There is broad agreement that medicine ought to be `evidence based' and `personalized' and that data should play a large role in achieving both these goals. But the path from data to improved medical decision making is not clear. This thesis presents three methods that hopefully help in small ways to clear the path. Personalized medicine depends almost entirely on understanding variation in treatment effect. Chapter 1 describes latent class mixture models for treatment effect heterogeneity that distinguish between continuous and discrete heterogeneity, use hierarchical shrinkage priors to mitigate overfitting and multiple comparisons concerns, and employ flexible error distributions to improve robustness. We apply different versions o...
This dissertation explores several conceptual and methodological features of medical science that in...
There has been increasing interest in discovering precision medicine in current drug development. On...
Combinations of healthcare claims data with additional datasets provide large and rich sources of in...
Background: Personalized, precision, P4, or stratified medicine is understood as a medical approach ...
In this thesis, we discuss the importance of causal knowledge in healthcare for tailoring treatments...
We investigate methods of improving medical outcomes through exploiting heterogeneity, with focus on...
The theme of this dissertation focuses on methods for estimating personalized treatment using machin...
Personalized medicine has the potential to revolutionize how healthcare is provided. The aim of pers...
The theme of my dissertation is on merging statistical modeling with medical domain knowledge and ma...
Personalized approaches have shown great potential to transform modern medicine. As challenging as i...
Recent advances in causal machine learning leverage observational data to estimate heterogeneous tre...
Developing new drugs for target diseases is a time-consuming and expensive task, drug repurposing ha...
Evidence-based medicine has become associated with a preference for randomized trials. Randomization...
This article examines a causal machine-learning approach, causal forests (CF), for exploring the het...
Futurists have anticipated that novel autonomous technologies, embedded with machine learning (ML), ...
This dissertation explores several conceptual and methodological features of medical science that in...
There has been increasing interest in discovering precision medicine in current drug development. On...
Combinations of healthcare claims data with additional datasets provide large and rich sources of in...
Background: Personalized, precision, P4, or stratified medicine is understood as a medical approach ...
In this thesis, we discuss the importance of causal knowledge in healthcare for tailoring treatments...
We investigate methods of improving medical outcomes through exploiting heterogeneity, with focus on...
The theme of this dissertation focuses on methods for estimating personalized treatment using machin...
Personalized medicine has the potential to revolutionize how healthcare is provided. The aim of pers...
The theme of my dissertation is on merging statistical modeling with medical domain knowledge and ma...
Personalized approaches have shown great potential to transform modern medicine. As challenging as i...
Recent advances in causal machine learning leverage observational data to estimate heterogeneous tre...
Developing new drugs for target diseases is a time-consuming and expensive task, drug repurposing ha...
Evidence-based medicine has become associated with a preference for randomized trials. Randomization...
This article examines a causal machine-learning approach, causal forests (CF), for exploring the het...
Futurists have anticipated that novel autonomous technologies, embedded with machine learning (ML), ...
This dissertation explores several conceptual and methodological features of medical science that in...
There has been increasing interest in discovering precision medicine in current drug development. On...
Combinations of healthcare claims data with additional datasets provide large and rich sources of in...