Things had to change. A commercial model built to deliver blockbuster drugs to the market was no longer effective for delivering therapies for complex disease states to smaller, more targeted patient populations and specialty providers. Patients became more empowered and discerning while physicians and other critical decision and policy makers became harder to reach. Customers integrated into larger organizations and consolidated their buying power at state, regional and/or country levels, with new value-based decision-making criteria and new decision-makers. The very definition of value evolved to encompass not only clinical attributes but also real-world outcomes and population health benefits as payers became more demanding. Conditional approval and reimbursement subject to re-reviews became the norm for many global products. Clinical development and commercialization timelines accelerated. Declining margins drove the need for more efficiency with promotional spend. Rather than receiving information provided by companies, key decision-makers now searched for the information they needed in the format and structure they wanted it. The universe of key stakeholders grew more diverse, and precious time could not be wasted before a company understood their needs and those of their patient populations, and how to meet their expectations.
And so biopharmaceutical commercialization models had to change. Being patient- or customercentric also meant being “consumer-centric,” like Amazon and Netflix, by delivering a wider range of services and support in ways people had become used to in other “consuming” areas of their lives. Consolidation and integration on the consumer side required integration on the company side, including the dissolution of brand silos and functional niches. Data and insights began to flow more freely between clinical and commercial teams, and companies became more nimble acting on them. Commercial strategy was better informed by clinical trial learnings, and market access and adoption insights were brought forward earlier in clinical development to inform evidence generation strategy. Digital transformation was embraced and predictive analytics illuminated customer drivers, barriers and Next Best Actions (think: the recommendations Amazon makes after you order something) with greater precision, enabling advanced engagement through coordinated action.