Although patients with advanced cancer often experience multiple symptoms simultaneously, clinicians usually focus on symptoms that are volunteered by patients during regular history-taking. We aimed to evaluate the feasibility of a Bayesian network (BN) model to predict the presence of simultaneous symptoms, based on the presence of other symptoms. Our goal is to help clinicians prioritize which symptoms to assess. Patient-reported severity of 11 symptoms (scale 0-10) was measured using an adapted Edmonton Symptom Assessment Scale (ESAS) in a national cross-sectional survey among advanced cancer patients. Scores were dichotomized (< 4 and ≥ 4). Using fourfold cross validation, the prediction error of 9 BN algorithms was estimated (Akaik...
Critical care medicine has been a field for Bayesian networks (BNs) application for investigating re...
The paper employed Bayesian network (BN) modelling approach to discover causal dependencies among di...
Contains fulltext : 62363.pdf (publisher's version ) (Closed access)With the help ...
Although patients with advanced cancer often experience multiple symptoms simultaneously, clinicians...
This paper describes the design, implementation, and preliminary evaluation of a Bayesian network th...
Over the past few decades, the rise of multiple chronic conditions has become a major concern for cl...
Oncology patients undergoing cancer treatment experience an average of fifteen unrelieved symptoms t...
Research into possible risk factors for chronic conditions is a common theme in medical fields. Howe...
Oncology patients undergoing cancer treatment experience an average of fifteen unrelieved symptoms t...
<div><p>Over the past few decades, the rise of multiple chronic conditions has become a major concer...
Advances in technology have allowed for the collection of diverse data types along with evolution in...
Oncology patients undergoing cancer treatment experience an average of fifteen unrelieved symptoms t...
© 2016 IEEE. Many studies have focused on prognosis for oncology patients with the following charact...
We consider a Bayesian statistical approach to model-based prediction of a future patient's response...
A Bayesian network is a probabilistic graphical model that represents a set of variables and their c...
Critical care medicine has been a field for Bayesian networks (BNs) application for investigating re...
The paper employed Bayesian network (BN) modelling approach to discover causal dependencies among di...
Contains fulltext : 62363.pdf (publisher's version ) (Closed access)With the help ...
Although patients with advanced cancer often experience multiple symptoms simultaneously, clinicians...
This paper describes the design, implementation, and preliminary evaluation of a Bayesian network th...
Over the past few decades, the rise of multiple chronic conditions has become a major concern for cl...
Oncology patients undergoing cancer treatment experience an average of fifteen unrelieved symptoms t...
Research into possible risk factors for chronic conditions is a common theme in medical fields. Howe...
Oncology patients undergoing cancer treatment experience an average of fifteen unrelieved symptoms t...
<div><p>Over the past few decades, the rise of multiple chronic conditions has become a major concer...
Advances in technology have allowed for the collection of diverse data types along with evolution in...
Oncology patients undergoing cancer treatment experience an average of fifteen unrelieved symptoms t...
© 2016 IEEE. Many studies have focused on prognosis for oncology patients with the following charact...
We consider a Bayesian statistical approach to model-based prediction of a future patient's response...
A Bayesian network is a probabilistic graphical model that represents a set of variables and their c...
Critical care medicine has been a field for Bayesian networks (BNs) application for investigating re...
The paper employed Bayesian network (BN) modelling approach to discover causal dependencies among di...
Contains fulltext : 62363.pdf (publisher's version ) (Closed access)With the help ...