AI Article Synopsis

  • This study compares various Deep Learning models for segmenting Gross Tumor Volume (GTV) in patients with locally advanced cervical cancer, emphasizing the need for improved segmentation methods in Radiotherapy.
  • Eight different models were trained using both 2D and 3D segmentation techniques, with the 2D-SegResNet model performing the best, achieving a high level of segmentation accuracy.
  • Additionally, a novel failure detection system using radiomic features was introduced, potentially aiding doctors in identifying segmentation errors and enhancing overall treatment planning.

Article Abstract

Background And Purpose: Automatic segmentation methods have greatly changed the RadioTherapy (RT) workflow, but still need to be extended to target volumes. In this paper, Deep Learning (DL) models were compared for Gross Tumor Volume (GTV) segmentation in locally advanced cervical cancer, and a novel investigation into failure detection was introduced by utilizing radiomic features.

Methods And Materials: We trained eight DL models (UNet, VNet, SegResNet, SegResNetVAE) for 2D and 3D segmentation. Ensembling individually trained models during cross-validation generated the final segmentation. To detect failures, binary classifiers were trained using radiomic features extracted from segmented GTVs as inputs, aiming to classify contours based on whether their Dice Similarity Coefficient and . Two distinct cohorts of T2-Weighted (T2W) pre-RT MR images captured in 2D sequences were used: one retrospective cohort consisting of 115 LACC patients from 30 scanners, and the other prospective cohort, comprising 51 patients from 7 scanners, used for testing.

Results: Segmentation by 2D-SegResNet achieved the best DSC, Surface DSC ( ), and 95th Hausdorff Distance (95HD): DSC = 0.72 ± 0.16, =0.66 ± 0.17, and 95HD = 14.6 ± 9.0 mm without missing segmentation ( =0) on the test cohort. Failure detection could generate precision ( ), recall ( ), F1-score ( ), and accuracy ( ) using Logistic Regression (LR) classifier on the test cohort with a threshold T = 0.67 on DSC values.

Conclusions: Our study revealed that segmentation accuracy varies slightly among different DL methods, with 2D networks outperforming 3D networks in 2D MRI sequences. Doctors found the time-saving aspect advantageous. The proposed failure detection could guide doctors in sensitive cases.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11192799PMC
http://dx.doi.org/10.1016/j.phro.2024.100578DOI Listing

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