Erin K. Hamilton - Ph.D. Proposal

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Event Details
  • Date/Time:
    • Wednesday August 1, 2012 - Thursday August 2, 2012
      9:00 am - 11:59 am
  • Location: Whitaker Building, Room 2100
  • Phone:
  • URL:
  • Email:
  • Fee(s):
    N/A
  • Extras:
Contact

Mr. Chris Ruffin

Summaries

Summary Sentence: Multi-scale and Meta-analytic Approaches to Inference in Clinical Healthcare Data

Full Summary: "Multi-scale and Meta-analytic Approaches to Inference in Clinical Healthcare Data"

Advisors:
Brani Vidakovi, Ph.D. (BME)
Paul Griffin, Ph.D. (Penn State University)

Committee:

Melissa Kemp, Ph.D. (BME)
David Goldsman, Ph.D. (ISYE)
Susan Griffin, Ph.D. (Centers for Disease Control and Prevention)

The field of medicine is regularly faced with the challenge of utilizing information that is complicated or difficult to characterize. Physicians often must use their best judgment in reaching decisions or recommendations for treatment in the clinical setting. The goal of this proposal is to use innovative statistical tools in tackling three specific challenges of this nature from current healthcare applications.

 

The first aim focuses on developing a novel approach to meta-analysis when combining binary data from multiple studies of paired design, particularly in cases of high heterogeneity between a low or moderate number of studies. The proposed approach uses a Rasch model for translating data from multiple paired studies into a unified structure, allowing for proper handling of variability associated with both pair and study effects. Analysis is performed using a Bayesian hierarchical structure, accounting for heterogeneity in a direct way within the variances of the generating distributions of model parameters. This approach is applied to the debated topic within the dental community of the comparative effectiveness of materials used for pit-and-fissure sealants.

The second and third aims have applications in early detection of breast cancer. The interpretation of mammograms is often difficult since signs of early disease are often minuscule, and the appearance of even normal tissue can be highly variable and complex. When dealing with high frequency and irregular data, as in most medical images, the behaviors of these complex structures are often impossible to quantify by standard modeling techniques. Scaling is a commonly occurring phenomenon in high-frequency data. The second aim in this proposal is to develop and evaluate a wavelet-based scaling estimator that reduces the information in a mammogram down to an informative, low-dimensional quantification of the innate scaling behavior, optimized for use in classifying the tissue as cancerous or non-cancerous.

The third aim focuses on enhancing the visualization of microcalcifications that are too small to capture well on screening mammograms. Using scale-mixing discrete wavelet transform methods, the existing detail information contained in a very small and course image will be used to impute scaled details at finer levels. These will then be used to produce an image of much higher resolution than the original, improving the visualization of the object. The goal is to produce a confidence area for the true location of the shape's borders, allowing for more accurate feature assessment.

Additional Information

In Campus Calendar
No
Groups

Bioengineering Graduate Program

Invited Audience
No audiences were selected.
Categories
Other/Miscellaneous
Keywords
bioengineering, Erin K. Hamilton
Status
  • Created By: Chris Ruffin
  • Workflow Status: Published
  • Created On: Jul 26, 2012 - 3:54am
  • Last Updated: Oct 7, 2016 - 9:59pm