Modeling a system's temporal behaviour in reaction to external stimuli is a fundamental problem in many areas. Pure Machine Learning (ML) approaches often fail in the small sample regime and cannot provide actionable insights beyond predictions. A promising modification has been to incorporate expert domain knowledge into ML models. The application we consider is predicting the patient health status and disease progression over time, where a wealth of domain knowledge is available from pharmacology. Pharmacological models describe the dynamics of carefully-chosen medically meaningful variables in terms of systems of Ordinary Differential Equations (ODEs). However, these models only describe a limited collection of variables, and these varia...
Artificial Intelligence (AI) and Machine Learning (ML) today has infiltrated almost all fields, help...
The rapid digitization of healthcare has led to a proliferation of clinical data, manifesting throug...
Disease prognosis holds immense significance in healthcare due to its potential to greatly improve p...
Summary: Forecasting pharmacokinetics (PK) for individual patients is a fundamental problem in clini...
Early diagnosis of disease can lead to improved health outcomes, including higher survival rates and...
Scientific machine learning (SciML) is a new branch of AI research at the edge of scientific computi...
Many disease processes are extremely complex and characterized by multiple stochastic processes inte...
Machine learning has demonstrated potential in analyzing large, complex datasets and has become ubiq...
While tumor dynamic modeling has been widely applied to support the development of oncology drugs, t...
Disease progression manifests through a broad spectrum of statically and longitudinally linked clini...
The role of Machine Learning (ML) in healthcare is based on the ability of a machine to analyse the ...
Abstract The use of machine learning (ML) in healthcare has enormous potential for im...
Recent trends towards data-driven methods may require a substantial rethinking of the process of dev...
Nonlinear mixed effect (NLME) models are the gold standard for the analysis of patient response foll...
This thesis presents a new probability-based framework which exploits existing domain knowledge in t...
Artificial Intelligence (AI) and Machine Learning (ML) today has infiltrated almost all fields, help...
The rapid digitization of healthcare has led to a proliferation of clinical data, manifesting throug...
Disease prognosis holds immense significance in healthcare due to its potential to greatly improve p...
Summary: Forecasting pharmacokinetics (PK) for individual patients is a fundamental problem in clini...
Early diagnosis of disease can lead to improved health outcomes, including higher survival rates and...
Scientific machine learning (SciML) is a new branch of AI research at the edge of scientific computi...
Many disease processes are extremely complex and characterized by multiple stochastic processes inte...
Machine learning has demonstrated potential in analyzing large, complex datasets and has become ubiq...
While tumor dynamic modeling has been widely applied to support the development of oncology drugs, t...
Disease progression manifests through a broad spectrum of statically and longitudinally linked clini...
The role of Machine Learning (ML) in healthcare is based on the ability of a machine to analyse the ...
Abstract The use of machine learning (ML) in healthcare has enormous potential for im...
Recent trends towards data-driven methods may require a substantial rethinking of the process of dev...
Nonlinear mixed effect (NLME) models are the gold standard for the analysis of patient response foll...
This thesis presents a new probability-based framework which exploits existing domain knowledge in t...
Artificial Intelligence (AI) and Machine Learning (ML) today has infiltrated almost all fields, help...
The rapid digitization of healthcare has led to a proliferation of clinical data, manifesting throug...
Disease prognosis holds immense significance in healthcare due to its potential to greatly improve p...