology, transforming radiology workflows across healthcare institutions worldwide. This comprehensive technical guide provides detailed step-by-step instructions for implementing AiDoc’s AI platform, from initial planning through full deployment and optimization.

With implementations across over 1,000 medical facilities globally, AiDoc’s aiOS™ platform delivers clinically proven AI algorithms that detect acute abnormalities, prioritize critical cases, and enhance radiologist productivity. This guide draws from real-world experiences at leading healthcare institutions in the United States, Israel, Belgium, and other countries to provide practical implementation strategies.

AiDoc Radiology AI Workstation

1. Introduction to AiDoc AI Medical Imaging Technology

AiDoc’s artificial intelligence platform revolutionizes medical imaging by providing real-time analysis and detection capabilities across multiple pathologies. The system integrates seamlessly with existing PACS (Picture Archiving and Communication Systems) and RIS (Radiology Information Systems) infrastructure, delivering immediate alerts for critical findings.

AiDoc PACS Integration Architecture

Core Technology Components

  • aiOS™ Platform: The foundational AI operating system that powers all AiDoc algorithms
  • Widget Interface: Unified dashboard displaying AI results from multiple algorithms
  • Mobile Communication: Real-time notifications and care team coordination
  • PACS Integration: Deep integration with existing imaging infrastructure
  • Analytics Dashboard: Performance monitoring and ROI tracking capabilities

AiDoc Widget Interface

FDA-Cleared Algorithms

AiDoc offers one of the broadest ranges of FDA-cleared and CE/UKCA-marked algorithms in clinical AI, covering:

Category Algorithms Clinical Impact
Neurovascular Brain Aneurysm, Intracranial Hemorrhage, LVO/MeVO Faster stroke intervention
Cardiovascular Pulmonary Embolism, Aortic Dissection Critical condition prioritization
Chest & Abdomen Pneumothorax, Free Gas, Pulmonary Nodules Early detection and treatment
Fractures C-Spine, Rib, Extremity Fractures Reduced missed diagnoses

2. Pre-Implementation Planning

2.1 Organizational Assessment

1 Conduct Stakeholder AnalysisIdentify key stakeholders including radiologists, IT administrators, department heads, and clinical staff who will interact with the AiDoc system.

2 Evaluate Current WorkflowDocument existing radiology workflows, including image acquisition, reading protocols, reporting procedures, and communication patterns.

3 Define Success MetricsEstablish baseline measurements for turnaround times, diagnostic accuracy, radiologist workload, and patient outcomes.

Radiology Workflow Integration

2.2 Infrastructure Requirements Assessment

Before implementation, conduct a thorough assessment of your current IT infrastructure to ensure compatibility with AiDoc’s requirements.

Component Minimum Requirements Recommended Specifications
Network Bandwidth 100 Mbps dedicated 1 Gbps with redundancy
PACS Compatibility DICOM 3.0 compliant Latest DICOM standards
Workstation OS Windows 10/11, macOS 10.15+ Latest OS versions
Browser Support Chrome 90+, Firefox 88+ Latest browser versions
Security Protocols HIPAA compliance, TLS 1.2 TLS 1.3, advanced encryption

3. System Requirements and Compatibility

Radiology Workflow Integration

3.1 Technical Prerequisites

Platform Agnostic Design: AiDoc’s architecture is designed to integrate with any PACS system without requiring hardware upgrades or significant infrastructure changes.

Core System Requirements:

  1. PACS Integration:
    • DICOM C-STORE SCP capability
    • DICOM Query/Retrieve support
    • HL7 interface compatibility
    • FHIR API support (preferred)
  2. Network Infrastructure:
    • Dedicated VLAN for AI processing
    • Firewall configuration for secure communication
    • Load balancing capabilities
    • Redundant internet connections
  3. Security Requirements:
    • HIPAA compliance certification
    • SOC 2 Type II compliance
    • ISO 27001 certification
    • End-to-end encryption

AiDoc System Architecture

3.2 Compatibility Testing

Before full deployment, conduct comprehensive compatibility testing with your existing systems:

1 PACS Communication TestVerify DICOM connectivity and image transfer capabilities between AiDoc and your PACS system.

2 Network Performance ValidationTest image processing speeds and network latency under various load conditions.

3 Security Compliance VerificationEnsure all data transmission meets your organization’s security and compliance requirements.

