Complex deep learning models show high prediction tasks in various clinical prediction tasks but their inherent complexity makes it more challenging to explain model predictions for clinicians and healthcare providers. Existing research on explainability of deep learning models in healthcare have two major limitations: using post-hoc explanations and using raw clinical variables as units of explanation, both of which are often difficult for human interpretation. In this work, we designed a self-explaining deep learning framework using the expert-knowledge driven clinical concepts or intermediate features as units of explanation. The self-explaining nature of our proposed model comes from generating both explanations and predictions within t...
The global healthcare system is being overburdened by an increasing number of COVID-19 patients. Phy...
An accurate predicted mortality is crucial to healthcare as it provides an empirical risk estimate f...
Purpose: To evaluate the application of machine learning methods, specifically Deep Neural Networks ...
Estimating the mortality of patients plays a fundamental role in an intensive care unit (ICU). Curre...
It has been shown that identical Deep Learning (DL) architectures will produce distinct explanations...
As a complicated lethal medical emergency, sepsis is not easy to be diagnosed until it is too late f...
Background: There is a variety of mortality prediction models for patients in intensive care units (...
Background and objectives Changes in a patient's condition over time are a backbone of clinical deci...
The rapid rise of non-communicable diseases (NCDs) becomes one of the serious health issues and the ...
Recent years have witnessed an unparalleled surge in deep neural networks (DNNs) research, surpassin...
OBJECTIVES: To analyze the available literature on the performance of artificial intelligence-genera...
The most limiting factor in heart transplantation is the lack of donor organs. With enhanced predict...
The rapid adoption of electronic health records (EHRs) has generated tremendous amounts of valuable ...
What we already know about this topicWHAT THIS ARTICLE TELLS US THAT IS NEW: BACKGROUND:: The author...
Deep Learning based models are currently dominating most state-of-the-art solutions for disease pred...
The global healthcare system is being overburdened by an increasing number of COVID-19 patients. Phy...
An accurate predicted mortality is crucial to healthcare as it provides an empirical risk estimate f...
Purpose: To evaluate the application of machine learning methods, specifically Deep Neural Networks ...
Estimating the mortality of patients plays a fundamental role in an intensive care unit (ICU). Curre...
It has been shown that identical Deep Learning (DL) architectures will produce distinct explanations...
As a complicated lethal medical emergency, sepsis is not easy to be diagnosed until it is too late f...
Background: There is a variety of mortality prediction models for patients in intensive care units (...
Background and objectives Changes in a patient's condition over time are a backbone of clinical deci...
The rapid rise of non-communicable diseases (NCDs) becomes one of the serious health issues and the ...
Recent years have witnessed an unparalleled surge in deep neural networks (DNNs) research, surpassin...
OBJECTIVES: To analyze the available literature on the performance of artificial intelligence-genera...
The most limiting factor in heart transplantation is the lack of donor organs. With enhanced predict...
The rapid adoption of electronic health records (EHRs) has generated tremendous amounts of valuable ...
What we already know about this topicWHAT THIS ARTICLE TELLS US THAT IS NEW: BACKGROUND:: The author...
Deep Learning based models are currently dominating most state-of-the-art solutions for disease pred...
The global healthcare system is being overburdened by an increasing number of COVID-19 patients. Phy...
An accurate predicted mortality is crucial to healthcare as it provides an empirical risk estimate f...
Purpose: To evaluate the application of machine learning methods, specifically Deep Neural Networks ...