Skip to main content
Enterprise AI Analysis: The Austrian MS database and the Austrian MS cohort

Enterprise AI Analysis

The Austrian MS database and the Austrian MS cohort

This project establishes a standardized, nationwide MS data collection in Austria, aiming to create a comprehensive population-based dataset for improving prognostic biomarkers, individualized therapy strategies, and treatment sequences for over 8000 people with MS.

Key Metrics & Projected Impact

The "Austrian MS database and the Austrian MS cohort" project is set to significantly advance MS research and patient care through structured data collection and analysis.

8000+ Patients with MS monitored
100% Data Harmonization Target
5+ Key Project Components
Since 2001 Initial Diagnosis Inclusion

Deep Analysis & Enterprise Applications

Select a topic to dive deeper, then explore the specific findings from the research, rebuilt as interactive, enterprise-focused modules.

CDEs Standardized Common Data Elements developed across core centers.

The project successfully developed a comprehensive set of Common Data Elements (CDE) for harmonized clinical and paraclinical data, ensuring consistency and quality across all participating centers. This foundational step is critical for reliable data aggregation and comparative analysis, addressing a major limitation of previous fragmented MS registries.

WebRDA Platform for Data Management

Problem: Previous MS registries suffered from compromised data quality and limited sharing capabilities due to non-harmonized collection and rudimentary quality control.

Solution: The project generated a common data collection infrastructure using the web-based Research, Documentation, and Analysis platform (we-bRDA). This system offers pseudonymized storage, a robust permissions system, and integrates data from all participating centers into a unified data model, fulfilling legal data protection and ethical requirements.

Result: Enhanced data security, rigorous quality control through automated plausibility and completeness checks, and improved data sharing potential for a broad research community.

Enterprise Process Flow

Standardized Patient Enrollment
Systematic Data Collection (Clinical, MRI, OCT, Biofluids)
Annual/Biennial Follow-up
Data Upload & Centralized Storage

The Austrian MS Cohort (AMSC) is a standardized prospective collection of demographic, clinical, epidemiological, psychosocioeconomic, MRI, and OCT data, as well as body fluids. It aims to establish a long-term cohort of pwMS in Austria to systematically follow patients and evaluate the long-term efficacy and safety profiles of available DMTs, with 580 patients already included as of November 2025.

Governance & Ethical Considerations

Aspect Project Implementation
Data Access & Review
  • Project proposals reviewed by AMSD/AMSC Board.
  • Unanimous approval required for data use.
  • Ethics Committee and data-clearing committee approval for aggregated data queries.
Data Security & Sharing
  • Pseudonymized data collection with unique ID numbers.
  • Secure data transfer via safe cloud or personal storage device.
  • International data and sample sharing encouraged with DTAs for non-EU countries.
Scientific Integrity
  • Responsible researchers must provide semi-annual progress reports and final analysis reports.
  • Publications require review and approval from AMSD/AMSC Board.
  • Contributors acknowledged or co-authored according to good scientific practice.

Calculate Your Potential Impact

Estimate the potential benefits of adopting harmonized data collection and advanced analytics in your organization, drawing parallels from this project's success.

Estimated Annual Savings $0
Annual Hours Reclaimed 0

Implementation Roadmap

Based on the successful rollout of the Austrian MS database, here's a generalized roadmap for similar enterprise data initiatives.

Phase 1: Needs Assessment & Harmonization

Define clear objectives, assess existing data infrastructure, and develop standardized Common Data Elements (CDEs) with stakeholder consensus. Establish core governance structure.

Phase 2: Infrastructure Development & Pilot

Implement a secure, scalable, and user-friendly data collection and management platform (e.g., webRDA). Conduct pilot testing with key centers to refine processes and ensure compliance.

Phase 3: Retrospective Data Integration & Quality Control

Migrate existing historical data into the new harmonized database, implementing rigorous quality control, plausibility checks, and data cleaning procedures.

Phase 4: Prospective Data Collection & Expansion

Roll out standardized prospective data collection across all participating centers. Continuously monitor data quality, provide ongoing training, and expand the cohort as planned.

Phase 5: Aggregated Analysis & Knowledge Dissemination

Facilitate aggregated data queries and analyses for scientific research. Publish findings, contribute to evidence-based development, and integrate with broader data ecosystems.

Ready to Transform Your Enterprise with AI?

Connect with our experts to discuss how these principles of data harmonization and advanced analytics can be tailored to your organization's unique needs.

Ready to Get Started?

Book Your Free Consultation.

Let's Discuss Your AI Strategy!

Lets Discuss Your Needs


AI Consultation Booking