BACKGROUND: Incident reporting is the most common method for detecting adverse events in a hospital. However, under-reporting or non-reporting and delay in submission of reports are problems that prevent early detection of serious adverse events. The aim of this study was to determine whether it is possible to promptly detect serious injuries after inpatient falls by using a natural language processing method and to determine which data source is the most suitable for this purpose. METHODS: We tried to detect adverse events from narrative text data of electronic medical records by using a natural language processing method. We made syntactic category decision rules to detect inpatient falls from text data in electronic medical records. We c...
OBJECTIVES: To compare three different methods of falls reporting and examine the characteristics of...
Objectives: To compare three different methods of falls reporting and examine the characteristics of...
BACKGROUND: Falls among older adults are both a common reason for presentation to the emergency d...
Detecting inpatient falls by using natural language processing of electronic medical shortcomings of...
We derived machine learning models utilizing features generated by natural language processing (NLP)...
An incident reporting system is the most commonly used method to identify patient safety incidents i...
This study focuses on investigating the computerized medical record, including textual progress note...
OBJECTIVE: The aim of this study was to explore whether information captured in falls reports in inc...
Falls are common adverse events in hospitals, frequently leading to additional health costs due to p...
Objective: The aim of this study was to explore whether information captured in falls reports in inc...
Electronic Health Records (EHRs) have led to valuable improvements to hospital practices by integrat...
Abstract Background Adverse events are associated wit...
Objective: To determine how well statistical text mining (STM) models can identify falls within clin...
Objectives. We determined whether statistical text mining (STM) can identify fall-related injuries i...
OBJECTIVES: To compare three different methods of falls\ud reporting and examine the characteristics...
OBJECTIVES: To compare three different methods of falls reporting and examine the characteristics of...
Objectives: To compare three different methods of falls reporting and examine the characteristics of...
BACKGROUND: Falls among older adults are both a common reason for presentation to the emergency d...
Detecting inpatient falls by using natural language processing of electronic medical shortcomings of...
We derived machine learning models utilizing features generated by natural language processing (NLP)...
An incident reporting system is the most commonly used method to identify patient safety incidents i...
This study focuses on investigating the computerized medical record, including textual progress note...
OBJECTIVE: The aim of this study was to explore whether information captured in falls reports in inc...
Falls are common adverse events in hospitals, frequently leading to additional health costs due to p...
Objective: The aim of this study was to explore whether information captured in falls reports in inc...
Electronic Health Records (EHRs) have led to valuable improvements to hospital practices by integrat...
Abstract Background Adverse events are associated wit...
Objective: To determine how well statistical text mining (STM) models can identify falls within clin...
Objectives. We determined whether statistical text mining (STM) can identify fall-related injuries i...
OBJECTIVES: To compare three different methods of falls\ud reporting and examine the characteristics...
OBJECTIVES: To compare three different methods of falls reporting and examine the characteristics of...
Objectives: To compare three different methods of falls reporting and examine the characteristics of...
BACKGROUND: Falls among older adults are both a common reason for presentation to the emergency d...