Background and purposeThis project assessed performance of natural language processing (NLP) and machine learning (ML) algorithms for classification of brain MRI radiology reports into acute ischemic stroke (AIS) and non-AIS phenotypes.Materials and methodsAll brain MRI reports from a single academic institution over a two year period were randomly divided into 2 groups for ML: training (70%) and testing (30%). Using “quanteda” NLP package, all text data were parsed into tokens to create the data frequency matrix. Ten-fold cross-validation was applied for bias correction of the training set. Labeling for AIS was performed manually, identifying clinical notes. We applied binary logistic regression, naïve Bayesian classification, single decis...
International audienceIn acute ischaemic stroke, identifying brain tissue at high risk of infarction...
International audienceIn acute ischaemic stroke, identifying brain tissue at high risk of infarction...
International audienceIn acute ischaemic stroke, identifying brain tissue at high risk of infarction...
Background Abstraction of critical data from unstructured radiologic reports using natural language ...
Accurate, automated extraction of clinical stroke information from unstructured text has several imp...
ML, machine learning; NLP, natural language processing, BLR, binary logistic regression; NBC, naïve ...
OBJECTIVES: To compare different Machine Learning (ML) Natural Language Processing (NLP) methods to ...
OBJECTIVES: To compare different Machine Learning (ML) Natural Language Processing (NLP) methods to ...
Machine Learning (ML) through pattern recognition algorithms is currently becoming an essential aid ...
International audienceIn acute ischaemic stroke, identifying brain tissue at high risk of infarction...
International audienceIn acute ischaemic stroke, identifying brain tissue at high risk of infarction...
Background: With the rapid adoption of electronic medical records (EMRs), there is an ever-increasin...
International audienceIn acute ischaemic stroke, identifying brain tissue at high risk of infarction...
International audienceIn acute ischaemic stroke, identifying brain tissue at high risk of infarction...
International audienceIn acute ischaemic stroke, identifying brain tissue at high risk of infarction...
International audienceIn acute ischaemic stroke, identifying brain tissue at high risk of infarction...
International audienceIn acute ischaemic stroke, identifying brain tissue at high risk of infarction...
International audienceIn acute ischaemic stroke, identifying brain tissue at high risk of infarction...
Background Abstraction of critical data from unstructured radiologic reports using natural language ...
Accurate, automated extraction of clinical stroke information from unstructured text has several imp...
ML, machine learning; NLP, natural language processing, BLR, binary logistic regression; NBC, naïve ...
OBJECTIVES: To compare different Machine Learning (ML) Natural Language Processing (NLP) methods to ...
OBJECTIVES: To compare different Machine Learning (ML) Natural Language Processing (NLP) methods to ...
Machine Learning (ML) through pattern recognition algorithms is currently becoming an essential aid ...
International audienceIn acute ischaemic stroke, identifying brain tissue at high risk of infarction...
International audienceIn acute ischaemic stroke, identifying brain tissue at high risk of infarction...
Background: With the rapid adoption of electronic medical records (EMRs), there is an ever-increasin...
International audienceIn acute ischaemic stroke, identifying brain tissue at high risk of infarction...
International audienceIn acute ischaemic stroke, identifying brain tissue at high risk of infarction...
International audienceIn acute ischaemic stroke, identifying brain tissue at high risk of infarction...
International audienceIn acute ischaemic stroke, identifying brain tissue at high risk of infarction...
International audienceIn acute ischaemic stroke, identifying brain tissue at high risk of infarction...
International audienceIn acute ischaemic stroke, identifying brain tissue at high risk of infarction...