TL;DR
OpenKBP was a large international challenge that advanced the comparison and development of dose prediction methods in radiation therapy, providing a public dataset and fostering fair benchmarking.
Contribution
This work introduces the first open competition for knowledge-based planning in radiation therapy, establishing a platform and dataset for fair, consistent method evaluation.
Findings
Participants improved dose and DVH scores significantly during the challenge.
One model outperformed others in the testing phase, demonstrating effective generalization.
Use of ensemble and generalizable techniques correlated with higher performance.
Abstract
The purpose of this work is to advance fair and consistent comparisons of dose prediction methods for knowledge-based planning (KBP) in radiation therapy research. We hosted OpenKBP, a 2020 AAPM Grand Challenge, and challenged participants to develop the best method for predicting the dose of contoured CT images. The models were evaluated according to two separate scores: (1) dose score, which evaluates the full 3D dose distributions, and (2) dose-volume histogram (DVH) score, which evaluates a set DVH metrics. Participants were given the data of 340 patients who were treated for head-and-neck cancer with radiation therapy. The data was partitioned into training (n=200), validation (n=40), and testing (n=100) datasets. All participants performed training and validation with the corresponding datasets during the validation phase of the Challenge, and we ranked the models in the testing…
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