Predictive analytics using AI and ML
Although real-time data analytics are useful to identify opioid usage trends, the
ability to predict risk and fraud based on historical data is key to tackling the crisis
proactively. As an example, predicting opioid prescription rates by providers or predicting
an average beneficiary risk score based on historical trends and current attributes would be
helpful for federal and state agencies to identify focus areas and preventive measures. CMS
publishes datasets for these
types of analyses and predictions.
AWS artificial intelligence (AI) services include capabilities to enable fraud
detection and risk analysis.
Amazon SageMaker
Amazon SageMaker is a fully managed service that provides
developers and data scientists with the ability to build,
train, and deploy machine learning (ML) models quickly.
SageMaker removes the heavy lifting from each step of the
machine learning process to make it easier to develop high
quality models. This is in contrast to the Traditional ML
development which is a complex, expensive, iterative process
and made even harder as there are no integrated tools for the
entire machine learning workflow. SageMaker makes it easy to
deploy your trained model into production with a single click
so that you can start generating predictions for real-time or
batch data.
Amazon Forecast
Amazon Forecast is a fully managed service
that uses machine learning to deliver highly accurate forecasts. Based on the same
technology used at Amazon.com, Amazon Forecast uses machine learning to combine time
series data with additional variables to build forecasts. Amazon Forecast requires no
machine learning experience to get started. You only need to provide historical data, plus
any additional data that you believe may impact your forecasts. For example, Amazon
Forecast can be used to forecast trends on budgets and opioid campaign management.