Development and evaluation of two open-source nnU-Net models for automatic segmentation of lung tumors on PET and CT images with and without respiratory motion compensation

被引:4
作者
Carles, Montserrat [1 ]
Kuhn, Dejan [2 ,3 ]
Fechter, Tobias [2 ,3 ]
Baltas, Dimos [2 ,3 ]
Mix, Michael [4 ]
Nestle, Ursula [3 ,5 ,6 ]
Grosu, Anca L. [3 ,5 ]
Marti-Bonmati, Luis [1 ]
Radicioni, Gianluca [3 ,5 ]
Gkika, Eleni [3 ,5 ]
机构
[1] La Fe Hlth Res Inst, Biomed Imaging Res Grp GIBI230 PREBI & Imaging Fe, Distributed Network Biomed Imaging ReDIB Unique S, Valencia, Spain
[2] Univ Med Ctr Freiburg, Div Med Phys, Dept Radiat Oncol, Fac Med, Freiburg, Germany
[3] German Canc Res Ctr, Partner Site Freiburg, German Canc Consortium DKTK, Heidelberg, Germany
[4] Univ Med Ctr Freiburg, Dept Nucl Med, Fac Med, Freiburg, Germany
[5] Univ Med Ctr Freiburg, Dept Radiat Oncol, Fac Med, Freiburg, Germany
[6] Kliniken Maria Hilf GmbH Moenchengladbach, Dept Radiat Oncol, Moechengladbach, Germany
关键词
Lung cancer; Positron emission tomography; Computed tomography; Deep learning; Respiratory motion; CANCER; RADIOTHERAPY; IMPACT; REDUCTION; PLAN; 3D;
D O I
10.1007/s00330-024-10751-2
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Objectives In lung cancer, one of the main limitations for the optimal integration of the biological and anatomical information derived from Positron Emission Tomography (PET) and Computed Tomography (CT) is the time and expertise required for the evaluation of the different respiratory phases. In this study, we present two open-source models able to automatically segment lung tumors on PET and CT, with and without motion compensation. Materials and methods This study involved time-bin gated (4D) and non-gated (3D) PET/CT images from two prospective lung cancer cohorts (Trials 108237 and 108472) and one retrospective. For model construction, the ground truth (GT) was defined by consensus of two experts, and the nnU-Net with 5-fold cross-validation was applied to 560 4D-images for PET and 100 3D-images for CT. The test sets included 270 4D- images and 19 3D-images for PET and 80 4D-images and 27 3D-images for CT, recruited at 10 different centres. Results In the performance evaluation with the multicentre test sets, the Dice Similarity Coefficients (DSC) obtained for our PET model were DSC(4D-PET)=0.740.06, improving 19% relative to the DSC between experts and DSC(3D-PET)=0.820.11. The performance for CT was DSC(4D-CT)=0.610.28 and DSC(3D-CT)=0.630.34, improving 4% and 15% relative to DSC between experts. Conclusions Performance evaluation demonstrated that the automatic segmentation models have the potential to achieve accuracy comparable to manual segmentation and thus hold promise for clinical application. The resulting models can be freely downloaded and employed to support the integration of 3D- or 4D- PET/CT and to facilitate the evaluation of its impact on lung cancer clinical practice.
引用
收藏
页码:6701 / 6711
页数:11
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