AI-Driven Site and Investigator Selection

Mu Sigma Revolutionizes Site & PI Selection with Real-Time ML Engine

Clinical Trails website HD

SITUATION

A global pharmaceutical company was facing bottlenecks in clinical trial startup due to inconsistent site selection, unclear investigator performance signals, and delayed feasibility assessments. They needed a scalable, automated solution to select top-performing sites and principal investigators (PIs) using a data-driven approach.

CHALLENGE

  • Site selection was heavily manual, relying on anecdotal evidence and outdated performance metrics
  • PI contribution and influence were difficult to quantify
  • No standardized way to assess digital footprint, prior trial success, or publication impact across geographies
  • Users needed the ability to adapt site recommendations dynamically based on trial-specific factors

APPROACH

Mu Sigma built a two-phase solution:

  • Phase I:Developed a ranking engine combining historical trial data, publication volume, digital activity, and trial footprint to identify top-
    performing sites and PIs
  • Phase II:Deployed a robust, end-to-end tool with machine learning (ML) models that incorporated dynamic trial-level inputs (e.g., indication,
    geography, enrollment goals) to recommend best-fit Site-PI combinations in real-time
  • Integrated metrics included investigator engagement, therapeutic expertise, operational capacity, and dropout risk
  • Delivered insights through a user-friendly dashboard with customizable filters and model-driven outputs

IMPACT

  • Reduced site selection time by 65%, accelerating trial startup cycles
  • Improved precision of site-PI pairing, reducing underperforming site risk
  • Enabled smarter, geographically-aware site planning, improving feasibility across new markets
  • Enhanced strategic decision-making with transparent scoring logic and reproducible results

Business Impact

  • 65%

    Faster Site Selection

"With Mu Sigma’s AI-powered site selection engine, we’re no longer doing guesswork with investigator performance. We now know exactly where to go, and who should lead the way."

  • VP, Clinical Development Operations

Let’s move from data to decisions together. Talk to us.