ObjectiveEarly identification of chronic diseases is a pillar of precision medicine as it can lead to improved outcomes, reduction of disease burden, and lower healthcare costs. Predictions of a patient's health trajectory have been improved through the application of machine learning approaches to electronic health records (EHRs). However, these methods have traditionally relied on "black box" algorithms that can process large amounts of data but are unable to incorporate domain knowledge, thus limiting their predictive and explanatory power. Here, we present a method for incorporating domain knowledge into clinical classifications by embedding individual patient data into a biomedical knowledge graph.Materials and methodsA modified versio...
Abstract Objective No relapse risk prediction tool is currently available to guide treatment selecti...
To explore the value of machine learning methods for predicting multiple sclerosis disease course.16...
Physicians establish diagnosis by assessing a patient's signs, symptoms, age, sex, laboratory test f...
ObjectiveTo optimally leverage the scalability and unique features of the electronic health records ...
If you put your clinical information into an algorithm and it told you exactly when you will get sic...
IntroductionEarly diagnosis of Parkinson's disease (PD) is important to identify treatments to slow ...
International audienceBackground: Artificial intelligence methods applied to electronic medical reco...
Demand for clinical decision support systems in medicine and self-diagnostic symptom checkers has su...
© 2019 The Authors. Increasingly large electronic health records (EHRs) provide an opportunity to al...
The rate of disability accumulation varies across multiple sclerosis (MS) patients. Machine learning...
Abstract The rate of disability accumulation varies across multiple sclerosis (MS) patients. Machine...
Background Diagnostic accuracy might be improved by algorithms that searched patients’ clinical note...
Multiple Sclerosis (MS) progresses at an unpredictable rate, but predictions on the disease course i...
1. Abstract: Multiple sclerosis (MS) is an inflammatory disease of unknown etiology in the central n...
Increasing efforts in the collection, standardization, and maintenance of large scale longitudinal e...
Abstract Objective No relapse risk prediction tool is currently available to guide treatment selecti...
To explore the value of machine learning methods for predicting multiple sclerosis disease course.16...
Physicians establish diagnosis by assessing a patient's signs, symptoms, age, sex, laboratory test f...
ObjectiveTo optimally leverage the scalability and unique features of the electronic health records ...
If you put your clinical information into an algorithm and it told you exactly when you will get sic...
IntroductionEarly diagnosis of Parkinson's disease (PD) is important to identify treatments to slow ...
International audienceBackground: Artificial intelligence methods applied to electronic medical reco...
Demand for clinical decision support systems in medicine and self-diagnostic symptom checkers has su...
© 2019 The Authors. Increasingly large electronic health records (EHRs) provide an opportunity to al...
The rate of disability accumulation varies across multiple sclerosis (MS) patients. Machine learning...
Abstract The rate of disability accumulation varies across multiple sclerosis (MS) patients. Machine...
Background Diagnostic accuracy might be improved by algorithms that searched patients’ clinical note...
Multiple Sclerosis (MS) progresses at an unpredictable rate, but predictions on the disease course i...
1. Abstract: Multiple sclerosis (MS) is an inflammatory disease of unknown etiology in the central n...
Increasing efforts in the collection, standardization, and maintenance of large scale longitudinal e...
Abstract Objective No relapse risk prediction tool is currently available to guide treatment selecti...
To explore the value of machine learning methods for predicting multiple sclerosis disease course.16...
Physicians establish diagnosis by assessing a patient's signs, symptoms, age, sex, laboratory test f...