Background and purpose: Auto-contouring performance has been widely studied in development and commissioning studies in radiotherapy, and its impact on clinical workflow assessed in that context. This study aimed to evaluate the manual adjustment of auto-contouring in routine clinical practice and to identify improvements regarding the auto-contouring model and clinical user interaction, to improve the efficiency of auto-contouring. Materials and methods: A total of 103 clinical head and neck cancer cases, contoured using a commercial deep-learning contouring system and subsequently checked and edited for clinical use were retrospectively taken from clinical data over a twelve-month period (April 2019–April 2020). The amount of adjustment p...
Abstract Purpose To study the performance of a proposed deep learning-based autocontouring system in...
Background: Manual contouring is time-consuming and subjective. Thus, auto-segmentation methods, whi...
Radiotherapy is a frequently used therapeutic modality for cancer patients. Accurately contouring of...
Background and purpose: Auto-contouring performance has been widely studied in development and commi...
Background and purpose: User-adjustments after deep-learning (DL) contouring in radiotherapy were ev...
Various commercial auto-contouring solutions have emerged over past few years to address labor-inten...
INTRODUCTION: Adequate head and neck (HN) organ-at-risk (OAR) delineation is crucial for HN radiothe...
Proper delineation of both target volumes and organs at risk is a crucial step in the radiation ther...
Background and purpose: Head and neck (HN) radiotherapy can benefit from automatic delineation of tu...
Auto-contouring could revolutionise future planning of radiotherapy treatment. The lack of consensus...
Background and purpose: Contouring of organs at risk (OARS) is an important but time consuming part ...
Delineation of tumours and organs-at-risk permits detecting and correcting changes in the patients' ...
Abstract Purpose We recently described the validation of deep learning-based auto-segmented contour ...
Abstract Purpose To study the performance of a proposed deep learning-based autocontouring system in...
Background: Manual contouring is time-consuming and subjective. Thus, auto-segmentation methods, whi...
Radiotherapy is a frequently used therapeutic modality for cancer patients. Accurately contouring of...
Background and purpose: Auto-contouring performance has been widely studied in development and commi...
Background and purpose: User-adjustments after deep-learning (DL) contouring in radiotherapy were ev...
Various commercial auto-contouring solutions have emerged over past few years to address labor-inten...
INTRODUCTION: Adequate head and neck (HN) organ-at-risk (OAR) delineation is crucial for HN radiothe...
Proper delineation of both target volumes and organs at risk is a crucial step in the radiation ther...
Background and purpose: Head and neck (HN) radiotherapy can benefit from automatic delineation of tu...
Auto-contouring could revolutionise future planning of radiotherapy treatment. The lack of consensus...
Background and purpose: Contouring of organs at risk (OARS) is an important but time consuming part ...
Delineation of tumours and organs-at-risk permits detecting and correcting changes in the patients' ...
Abstract Purpose We recently described the validation of deep learning-based auto-segmented contour ...
Abstract Purpose To study the performance of a proposed deep learning-based autocontouring system in...
Background: Manual contouring is time-consuming and subjective. Thus, auto-segmentation methods, whi...
Radiotherapy is a frequently used therapeutic modality for cancer patients. Accurately contouring of...