Reinforcement Learning for Healthcare is coming at 10/22/2018 - 4:00pm

LINC 200
Mon, 10/22/2018 - 4:00pm

Finale Doshi-Velez
Assistant Professor, Computer Science ,  Harvard Paulson School of
Engineering and Applied Sciences

Abstract:
Many healthcare problems require thinking not only about the immediate effect
of a treatment, but possible long-term ramifications.  For example, a
certain drug cocktail may cause an immediate drop in viral load in HIV, but
also cause the presence of resistance mutations that will reduce the number
of viable treatment options in the future.  Within machine learning, the
reinforcement learning framework is designed to think about decision-making
under uncertainty when decisions may have long-lasting effects. 
In this talk, I will talk about a number of directions we are developing in
my lab to identify personalized treatment policies from electronic health and
registry records.  Our approaches achieve state-of-the-art results on HIV
management and initial promising results for sepsis management.  Next, I'll
dive into how we evaluated these algorithms when we could not test on new
patients and had to rely only on the observational data -- highlighting both
current work in our lab on off-policy evaluation as well as more general
gotchas that remind us to all be careful scientists.
 
This is joint work with: Sonali Parbhoo, Maurizio Zazzi, Volker Roth, Xuefeng
Peng, David Wihl, Yi Ding, Omer Gottesman, Liwei Lehman, Matthieu Komorowski,
Aldo Faisal, David Sontag, Fredrik Johansson, Leo Celi, Aniruddh Raghu, Yao
Liu, Emma Brunskill, and the CS282 2017 Topics in Machine Learning Course.

Bio:

Read more:
http://eecs.oregonstate.edu/colloquium/reinforcement-learning-healthcare [1]


[1] http://eecs.oregonstate.edu/colloquium/reinforcement-learning-healthcare
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