LinGuinE: Longitudinal Guidance Estimation for Volumetric Lung Tumour Segmentation
LinGuinE: Longitudinal Guidance Estimation for Volumetric Lung Tumour Segmentation
Segmentation of lung gross tumour volumes is an important first step in radiotherapy and surgical intervention, and is starting to play a role in assessing chemotherapy response. Response to a drug is measured by tracking the tumour volumes over a series of CT scans over a time period i.e. a longitudinal study. However, there currently exist few solutions for automated or semi-automated longitudinal tumour segmentation. This paper introduces LinGuinE, an automated method to segment a longitudinal series of lung tumours. A radiologist must provide an initial input, indicating the location of the tumour in a CT scan at an arbitrary time point. LinGuinE samples points inside this tumour and propagates them to another time point using rigid registration. A click validity classifier selects points which still fall within the tumour; these are used to automatically create a segmentation in the new time point. We test LinGuinE on a dataset acquired from a phase 3 clinical trial for lung tumours and the publicly available 4-D lung CBCT dataset. We find that LinGuinE improves the Dice on both test sets by over 20% (p< 0.05) across 63 longitudinal studies. We show that any time point can be used as a starting point, conduct ablation experiments, and find that our LinGuinE setup yields the best results on both test datasets.
Nadine Garibli、Mayank Patwari、Bence Csiba、Yi Wei、Kostas Sidiropoulos
肿瘤学临床医学计算技术、计算机技术自动化技术、自动化技术设备
Nadine Garibli,Mayank Patwari,Bence Csiba,Yi Wei,Kostas Sidiropoulos.LinGuinE: Longitudinal Guidance Estimation for Volumetric Lung Tumour Segmentation[EB/OL].(2025-06-06)[2025-07-16].https://arxiv.org/abs/2506.06092.点此复制
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