During the last decades, a huge amount of data have been collected in clinical databases in the form of medical reports, laboratory results, treatment plans, etc., representing patients health status. Hence, digital information available for patient-oriented decision making has increased drastically but it is often not mined and analyzed in depth since: (i) medical documents are often unstructured and therefore difficult to analyze automatically, (ii) doctors traditionally rely on their experience to recognize an illness, give a diagnosis, and prescribe medications. However doctors experience can be limited by the cases they are treated so far and medication errors can occur frequently. In addition, it is generally hard and time-consuming i...
Nowadays, a great deal of detailed information about patients, including disease status, medication ...
Abstract Background Natural language processing (NLP) based clinical decision support systems (CDSSs...
In this paper, an intelligent recommender system is developed, which uses an innovative time series...
During the last decades, a huge amount of data have been collected in clinical databases in the form...
Nowadays, there are plenty of text documents in different domains that have unstructured content whi...
© 2015 IEEE. General practitioners are faced with a great challenge of clinical prescription owing t...
Clinicians make decisions that affect life and death, quality of life, every single day. It is impor...
To smartly utilize a huge and constantly growing volume of data, improve productivity and increase c...
Medication recommendation based on Electronic Health Records (EHRs) is a significant research direct...
As many fields progress with the assistance of cognitive computing , the field of health care is al...
In this thesis, we show how a text-based Recommendation Systems can greatly benefit from neural stat...
We present a decision support system to let medical doctors analyze important clinical data, like pa...
Cardiovascular refers to anything relating to the heart and blood vessels. The flawed current leads ...
Nowadays, a vast amount of clinical data scattered across different sites on the Internet hinders us...
AI-based recommendation systems are widely utilized in different fields including movies, music, new...
Nowadays, a great deal of detailed information about patients, including disease status, medication ...
Abstract Background Natural language processing (NLP) based clinical decision support systems (CDSSs...
In this paper, an intelligent recommender system is developed, which uses an innovative time series...
During the last decades, a huge amount of data have been collected in clinical databases in the form...
Nowadays, there are plenty of text documents in different domains that have unstructured content whi...
© 2015 IEEE. General practitioners are faced with a great challenge of clinical prescription owing t...
Clinicians make decisions that affect life and death, quality of life, every single day. It is impor...
To smartly utilize a huge and constantly growing volume of data, improve productivity and increase c...
Medication recommendation based on Electronic Health Records (EHRs) is a significant research direct...
As many fields progress with the assistance of cognitive computing , the field of health care is al...
In this thesis, we show how a text-based Recommendation Systems can greatly benefit from neural stat...
We present a decision support system to let medical doctors analyze important clinical data, like pa...
Cardiovascular refers to anything relating to the heart and blood vessels. The flawed current leads ...
Nowadays, a vast amount of clinical data scattered across different sites on the Internet hinders us...
AI-based recommendation systems are widely utilized in different fields including movies, music, new...
Nowadays, a great deal of detailed information about patients, including disease status, medication ...
Abstract Background Natural language processing (NLP) based clinical decision support systems (CDSSs...
In this paper, an intelligent recommender system is developed, which uses an innovative time series...