Machine Learning, AI, and Health Disparity
Dr. Azizi Seixas

Faculty Presentations

Dr. Azizi Seixas
Machine Learning, AI, and Health Disparity
Fig. 01 -
Title Slide
Fig. 02 -
Disclosures
Fig. 03 -
The MIL
Fig. 04 -
Challenge
Fig. 05 -
Health Inequity Challenges
Fig. 06 -
Health Disparity Paradigm
Fig. 07 -
Differences vs. Disparities
Fig. 08 -
Big Data
Fig. 09 -
Machine Learning 101
Fig. 10 -
System Science
Fig. 11 -
Artificial Intelligence
Fig. 12 -
Augmented Intelligence
Fig. 13 -
Role of AI
Fig. 14 -
Benefits and Risk
Fig. 15 -
Learn like a Baby
Fig. 16 -
Precision Medicine
Fig. 17 -
P3H Framework
Fig. 18 -
Measuring and Diagnostic Tool
Fig. 19 -
AI Bias
Fig. 20 -
Decision Aid
Fig. 21 -
Race Correction
Fig. 22 -
Pain Management
Fig. 23 -
Population Health Management
Fig. 24 -
Race Adjustment
Fig. 25 -
Disparity in Dermatology
Fig. 26 -
More Diverse Data
Fig. 27 -
Finetune Data
Fig. 28 -
Why is AI biased?
Fig. 29 -
How to de-bias AI
Fig. 30 -
Barriers Implementing AI
Fig. 31 -
Future Directions
Fig. 32 -
Making the Exposome
Fig. 33 -
The Vision of Precision
Fig. 34 -
Functional Exposomics
Fig. 35 -
Data, Tools, and Methods
Fig. 36 -
Sensors
Fig. 37 -
Social Determinants
Fig. 38 -
Social Care Navigation
Fig. 39 -
ML/AI Opportunities
Fig. 40 -
Values of Healthcare
Fig. 41 -
Summary

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AI Bias affect how we assess risk and diagnose

References

[7]

Sjoding, M.W., Dickson, R.P., Iwashyna, T.J., Gay, S.E. and Valley, T.S., 2020. Racial bias in pulse oximetry measurement. New England Journal of Medicine, 383(25), pp.2477-2478.

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