METHOD FOR BODY-WORN SENSOR BASED PROSPECTIVE EVALUATION OF FALLS RISK IN COMMUNITY-DWELLING ELDERLY ADULTS
First Claim
1. A falls risk assessment method comprising:
- calculating a plurality of kinematic parameters based on angular velocity data from a plurality of shank-mounted kinematic sensors obtained during a timed up and go (TUG) test;
generating a regularized discriminant classifier model based on at least one of the kinematic parameters;
performing sequential forward feature selection to base the regularized discriminant classifier model on an additional parameter of the plurality of kinematic parameters; and
performing a grid search to generate at least one optimum parameter for the regularized discriminant classifier model.
2 Assignments
0 Petitions
Accused Products
Abstract
Methods and systems may provide for falls risk assessment using body-worn sensors. If executed by the processor, the instructions can cause the system to calculate a timed up and go (TUG) time segment based on angular velocity data from the plurality of kinematic sensors. The instructions may also cause the system to calculate one or more derived parameters based on the angular velocity data, including temporal gait parameters, spatial gait parameters, tri-axial angular velocity parameters, and turn parameters. Falls data may be collected retrospectively, based on whether the test participant has fallen in the past. Falls data may be collected prospectively, in which the individual is contacted in the future to determine if they have fallen. This outcome data may be used to train regularized discriminant classifier models based on relevant sub-sets of the feature set, selected using sequential forward feature selection. Regularized discriminant parameters and along with associated sequential forward feature selection obtained feature set are obtained via grid-search
40 Citations
12 Claims
-
1. A falls risk assessment method comprising:
-
calculating a plurality of kinematic parameters based on angular velocity data from a plurality of shank-mounted kinematic sensors obtained during a timed up and go (TUG) test; generating a regularized discriminant classifier model based on at least one of the kinematic parameters; performing sequential forward feature selection to base the regularized discriminant classifier model on an additional parameter of the plurality of kinematic parameters; and performing a grid search to generate at least one optimum parameter for the regularized discriminant classifier model. - View Dependent Claims (2, 3, 4, 5, 6)
-
-
7. A system comprising:
-
a plurality of kinematic sensors to be coupled to a corresponding plurality of shanks of an individual; a processor; and a memory to store a set of instructions which, if executed by the processor, cause the system to, calculate a timed up and go (TUG) time segment based on angular velocity data from the plurality of kinematic sensors; calculate a plurality of derived parameters based on the angular velocity data; generate a regularized discriminant classifier model based on the TUG time segment, based on one of the plurality of derived parameters, or based on any combination thereof; perform a sequential forward feature selection to base the regularized discriminant classifier model on an additional parameter of the plurality of derived parameters; and perform a grid search to generate at least one optimum parameter for the regularized discriminant classifier model. - View Dependent Claims (8, 9, 10, 11)
-
-
12. A computer readable storage medium comprising a set of instructions which, if executed by a processor, cause a computer to:
-
calculate a timed up and go (TUG) time segment based on angular velocity data from the plurality of kinematic sensors; calculate a plurality of derived parameters based on the angular velocity data; generate a regularized discriminant classifier model based on the TUG time segment, based on one of the plurality of derived parameters, or based on any combination thereof; perform a sequential forward feature selection to base the regularized discriminant classifier model on an additional parameter of the plurality of derived parameters; and perform a grid search to generate at least one optimum parameter for the regularized discriminant classifier model.
-
Specification