4. Step-by-Step Installation and Setup Guide

AI Radiology Workflow Optimization

4.1 Initial System Preparation

1 Environment PreparationPrepare the target environment by ensuring all prerequisite software is installed and network configurations are optimized for AiDoc integration.

  • Install latest DICOM drivers
  • Configure network ports (typically 104, 11112)
  • Set up secure communication channels
  • Establish backup and recovery procedures
2 AiDoc Account ConfigurationWork with AiDoc support team to configure your organizational account with appropriate user roles and permissions.

  • Define administrator roles
  • Set up radiologist user accounts
  • Configure department-specific settings
  • Establish notification preferences

4.2 PACS Integration Setup

AiDoc Widget on Workstation

3 DICOM ConfigurationConfigure DICOM settings for seamless image transfer and processing:

  1. Navigate to PACS administration panel
  2. Add AiDoc as a DICOM destination
  3. Configure AE Title: “AIDOC_PRIMARY”
  4. Set IP address provided by AiDoc support
  5. Configure port 104 for DICOM communication
  6. Test connectivity using C-ECHO verification
4 Automatic Routing RulesSet up automatic routing rules to send relevant studies to AiDoc for AI analysis:

  • Configure study type filters (CT, MRI, X-Ray)
  • Set anatomical region routing (Head, Chest, Abdomen)
  • Establish priority-based routing
  • Define exception handling procedures

End-to-End AI Workflow Integration

4.3 Widget Installation

5 Widget DeploymentDeploy the AiDoc Widget on radiologist workstations:

  1. Download Widget installer from AiDoc portal
  2. Run installer with administrator privileges
  3. Configure Widget to connect to your AiDoc instance
  4. Integrate Widget with PACS viewer
  5. Customize Widget appearance and notifications
  6. Test Widget functionality with sample cases

5. PACS Integration Procedures

5.1 Deep PACS Integration

AiDoc’s deep PACS integration ensures seamless workflow integration without disrupting existing radiology operations.

Radiologist Using AiDoc Interface

1 Worklist IntegrationConfigure AiDoc to integrate directly with your PACS worklist:

  • AI-flagged cases appear with visual indicators
  • Priority cases automatically move to top of worklist
  • Critical findings trigger immediate alerts
  • Case status updates reflect AI analysis progress
2 Image Viewer IntegrationEmbed AiDoc results directly in your PACS image viewer:

  1. Configure overlay annotations for AI findings
  2. Set up heatmap visualizations
  3. Enable measurement tools integration
  4. Customize finding presentation preferences

Radiologist Workflow Integration Perspectives

5.2 Reporting System Integration

3 RIS IntegrationIntegrate AiDoc findings with your Radiology Information System:

  • Automatic pre-population of report templates
  • Structured reporting with AI findings
  • Billing code suggestions based on findings
  • Quality metrics tracking and reporting

6. Workflow Configuration and Optimization

AI Integration Options for Radiology Workflow

6.1 Algorithm Configuration

Configure AiDoc algorithms based on your department’s specific needs and patient populations.

Algorithm Default Sensitivity Customizable Parameters Clinical Considerations
Intracranial Hemorrhage High (95%) Volume threshold, location filters Emergency department priority
Pulmonary Embolism High (92%) Vessel size, confidence levels Both acute and incidental detection
C-Spine Fractures Medium (88%) Fracture type, severity levels Trauma workflow integration
Pneumothorax High (94%) Size thresholds, tension detection ICU and emergency settings

6.2 Notification and Alert Configuration

1 Alert Hierarchy SetupConfigure alert levels based on clinical urgency:

  • Critical Alerts: Immediate notification for life-threatening conditions
  • Urgent Alerts: Priority notifications for time-sensitive findings
  • Routine Alerts: Standard workflow notifications
  • Incidental Findings: Follow-up recommendations

AiDoc Mobile Interface

6.3 Mobile Communication Setup

2 Mobile App ConfigurationSet up the AiDoc mobile application for care team communication:

  1. Download AiDoc mobile app from app stores
  2. Configure user accounts for clinical staff
  3. Set up department-specific notification groups
  4. Customize alert tones and vibration patterns
  5. Configure secure messaging protocols
  6. Test end-to-end communication workflows

7. User Training and Onboarding

AI Agents in Radiology Training Systems

7.1 Comprehensive Training Program

Successful AiDoc implementation requires thorough training for all user groups. The training program should be tailored to different roles and responsibilities.

