<div><p>Objective</p><p>1) To develop a machine learning approach for detecting stroke cases and subtypes from hospitalization data, 2) to assess algorithm performance and predictors on real-world data collected by a large-scale epidemiology study in the US; and 3) to identify directions for future development of high-precision stroke phenotypic signatures.</p><p>Materials and methods</p><p>We utilized 8,131 hospitalization events (ICD-9 codes 430–438) collected from the Greater Cincinnati/Northern Kentucky Stroke Study in 2005 and 2010. Detailed information from patients’ medical records was abstracted for each event by trained research nurses. By analyzing the broad list of demographic and clinical variables, the machine learning algorith...
In this paper, we describe a simple taxonomic approach for clinical data mining elaborated by Marcze...
BACKGROUND:Identifying acute ischemic stroke (AIS) among potential stroke cases is crucial for strok...
Objective: In UK Biobank (UKB), a large population-based prospective study, cases of many diseases a...
Tasnim F Imran,1–3,* Daniel Posner,1,4,* Jacqueline Honerlaw,1 Jason L Vassy,1,2 Rebecca J Son...
Abstract: Due to rapid changing in human lifestyles, a set of biological factors of human lives has ...
Aim: To use available electronic administrative records to identify data reliability, predict discha...
Background Accurate identification of acute ischemic stroke (AIS) patient cohorts is essential for a...
Abstract Background Better phenotyping of routinely collected coded data would be useful for researc...
This electronic version was submitted by the student author. The certified thesis is available in th...
Background and Purpose- We evaluated deep learning algorithms' segmentation of acute ischemic lesion...
Individuals developing stroke have varying clinical characteristics, demographic, and biochemical pr...
BackgroundIdentifying patients at high risk of stroke-associated pneumonia (SAP) may permit targetin...
This study explores the application of machine learning in the prediction of stroke occurrences, a c...
In this paper, we describe a simple taxonomic approach for clinical data mining elaborated by Marcze...
Background: Valid and reliable ischemic stroke subtype determination is crucial for well-powered mul...
In this paper, we describe a simple taxonomic approach for clinical data mining elaborated by Marcze...
BACKGROUND:Identifying acute ischemic stroke (AIS) among potential stroke cases is crucial for strok...
Objective: In UK Biobank (UKB), a large population-based prospective study, cases of many diseases a...
Tasnim F Imran,1–3,* Daniel Posner,1,4,* Jacqueline Honerlaw,1 Jason L Vassy,1,2 Rebecca J Son...
Abstract: Due to rapid changing in human lifestyles, a set of biological factors of human lives has ...
Aim: To use available electronic administrative records to identify data reliability, predict discha...
Background Accurate identification of acute ischemic stroke (AIS) patient cohorts is essential for a...
Abstract Background Better phenotyping of routinely collected coded data would be useful for researc...
This electronic version was submitted by the student author. The certified thesis is available in th...
Background and Purpose- We evaluated deep learning algorithms' segmentation of acute ischemic lesion...
Individuals developing stroke have varying clinical characteristics, demographic, and biochemical pr...
BackgroundIdentifying patients at high risk of stroke-associated pneumonia (SAP) may permit targetin...
This study explores the application of machine learning in the prediction of stroke occurrences, a c...
In this paper, we describe a simple taxonomic approach for clinical data mining elaborated by Marcze...
Background: Valid and reliable ischemic stroke subtype determination is crucial for well-powered mul...
In this paper, we describe a simple taxonomic approach for clinical data mining elaborated by Marcze...
BACKGROUND:Identifying acute ischemic stroke (AIS) among potential stroke cases is crucial for strok...
Objective: In UK Biobank (UKB), a large population-based prospective study, cases of many diseases a...