Core 1b – A glimpse at the renewal

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Presentation transcript:

Core 1b – A glimpse at the renewal

Core 1b – Engineering 5 Aims / 5 Platforms 4 2 5 3 Architecture – tools, operating paradigms, reporting mechanisms, integration points End-user platform – interactive methods and information visualization for longitudinal analysis, exploratory data analysis, and translational research Computational platform – stream processing, cloud computing, statistical analysis, informatics, machine learning Data management – non-imaging and derived data, DICOM and cloud services Software engineering and software quality – navigable timeline for revision control, build, test, documentation and release

Core 1b – Engineering Proposed schedule

Core 1a - Algorithms Statistical modeling of anatomy and pathology – statistical models to capture wider range of anatomy and pathology Geometric correspondence – between images, coordinate systems, shapes, anatomies for robustness against variability User interactive tools for segmentation – user guided tools to for segmenting tissues, organs, lesions Longitudinal and time-series analysis – statistical and geometric analysis across time

Core 1a – Algorithms Proposed schedule

DBPs Atrial fibrillation – precision guidance of interventional therapy based on integration of pre-procedural and intra-procedural image data Huntington’s disease – formulate and test hypotheses about the evolution of chronic disease in at-risk individuals Head and neck cancer – quantification of change in body systems during disease progression and management Traumatic brain injury – longitudinal imaging allow patients to serve as their own controls