1 Radiologist TrainingSpecialized training for radiologists focusing on:

  • Understanding AI algorithm capabilities and limitations
  • Interpreting AI findings and confidence scores
  • Using the Widget interface effectively
  • Incorporating AI results into diagnostic workflow
  • Quality assurance and feedback procedures
2 Technologist TrainingTechnical staff training covering:

  • Study routing and protocol optimization
  • Image quality requirements for AI analysis
  • Troubleshooting common technical issues
  • Emergency escalation procedures
3 Clinical Staff TrainingTraining for nurses, physicians, and other clinical staff:

  • Mobile app usage and notification handling
  • Understanding AI alert significance
  • Communication protocols for critical findings
  • Patient care coordination using AiDoc insights

7.2 Training Resources and Materials

  • Interactive E-learning Modules: Self-paced online training with progress tracking
  • Hands-on Workshops: Practical sessions with real case examples
  • Video Tutorials: Step-by-step guidance for common workflows
  • Quick Reference Guides: Pocket-sized guides for daily use
  • Certification Programs: Formal certification for advanced users

8. Real-World Implementation Examples from Multiple Countries

CT Workflow from Order to Report

8.1 United States Implementation Cases

🇺🇸 Emory Healthcare – Pulmonary Embolism Care Optimization

Challenge: Emory Healthcare needed to improve PE patient identification and reduce time to treatment for both inpatient and outpatient populations.

Implementation Process:

  1. Installed AiDoc PE algorithm across all CT scanners
  2. Integrated with Epic EHR for seamless workflow
  3. Configured mobile alerts for pulmonology team
  4. Established PE response protocols

Results:

  • Significant reduction in time to PE team notification
  • Improved patient outcomes through faster intervention
  • Enhanced workflow efficiency for clinical staff
  • 24/7 coverage including remote monitoring capabilities

Dr. Charles Grodzin, Internal Medicine Pulmonologist: “It alerts my team, both inpatient and outpatient, of PE patients that I don’t have to search for, which is a huge time saver for me, my administrative staff and the PE team.”

🇺🇸 HOAG Hospital – Aortic Dissection Rapid Response

Challenge: HOAG Hospital needed to accelerate notification and treatment for acute aortic dissection cases, where every minute counts for patient survival.

Implementation Process:

  1. Deployed AiDoc aortic dissection algorithm
  2. Created automated surgical team alerts
  3. Integrated with OR scheduling system
  4. Established direct communication channels

Results:

  • Surgeons notified while patients still in CT suite
  • Dramatically reduced time to surgical intervention
  • Improved survival rates for critical cases
  • Streamlined interdisciplinary communication

Dr. Scott Williams, Medical Director: “The surgeon received the notification while still in the hospital, allowing them to see the patient immediately after the scan. The bottom line is that the workflow worked.”

🇺🇸 St. Luke’s Health System – Addressing Radiologist Shortages

Challenge: St. Luke’s faced significant radiologist staffing shortages while maintaining quality patient care standards.

Implementation Process:

  1. Implemented comprehensive AiDoc algorithm suite
  2. Prioritized incidental PE detection algorithm
  3. Configured intelligent worklist management
  4. Established quality assurance protocols

Results:

  • Improved efficiency with limited radiologist resources
  • Enhanced diagnostic confidence for complex cases
  • Reduced mental fatigue through AI assistance
  • Better patient outcomes through early detection

Dr. John Borsa, Chair of Radiology: “What limited resources I have need to be more efficient, helping us get through more of the day’s work with less mental fatigue.”

Ultimate Guide to AI in Radiology Implementation

8.2 Israel Implementation Cases

🇮🇱 Assuta Hospital – Outpatient Imaging Excellence

Challenge: Assuta Hospital needed to improve detection of critical conditions in outpatient settings where patients appear stable but may have serious underlying conditions.

Implementation Process:

  1. Deployed AiDoc across outpatient imaging centers
  2. Trained technologists on AI-assisted workflows
  3. Established protocols for unexpected findings
  4. Integrated with hospital communication systems

Results:

  • Earlier detection of critical conditions in stable patients
  • Improved technologist confidence in identifying urgent cases
  • Reduced time to appropriate clinical intervention
  • Enhanced overall patient safety protocols

Dr. Michal Guindy, Head of Imaging and Innovation: “AI is going to be the standard of care, and we need to learn how to live with and enjoy these solutions.”

