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Enterprise AI Analysis: Powering Responsible AI with High-Quality Real-World Data: The S-RACE Platform

Analysis for Article

Powering Responsible AI with High-Quality Real-World Data: The S-RACE Platform

The S-RACE platform, a secure, cloud-based solution developed in partnership with Microsoft and Porini, addresses critical data quality and governance challenges in healthcare AI. It systematically transforms raw hospital data into high-quality, research-grade evidence through an end-to-end pipeline, including on-premises anonymisation, NLP-driven extraction, and standardisation to FHIR format. Populated with data from over 31,000 patients and powering 19 research projects, S-RACE demonstrates comparable performance to manually curated data, accelerating the clinical adoption of responsible AI.

Key Metrics from Research

0 Patients in S-RACE
0 Active Research Projects
0 Data Quality Score (Average)
0 Faster Data Curation

Deep Analysis & Enterprise Applications

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S-RACE Data Pipeline

On-Premises Anonymisation
Secure Cloud Transfer
NLP & FHIR Standardisation
Curated Data Foundation
Responsible AI Development

Governance and Compliance

S-RACE is underpinned by a robust governance model aligned with ISO 42001 and the EU AI Act, ensuring data quality, risk management, and human oversight. This commitment to ethical and safe AI development is integral to its design, from data pseudonymisation to model deployment. The platform employs a hybrid data quality model, combining expert-driven evaluation with an automated pre-processing workflow, reinforcing its 'privacy by design' approach.

Current Patient Count

31,276Total Unique Patients

The platform currently serves 19 clinical research projects across diverse domains including oncology, cardiology, and diabetes, demonstrating its technical scalability and commitment to multidisciplinary research.

Kidney Cancer Mortality Prediction

Challenge: Lack of scalable, high-quality RWD for prognostic models in ccRCC.

Solution: Utilized S-RACE for automated RWD processing and AI model development.

Impact: Comparable performance to manually curated data, identifying novel prognostic variables and speeding up research.

In a study predicting cancer-specific mortality in non-metastatic clear cell renal cell carcinoma (ccRCC), models trained on S-RACE's automatically processed RWD performed comparably to those trained on manually curated data, validating the platform's core capability to generate high-quality, research-grade evidence. This project leveraged both traditional gold standard eCRF data and raw, unstructured RWD, demonstrating the platform's ability to extract novel prognostic variables.

FeatureS-RACE Automated CurationTraditional Manual Curation
Scalability
  • Highly scalable for vast datasets
  • Limited by human resources and time
Data Quality
  • Systematic, NLP-driven, FHIR-standardised
  • Expert-driven, prone to human error, variable standards
Compliance
  • Built-in GDPR, ISO 42001, EU AI Act alignment
  • Requires separate, labor-intensive oversight
Speed to Insight
  • Accelerated research timelines
  • Slow, bottlenecked by manual processes

Responsible AI Development

The S-RACE platform supports responsible AI development by integrating explainability techniques (XAI) like SHAP to make model predictions interpretable. It also adheres to governance standards such as ISO 42001 and the EU AI Act, ensuring that AI models are not only accurate but also trustworthy and equitable. The platform provides a robust framework for managing risks, ensuring fairness, and addressing potential biases, which is critical for clinical adoption.

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Estimated Annual Savings $0
Hours Reclaimed Annually 0

Your AI Implementation Roadmap

Our structured approach ensures a smooth, secure, and impactful AI integration into your enterprise workflows.

01 Discovery & Strategy

Comprehensive assessment of your current infrastructure, data landscape, and business objectives to define a tailored AI strategy.

02 Data Foundation & Curation

Secure, privacy-preserving data ingestion, anonymisation, and standardization into a high-quality, research-grade dataset.

03 Model Development & Validation

Building, training, and rigorously validating AI models using responsible AI principles, including explainability and bias detection.

04 Deployment & Integration

Seamless integration of validated AI models into your existing clinical and operational systems with continuous monitoring.

05 Continuous Optimization

Ongoing performance monitoring, recalibration, and enhancement of AI solutions to adapt to evolving needs and data.

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