Keeping ourselves honest when we work with observational healthcare data
Apr 20, 2020
Exploring the challenges of working with observational healthcare data, including the numerous decisions data scientists need to make. The podcast discusses strategies and techniques to make unbiased choices in analyzing data, ensuring accuracy in causal inference. A benchmark study is highlighted, showcasing different analysis approaches in healthcare research.
Chapters
Transcript
Episode notes
1 2 3 4 5
Intro
00:00 • 2min
Challenges of Causal Inference with Observational Healthcare Data
02:08 • 5min
Navigating Biases in Observational Healthcare Data Analysis
06:57 • 7min
Ensuring Neutrality and Accuracy in Observational Healthcare Data Analysis
13:51 • 2min
Exploring a Benchmark Study on Observational Findings in Healthcare
15:38 • 3min
