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Inventor profile of:

Dominic Pascal Schmidt

City:

Erlangen

Country:

Germany

Published Applications:

7

Last publication date:

2009-06-04

Recent patent applications by Schmidt Dominic Pascal

Dominic Pascal Schmidt from Erlangen, DE has applied for patents for these inventions. The list has both pending applications and granted patents:

#1 | 2009-06-04
US20090144079A1
Physics

Patient identification mechanism in a telemonitoring system

#2 | 2009-03-19
US20090077024A1
Physics

SEARCH SYSTEM FOR SEARCHING A SECURED MEDICAL SERVER

#3 | 2009-03-19
US20090076839A1
Physics

SEMANTIC SEARCH SYSTEM

#4 | 2009-03-12
US20090070146A1
Physics

Method for managing the release of data

#5 | 2009-03-12
US20090070137A1
Physics

Method and system to optimize quality of patient care paths

#6 | 2009-01-22
US20090024413A1
Physics

METHOD AND SYSTEM TO MANAGE CROSS INSTITUTIONAL MAMMA CARCINOMA CARE PLANS

#7 | 2008-09-04
US20080215523A1
Physics

METHOD FOR ASSOCIATION CHECKING OF STRUCTURED DATA SETS FROM WHICH PATIENT IDENTIFICATION DATA CAN BE DETERMINED IN A PATIENT ADMINISTRATION SYSTEM WITH ELECTRONIC PATIENT RECORDS

InventorID:

3863566 ⎘

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