Vector Quality Sciences
VECTORQuality Sciences
Case Study

Global Oncology RBQM Program

Standardizing RBQM across 15 oncology trials at a global pharmaceutical company

Global Pharmaceutical Company
15 Phase II/III Oncology Trials
2022-2024

Key Results

75%
Faster Risk Detection
4 weeks → 1 week
23%
Data Quality Improvement
Query rate reduction
15
Trials Standardized
Unified KRI framework

The Challenge

A global pharmaceutical company was running 15 concurrent Phase II/III oncology trials across multiple therapeutic areas. Each trial had its own RBQM approach:

  • Inconsistent KRIs: Each study team defined their own KRIs, making cross-trial comparison impossible
  • Fragmented dashboards: Some trials used Medidata Detect, others used custom R Shiny apps, others used Excel
  • Slow risk detection: Risk signals took 4+ weeks to surface due to manual reporting cycles
  • No knowledge sharing: Lessons learned in one trial weren't applied to others
  • Audit inconsistency: Regulatory inspectors found different RBQM maturity levels across trials

The VP of Clinical Operations needed a standardized RBQM framework that could scale across the entire oncology portfolio while maintaining flexibility for protocol-specific risks.

The Solution

I was brought in as Senior Clinical Data Science Lead to design and implement a standardized RBQM program. The engagement lasted 18 months and included:

Phase 1: Framework Design (Months 1-3)

  • Core KRI Library: Designed 25 standardized KRIs applicable across all oncology trials (data quality, enrollment, safety, efficacy)
  • Protocol-Specific Add-Ons: Created methodology for study teams to add custom KRIs for unique protocol risks
  • Quality Tolerance Limits (QTLs): Validated thresholds using historical data from 8 completed oncology trials
  • Closed-Loop Workflows: Documented escalation paths and mitigation procedures for each KRI

Phase 2: Technical Implementation (Months 4-9)

  • Power BI Dashboard: Built automated dashboards pulling data from Medidata Rave, Oracle CTMS, and Safety Database
  • ETL Pipeline: Designed Python-based ETL process to refresh dashboards daily (previously monthly)
  • Automated Alerts: Configured email alerts when KRIs breach thresholds, with CTMS task creation
  • Role-Based Access: Created dashboards for CRAs, Study Managers, and Executive Leadership with appropriate data views

Phase 3: Rollout & Training (Months 10-18)

  • Pilot Trials: Rolled out to 3 trials first, refined based on feedback
  • Global Training: Trained 120+ CRAs, Study Managers, and Data Managers across US, EU, and APAC
  • Documentation: Created SOPs, user guides, and training videos
  • Ongoing Support: Provided 6 months of post-rollout support and KRI tuning

The Results

Quantitative Outcomes

75%
Faster Risk Detection
Risk signals surfaced in 1 week (down from 4 weeks), enabling proactive mitigation
23%
Data Quality Improvement
Average query rate decreased from 8.7% to 6.7% across all trials
40%
Reduced Monitoring Costs
Shifted from 100% SDV to risk-based SDV (30% average), saving $2.1M annually
92%
User Adoption Rate
120 trained users, 110 actively using dashboards weekly (measured at 6 months)

Qualitative Outcomes

  • Cross-Trial Benchmarking: Study Managers could now compare performance across trials, identifying best practices
  • Audit Readiness: FDA pre-approval inspection found "robust and well-documented RBQM program"
  • Executive Visibility: C-suite gained real-time portfolio view, enabling data-driven resource allocation
  • Knowledge Retention: Internal team now maintains and extends the system independently

Real-World Example: Early Risk Detection

In Month 14, the dashboard detected an unusual pattern at Site 042: tumor assessment data was being entered on time, but 40% of assessments showed "stable disease" (SD) compared to 15% portfolio average.

The automated alert triggered a root cause analysis. The CRA discovered the site was using an outdated RECIST 1.0 criteria instead of RECIST 1.1, systematically misclassifying partial responses as stable disease.

Impact: Site was retrained within 48 hours. Historical data was corrected before database lock. Without the KRI, this would have been discovered during statistical analysis—too late to fix.

Lessons Learned

  • 1.
    Standardization ≠ Rigidity: The core KRI library provided consistency, but allowing protocol-specific add-ons ensured buy-in from study teams
  • 2.
    Automation is Key: Daily dashboard refreshes (vs. monthly) made the difference between proactive and reactive risk management
  • 3.
    Training Must Be Role-Specific: CRAs needed different training than Study Managers. One-size-fits-all training failed in pilot trials
  • 4.
    Executive Sponsorship Matters: VP-level support ensured adoption. Without it, RBQM would have remained optional

Need Help Standardizing RBQM Across Your Portfolio?

I help pharmaceutical sponsors design and implement scalable RBQM programs that work across multiple trials. Let's discuss your portfolio challenges.