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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The vision of Precision and Personalized Population Health (P3H)

References

[18]

Seixas AA, Moore J, Chung A, Robbins R, Grandner M, Rogers A, Williams NJ, Jean-Louis G. Benefits of Community-Based Approaches in Assessing and Addressing Sleep Health and Sleep-Related Cardiovascular Disease Risk: a Precision and Personalized Population Health Approach. Curr Hypertens Rep. 2020 Jul 15;22(8):52. doi: 10.1007/s11906-020-01051-3. PMID: 32671477.

[19]

Pei Zhang, Christopher Carlsten, Romanas Chaleckis, Kati Hanhineva, Mengna Huang, Tomohiko, Isobe, Ville M. Koistinen, Isabel Meister, Stefano Papazian, Kalliroi Sdougkou, Hongyu Xie, Jonathan, Martin, Stephen M. Rappaport, Hiroshi Tsugawa, Douglas I. Walker, Tracey J. Woodruff, Robert, Wright, and Craig E. Wheelock.  Environmental Science & Technology Letters 2021 8 (10), 839-852, DOI: 10.1021/acs.estlett.1c00648

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