Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Automated Intensity Modulated Radiation Therapy Treatment Planning for Cervical Cancer Based on Convolution Neural Network

View through CrossRef
Purpose: To develop and evaluate an automatic intensity-modulated radiation therapy (IMRT) program for cervical cancer, including a Convolution Neural Network (CNN)-based prediction model and an automated optimization strategy. Methods: A CNN deep learning model was trained to predict a patient-specify set of IMRT objectives based on overlap volume histograms (OVH) and high-quality plan of previous patients. A total of 140 cervical cancer patients were enrolled in this study, including 100 patients in the training set, 20 patients in the validation set and 20 patients in the testing set. The input of this model was OVH data and the output were values of IMRT plan objectives. For patients in the testing set, the set of planning objectives were predicted by the CNN model and used to automatically generate IMRT plans. Meanwhile, manual plans of these patients were generated by 1 beginner planner and 1 senior planner respectively. Finally, dose distribution, dosimetric parameters and planning time were analyzed. In addition, the 3 types of plans were blinded compared and ranked by an experienced oncologist. Results: There were almost no statistically differences among these 3 types of plans in target coverage and dose conformity. Dose homogeneity were slightly decreased while the average dose and parameters for most organs-at-risk (OARs) were decreased in automatic plans. Especially in comparison with manual plans by the beginner planner, V40 of bladder and rectum decreased 6.3% and 12.3%, while mean dose of rectum and marrow were 1.1 Gy and 1.8 Gy lower with automatic plans (either P < 0.017). In the blinded comparison, automatic plans were chosen as best plan in 14 cases. Conclusions: For cervical cancer, automatic IMRT plans optimized from the CNN generated objectives have superior dose sparing without compromising of target dose. It significantly reduced the planning time.
Title: Automated Intensity Modulated Radiation Therapy Treatment Planning for Cervical Cancer Based on Convolution Neural Network
Description:
Purpose: To develop and evaluate an automatic intensity-modulated radiation therapy (IMRT) program for cervical cancer, including a Convolution Neural Network (CNN)-based prediction model and an automated optimization strategy.
Methods: A CNN deep learning model was trained to predict a patient-specify set of IMRT objectives based on overlap volume histograms (OVH) and high-quality plan of previous patients.
A total of 140 cervical cancer patients were enrolled in this study, including 100 patients in the training set, 20 patients in the validation set and 20 patients in the testing set.
The input of this model was OVH data and the output were values of IMRT plan objectives.
For patients in the testing set, the set of planning objectives were predicted by the CNN model and used to automatically generate IMRT plans.
Meanwhile, manual plans of these patients were generated by 1 beginner planner and 1 senior planner respectively.
Finally, dose distribution, dosimetric parameters and planning time were analyzed.
In addition, the 3 types of plans were blinded compared and ranked by an experienced oncologist.
Results: There were almost no statistically differences among these 3 types of plans in target coverage and dose conformity.
Dose homogeneity were slightly decreased while the average dose and parameters for most organs-at-risk (OARs) were decreased in automatic plans.
Especially in comparison with manual plans by the beginner planner, V40 of bladder and rectum decreased 6.
3% and 12.
3%, while mean dose of rectum and marrow were 1.
1 Gy and 1.
8 Gy lower with automatic plans (either P < 0.
017).
In the blinded comparison, automatic plans were chosen as best plan in 14 cases.
Conclusions: For cervical cancer, automatic IMRT plans optimized from the CNN generated objectives have superior dose sparing without compromising of target dose.
It significantly reduced the planning time.

Related Results

Cervical cancer screening utilization and predictors among eligible women in Ethiopia: A systematic review and meta-analysis
Cervical cancer screening utilization and predictors among eligible women in Ethiopia: A systematic review and meta-analysis
BackgroundDespite a remarkable progress in the reduction of global rate of maternal mortality, cervical cancer has been identified as the leading cause of maternal morbidity and mo...
Are Cervical Ribs Indicators of Childhood Cancer? A Narrative Review
Are Cervical Ribs Indicators of Childhood Cancer? A Narrative Review
Abstract A cervical rib (CR), also known as a supernumerary or extra rib, is an additional rib that forms above the first rib, resulting from the overgrowth of the transverse proce...
Edoxaban and Cancer-Associated Venous Thromboembolism: A Meta-analysis of Clinical Trials
Edoxaban and Cancer-Associated Venous Thromboembolism: A Meta-analysis of Clinical Trials
Abstract Introduction Cancer patients face a venous thromboembolism (VTE) risk that is up to 50 times higher compared to individuals without cancer. In 2010, direct oral anticoagul...
Breast Carcinoma within Fibroadenoma: A Systematic Review
Breast Carcinoma within Fibroadenoma: A Systematic Review
Abstract Introduction Fibroadenoma is the most common benign breast lesion; however, it carries a potential risk of malignant transformation. This systematic review provides an ove...
Cervical Cancer or Cervical Endometriosis – Review and Case Report
Cervical Cancer or Cervical Endometriosis – Review and Case Report
According to cancer death rates for women worldwide, this form of cancer ranks fourth after breast, bronchopulmonary, and colorectal cancer, affecting around 570,000 women annually...
The Women Who Fear the Unknown: Potential Drivers of the Cervical Cancer Epidemic in Rural Nigeria
The Women Who Fear the Unknown: Potential Drivers of the Cervical Cancer Epidemic in Rural Nigeria
Background: Visual inspection of the cervix under acetic acid is the most cost-effective method for the control of cervical cancer in sub-Saharan Africa. The region bears about 90%...

Back to Top