Healthcare marketing has changed a lot in recent years. After COVID-19, many patients want easy digital ways to book appointments, clear communication, and open information sharing. A 2021 McKinsey survey found that happy healthcare consumers in the US are 28% less likely to switch providers. This shows that improving patient experience through marketing can create loyalty. Loyal patients help reduce turnover and increase practice revenue.
Organizations that focus on improving the patient experience saw revenue go up by as much as 20% over five years. At the same time, some cut their operational costs by around 30%. This shows the financial benefits of marketing that matches what patients want. However, many providers still use old marketing methods that do not fully capture how patients behave or use digital channels well.
Measuring marketing success in healthcare is hard because patient journeys often include many touchpoints like digital ads, referrals, social media, and phone calls. Without clear data on which channels lead to appointments or follow-up care, it is hard for healthcare groups to spend their marketing budget wisely. This is why marketing attribution and marketing mix modeling are important.
Marketing attribution means giving credit to different marketing steps that lead to a patient action, like scheduling an appointment. Attribution models help show which marketing campaigns and channels bring in the most patients. This helps healthcare providers spend their money on efforts that work best.
There are different attribution models used in healthcare marketing:
Each model has good and bad points. MTA models, which are becoming more popular, give 20-35% better accuracy for complex patient journeys involving multiple decision makers. But MTA requires connected data systems that bring together information from CRM, web analytics, ads, and offline sources like phone calls.
Even with more people using these models, 78% of B2B marketers, including those in healthcare, say it is hard to link marketing to revenue because data is split up, models conflict, and sales and marketing teams don’t work well together. It is very important for marketing, IT, and sales teams to work closely to fix these problems.
One key improvement is linking CRM with marketing attribution tools. Practices using Salesforce Marketing Cloud’s attribution tools spent 36% less time on reports and 32% more time improving campaigns. This helps save effort and increases marketing returns. Also, companies with marketing and sales teams working well together saw 209% higher revenue growth and 32% faster business growth each year. This shows how important it is for teams to work as one on attribution.
Privacy laws like the California Consumer Privacy Act (CCPA) and the ending of third-party cookies mean healthcare marketers cannot rely much on data about individual users. Marketing mix modeling, or MMM, looks at marketing success on a larger scale. It studies how marketing spending relates to sales results over time.
MMM uses statistics and machine learning to tell apart base sales—those that happen without marketing—and extra sales caused by marketing campaigns. It uses many data sources, such as past sales, spending on digital and traditional media, competitor actions, and things like seasonal trends.
MMM does not use tracking of individual users. This makes it better for following privacy rules and works well in healthcare, where privacy is important. Some MMM tools work automatically and give results quickly, sometimes almost in real time. This helps practices change their marketing budgets as needed.
MMM can show when spending more on marketing is giving less and less extra sales. Knowing this helps managers move money from channels that don’t work well to those that do better.
Because of privacy concerns, healthcare and finance sectors are using MMM more. MMM models get checked with tools like Meta’s conversion lift studies, which compare real campaign results to predictions and help improve the models over time.
One big problem in healthcare marketing measurement is that data is split up. Many providers have separate systems for clinical data, patient communication, and marketing analytics. This makes it hard to get a full picture of consumers.
Healthcare marketing must also follow strict privacy rules around Protected Health Information (PHI) and Personally Identifiable Information (PII). Encryption and anonymizing data are important for keeping data safe while still analyzing it well.
Right now, few healthcare providers use encryption methods well enough to handle anonymous patient data for marketing. This makes it hard for them to create personal outreach and measure campaigns correctly.
To deal with this, some organizations use Customer Data Platforms (CDPs) that gather first-party data with patient permission. When CDPs are combined with privacy-safe tools like Consent Mode and privacy-friendly computing, they follow laws such as HIPAA, CCPA, and GDPR. This way, marketing measurement can continue safely.
Artificial intelligence (AI) is changing healthcare marketing measurement. It automates data processing, makes things more accurate, and lets campaigns change quickly. AI platforms can study large sets of anonymous data, bring information from many channels together, and predict patient behavior without hurting privacy.
AI can figure out patient journeys by including seasonality, economic factors, and differences between individuals. This helps marketers see which marketing spends give the best results in different situations.
For example, Plus Company’s AIOS prediction tool showed that moving ad money from less effective Facebook ads to YouTube raised patient engagement and lowered Customer Acquisition Costs (CAC) in direct healthcare marketing. AI allows fast testing and learning so practices can improve their marketing based on real data, not guesses.
Automation also cuts down on manual work for collecting marketing data, making reports, and doing attribution modeling. Tools can connect systems like CRM, marketing platforms, and phone answering services more smoothly. Since phone calls remain an important patient contact point, AI answering services such as Simbo AI help track calls with data for attribution.
Simbo AI’s phone automation logs, sorts, and links patient calls to digital marketing. This helps track patient engagement and schedule follow-up appointments accurately. This combination makes it easier for patients to get care and for marketers to see how well phone campaigns work with digital ones.
Medical managers and practice owners who want to improve healthcare marketing measurement can try these steps:
By using marketing attribution and marketing mix modeling, healthcare providers in the United States can measure marketing success more accurately. They can spend their resources better and give patients a better experience. AI-powered automation and integrated data systems make this possible while protecting privacy. These methods help practices keep up with digital changes and meet the new needs of healthcare consumers.
Healthcare marketing is crucial as consumers have become more empowered and expect transparent, mobile-friendly experiences. Health systems aspire to build long-term relationships with consumers, paralleling other industries, as satisfied patients are less likely to switch providers.
Alignment from the C-suite, particularly from the CMO, CTO, CIO, and CFO, is vital. This collaboration enables the CMO to push for advanced marketing strategies beyond traditional methods, allowing for a more data-driven, consumer-centric approach.
Agile marketing enables healthcare providers to conduct high-velocity testing across digital and traditional channels, leading to quick adaptations and improvements in consumer engagement. Successful agile implementations have shown significant increases in new patient scheduling.
Marketers face several challenges, including a disjointed consumer experience, siloed data systems, and a lack of consumer-centric data. These fragmented issues hinder personalized marketing and effective consumer journey tracking.
Prioritizing patient scheduling and communication management are essential use cases as they critically affect consumer experience. These strategies can enhance accessibility and ensure patients receive timely follow-up care.
Measuring marketing success involves attribution, analyzing consumer outcomes like appointment booking through various channels. This allows marketers to understand the effectiveness of their campaigns and optimize budget allocations.
Marketing mix modeling utilizes regression analysis to estimate the impact of specific marketing tactics on patient volume. It helps allocate budgets effectively but may lack granularity in measuring individual interactions.
Anonymized data allows marketers to communicate personalized messages while protecting patient confidentiality. It enables secure sharing of insights without compromising the privacy of consumer health information.
A/B testing compares two versions of marketing content to determine which performs better. It is crucial for optimizing consumer conversion rates and provides straightforward data-driven insights to inform strategies.
Providers need to establish collaboration between marketing and technology teams, ensuring a cohesive approach across all consumer touchpoints. Developing an integrated technology stack is essential for executing personalized, seamless journeys.