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Interpretable Subgroup Discovery in Treatment Effect Estimation with
  Application to Opioid Prescribing Guidelines
v1v2v3 (latest)

Interpretable Subgroup Discovery in Treatment Effect Estimation with Application to Opioid Prescribing Guidelines

8 May 2019
Chirag Nagpal
Dennis L. Wei
B. Vinzamuri
Monica Shekhar
Sara E. Berger
Subhro Das
Kush R. Varshney
    CML
ArXiv (abs)PDFHTML

Papers citing "Interpretable Subgroup Discovery in Treatment Effect Estimation with Application to Opioid Prescribing Guidelines"

9 / 9 papers shown
Title
A Deep Subgrouping Framework for Precision Drug Repurposing via Emulating Clinical Trials on Real-world Patient Data
A Deep Subgrouping Framework for Precision Drug Repurposing via Emulating Clinical Trials on Real-world Patient Data
Seungyeon Lee
Ruoqi Liu
Feixiong Cheng
Ping Zhang
58
0
0
31 Dec 2024
Identifying treatment response subgroups in observational time-to-event data
Identifying treatment response subgroups in observational time-to-event data
Vincent Jeanselme
Chang Ho Yoon
Fabian Falck
Brian D. M. Tom
Jessica Barrett
OODCML
162
0
0
06 Aug 2024
SubgroupTE: Advancing Treatment Effect Estimation with Subgroup
  Identification
SubgroupTE: Advancing Treatment Effect Estimation with Subgroup Identification
Seungyeon Lee
Ruoqi Liu
Wenyu Song
Lang Li
Ping Zhang
CML
63
0
0
22 Jan 2024
Benchmarking Heterogeneous Treatment Effect Models through the Lens of
  Interpretability
Benchmarking Heterogeneous Treatment Effect Models through the Lens of Interpretability
Jonathan Crabbé
Alicia Curth
Ioana Bica
M. Schaar
CML
110
16
0
16 Jun 2022
auton-survival: an Open-Source Package for Regression, Counterfactual
  Estimation, Evaluation and Phenotyping with Censored Time-to-Event Data
auton-survival: an Open-Source Package for Regression, Counterfactual Estimation, Evaluation and Phenotyping with Censored Time-to-Event Data
Chirag Nagpal
Willa Potosnak
A. Dubrawski
CMLOOD
128
24
0
15 Apr 2022
Interpretable Personalized Experimentation
Interpretable Personalized Experimentation
Han Wu
S. Tan
Weiwei Li
Mia Garrard
Adam Obeng
Drew Dimmery
Shaun Singh
Hanson Wang
Daniel R. Jiang
E. Bakshy
65
6
0
05 Nov 2021
Estimating Heterogeneous Causal Effect of Polysubstance Usage on Drug
  Overdose from Large-Scale Electronic Health Record
Estimating Heterogeneous Causal Effect of Polysubstance Usage on Drug Overdose from Large-Scale Electronic Health Record
Vaishali Mahipal
Mohammad Arif Ul Alam
CML
13
3
0
15 May 2021
Deep Cox Mixtures for Survival Regression
Deep Cox Mixtures for Survival Regression
Chirag Nagpal
Steve Yadlowsky
Negar Rostamzadeh
Katherine A. Heller
CML
168
62
0
16 Jan 2021
Causal Rule Sets for Identifying Subgroups with Enhanced Treatment
  Effect
Causal Rule Sets for Identifying Subgroups with Enhanced Treatment Effect
Tong Wang
Cynthia Rudin
CMLBDL
87
27
0
16 Oct 2017
1