Back to Search Start Over

Feasibility of function‐guided lung treatment planning with parametric response mapping

Authors :
Martha M. Matuszak
Matthew J. Schipper
D. Rocky Owen
Shruti Jolly
C.A. Schonewolf
Charles K. Matrosic
Randall K. Ten Haken
Yilun Sun
Daniel F. Polan
Craig J. Galbán
Source :
Journal of Applied Clinical Medical Physics
Publication Year :
2021
Publisher :
Wiley, 2021.

Abstract

Purpose Recent advancements in functional lung imaging have been developed to improve clinicians’ knowledge of patient pulmonary condition prior to treatment. Ultimately, it may be possible to employ these functional imaging modalities to tailor radiation treatment plans to optimize patient outcome and mitigate pulmonary complications. Parametric response mapping (PRM) is a computed tomography (CT)–based functional lung imaging method that utilizes a voxel‐wise image analysis technique to classify lung abnormality phenotypes, and has previously been shown to be effective at assessing lung complication risk in diagnostic applications. The purpose of this work was to demonstrate the implementation of PRM guidance in radiotherapy treatment planning. Methods and materials A retrospective study was performed with 18 lung cancer patients to test the incorporation of PRM into a radiotherapy planning workflow. Paired inspiration/expiration pretreatment CT scans were acquired and PRM analysis was utilized to classify each voxel as normal, parenchymal disease, small airway disease, and emphysema. Density maps were generated for each PRM classification to contour high density regions of pulmonary abnormalities. Conventional volumetric‐modulated arc therapy and PRM‐guided treatment plans were designed for each patient. Results PRM guidance was successfully implemented into the treatment planning process. The inclusion of PRM priorities resulted in statistically significant (p

Details

ISSN :
15269914
Volume :
22
Database :
OpenAIRE
Journal :
Journal of Applied Clinical Medical Physics
Accession number :
edsair.doi.dedup.....36435a4208afc356d868c61fd632346b
Full Text :
https://doi.org/10.1002/acm2.13436