The Impact of Training Dataset Size and Ensemble Inference Strategies on Head and Neck Auto-Segmentation

Research output: Contribution to conferencePaperpeer-review

Abstract

Convolutional neural networks (CNNs) are increasingly being used to automate segmentation of organs-at-risk in radiotherapy. Since large sets of highly curated data are scarce, we investigated how much data is required to train accurate and robust head and neck auto-segmentation models. For this, an established 3D CNN was trained from scratch with different sized datasets (25-1000 scans) to segment the brainstem, parotid glands and spinal cord in CTs. Additionally, we evaluated multiple ensemble techniques to improve the performance of these models. The segmentations improved with training set size up to 250 scans and the ensemble methods significantly improved performance for all organs. The impact of the ensemble methods was most notable in the smallest datasets, demonstrating their potential for use in cases where large training datasets are difficult to obtain
Original languageEnglish
Pages1-4
DOIs
Publication statusPublished - 18 Apr 2023
Event2023 IEEE 20th International Symposium on Biomedical Imaging (ISBI) - Cartagena, Colombia
Duration: 18 Apr 202321 Apr 2023

Conference

Conference2023 IEEE 20th International Symposium on Biomedical Imaging (ISBI)
Period18/04/2321/04/23

Keywords

  • auto-segmentation
  • radiotherapy
  • ensemble methods
  • data-efficient deep learning

Research Beacons, Institutes and Platforms

  • Cancer
  • Manchester Cancer Research Centre

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