Individualized treatment effect prediction with machine learning—salient considerations
Background Machine learning–based approaches that seek to accomplish individualized
treatment effect prediction have gained traction; however, some salient challenges lack …
treatment effect prediction have gained traction; however, some salient challenges lack …
[HTML][HTML] Principled estimation and evaluation of treatment effect heterogeneity: A case study application to dabigatran for patients with atrial fibrillation
Y Xu, K Bechler, A Callahan, N Shah - Journal of biomedical informatics, 2023 - Elsevier
Objective: To apply the latest guidance for estimating and evaluating heterogeneous
treatment effects (HTEs) in an end-to-end case study of the Long-term Anticoagulation …
treatment effects (HTEs) in an end-to-end case study of the Long-term Anticoagulation …
Integrating decision modeling and machine learning to inform treatment stratification
There is increasing interest in moving away from “one size fits all (OSFA)” approaches
toward stratifying treatment decisions. Understanding how expected effectiveness and cost …
toward stratifying treatment decisions. Understanding how expected effectiveness and cost …
Recovering sparse and interpretable subgroups with heterogeneous treatment effects with censored time-to-event outcomes
Studies involving both randomized experiments as well as observational data typically
involve time-to-event outcomes such as time-to-failure, death or onset of an adverse …
involve time-to-event outcomes such as time-to-failure, death or onset of an adverse …
Efficient and robust transfer learning of optimal individualized treatment regimes with right-censored survival data
An individualized treatment regime (ITR) is a decision rule that assigns treatments based on
patients' characteristics. The value function of an ITR is the expected outcome in a …
patients' characteristics. The value function of an ITR is the expected outcome in a …
Estimating heterogeneous treatment effect from survival outcomes via (orthogonal) censoring unbiased learning
Methods for estimating heterogeneous treatment effects (HTE) from observational data have
largely focused on continuous or binary outcomes, with less attention paid to survival …
largely focused on continuous or binary outcomes, with less attention paid to survival …
Subgroup analysis methods for time-to-event outcomes in heterogeneous randomized controlled trials
V Perrin, N Noiry, N Loiseau, A Nowak - arXiv preprint arXiv:2401.11842, 2024 - arxiv.org
Non-significant randomized control trials can hide subgroups of good responders to
experimental drugs, thus hindering subsequent development. Identifying such …
experimental drugs, thus hindering subsequent development. Identifying such …
Deep Learning for Large-Scale and Complex-Structured Biomedical Data
Y Sun - 2023 - deepblue.lib.umich.edu
In this dissertation, we propose novel Deep Neural Network (DNN) based statistical learning
models that can provide accurate predictions and clear interpretations simultaneously …
models that can provide accurate predictions and clear interpretations simultaneously …
Leveraging Heterogeneity in Time-to-Event Predictions
C Nagpal - 2023 - search.proquest.com
Abstract Time-to-Event Regression, often referred to as Survival Analysis or Censored
Regression involves learning of statistical estimators of the survival distribution of an …
Regression involves learning of statistical estimators of the survival distribution of an …
Aligning Machine Learning Solutions with Clinical Needs
F Kamran - 2023 - deepblue.lib.umich.edu
The availability of large observational datasets in healthcare presents an opportunity to
leverage machine learning techniques to learn complex relationships between an …
leverage machine learning techniques to learn complex relationships between an …