Claims
- 1. A system comprising:
a monitoring device monitoring a plurality of physiological signals of a current patient; a database, which stores records indicative of a plurality of patients including at least some of said physiological signals for said plurality of patients and prognosis information for said plurality of patients; a processor, comparing said physiological signals to said stored records in a database, to determine mathematically patients in the database which are most similar to a current patient; and to make available information about treatment and results for said patients who are most similar to the current patient.
- 2. A system as in claim 1, wherein said physiological signals include hemodynamic information.
- 3. A system as in claim 2, wherein said hemodynamic information includes bio impedance information.
- 4. A system as in claim 2, wherein said hemodynamic information includes temporal patterns within the hemodynamic information.
- 5. A system as in claim 2, further comprising obtaining covariate information indicative of a patient's individual characteristics.
- 6. A system as in claim 5, wherein said processor mathematically determines said similar patients by determining a state variable for a patient based on at least said hemodynamic information and said covariate information.
- 7. A system as in claim 6, wherein said state variable is defined as a vector over time, where each point in time includes measurements at that point in time.
- 8. A system as in claim 7, wherein said state variable also includes derivatives of the hemodynamic measurements and integrals of the hemodynamic measurements.
- 9. A system as in claim 2, wherein said hemodynamic measurements include at least cardiac index, blood pressure, pulse oximetry information, and transcutaneous gas tension.
- 10. A system as in claim 2, wherein said processor also carries out interpolation to place a plurality of said values on a common time grid.
- 11. A system as in claim 7, wherein said state variable is also a function of non covariate parameters, and inconsistencies between said state variable are explained in terms of said covariate parameters.
- 12. A system as in claim 7, wherein said processor models said patient as a control system, with said state parameter representing a patient's state, a control input representing a therapy, and the patient's state following a nonlinear dynamic system with process noise being explained in terms of covariate parameters.
- 13. A system as in claim 12, wherein said processor models said patient with a survival probability based on nearest neighbor states to other patients in the database.
- 14. A system as in claim 7 wherein said processor uses said state variable to find nearest neighbors in the database which represent patients that are most similar to the current patient.
- 15. A system as in claim 14, wherein said finding nearest neighbors comprises determining a quadratic distance between the current patient and other patients in the database.
- 16. A system as in claim 14, wherein said processor uses a weighting matrix to determine said closest neighbors.
- 17. A system as in claim 16, wherein said weighting matrix is based on relationships between hemodynamic patterns and survival versus non survival.
- 18. A method, comprising:
monitoring a plurality of physiological signals of a current patient; comparing said physiological signals of the current patient to stored physiological signals for previous patients stored in a database; determining patients in said database who are most similar to the current patient; and determining information about treatments and results for said patients who are most similar to the current patient.
- 19. A method as in claim 18, wherein said determining information comprises determining a likelihood that the patient will survive.
- 20. A method as in claim 18, wherein said determining information comprises determining a therapy for the current patient which has proved most statistically successful for said patients who are most similar to the current patient.
- 21. A system as in claim 18, wherein said physiological signals include signals indicative of hemodynamic information.
- 22. A system as in claim 21, wherein said signals indicative of hemodynamic information include at least cardiac index, blood pressure, pulse oximetry information and transcutaneous gas tension.
- 23. A system as in claim 18, further comprising obtaining covariate information indicative of a patients individual characteristics, and said determining most similar patients and said determining information is also based on said covariate information.
- 24. A system as in claim 21, wherein said hemodynamic information includes bio impedance information.
- 25. A system as in claim 23, wherein said comparing and determining most similar patients includes comparing temporal patterns within the physiological information.
- 26. A system as in claim 23, wherein said determining most similar patients comprises mathematically determining a state variable indicative of the current patient based on at least said hemodynamic information and said covariate information.
- 27. A method as in claim 23, wherein said determining a state variable comprises investigating derivatives of the hemodynamic information and integrals of the hemodynamic information.
- 28. A method as in claim 18, wherein said comparing comprises interpolating among said physiological signals to evaluate said physiological signals on a common time scale.
- 29. A method as in claim 18, wherein said determining information comprises modeling said patient as a control system with a state parameter representing a patient's state, a control input representing a therapy, and a nonlinear dynamic system, with process noise being explained in terms of covariate information indicative of a patients individual characteristics.
- 30. A method as in claim 18, wherein said determining patients comprises determining quadratic distances between a state variable representing a current patient and state variables representing other patients in said database.
- 31. A method as in claim 30, further comprising using a weighting matrix to determine said closest patients.
- 32. A method as in claim 31, further comprising determining said weighting matrix based on hemodynamic parameters and survival versus non survival.
- 33. A method, comprising:
determining hemodynamic parameters of an individual patient; determining covariate parameters of the individual patient representing the patients individual characteristics; using said covariate characteristics and said hemodynamic parameters to develop a state variable that represents information that is continuously variable in time; comparing said state variable with information indicative of a plurality of previously treated patients in the database; and obtaining survival information about said patients in said database.
CROSS-REFERENCE TO RELATED APPLICATIONS
[0001] This application claims benefit of U.S. Provisional Application No. 60/299,578, filed Jun. 19, 2001.
Provisional Applications (1)
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Number |
Date |
Country |
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60299578 |
Jun 2001 |
US |