Advanced Clinical Data Science (Coursera)

Advanced Clinical Data Science (Coursera)

This course prepares you to deal with advanced clinical data science topics and techniques including temporal and research quality analysis.

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Course 6 of 6 in the Clinical Data Science Specialization

Syllabus

WEEK 1
Introduction: Advanced Clinical Data Science
Learn how to perform high quality and replicable clinical analyses.

WEEK 2
Tools and Techniques: Temporality
Learn how to handle the impact of time on clinical data science analyses.

WEEK 3
Tools and Techniques: Missing Data
Learn how to handle missing data in clinical data science.

WEEK 4
Practical Application: Careers in Clinical Data Science
Prepare for the next step in your clinical data science journey by exploring potential career options!

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