ESTRO 2023 - Abstract Book

S267

Saturday 13 May

ESTRO 2023

Conclusion A novel phantom able to detect the relative position of the beam spot was developed. The phantom is easy to set up at the linac, does not need precise alignment and provides precise measurements of the beam spot position of multiple beam energies. PD-0333 Interpreting generalizability of automatic GTV segmentation in locally advanced cervical cancer R. Rouhi 1,2 , S. Niyoteka 1,2 , A. Carré 1,2 , S. Achkar 2 , P. Laurent 1,2 , M.B. BA 2,3 , C. Veres 1,2 , T. Henry 1,4 , R. Sun 1,2 , S. Espenel 2 , C. Chargari 1,2 , E. Deutsch 1,2 , C. Robert 1,2 1 Université Paris-Saclay, Institut Gustave Roussy, Inserm, Radiothérapie Moléculaire et Innovation Thérapeutique, Villejuif, France; 2 Gustave Roussy Cancer Campus, Department of radiation oncology, Villejuif, France; 3 University Hospital Center of Dalal Jamm, Radiotherapy Department, Guédiawaye, Senegal; 4 Gustave Roussy Cancer Campus, Department of medical imaging, Villejuif, France Purpose or Objective Locally advanced cervical cancer (LACC) is the 4th most common cause of cancer death worldwide. Automatic segmentation of Gross Tumor Volume (GTV) in T2-Weighted (T2W) MR images can be of great help to radiation oncologists by saving time and providing more robust delineation for treatment planning. Despite the promising results of deep neural networks in the automatic segmentation of organs at risk and target volumes, these methods have been only marginally applied to the segmentation of target volumes in LACC, especially since their generalization to real-world images remains a challenge. In this work, we analyzed the generalizability of a deep neural network model trained on heterogeneous data for GTV segmentation in LACC, with the aim to link segmentation results with inter-image differences evaluated based on radiomic features. This strategy could be time-saving during treatment planning by selecting images to which automatic segmentation leads a success/failure. Materials and Methods We collected two cohorts of pre-radiotherapy images taken by, respectively, 30 and at least 7 different scanners, from 115 and 32 patients, treated for LACC at different centers. The former was used for training using a 5-fold cross-validation and the latter for testing. The segmentation was done by ensemble 2D SegResNet and the results were evaluated using the Dice Similarity Coefficient (DSC) and 95th Hausdorff distance (95HD). Different classification methods were trained considering radiomic features extracted from segmented GTVs of the training cohort as inputs with the goal to determine images for which DSC ≥ 0.7 or DSC<0.7. Subsequently, the resulting model was applied to GTVs of the test set. Results The ensemble model segmented successfully 56% of test images with DSC>=0.70 (Figure 1). In classification, we obtained a precision ( ) of 0.738, an F1-score ( ) of 0.656, and an accuracy ( ) of 0.673 using linear discriminant analysis on the test set, resulting in a correct identification of 0.41 and 0.90 of segmented cases with DSC <0.70 and DSC>=0.70, respectively.

Conclusion

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