scholarly journals Preventive Intervention for a Group of Buildings in the Historic Centre of Manresa (Barcelona)

2014 ◽  
Vol 9 (8) ◽  
pp. 928-941
Author(s):  
Cesar Diaz ◽  
Cossima Cornado ◽  
Antoni Griera ◽  
Oriol Caselles ◽  
Vicente Alegre ◽  
...  
Author(s):  
Shannon Morrison ◽  
Jennifer Hardison ◽  
Anita Mathew ◽  
Joyce O'Neil

2010 ◽  
Author(s):  
Geetanjali Chugh ◽  
Manju Mehta ◽  
Anju Dhawan ◽  
Rajesh Sagar

2011 ◽  
Author(s):  
Nicole E. Mahrer ◽  
Colleen M. Carr ◽  
Sharlene A. Wolchik ◽  
Irwin N. Sandler ◽  
Jenn-Yun Tein

Author(s):  
Sunitha .T ◽  
Shyamala .J ◽  
Annie Jesus Suganthi Rani.A

Data mining suggest an innovative way of prognostication stereotype of Patients health risks. Large amount of Electronic Health Records (EHRs) collected over the years have provided a rich base for risk analysis and prediction. An EHR contains digitally stored healthcare information about an individual, such as observations, laboratory tests, diagnostic reports, medications, procedures, patient identifying information and allergies. A special type of EHR is the Health Examination Records (HER) from annual general health check-ups. Identifying participants at risk based on their current and past HERs is important for early warning and preventive intervention. By “risk”, we mean unwanted outcomes such as mortality and morbidity. This approach is limited due to the classification problem and consequently it is not informative about the specific disease area in which a personal is at risk. Limited amount of data extracted from the health record is not feasible for providing the accurate risk prediction. The main motive of this project is for risk prediction to classify progressively developing situation with the majority of the data unlabeled.


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