AI in health care
AI from SAS accelerates what you do and how you do it, enabling you to work more efficiently. Discover how AI solutions for health care can automate your processes to increase productivity, improve health outcomes, modernize public health, manage costs and fight fraud.
AI use cases for health care
Explore how you can implement trusted AI capabilities to improve efficiency and deliver health innovations.
Transform medical document reviews
Take advantage of innovative SAS document vision, which allows medical reviewers to make determinations more efficiently with high accuracy by surfacing and summarizing high-impact information and decluttering documentation.
The value of this solution:
- Greater productivity.
- Better health outcomes.
- Maximized operational efficiency.
AI techniques used in this solution:
- Proprietary machine learning and advanced Optical Character Recognition techniques extract information.
- Document vision identifies and creates a catalog of individual medical forms and handwritten and copied documents.
- Machine learning models, including natural language processing and text analytics, are used to provide contextual clues and relevant information in summaries alongside powerful data visualizations.
How AI helps:
- Reduces the need for manual reviews and laborious search processes, enhancing employee satisfaction and productivity.
- Quickly pinpoints and extracts information from paper files.
- Better and more effective patient outcomes from faster identification of care trends and reactions.
The AI models provide:
- Automation of the extraction of key information from images or documents into a structured format.
- Automation of current Optical Character Recognition/Robotic Process Automation processes to significantly improve the accuracy and quality of the information extraction, especially with tougher forms like blurry documents and forms with checkboxes or handwriting.
- Downstream analytics for investigations, alerts that can be generated, searchable extracts or the newly structured data can feed existing processes.
Fight health care fraud and abuse
Use AI to prevent, detect and manage payment integrity issues from every angle and at every stage of the claims process to stop improper payments before claims are paid.
The value of this solution:
- Fraud detection and prevention.
- Risk mitigation.
- Cost savings.
AI techniques used in this solution:
Machine learning algorithms review health insurance claims for processing. The algorithms detect duplication and identify fraud easier, faster and more accurately.
How AI helps:
- Detect fraud faster, reduce loss and optimize payment integrity.
- Gain a consolidated view of fraud risk.
- Build social network diagrams with sophisticated data mining capabilities for a better understanding of new threats, preventing big losses early.
The AI models provide:
- Reduction in false positives while boosting efficiency, including components for fraud detection, alert management and case handling.
- Outcome-based analytics help monitor newer value-based payment models.
Predict high-risk infections faster
Use machine learning to understand, predict and visualize threats to human health faster to save lives. Forecast trends for seasonal and chronic diseases for response and resource management.
The value of this solution:
- Faster decision making.
- Highly-accurate forecasting.
- Maximized operational efficiency.
AI techniques used in this solution:
- Machine learning models can learn from data that is ingested into them and identify infectious disease patterns. The more data provided, the more accurate the model.
- Machine learning ingests massive amounts of data, extracts key features, determines a method of analysis, writes the code to execute that analysis and produces an intelligent output – all through an automated process.
- Predictive modeling helps you forecast trends for infectious diseases to predict threats to human health faster and improve response and resource management.
How AI helps:
- Identify, forecast and respond to infectious diseases faster.
- Reduce hospital-acquired infections and mortality.
- Efficiently mitigate future public health crises.
- Improve resource and response management.
The AI models provide:
- Visualization and prediction of disease patterns and threats to human health.
- Comprehensive alert generation process, enabling public health stakeholders to anticipate public health emergencies before they happen.
- Automated insights, including summary reports, that empower public health agencies and providers to improve response and resource management.
- Ability to embed open-source code within the coding environment.
Simulate hospital operation with IoT
Use predictive modeling and analytics to forecast demand, identifying opportunities to improve efficiency, manage costs and optimize resources.
The value of this solution:
- Maximized operational efficiency.
- Highly-accurate forecasting.
- Cost savings.
- Better customer and staff experience.
AI techniques used in this solution:
- Predictive modeling to predict the demand for medical devices, beds, mobility aids and other equipment.
- Machine learning to recommend the optimal utilization of assets and optimal product inventory.
- AI-embedded IoT analytics to track assets and visually explore them through a business-focused interface.
How AI helps:/span>
- Greater productivity.
- Optimized resource management.
- Real-time location tracking of medical devices.
- Reduced hospital costs.
- Optimized purchasing and maintenance.
The AI models provide:
- Visualizations and prediction of hospital demand, including staff, medical devices and other equipment.
- Automated insights, including summary reports, that empower hospitals to optimize medical resources, processes, workflow and throughput.
- Transparent and fair decision support about patient care through built-in bias monitoring and repeatable explanations of data, models and predictions in use in ICUs globally.
Improve patient and member engagement
Use natural language processing to improve how you serve and support patients, providers and consumers of health care.
The value of this solution:
- Faster issue resolution.
- Greater customer engagement.
- Greater productivity.
AI techniques used in this solution:
- Natural language processing to scale the human act of processing (reading or hearing), organizing and extracting useful information from huge volumes of textual data.
- Machine learning works to process structured and unstructured qualitative and quantitative data connections.
How AI helps:
- Optimize resources and improve engagement effectiveness.
- Increase consumer and stakeholder satisfaction while maintaining data privacy and ensuring AI transparency.
- Be better prepared to respond quickly in times of disruption and uncertainty.
The AI models provide:
- Analysis of large volumes of unstructured text data.
- Examination of information and gain meaningful insights.
- Improved engagements by helping to draft scripts that increase satisfaction.
Optimize care management
Use predictive modeling to anticipate the post-surgical care pathway for patients ahead of hospital discharge to build a personalized care path that optimizes a patient’s health.
The value of this solution:
- Improved health outcomes.
- Reduced potential for health recidivism.
- Higher patient satisfaction.
AI techniques used in this solution:
- Predictive risk modeling estimates the likelihood that a patient will experience a future health-related event. Risk modeling is often specific to a health condition and is based on both health and non-health data.
- Large language models can be applied to create a report that summarizes the recommended care program based on the model. A case worker can quickly review and approve the program materials.
How AI helps:
- A more holistic plan can reduce future medical visits related to surgical recovery.
- Overall reduced burden of care for complex procedures and improved health outcomes.
- Higher satisfaction for the patient and increased confidence in the personalized care plan.
The AI models provide:
- Quick analysis of historic claims data, along with demographic and financial data.
- Ensemble models apply various techniques depending on the underlying data structure.
- Quantification of various risk factors helps pinpoint the care programs that will mitigate any harm.
Simulate health policy impact
Quantify the impact of policy changes on the health care triple aim of cost, quality and outcomes. Government health policies impact the availability and cost of care in our communities. From ensuring provider coverage to promoting wellness programs, policies drive behaviors for patients and providers.
The value of this solution:
- Faster decision making.
- Better outcomes.
- Effective health care policies.
AI techniques used in this solution:
- Machine learning quickly transforms and organizes data so that it is useful for policy analysis.
- Simulation can help quantify and visualize the impacts of various policies on cost and coverage.
- Synthetic data generation may be needed to protect citizen privacy or complete gaps in available data.
How AI helps:
- Using data and evidence-based analysis reduces the human bias in policymaking related to health care.
- The ability to move from reactive to proactive policy-making decisions by simulating policy change effects.
The AI models provide:
- Faster evaluations of policy changes or new proposed policies to enhance manual analysis.
- More robust analysis and visualizations of the impact on stakeholders.
- Creation of synthetic data to enrich available data or mask private data if needed.