[F31] Verifiable and Robust Deformable Image Registration for Precision Tracking of Diffuse Glioma Progression
Ente: National Cancer Institute
Scadenza: 2028-04-30
Importo max: 50.114 EUR
Paese: US
Descrizione
ABSTRACT
Diffuse gliomas are the most common primary brain cancer in adults, with the most aggressive and
common form glioblastoma (GBM) having a median survival of only 15 months. Despite advances, current clinical
imaging protocols lack the precision to track microscopic tumor infiltration that later becomes recurrence. This
can result in poorly defined treatment margins that do not address the full extent of the tumor and can
compromise patient safety. Determining the precise site of future recurrence on preoperative imaging could allow
improved treatments such as boosted radiation dose to regions at risk for recurrence. Deformable image
registration (DIR) enables the alignment of longitudinal MRI scans to achieve this task, but existing DIR
approaches suffer from limited accuracy and unreliable verification, hindering clinical adoption.
This project aims to develop a verifiable and accurate DIR method for diffuse gliomas by incorporating
AI-based blood vessel segmentation and bifurcation matching into a new high-precision DIR approach. I
hypothesize that incorporating blood vessel bifurcations as stable anatomical markers into the registration
process will permit sub-millimeter accuracy in non-linear image registration. This level of accuracy will permit
refined and precise treatment margins and support advanced imaging methods to accurately track tumor growth
over time. Using the hierarchical nature of blood vessel trees, I will establish correspondence between blood
vessels segmented from pre-operative and post-recurrence MRI scans of the same GBM patient. The DIR
method will synthesize these matching vessel points with image features extracted from multi-sequence MRI
data to precisely describe the anatomical transformation that occurred between the scans. This can then be used
to pinpoint the recurrence origin on the pre-operative time point, allowing for future treatments targeting this site.
In addition to GBM, I will adapt and optimize the developed method for slower-growing, low-grade diffuse
glioma cases. By quantifying the deformation between low-grade scans with accurate DIR, I can detect small
changes in tumor size and shape that can indicate disease progression. I will compare this approach to visual
observation to demonstrate its clinical utility. Finally, I will utilize the developed vessel-matching tools to establish
the most comprehensive DIR accuracy baseline across diffuse glioma grades to date, supporting further
algorithm development and clinical implementation. This research will provide robust, verifiable DIR methods
tailored for GBM and low-grade diffuse gliomas, addressing a critical gap in neuro-oncology imaging. By
improving registration accuracy, this project can improve the precision of GBM treatment planning, enhance
recurrence detection, detect tumor progression, and ultimately improve patient outcomes.
Istituzione: DUKE UNIVERSITY
PI: Edward Robert Criscuolo
Progetto: 1F31CA310043-01
Settori: National Cancer Institute
Vai al bando originale
Registrati gratis su Bandolo per trovare bandi compatibili con la tua azienda.