Early Detection of Rare Diseases Using Real-World Data

Mu Sigma Uncovers Rare Disease Signals Using Real-World Data and Predictive AI

Website casestudy 684x383 Early Detection of Rare Diseases Using Real World Data

SITUATION

A Fortune 500 pharmaceutical company wanted to accelerate its R&D efforts in rare diseases. But with limited real-world data and underdiagnosed patient populations, feasibility assessments and early clinical investment decisions were difficult to justify.

CHALLENGE

Rare diseases are notoriously hard to diagnose. With 90% lacking FDA-approved treatments and minimal physician awareness, most patients are misdiagnosed or untreated for years. The client needed a model to identify at-risk patients early in their diagnostic journey long before a specialist might intervene.

APPROACH

Mu Sigma built a suite of AI models using EMR and insurance claims data to detect early signs of a specific rare disease:

  • Predictive Modeling:Leveraged XGBoost and Random Forest to build an ensemble detection model
  • Feature Engineering: Identified 4 new early-stage indicators using historical RWD
  • Medical Marker Validation: Collaborated with physicians to validate clinical “red flags” for the condition
  • Physician Mapping: Located doctors already interacting with potential patients to enable better targeting

IMPACT

  • Increased estimated eligible patient pool from 0.5% to 7%, improving drug pricing and market viability
  • Identified 95% of patients with the rare disease in test sets
  • Discovered 4 new predictive indicators
  • Validated key clinical symptoms, enabling better awareness campaigns and earlier interventions

Business Impact

  • 95%

    Patients Identified

  • 4

    New Predictive Indicators Discovered

"Mu Sigma helped us uncover what we couldn’t see. Their predictive models transformed our understanding of disease prevalence and gave our R&D team the confidence to move forward with clinical investments that once felt too risky."

  • SVP, Rare Disease R&D

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