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  • Stress-Testing Pelvic Autosegmentation Algorithms Using Anatomical Edge Cases (Prostate-Anatomical-Edge-Cases)

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Summary

In this single institution retrospective study, we reviewed 950 consecutive patients with prostate adenocarcinoma receiving definitive radiotherapy between 2011 and 2019, and identified among them 112 patients with anatomic variations (edge cases) seen on simulation CT and/or MRI imaging. These variations included hip arthroplasty, prostate median lobe hypertrophy, so-called “droopy” seminal vesicles, presence of a urinary catheter, and others. Three commercially available solutions for pelvic anatomy autosegmentation were applied to treatment planning CT scans to generate segmented volumes of the prostate, rectum, bladder and bilateral femoral heads. To quantify the accuracy of software-generated contours, Dice similarity coefficients were calculated for each software-generated contour with a comparator clinician-delineated reference contour.

Results: On average, deep learning autosegmentation outperformed both atlas-based and model-based methods across both normal and edge case cohorts. However, all methods exhibited lower mean DSC for edge cases compared to the normal cohort, recapitulating certain known algorithm limitations (e.g. in the context of hip prostheses) and identifying novel areas of poor performance.

Conclusions: Anatomic variation may present challenges to commercial autosegmentation solutions, and such edge cases should be considered both prior to and throughout any clinical implementation.

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TCIA Citation

Clark, K., Vendt, B., Smith, K., Freymann, J., Kirby, J., Koppel, P., Moore, S., Phillips, S., Maffitt, D., Pringle, M., Tarbox, L., & Prior, F. (2013). The Cancer Imaging Archive (TCIA): Maintaining and Operating a Public Information Repository. In Journal of Digital Imaging (Vol. 26, Issue 6, pp. 1045–1057). Springer Science and Business Media LLC. https://doi.org/10.1007/s10278-013-9622-7

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