🇮🇱 Sheba Medical Center – High-Volume Neuroimaging

Challenge: Sheba Medical Center processes extremely high volumes of neuroimaging studies and needed AI assistance to manage workload while maintaining diagnostic accuracy.

Implementation Process:

  1. Implemented comprehensive neuro AI algorithms
  2. Configured intelligent case prioritization
  3. Established teamwork protocols with AI assistance
  4. Integrated with existing PACS infrastructure

Results:

  • Effective management of dramatically increased workloads
  • Improved prioritization of urgent neurological cases
  • Enhanced collaboration between radiologists and clinicians
  • Faster treatment initiation for critical patients

Dr. Chen Hoffman, Head of Neuroradiology: “The workload in one day in 2018 is equal to a week in 2008 and a month in 1998, so we need help.”

Radiology Workflow Optimization Mastery

8.3 Belgium Implementation Case

🇧🇪 University of Antwerp – Academic Medical Center Integration

Challenge: The University of Antwerp needed to integrate AI into academic workflows while maintaining teaching and research objectives.

Implementation Process:

  1. Pilot implementation with intracranial hemorrhage detection
  2. Integration with resident training programs
  3. Research protocol establishment for AI validation
  4. Academic workflow optimization

Results:

  • Enhanced teaching opportunities with AI-assisted learning
  • Improved diagnostic accuracy for trainees
  • Valuable research data collection for AI validation
  • Preparation for the future of AI-driven radiology

Dr. Paul Parizel, Chair Department of Imaging: “It doesn’t replace radiologist, but it does have the ability to take over simple and repetitive tasks that radiologists traditionally have to do.”

Benefits of AI in Medical Imaging

9. Troubleshooting Guide

Integrating and Adopting AI in Radiology Workflow

9.1 Common Technical Issues

Issue 1: DICOM Connection FailuresSymptoms: Images not reaching AiDoc for analysis, connection timeout errors

Solutions:

  • Verify network connectivity and firewall settings
  • Check DICOM configuration parameters (AE Title, IP, Port)
  • Ensure PACS and AiDoc services are running
  • Test with DICOM echo verification
Issue 2: Widget Not Displaying ResultsSymptoms: Widget appears but shows no AI findings or remains blank

Solutions:

  • Refresh widget connection to AiDoc server
  • Verify user permissions and authentication
  • Check study compatibility with configured algorithms
  • Clear widget cache and restart application
Issue 3: Mobile Notifications Not WorkingSymptoms: Critical alerts not reaching mobile devices

Solutions:

  • Verify push notification permissions in device settings
  • Check network connectivity and firewall rules
  • Confirm user account configuration and group assignments
  • Test notification system with sample cases

9.2 Performance Optimization

1 Network OptimizationOptimize network performance for faster image processing:

  • Implement Quality of Service (QoS) rules for AiDoc traffic
  • Configure dedicated VLAN for AI processing
  • Monitor bandwidth utilization and adjust as needed
  • Implement load balancing for high-volume environments
2 Algorithm TuningFine-tune algorithm settings for optimal performance:

  • Adjust sensitivity thresholds based on clinical needs
  • Configure study routing rules for efficiency
  • Optimize notification timing and frequency
  • Monitor false positive/negative rates and adjust accordingly

10. Performance Monitoring and ROI Measurement

DICOM Image Viewer for Medical Files

10.1 Key Performance Indicators

Monitor these essential metrics to measure AiDoc’s impact on your radiology department:

Metric Category Key Indicators Target Improvements Measurement Method
Efficiency Turnaround time, Studies per hour 20-30% improvement PACS analytics, Time stamps
Quality Diagnostic accuracy, Missed findings 15-25% reduction in errors Clinical outcomes tracking
Clinical Impact Time to treatment, Patient outcomes Faster interventions EHR integration data
Workflow Radiologist satisfaction, Workload distribution Improved work-life balance Surveys, Productivity metrics

AiDoc Analytics Dashboard

10.2 ROI Analysis Framework

1 Cost-Benefit AnalysisCalculate return on investment using these factors:

  • Direct Costs: License fees, implementation costs, training expenses
  • Operational Savings: Reduced overtime, improved efficiency, fewer recalls
  • Quality Improvements: Reduced malpractice risk, better patient outcomes
  • Revenue Enhancement: Faster turnaround, increased capacity, improved reputation
2 Performance DashboardImplement comprehensive performance monitoring:

