Review on Clinical Decision Support System for Heart Diseases
Citation
Kulkarni Rashmi Ravindranath, Kulkarni Radhika Ravindranath "Review on Clinical Decision Support System for Heart Diseases", International Journal of Engineering Trends and Technology (IJETT), V53(1),10-12 November 2017. ISSN:2231-5381. www.ijettjournal.org. published by seventh sense research group
Abstract
Clinical Decision Support System
(CDSS) is a tool which helps doctors to make better
and uniform decisions. There are many existing
systems present which are used for diagnosing the
diseases. For different systems algorithmic aspect
changes as per requirement. For every approach
there pros and cons. Selecting the positive aspect
and overcoming the problems is the main motive.
There i s large amount of heart
related data present , which i s in
unst ructured format . Hence by analyz ing
the data and format t ing i t into st ructured
manner helps for making the deci sion. For
diagnos ing the disease there are many
ways in which hear t related di seases can
be diagnosed and treatment can be
provided.
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Keywords
CDSS, Patient health Information,
Electronic Medical Record, Healthcare, Data
mining.