Surgery – Diagnostic testing
Reexamination Certificate
2006-08-08
2006-08-08
Jaworski, Francis J. (Department: 3737)
Surgery
Diagnostic testing
C600S437000
Reexamination Certificate
active
07087018
ABSTRACT:
A system and method for assigning feature sensitivity values to a set of potential measurements to be taken during a medical procedure of a patient in order to provide a medical diagnosis is disclosed. Data is received from a sensor that represents a particular medical measurement. The received data and context data are analyzed with respect to one or more sets of training models. Feature sensitivity values are derived for the particular medical measurement and other potential measurements to be taken based the analysis, and the feature sensitivity values are outputted.
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Comaniciu Dorin
Duggirala Bhavani
Krishnan Arun
Paine Diane
Zhou Xiang Sean
Conover Michele L.
Jaworski Francis J.
Siemens Medical Solutions USA , Inc.
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