Difference between revisions of "Distribution modeling"

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==Key Investigators==
 
==Key Investigators==
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<h3>Objective</h3>
 
<h3>Objective</h3>
* Model probability distributions along DTI fiber tracts instead of scalar summary measurements to create a tract profile (e.g. cross-sectional averages).
+
* Evaluate the ability of regression methods utilizing distribution-valued measurements to differentiate between healthy controls and patients with pathology.
* Our spatiotemporal modeling method utilizes these distribution-valued data to create growth trajectories such that the complete probability distribution is estimated continuously in space and time.
 
* Create a spatiotemporal growth trajectory for the healthy infant population. Evaluate our method's ability to detect clinical differences in infants with Krabbe's disease when compared with the control population.  
 
 
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<h3>Approach, Plan</h3>
 
<h3>Approach, Plan</h3>
*
+
* Model probability distributions along DTI fiber tracts instead of scalar summary measurements to create a tract profile (e.g. cross-sectional averages).
 +
* Our spatiotemporal modeling method utilizes these distribution-valued data to create growth trajectories such that the complete probability distribution is estimated continuously in space and time.
 +
* Using these methods, we can estimate a spatiotemporal growth trajectory for the healthy infant population. We then compare our method's ability to detect clinical differences in infants with Krabbe's disease in reference to a control population.
 
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<h3>Progress</h3>
 
<h3>Progress</h3>
*
+
* We found that our method had better sensitivity towards finding differences in growth trajectories.
 +
* We could find statistically significant differences in scenarios where the differences were small enough to be missed by conventional methods.
 
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Latest revision as of 16:13, 9 January 2015

Home < Distribution modeling


Key Investigators

Anuja Sharma, Guido Gerig

Project Description

Objective

  • Evaluate the ability of regression methods utilizing distribution-valued measurements to differentiate between healthy controls and patients with pathology.

Approach, Plan

  • Model probability distributions along DTI fiber tracts instead of scalar summary measurements to create a tract profile (e.g. cross-sectional averages).
  • Our spatiotemporal modeling method utilizes these distribution-valued data to create growth trajectories such that the complete probability distribution is estimated continuously in space and time.
  • Using these methods, we can estimate a spatiotemporal growth trajectory for the healthy infant population. We then compare our method's ability to detect clinical differences in infants with Krabbe's disease in reference to a control population.

Progress

  • We found that our method had better sensitivity towards finding differences in growth trajectories.
  • We could find statistically significant differences in scenarios where the differences were small enough to be missed by conventional methods.