Background Accurate identification of acute ischemic stroke (AIS) patient cohorts is essential for a wide range of clinical investigations. Automated phenotyping methods that leverage electronic health records (EHRs) represent a fundamentally new approach cohort identification without current laborious and ungeneralizable generation of phenotyping algorithms. We systematically compared and evaluated the ability of machine learning algorithms and case-control combinations to phenotype acute ischemic stroke patients using data from an EHR. Materials and methods Using structured patient data from the EHR at a tertiary-care hospital system, we built and evaluated machine learning models to identify patients with AIS based on 75 different case...
Purpose To propose standardized and feasible imaging protocols for constructing artificial intellige...
Background: With the rapid adoption of electronic medical records (EMRs), there is an ever-increasin...
Background: With the rapid adoption of electronic medical records (EMRs), there is an ever-increasin...
Tasnim F Imran,1–3,* Daniel Posner,1,4,* Jacqueline Honerlaw,1 Jason L Vassy,1,2 Rebecca J Son...
<div><p>Objective</p><p>1) To develop a machine learning approach for detecting stroke cases and sub...
The correct recognition of the etiology of ischemic stroke (IS) allows tempestive interventions in t...
Stroke is a highly heterogeneous and complex disease that is a leading cause of death in the United ...
BACKGROUND:Identifying acute ischemic stroke (AIS) among potential stroke cases is crucial for strok...
BackgroundTimely diagnosis of ischemic stroke (IS) in the acute phase is extremely vital to achieve ...
Introduction: Just as failure to diagnose an acute ischemic stroke (AIS) in a timely manner affects ...
Abstract Background Better phenotyping of routinely collected coded data would be useful for researc...
In this paper, we describe a simple taxonomic approach for clinical data mining elaborated by Marcze...
In this paper, we describe a simple taxonomic approach for clinical data mining elaborated by Marcze...
BACKGROUND: acute myocardial infarction (AMI), ischemic heart diseases (IHDs) and stroke are serious...
Fast detection and quantification of lesion cores in diffusion weighted images (DWIs) has been highl...
Purpose To propose standardized and feasible imaging protocols for constructing artificial intellige...
Background: With the rapid adoption of electronic medical records (EMRs), there is an ever-increasin...
Background: With the rapid adoption of electronic medical records (EMRs), there is an ever-increasin...
Tasnim F Imran,1–3,* Daniel Posner,1,4,* Jacqueline Honerlaw,1 Jason L Vassy,1,2 Rebecca J Son...
<div><p>Objective</p><p>1) To develop a machine learning approach for detecting stroke cases and sub...
The correct recognition of the etiology of ischemic stroke (IS) allows tempestive interventions in t...
Stroke is a highly heterogeneous and complex disease that is a leading cause of death in the United ...
BACKGROUND:Identifying acute ischemic stroke (AIS) among potential stroke cases is crucial for strok...
BackgroundTimely diagnosis of ischemic stroke (IS) in the acute phase is extremely vital to achieve ...
Introduction: Just as failure to diagnose an acute ischemic stroke (AIS) in a timely manner affects ...
Abstract Background Better phenotyping of routinely collected coded data would be useful for researc...
In this paper, we describe a simple taxonomic approach for clinical data mining elaborated by Marcze...
In this paper, we describe a simple taxonomic approach for clinical data mining elaborated by Marcze...
BACKGROUND: acute myocardial infarction (AMI), ischemic heart diseases (IHDs) and stroke are serious...
Fast detection and quantification of lesion cores in diffusion weighted images (DWIs) has been highl...
Purpose To propose standardized and feasible imaging protocols for constructing artificial intellige...
Background: With the rapid adoption of electronic medical records (EMRs), there is an ever-increasin...
Background: With the rapid adoption of electronic medical records (EMRs), there is an ever-increasin...