2022-12-26 12:30:26 -08:00
..
2022-10-26 20:06:09 -07:00
2022-12-26 12:30:26 -08:00
2022-10-22 13:10:51 -07:00
2022-12-26 12:30:26 -08:00

Data Concepts

  1. Simpsons Paradox
  2. Probabilty Interpretations
  3. Metadata
  4. Observational_study
  5. Data Generation
  6. Statistical Sampling
  7. Indicators
  8. Stochastic Processes
  9. Randomized Control Trials
  10. Observational Studies: Cohort and Case-Control Studies
  11. Hypothesis testing, type I and type II errors
  12. Cherry Picking
  13. Misuse of Statistics
  14. Placebo Effect and Nocebo
  15. Self Fulfilling Prophecy
  16. Diagnosis
  17. Information_overload
  18. Information_literacy
  19. Filter_bubble
  20. Data_collection
  21. Evidence Based Practice Toolkit

Lessons

  1. Introduction to Epidemiology and Biostatistics
  2. Introduction to the Principles and Practice of Clinical Research
  3. Sample Size and Power
  4. IPPCR 2015: Overview of Hypothesis Testing
  5. IPPCR 2015: Issues in Randomization
  6. Sidney Redner on Statistics and Everyday Life
  7. How Not to Fall for Bad Statistics - with Jennifer Rogers
  8. Measures of Risk in Epidemiology
  9. 4. Descriptive and Analytical Studies | CPP NCD Epidemiology
  10. Introduction to Statistical Hypothesis Testing
  11. Evidence Based Medicine Lectures
  12. Measures of Association
  13. Statistics for Beginners
  14. The Challenges of Evidence-Based Medicine (Part 1)

Short Lessons

  1. Validity Bias and Confounding
  2. Cohort Studies..... Made Easy !!!
  3. RCT vs Cohort
  4. Epidemiology: Observational Study Types, Odds Ratio, Relative Risk, Attributable Risk
  5. Confounding
  6. What does statistical CONFOUNDING mean?? GREAT VIDEO!
  7. Screening in Epidemiology.... made easy !!!!
  8. What are p-values?? Seriously.
  9. Epidemiology: Measures of Disease: Prevalence, Cumulative Incidence and Incidence Rate
  10. Sensitivity, Specificity, PPV, and NPV
  11. Odds Ratios and Risk Ratios
  12. Epidemiology: Measure of Disease Frequency, Incidence and Prevalence
  13. Errors in Hypothesis...Detail lecture
  14. What is Standardized Data?