Semi-automatic tumor segmentation of rectal cancer based on functional magnetic resonance imaging.

Autor: Knuth F; Department of Physics, Norwegian University of Science and Technology, Høgskoleringen 5, 7491 Trondheim, Norway., Groendahl AR; Faculty of Science and Technology, Norwegian University of Life Sciences, Drøbakveien 31, 1432 Ås, Norway., Winter RM; Department of Physics, Norwegian University of Science and Technology, Høgskoleringen 5, 7491 Trondheim, Norway., Torheim T; Department of Informatics, University of Oslo, Gaustadalléen 23 B, 0373 Oslo, Norway.; Institute for Cancer Genetics and Informatics, Oslo University Hospital, Ullernchausséen 64, 0379 Oslo, Norway., Negård A; Department of Radiology, Akershus University Hospital, Sykehusveien 25, 1478 Nordbyhagen, Norway.; Institute of Clinical Medicine, University of Oslo, Kirkeveien 166, 0450 Oslo, Norway., Holmedal SH; Department of Radiology, Akershus University Hospital, Sykehusveien 25, 1478 Nordbyhagen, Norway., Bakke KM; Institute of Clinical Medicine, University of Oslo, Kirkeveien 166, 0450 Oslo, Norway.; Department of Oncology, Akershus University Hospital, Sykehusveien 25, 1478 Nordbyhagen, Norway., Meltzer S; Department of Oncology, Akershus University Hospital, Sykehusveien 25, 1478 Nordbyhagen, Norway., Futsæther CM; Faculty of Science and Technology, Norwegian University of Life Sciences, Drøbakveien 31, 1432 Ås, Norway., Redalen KR; Department of Physics, Norwegian University of Science and Technology, Høgskoleringen 5, 7491 Trondheim, Norway.
Jazyk: angličtina
Zdroj: Physics and imaging in radiation oncology [Phys Imaging Radiat Oncol] 2022 May 11; Vol. 22, pp. 77-84. Date of Electronic Publication: 2022 May 11 (Print Publication: 2022).
DOI: 10.1016/j.phro.2022.05.001
Abstrakt: Background and Purpose: Tumor delineation is required both for radiotherapy planning and quantitative imaging biomarker purposes. It is a manual, time- and labor-intensive process prone to inter- and intraobserver variations. Semi or fully automatic segmentation could provide better efficiency and consistency. This study aimed to investigate the influence of including and combining functional with anatomical magnetic resonance imaging (MRI) sequences on the quality of automatic segmentations.
Materials and Methods: T2-weighted (T2w), diffusion weighted, multi-echo T2*-weighted, and contrast enhanced dynamic multi-echo (DME) MR images of eighty-one patients with rectal cancer were used in the analysis. Four classical machine learning algorithms; adaptive boosting (ADA), linear and quadratic discriminant analysis and support vector machines, were trained for automatic segmentation of tumor and normal tissue using different combinations of the MR images as input, followed by semi-automatic morphological post-processing. Manual delineations from two experts served as ground truth. The Sørensen-Dice similarity coefficient (DICE) and mean symmetric surface distance (MSD) were used as performance metric in leave-one-out cross validation.
Results: Using T2w images alone, ADA outperformed the other algorithms, yielding a median per patient DICE of 0.67 and MSD of 3.6 mm. The performance improved when functional images were added and was highest for models based on either T2w and DME images (DICE: 0.72, MSD: 2.7 mm) or all four MRI sequences (DICE: 0.72, MSD: 2.5 mm).
Conclusion: Machine learning models using functional MRI, in particular DME, have the potential to improve automatic segmentation of rectal cancer relative to models using T2w MRI alone.
Competing Interests: The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper.
(© 2022 The Author(s).)
Databáze: MEDLINE