As therapies become increasingly complex and personalized, it is imperative that physicians prescribe the right patient the right treatment at the right time. Trigger programs help with this effort by using real-world data (RWD) and analytics to identify physicians treating patients meeting specific criteria, such as a confirmed lab result in conjunction with specific medication history. An alert is then sent to sales or medical affairs teams, typically through the pharma company’s customer relationship management (CRM) program, with a recommended next-best action.
By implementing a trigger program that informs physician education and outreach efforts, you can:
HealthVerity recently hosted a webinar with our partner Medidata, a leading analytics provider generating evidence and insights for pharmaceutical companies, that discussed the principals to implementing a best-in-class data-driven trigger program. If you missed the webinar, here’s what it covered:
The more complex or personalized the medication, the more inclusion or exclusion criteria there might be to determine who is an appropriate patient for the therapy. To develop a well-designed trigger program that factors in the varied criterion, RWD is needed from a variety of sources.
For example, medical claims can provide information on the patient’s diagnosis and comorbidities, while lab data informs on the condition severity with test results possibly determining the appropriateness of a given therapy or biomarkers ruling a patient in or out. Pharmacy claims provide insight on prior lines of therapy and may disqualify a patient from taking a complex drug or it may be determined that the individual needs to take another drug first.
Following are key imperatives for ensuring data works for your trigger program:
To turn this data into a best-in-class trigger program, you need to apply analytics using machine learning or artificial intelligence. Using these techniques to create micro-segments can provide the most insights.
To develop a micro-segment, you have to first generate a hypothesis of what information the trigger should rely on in order to determine the right patient for treatment. Consider if there are elements of the patient’s medical history that are relevant, such as past diagnoses, if there are necessary lab results, important social determinants of health characteristics, or if it’s more reliant on the payer and formulary access, or the type of treating physician.
Next, ingest relevant data sources needed to inform your hypothesis. The data is then used to perform segmentation and analysis to generate distinct micro-segments for different types of healthcare providers (HCPs), with specific recommendations for each. Once the micro-segments are created, you can begin receiving results, with alerts being sent to the field staff when a potential patient is identified.
Each micro-segment should address the following questions:
The information for each of these areas will inform what actions are recommended.
Following are key imperatives for ensuring the analytics work for your trigger program:
By enlisting partners like Medidata and HealthVerity, you can successfully implement these key imperatives and unlock optimal trigger programs. Click here to watch a recording of the webinar, Data-Driven Trigger Programs that Accelerate Product Launch and Uptake, or click here to see a demo on how you can curate fit-for-purpose data for your trigger program.