biosensors.usc - Distributional Data Analysis Techniques for Biosensor Data
Unified and user-friendly framework for using new
distributional representations of biosensors data in different
statistical modeling tasks: regression models, hypothesis
testing, cluster analysis, visualization, and descriptive
analysis. Distributional representations are a functional
extension of compositional time-range metrics and we have used
them successfully so far in modeling glucose profiles and
accelerometer data. However, these functional representations
can be used to represent any biosensor data such as ECG or
medical imaging such as fMRI. Matabuena M, Petersen A, Vidal
JC, Gude F. "Glucodensities: A new representation of glucose
profiles using distributional data analysis" (2021)
<doi:10.1177/0962280221998064>.