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A multicenter study on deep learning for glioblastoma auto‐segmentation with prior knowledge in multimodal imaging.

Authors :
Tian, Suqing
Liu, Yinglong
Mao, Xinhui
Xu, Xin
He, Shumeng
Jia, Lecheng
Zhang, Wei
Peng, Peng
Wang, Junjie
Source :
Cancer Science; Oct2024, Vol. 115 Issue 10, p3415-3425, 11p
Publication Year :
2024

Abstract

A precise radiotherapy plan is crucial to ensure accurate segmentation of glioblastomas (GBMs) for radiation therapy. However, the traditional manual segmentation process is labor‐intensive and heavily reliant on the experience of radiation oncologists. In this retrospective study, a novel auto‐segmentation method is proposed to address these problems. To assess the method's applicability across diverse scenarios, we conducted its development and evaluation using a cohort of 148 eligible patients drawn from four multicenter datasets and retrospective data collection including noncontrast CT, multisequence MRI scans, and corresponding medical records. All patients were diagnosed with histologically confirmed high‐grade glioma (HGG). A deep learning‐based method (PKMI‐Net) for automatically segmenting gross tumor volume (GTV) and clinical target volumes (CTV1 and CTV2) of GBMs was proposed by leveraging prior knowledge from multimodal imaging. The proposed PKMI‐Net demonstrated high accuracy in segmenting, respectively, GTV, CTV1, and CTV2 in an 11‐patient test set, achieving Dice similarity coefficients (DSC) of 0.94, 0.95, and 0.92; 95% Hausdorff distances (HD95) of 2.07, 1.18, and 3.95 mm; average surface distances (ASD) of 0.69, 0.39, and 1.17 mm; and relative volume differences (RVD) of 5.50%, 9.68%, and 3.97%. Moreover, the vast majority of GTV, CTV1, and CTV2 produced by PKMI‐Net are clinically acceptable and require no revision for clinical practice. In our multicenter evaluation, the PKMI‐Net exhibited consistent and robust generalizability across the various datasets, demonstrating its effectiveness in automatically segmenting GBMs. The proposed method using prior knowledge in multimodal imaging can improve the contouring accuracy of GBMs, which holds the potential to improve the quality and efficiency of GBMs' radiotherapy. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
13479032
Volume :
115
Issue :
10
Database :
Complementary Index
Journal :
Cancer Science
Publication Type :
Academic Journal
Accession number :
180089364
Full Text :
https://doi.org/10.1111/cas.16304