  • Real-time algorithm performance metrics
  • Workflow efficiency measurements
  • Clinical outcome tracking
  • User satisfaction surveys
  • Automated reporting and alerts

11. Maintenance and Updates

DICOM Viewer Interface Medical Imaging Formats

11.1 Routine Maintenance Procedures

1 Daily MonitoringPerform daily system health checks:

  • Verify DICOM connectivity and image processing
  • Check algorithm processing queues and response times
  • Monitor mobile notification delivery
  • Review critical alert acknowledgments
2 Weekly ReviewsConduct weekly performance assessments:

  • Analyze algorithm performance metrics
  • Review user feedback and support tickets
  • Check system resource utilization
  • Update configuration settings as needed
3 Monthly OptimizationsPerform monthly system optimizations:

  • Fine-tune algorithm sensitivity settings
  • Update user accounts and permissions
  • Review and update notification protocols
  • Conduct performance benchmarking

11.2 Update and Upgrade Management

Seamless Updates: AiDoc provides automated update mechanisms that minimize downtime and ensure continuous service availability.

Update Process:

  1. Notification: Receive advance notice of available updates
  2. Testing: Test updates in staging environment
  3. Scheduling: Schedule updates during low-activity periods
  4. Implementation: Apply updates with minimal service interruption
  5. Validation: Verify system functionality post-update
  6. Monitoring: Monitor system performance after updates

12. Future Considerations and Scalability Planning

AiDoc Future AI Capabilities

12.1 Emerging AI Capabilities

AiDoc continues to expand its AI capabilities with new algorithms and enhanced features:

  • Multimodal AI Systems: Integration across different imaging modalities
  • Predictive Analytics: AI-driven predictions for disease progression
  • Automated Reporting: AI-assisted report generation and structuring
  • Population Health Insights: Aggregated analytics for population health management
  • Personalized Medicine: AI recommendations based on individual patient factors

12.2 Scalability Planning

1 Infrastructure ScalingPlan for growth and increased processing demands:

  • Network bandwidth expansion capabilities
  • Storage capacity planning for increased data volumes
  • Computational resource scaling for additional algorithms
  • Geographic expansion considerations
2 Organizational ExpansionPrepare for expanding AiDoc usage across your organization:

  • Additional department integration (Emergency, ICU, Oncology)
  • Multi-site deployment strategies
  • Integration with affiliated hospitals and clinics
  • Telemedicine and remote reading capabilities

12.3 Regulatory and Compliance Evolution

Stay prepared for evolving regulatory requirements:

  • FDA Updates: Keep current with new FDA guidance on AI in medical devices
  • International Standards: Prepare for global expansion with international certifications
  • Data Privacy: Evolving data privacy regulations and compliance requirements
  • Quality Standards: New quality metrics and reporting requirements

Conclusion

The implementation of AiDoc represents a transformational step in modernizing radiology workflows and improving patient care outcomes. This comprehensive guide has provided detailed instructions for every phase of implementation, from initial planning through ongoing optimization.

Key Success Factors:

  • Thorough pre-implementation planning and stakeholder engagement
  • Careful attention to technical requirements and system compatibility
  • Comprehensive training programs for all user groups
  • Ongoing monitoring and optimization of system performance
  • Continuous adaptation to evolving clinical needs and technologies

Organizations worldwide have demonstrated that successful AiDoc implementation leads to:

  • Improved Patient Outcomes: Faster detection and treatment of critical conditions
  • Enhanced Workflow Efficiency: Streamlined radiology operations and reduced workload
  • Better Resource Utilization: Optimized use of radiologist time and expertise
  • Increased Diagnostic Confidence: AI-assisted decision making and quality assurance
  • Future-Ready Infrastructure: Scalable platform for continuous innovation

As AI technology continues to evolve, AiDoc’s platform provides a robust foundation for incorporating future advances while maintaining the highest standards of patient care and clinical excellence. The step-by-step approach outlined in this guide ensures successful implementation regardless of your organization’s size, complexity, or geographic location.

For additional support and resources, contact the AiDoc implementation team to discuss your specific requirements and customization needs. The future of radiology is here, and AiDoc provides the pathway to transform your imaging operations while maintaining the human expertise that remains central to excellent patient care.

 

 

 

 

 

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