Category Ranking

98%

Total Visits

921

Avg Visit Duration

2 minutes

Citations

20

Article Abstract

Purpose: To reduce workload and inconsistencies in organ segmentation for radiation treatment planning, we developed and evaluated general and custom autosegmentation models on computed tomography (CT) for three major tumor sites using a well-established deep convolutional neural network (DCNN).

Methods: Five CT-based autosegmentation models for 42 organs at risk (OARs) in head and neck (HN), abdomen (ABD), and male pelvis (MP) were developed using a full three-dimensional (3D) DCNN architecture. Two types of deep learning (DL) models were separately trained using either general diversified multi-institutional datasets or custom well-controlled single-institution datasets. To improve segmentation accuracy, an adaptive spatial resolution approach for small and/or narrow OARs and a pseudo scan extension approach, when CT scan length is too short to cover entire organs, were implemented. The performance of the obtained models was evaluated based on accuracy and clinical applicability of the autosegmented contours using qualitative visual inspection and quantitative calculation of dice similarity coefficient (DSC), mean distance to agreement (MDA), and time efficiency.

Results: The five DL autosegmentation models developed for the three anatomical sites were found to have high accuracy (DSC ranging from 0.8 to 0.98) for 74% OARs and marginally acceptable for 26% OARs. The custom models performed slightly better than the general models, even with smaller custom datasets used for the custom model training. The organ-based approaches improved autosegmentation accuracy for small or complex organs (e.g., eye lens, optic nerves, inner ears, and bowels). Compared with traditional manual contouring times, the autosegmentation times, including subsequent manual editing, if necessary, were substantially reduced by 88% for MP, 80% for HN, and 65% for ABD models.

Conclusions: The obtained autosegmentation models, incorporating organ-based approaches, were found to be effective and accurate for most OARs in the male pelvis, head and neck, and abdomen. We have demonstrated that our multianatomical DL autosegmentation models are clinically useful for radiation treatment planning.

Download full-text PDF

Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC8917093PMC
http://dx.doi.org/10.1002/mp.15507DOI Listing

Publication Analysis

Top Keywords

autosegmentation models
24
head neck
12
neck abdomen
12
male pelvis
12
models
10
general custom
8
deep learning
8
autosegmentation
8
models organs
8
radiation treatment
8

Similar Publications

Background And Purpose: Accurate delineation of orodental structures on radiotherapy computed tomography (CT) images is essential for dosimetric assessment and dental decisions. We propose a deep-learning (DL) auto-segmentation framework for individual teeth and mandible/maxilla sub-volumes aligned with the ClinRad osteoradionecrosis staging system.

Materials And Methods: Mandible and maxilla sub-volumes were manually defined on simulation CT images from 60 clinical cases, differentiating alveolar from basal regions; teeth were labelled individually.

View Article and Find Full Text PDF

Background And Purpose: Magnetic resonance imaging-guided radiotherapy (MRgRT) facilitates high accuracy, small margins treatments at the cost of time-consuming and labor-intensive manual delineation of organs-at-risk (OARs). Auto-segmentation models show promise in streamlining this workflow. This study investigates the clinical applicability of a set of thoracic OAR segmentation models for baseline treatment planning in lung tumor patients.

View Article and Find Full Text PDF

Background: Deep learning (DL)-based organ segmentation is increasingly used in radiotherapy. While methods exist to generate voxel-wise uncertainty maps from DL-based auto-segmentation models, these maps are rarely presented to clinicians.

Purpose: This study aimed to evaluate the impact of DL-generated uncertainty maps on experienced radiation oncologists during the manual correction of DL-based auto-segmentation for prostate radiotherapy.

View Article and Find Full Text PDF

Performance of multi-vendor auto-segmentation models for thoracic organs at risk trained on a single dataset.

Phys Med

August 2025

Department of Nuclear Medicine and Medical Physics, Karolinska University Hospital, 171 76 Stockholm, Sweden; Department of Oncology-Pathology, Karolinska Institutet, 171 77 Stockholm, Sweden.

Introduction: This study evaluates the delineation quality of artificial intelligence (AI)-based models for auto-segmentation trained on the same dataset, as the intrinsic performance cannot be evaluated for commercial solutions due to differences in training datasets. A diverse set of challenging thoracic organs-at-risk (OAR) were chosen, to reveal potential limitations of AI-based tools which are relevant for their clinical adoption.

Materials & Methods: A structure set with 16 OAR was delineated and reviewed by radiation oncology experts for 250 patients with lung tumours (200/50 for training/testing).

View Article and Find Full Text PDF

Background: This study aimed to evaluate the clinical feasibility and performance of CT-based auto-segmentation models integrated into an All-in-One radiotherapy workflow for rectal cancer.

Methods: This study included 312 rectal cancer patients, with 272 used to train three nnU-Net models for CTV45, CTV50, and GTV segmentation, and 40 for evaluation across one internal ( = 10), one clinical AIO ( = 10), and two external cohorts ( = 10 each). Segmentation accuracy (DSC, HD, HD95, ASSD, ASD) and time efficiency were assessed.

View Article and Find Full Text PDF