Objective: To determine how well statistical text mining (STM) models can identify falls within clinical text associated with an ambulatory encounter. Materials and Methods: 2241 patients were selected with a fall-related ICD-9-CM E-code or matched injury diagnosis code while being treated as an outpatient at one of four sites within the Veterans Health Administration. All clinical documents within a 48-h window of the recorded E-code or injury diagnosis code for each patient were obtained (n=26 010; 611 distinct document titles) and annotated for falls. Logistic regression, support vector machine, and cost-sensitive support vector machine (SVM-cost) models were trained on a stratified sample of 70% of documents from one location (dataset A...
[[abstract]]Purpose The implementation of an information system has become a trend in healthcare ins...
Purpose: The contents of nursing notes play an important role in predicting patient fall risk. Based...
Falls are common adverse events in hospitals, frequently leading to additional health costs due to p...
Objectives. We determined whether statistical text mining (STM) can identify fall-related injuries i...
This study focuses on investigating the computerized medical record, including textual progress note...
We derived machine learning models utilizing features generated by natural language processing (NLP)...
BACKGROUND: Incident reporting is the most common method for detecting adverse events in a hospital....
Introduction: The digitization of hospital systems, including integrated electronic medical records,...
Aim: To create a model that detects the population at risk of falls taking into account fall prevent...
To evaluate the value added by information reported in narratives (extracted through text mining tec...
[[abstract]]Purpose The implementation of an information system has become a trend in healthcare ins...
Objective To synthesise recent research on the use of machine learning approaches to mining textual ...
Objective To synthesise recent research on the use of machine learning approaches to mining textual ...
[[abstract]]Purpose The implementation of an information system has become a trend in healthcare ins...
[[abstract]]Purpose The implementation of an information system has become a trend in healthcare ins...
[[abstract]]Purpose The implementation of an information system has become a trend in healthcare ins...
Purpose: The contents of nursing notes play an important role in predicting patient fall risk. Based...
Falls are common adverse events in hospitals, frequently leading to additional health costs due to p...
Objectives. We determined whether statistical text mining (STM) can identify fall-related injuries i...
This study focuses on investigating the computerized medical record, including textual progress note...
We derived machine learning models utilizing features generated by natural language processing (NLP)...
BACKGROUND: Incident reporting is the most common method for detecting adverse events in a hospital....
Introduction: The digitization of hospital systems, including integrated electronic medical records,...
Aim: To create a model that detects the population at risk of falls taking into account fall prevent...
To evaluate the value added by information reported in narratives (extracted through text mining tec...
[[abstract]]Purpose The implementation of an information system has become a trend in healthcare ins...
Objective To synthesise recent research on the use of machine learning approaches to mining textual ...
Objective To synthesise recent research on the use of machine learning approaches to mining textual ...
[[abstract]]Purpose The implementation of an information system has become a trend in healthcare ins...
[[abstract]]Purpose The implementation of an information system has become a trend in healthcare ins...
[[abstract]]Purpose The implementation of an information system has become a trend in healthcare ins...
Purpose: The contents of nursing notes play an important role in predicting patient fall risk. Based...
Falls are common adverse events in hospitals, frequently leading to additional health costs due to p...