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Joseph Futoma
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A comparison of models for predicting early hospital readmissions
J Futoma, J Morris, J Lucas
Journal of biomedical informatics 56, 229-238, 2015
3382015
The myth of generalisability in clinical research and machine learning in health care
J Futoma, M Simons, T Panch, F Doshi-Velez, LA Celi
The Lancet Digital Health 2 (9), e489-e492, 2020
2682020
Learning to detect sepsis with a multitask Gaussian process RNN classifier
J Futoma, S Hariharan, K Heller
International conference on machine learning, 1174-1182, 2017
1942017
" The human body is a black box" supporting clinical decision-making with deep learning
M Sendak, MC Elish, M Gao, J Futoma, W Ratliff, M Nichols, A Bedoya, ...
Proceedings of the 2020 conference on fairness, accountability, and …, 2020
1682020
An improved multi-output gaussian process rnn with real-time validation for early sepsis detection
J Futoma, S Hariharan, K Heller, M Sendak, N Brajer, M Clement, ...
Machine Learning for Healthcare Conference, 243-254, 2017
1652017
Prospective and external evaluation of a machine learning model to predict in-hospital mortality of adults at time of admission
N Brajer, B Cozzi, M Gao, M Nichols, M Revoir, S Balu, J Futoma, J Bae, ...
JAMA network open 3 (2), e1920733-e1920733, 2020
1092020
Real-world integration of a sepsis deep learning technology into routine clinical care: implementation study
MP Sendak, W Ratliff, D Sarro, E Alderton, J Futoma, M Gao, M Nichols, ...
JMIR medical informatics 8 (7), e15182, 2020
1072020
Machine learning for early detection of sepsis: an internal and temporal validation study
AD Bedoya, J Futoma, ME Clement, K Corey, N Brajer, A Lin, MG Simons, ...
JAMIA open 3 (2), 252-260, 2020
692020
Model-based reinforcement learning for semi-markov decision processes with neural odes
J Du, J Futoma, F Doshi-Velez
Advances in Neural Information Processing Systems 33, 19805-19816, 2020
572020
Popcorn: Partially observed prediction constrained reinforcement learning
J Futoma, MC Hughes, F Doshi-Velez
arXiv preprint arXiv:2001.04032, 2020
522020
Interpretable off-policy evaluation in reinforcement learning by highlighting influential transitions
O Gottesman, J Futoma, Y Liu, S Parbhoo, L Celi, E Brunskill, ...
International Conference on Machine Learning, 3658-3667, 2020
502020
Predicting disease progression with a model for multivariate longitudinal clinical data
J Futoma, M Sendak, B Cameron, K Heller
Machine Learning for Healthcare Conference, 42-54, 2016
422016
It’s complicated: characterizing the time-varying relationship between cell phone mobility and COVID-19 spread in the US
S Jewell, J Futoma, L Hannah, AC Miller, NJ Foti, EB Fox
NPJ digital medicine 4 (1), 152, 2021
212021
A unifying representation for a class of dependent random measures
N Foti, J Futoma, D Rockmore, S Williamson
Artificial Intelligence and Statistics, 20-28, 2013
202013
A unifying representation for a class of dependent random measures
N Foti, J Futoma, D Rockmore, S Williamson
Artificial Intelligence and Statistics, 20-28, 2013
202013
Statistical deconvolution for inference of infection time series
AC Miller, LA Hannah, J Futoma, NJ Foti, EB Fox, A D’Amour, M Sandler, ...
Epidemiology 33 (4), 470-479, 2022
192022
Gaussian process-based models for clinical time series in healthcare
J Futoma
Duke University, 2018
172018
Identifying distinct, effective treatments for acute hypotension with SODA-RL: safely optimized diverse accurate reinforcement learning
J Futoma, MA Masood, F Doshi-Velez
AMIA Summits on Translational Science Proceedings 2020, 181, 2020
142020
Scalable Joint Modeling of Longitudinal and Point Process Data for Disease Trajectory Prediction and Improving Management of Chronic Kidney Disease.
J Futoma, MP Sendak, B Cameron, KA Heller
UAI, 2016
142016
Generalization in clinical prediction models: the blessing and curse of measurement indicator variables
J Futoma, M Simons, F Doshi-Velez, R Kamaleswaran
Critical Care Explorations 3 (7), e0453, 2021
132021
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Articles 1–20