Purpose: To develop a deep learning model that combines CT and radiation dose (RD) images to predict the occurrence of radiation pneumonitis (RP) in lung cancer patients who received radical (chemo)radio-therapy.Methods: CT, RD images and clinical parameters were obtained from 314 retrospectively-collected patients (training set) and 35 prospectively-collected patients (test-set-1) who were diagnosed with lung cancer and received radical radiotherapy in the dose range of 50 Gy and 70 Gy. Another 194 (60 Gy group, test-set-2) and 158 (74 Gy group, test-set-3) patients from the clinical trial RTOG 0617 were used for external validation. A ResNet architecture was used to develop a prediction model that combines CT and RD features. Thereafter, ...
Contains fulltext : 245169.pdf (Publisher’s version ) (Closed access)Purpose: To d...
Introduction:We aimed to develop a more accurate model for predicting severe radiation pneumonitis (...
Abstract To predict grade ≥ 2 radiation pneumonitis (RP) in patients with locally advanced non-small...
Purpose: To develop a deep learning model that combines CT and radiation dose (RD) images to predict...
Improving outcomes for non-small-cell lung cancer patients treated with radiation therapy (RT) requi...
To develop a patient-specific 'big data' clinical decision tool to predict pneumonitis in stage I no...
Background To combat one of the leading causes of death worldwide, lung cancer treatment techniques ...
Purpose: Radiation pneumonitis (RP)(grade ≥ 2) can have a considerable impact on patient quality-of ...
Purpose: to assess the likelihood of local recurrence of lung malignancies following stereotactic ab...
Purpose Consolidation immunotherapy after completion of chemoradiotherapy has become the standard of...
We present a novel classification system of the parenchymal features of radiation-induced lung damag...
BACKGROUND AND PURPOSE: This study aims to investigate how accurate our deep learning (DL) dose pred...
International audiencePurpose: (Chemo)-radiotherapy (RT) is the gold standard treatment for patients...
: (1) Aim: To test the performance of a deep learning algorithm in discriminating radiation therapy-...
Radiation pneumonitis (RP) is a potentially fatal side effect arising in lung cancer patients who re...
Contains fulltext : 245169.pdf (Publisher’s version ) (Closed access)Purpose: To d...
Introduction:We aimed to develop a more accurate model for predicting severe radiation pneumonitis (...
Abstract To predict grade ≥ 2 radiation pneumonitis (RP) in patients with locally advanced non-small...
Purpose: To develop a deep learning model that combines CT and radiation dose (RD) images to predict...
Improving outcomes for non-small-cell lung cancer patients treated with radiation therapy (RT) requi...
To develop a patient-specific 'big data' clinical decision tool to predict pneumonitis in stage I no...
Background To combat one of the leading causes of death worldwide, lung cancer treatment techniques ...
Purpose: Radiation pneumonitis (RP)(grade ≥ 2) can have a considerable impact on patient quality-of ...
Purpose: to assess the likelihood of local recurrence of lung malignancies following stereotactic ab...
Purpose Consolidation immunotherapy after completion of chemoradiotherapy has become the standard of...
We present a novel classification system of the parenchymal features of radiation-induced lung damag...
BACKGROUND AND PURPOSE: This study aims to investigate how accurate our deep learning (DL) dose pred...
International audiencePurpose: (Chemo)-radiotherapy (RT) is the gold standard treatment for patients...
: (1) Aim: To test the performance of a deep learning algorithm in discriminating radiation therapy-...
Radiation pneumonitis (RP) is a potentially fatal side effect arising in lung cancer patients who re...
Contains fulltext : 245169.pdf (Publisher’s version ) (Closed access)Purpose: To d...
Introduction:We aimed to develop a more accurate model for predicting severe radiation pneumonitis (...
Abstract To predict grade ≥ 2 radiation pneumonitis (RP) in patients with locally advanced non-small...