Difference between revisions of "SOCR News AmStats SIM 2024"
(→Session Presenters) |
(→Session Presenters) |
||
Line 22: | Line 22: | ||
: ''Title'': Spatiotemporal dimension reduction and biomedical imaging data analytics | : ''Title'': Spatiotemporal dimension reduction and biomedical imaging data analytics | ||
− | * [https://www.stat.iastate.edu/people/ranjan- | + | * [https://www.stat.iastate.edu/people/ranjan-maitra Ranjan Maitra] (Iowa State) |
: ''Title'': Complex-valued time series modeling and prediction in high-dimensional spatiotemporal processes | : ''Title'': Complex-valued time series modeling and prediction in high-dimensional spatiotemporal processes | ||
Revision as of 13:47, 15 February 2024
Contents
SOCR News & Events: 2024 2024 American Statistical Association Special Session on Longitudinal Imaging and Biostatistical Methods, Statistics in Imaging Annual Meeting, Indianapolis
Overview
This session will include a blend of mathematical, statistical, and computational experts presenting on recent methodological advances to represent, model, predict, synthesize, and analyze large and heterogeneous spatiotemporal imaging data.
Session Logistics
- Title: Longitudinal Imaging and Biostatistical Methods
- Organizers: Ivo Dinov (Michigan), Sharmistha Guha (TAMU), Hossein Moradi (SD State), Ranjan Maitra (Iowa), and Dan Rowe (Marquette)
- Date/Time: TBD
- Venue: JW Marriott Indianapolis, Singapore
- Registration: ... coming up ...
- Conference: 2024 Statistical Methods in Imaging Conference, Annual Meeting of the ASA Statistics in Imaging Section.
- Session Format: details coming up ...
Session Presenters
- Sharmistha Guha (TAMU)
- Title: Bayesian approaches for Modeling Brain Network Dynamics.
- Hossein Moradi (SDState)
- Title: Spatiotemporal dimension reduction and biomedical imaging data analytics
- Ranjan Maitra (Iowa State)
- Title: Complex-valued time series modeling and prediction in high-dimensional spatiotemporal processes
- Dan Rowe (Marquette)
- Title: (TBD)
- Ivo Dinov (Michigan)
- Title: Spacekime analytics: from time-series to kime-surfaces and inference-functions
Translate this page: