机器学习和人工智能在医疗领域的商业应用培训
Decision Support and Use Cases
Rapid changes in technology are impacting every facet of modern society,
and the healthcare industry is no exception. Navigating these changes is crucial, whethe
r you are currently working in the industry, hoping to step into a new role,
or are simply interested in how technology is being used in healthcare. No doubt you have heard the terms,
“machine learning” and “artificial intelligence” more frequently in the last few years - but what does this mean for you,
or the healthcare industry in general? Keeping up with the changing trends, examining the potential use of decision support,
and identifying some of the pain points that can be addressed, are some of the topics we’ll be discussing in this Module.
Predictive Modeling Basics
Let’s navigate through what it takes
to predict health outcomes and cost.
What if we could use machine learning in your organization
to reduce the cost of care for both the organization and the members receiving that care?
Have you thought about what data you need to collect? How you might need to enrich that data
to gain more insight in to what is driving those outcomes and cost?
Or what types of machine learning algorithms you might utilize in order
to most effectively target patients who are likely to be high cost?
We are going to look at not only the tech behind the predictions,
but also examine the business and data relationships within the healthcare
industry that ultimately impact your ability to deliver an effective solution.
Consumerism and Operationalization
Now that we have discussed various types of predictive models,
let’s take a look at which models are appropriate for the business case we are trying
to address and how we can evaluate their performance.
For example, is using the same performance metric appropriate
to use when making predictions about individual vs. population health?
In this module we'll discuss how layering appropriate decision support methods
on top of predictive analytics and machine learning can lay the groundwork for significant improvements
in overall outreach and productivity, as well as decrease costs. Finally,
we will discuss the key to blending decision support into the existing ecosystem
of your business workflow and technology infrastructure.
Advanced Topics in Operationalization
Now that we know the importance of decision support and predictive modeling,
we are going to take that one step further. Not only do we need to predict,
but more importantly, we need to prescribe. It is not enough
to just implement alerts and reminders - we need to offer guidance and recommendations
for healthcare professionals. Let’s take a look at how analytics can improve the patient experience and their overall health status.