A Proof-of-Concept Study of Artificial Intelligence Assisted Contour Revision
Ti Bai, Anjali Balagopal, Michael Dohopolski, Howard E. Morgan, Rafe, McBeth, Jun Tan, Mu-Han Lin, David J. Sher, Dan Nguyen, and Steve Jiang

TL;DR
This study introduces AI-assisted contour revision (AIACR), a novel workflow where deep learning models iteratively improve medical contours with minimal clinician input, demonstrated on head-and-neck cancer datasets.
Contribution
The paper proposes a new AIACR concept that efficiently integrates deep learning with clinician input for contour revision, reducing manual effort and iteration count.
Findings
Deep learning models significantly improved contour accuracy with minimal clinician input.
Average DSC increased from around 0.67-0.82 to over 0.86-0.91 after three clicks.
Contour update computation time is approximately 20 milliseconds.
Abstract
Automatic segmentation of anatomical structures is critical for many medical applications. However, the results are not always clinically acceptable and require tedious manual revision. Here, we present a novel concept called artificial intelligence assisted contour revision (AIACR) and demonstrate its feasibility. The proposed clinical workflow of AIACR is as follows given an initial contour that requires a clinicians revision, the clinician indicates where a large revision is needed, and a trained deep learning (DL) model takes this input to update the contour. This process repeats until a clinically acceptable contour is achieved. The DL model is designed to minimize the clinicians input at each iteration and to minimize the number of iterations needed to reach acceptance. In this proof-of-concept study, we demonstrated the concept on 2D axial images of three head-and-neck cancer…
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Taxonomy
TopicsManufacturing Process and Optimization · Welding Techniques and Residual Stresses · Industrial Vision Systems and Defect Detection
