Background and purpose: User-adjustments after deep-learning (DL) contouring in radiotherapy were evaluated to get insight in real-world editing during clinical practice. This study assessed the amount, type and spatial regions of editing of auto-contouring for organs-at-risk (OARs) in routine clinical workflow for patients in the thorax region.Materials and methods: A total of 350 lung cancer and 362 breast cancer patients, contoured between March 2020 and March 2021 using a commercial DL-contouring method followed by manual adjustments were retrospectively analyzed. Subsampling was performed for some OARs, using an inter-slice gap of 1-3 slices. Commonly-used whole-organ contouring assessment measures were calculated, and all cases were r...
When 20.11.2020 12:00 – 16:00 Where Via remote technology (Zoom): https://aalto.zoom.us/j/3291594...
Lung cancer is the leading cause of cancer-related mortality for males and females. Radiation therap...
Background and purpose: Large radiotherapy (RT) planning imaging datasets with consistently contoure...
Background and purpose: User-adjustments after deep-learning (DL) contouring in radiotherapy were ev...
Background and purpose: Auto-contouring performance has been widely studied in development and commi...
Background and purpose: Contouring of organs at risk (OARS) is an important but time consuming part ...
INTRODUCTION: Adequate head and neck (HN) organ-at-risk (OAR) delineation is crucial for HN radiothe...
Various commercial auto-contouring solutions have emerged over past few years to address labor-inten...
Proper delineation of both target volumes and organs at risk is a crucial step in the radiation ther...
Delineation of tumours and organs-at-risk permits detecting and correcting changes in the patients' ...
Abstract Purpose To study the performance of a proposed deep learning-based autocontouring system in...
Background and purpose: Head and neck (HN) radiotherapy can benefit from automatic delineation of tu...
Abstract Purpose We recently described the validation of deep learning-based auto-segmented contour ...
When 20.11.2020 12:00 – 16:00 Where Via remote technology (Zoom): https://aalto.zoom.us/j/3291594...
Lung cancer is the leading cause of cancer-related mortality for males and females. Radiation therap...
Background and purpose: Large radiotherapy (RT) planning imaging datasets with consistently contoure...
Background and purpose: User-adjustments after deep-learning (DL) contouring in radiotherapy were ev...
Background and purpose: Auto-contouring performance has been widely studied in development and commi...
Background and purpose: Contouring of organs at risk (OARS) is an important but time consuming part ...
INTRODUCTION: Adequate head and neck (HN) organ-at-risk (OAR) delineation is crucial for HN radiothe...
Various commercial auto-contouring solutions have emerged over past few years to address labor-inten...
Proper delineation of both target volumes and organs at risk is a crucial step in the radiation ther...
Delineation of tumours and organs-at-risk permits detecting and correcting changes in the patients' ...
Abstract Purpose To study the performance of a proposed deep learning-based autocontouring system in...
Background and purpose: Head and neck (HN) radiotherapy can benefit from automatic delineation of tu...
Abstract Purpose We recently described the validation of deep learning-based auto-segmented contour ...
When 20.11.2020 12:00 – 16:00 Where Via remote technology (Zoom): https://aalto.zoom.us/j/3291594...
Lung cancer is the leading cause of cancer-related mortality for males and females. Radiation therap...
Background and purpose: Large radiotherapy (RT) planning imaging datasets with consistently contoure...