Course Summary
This course explores the use of population health predictive analytics to improve health outcomes and reduce healthcare costs. Students will learn how to use data to identify health risks and develop interventions to address them.Key Learning Points
- Understand the role of data analytics in population health management
- Learn how to use predictive models to identify health risks and develop interventions
- Explore case studies of successful population health management programs
Job Positions & Salaries of people who have taken this course might have
- USA: $65,000 - $90,000
- India: ₹6,00,000 - ₹10,00,000
- Spain: €25,000 - €40,000
- USA: $65,000 - $90,000
- India: ₹6,00,000 - ₹10,00,000
- Spain: €25,000 - €40,000
- USA: $50,000 - $75,000
- India: ₹3,50,000 - ₹8,00,000
- Spain: €20,000 - €35,000
- USA: $65,000 - $90,000
- India: ₹6,00,000 - ₹10,00,000
- Spain: €25,000 - €40,000
- USA: $50,000 - $75,000
- India: ₹3,50,000 - ₹8,00,000
- Spain: €20,000 - €35,000
- USA: $90,000 - $120,000
- India: ₹12,00,000 - ₹20,00,000
- Spain: €40,000 - €55,000
Related Topics for further study
- Population Health Management
- Predictive Analytics
- Health Risk Identification
- Intervention Development
- Healthcare Cost Reduction
Learning Outcomes
- Understand the principles of population health management
- Learn how to use data to identify health risks and develop interventions
- Develop skills in predictive modeling and data analysis
Prerequisites or good to have knowledge before taking this course
- Basic knowledge of statistics
- Familiarity with healthcare data and terminology
Course Difficulty Level
IntermediateCourse Format
- Self-paced
- Online
- Video lectures
- Case studies
Similar Courses
- Healthcare Analytics: From Data to Insights
- Data Science for Healthcare
Related Education Paths
Notable People in This Field
- Cardiologist and Digital Medicine Researcher
- Surgeon and Public Health Researcher
Related Books
Description
Predictive analytics has a longstanding tradition in medicine. Developing better prediction models is a critical step in the pursuit of improved health care: we need these tools to guide our decision-making on preventive measures, and individualized treatments. In order to effectively use and develop these models, we must understand them better. In this course, you will learn how to make accurate prediction tools, and how to assess their validity. First, we will discuss the role of predictive analytics for prevention, diagnosis, and effectiveness. Then, we look at key concepts such as study design, sample size and overfitting.
Knowledge
- Understand the role of predictive analytics for prevention, diagnosis, and effectiveness
- Explain key concepts in prediction modelling: appropriate study design, adequate sample size and overfitting
- Understand important issues in model development, such as missing data, non-linear relations and model selection
- Know about ways to assess model quality through performance measures and validation
Outline
- Welcome to Leiden University
- Welcome to the course Predictive Analytics
- How to succeed in your online class?
- Meet the instructors & the team
- Leiden University: Facts & Figures
- About this course
- Glossary
- Community Guidelines
- What is your learning path?
- Prediction for prevention, diagnosis, and effectiveness
- Introduction
- Introduction to predictive analytics
- Predictive analytics in prevention
- Predictive analytics diagnosis
- Predictive analytics in intervention
- To conclude
- Introductory assignment
- Prevention assignment
- Diagnosis assignment
- Intervention assignment
- Reflect on your goals
- Test your knowledge
- Modeling Concepts
- Introduction
- Design issues
- Sample size
- Overfitting
- Bootstrapping
- To conclude
- Is caring about measurement error an error?
- Sample size
- Bootstrapping 101 in R
- Testimation bias - an interactive introduction
- Reflect on your goals
- Test your knowledge
- Model development
- Introduction
- Missing values
- Continuous predictors
- Model selection
- Model estimation
- To conclude
- Bias, precision and simple imputation of missing values
- Dealing with non-linearity
- Model selection
- Model estimation
- Reflect on your goals
- Model validation and updating
- Introduction
- Performance measures
- Validation approaches
- Updating approaches
- Predictive analytics for Aruba
- To conclude
- Performance I - Statistical measures
- Performance II - Evaluation of usefulness
- Recall - Performance I
- Validation cardiovascular disease
- Reflect on your goals
- Test your knowledge
- Final Assessment
Summary of User Reviews
Learn about population health predictive analytics in this comprehensive course on Coursera. This course has received positive reviews from users and is highly recommended. Many users have appreciated the in-depth coverage of the subject matter.Key Aspect Users Liked About This Course
In-depth coverage of the subject matterPros from User Reviews
- Comprehensive course
- Expert instructors
- Interactive content
- Clear explanations
- Real-world applications
Cons from User Reviews
- Heavy on technical jargon
- Requires prior knowledge of statistics
- Not suitable for beginners
- Limited interaction with instructors
- Lengthy lectures