Patient-Centric Insights from Real-World Treatment Journey Visualization

Background

  • Market leading brand in a highly competitive modern anti-diabetic class
  • Heavy focus on HCP-centered analytics & insights … lack of visibility into how brand fits into the real patient journey
  • Longitudinal (big) data lying virtually untapped on the cloud. Utilized, when needed, by analytics team to address business questions (tip of the iceberg)
  • KBQs: How to fully leverage big data to rapidly derive patient-centric insights for brand team?

Objective

Build tool to visualize real-world treatment journey for diabetes patients by class, along with KPIs to enable patient-centered insights and hypothesis generation
  • Visualize patient journey across lines of therapy
  • Provide KPIs at the market, brand, competitor and patient-level
  • Inform brand planning
  • Rapidly update tool and KPIs with incremental data

Approach

  • Defined key business questions (KBQs) around the market, brand, competitor switching, patient journey and outcome
  • Identified KPIs – firmed up definitions in collaboration with client
  • Defined detailed business rules for diabetes patient journey progression
  • Build Visualization Tool and beta tested with select group of users
  • Deployed tool to the broader user community, and maintained it over time
  • Guided design of patient analytics (deep dives)

Insights & Results

  • Real-world patient journey is quite different (e.g. Many T2D patients getting started on DPP4, GLP1, SGLT2 vs. Metformin)
  • Client’s brand leads competitor in 2L but is a close second in 3L
  • Naïve patients contributing to lower days on therapy
  • Reframed targeting – Shift from Metformin-heavy writers to those treating patients with the highest likelihood to switch by LoT
  • Informed and shaped brand plan, and triggered focused AI/ML patient finder projects