Quality assurance of organs-at-risk delineation in radiotherapy
Yihao Zhao, Cuiyun Yuan, Ying Liang, Yang Li, Chunxia Li, Man Zhao,, Jun Hu, Wei Liu, Chenbin Liu

TL;DR
This study presents a novel deep learning-based quality assurance method for automatic organs-at-risk delineation in radiotherapy, significantly improving error detection accuracy and reducing physician review workload.
Contribution
Introduces a residual network and attention mechanism within a one-class classifier to effectively detect contour errors in automatic segmentation of organs-at-risk.
Findings
Outperforms binary classifiers in error detection metrics.
Effectively detects various types of contour errors.
Reduces physician review workload significantly.
Abstract
The delineation of tumor target and organs-at-risk is critical in the radiotherapy treatment planning. Automatic segmentation can be used to reduce the physician workload and improve the consistency. However, the quality assurance of the automatic segmentation is still an unmet need in clinical practice. The patient data used in our study was a standardized dataset from AAPM Thoracic Auto-Segmentation Challenge. The OARs included were left and right lungs, heart, esophagus, and spinal cord. Two groups of OARs were generated, the benchmark dataset manually contoured by experienced physicians and the test dataset automatically created using a software AccuContour. A resnet-152 network was performed as feature extractor, and one-class support vector classifier was used to determine the high or low quality. We evaluate the model performance with balanced accuracy, F-score, sensitivity,…
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Taxonomy
TopicsAdvanced Radiotherapy Techniques · Radiation Dose and Imaging · Advances in Oncology and Radiotherapy
