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Comprehensive analysis of tumour sub-volumes for radiomic risk modelling in locally advanced HNSCC
- Source :
- Cancers, Volume 12, Issue 10, Cancers 12:3047 (2020), Cancers 12(2020)10, 3047, Cancers, Vol 12, Iss 3047, p 3047 (2020)
- Publication Year :
- 2020
-
Abstract
- Imaging features for radiomic analyses are commonly calculated from the entire gross tumour volume (GTV entire). However, tumours are biologically complex and the consideration of different tumour regions in radiomic models may lead to an improved outcome prediction. Therefore, we investigated the prognostic value of radiomic analyses based on different tumour sub-volumes using computed tomography imaging of patients with locally advanced head and neck squamous cell carcinoma. The GTV entire&nbsp<br />was cropped by different margins to define the rim and the corresponding core sub-volumes of the tumour. Subsequently, the best performing tumour rim sub-volume was extended into surrounding tissue with different margins. Radiomic risk models were developed and validated using a retrospective cohort consisting of 291 patients in one of the six Partner Sites of the German Cancer Consortium Radiation Oncology Group treated between 2005 and 2013. The validation concordance index (C-index) averaged over all applied learning algorithms and feature selection methods using the GTVentire achieved a moderate prognostic performance for loco-regional tumour control (C-index: 0.61 &plusmn<br />0.04 (mean &plusmn<br />std)). The models based on the 5 mm tumour rim and on the 3 mm extended rim sub-volume showed higher median performances (C-index: 0.65 &plusmn<br />0.02 and 0.64 &plusmn<br />0.05, respectively), while models based on the corresponding tumour core volumes performed less (C-index: 0.59 &plusmn<br />0.01). The difference in C-index between the 5 mm tumour rim and the corresponding core volume showed a statistical trend (p = 0.10). After additional prospective validation, the consideration of tumour sub-volumes may be a promising way to improve prognostic radiomic risk models.
- Subjects :
- Cancer Research
radionmic
Gross tumour volume
Radiomic
Image-based Risk Modelling
Machine Learning
Personalised Therapy
Radiation Oncology
Locally advanced
Medizin
Computed tomography
610 Medicine & health
lcsh:RC254-282
Article
030218 nuclear medicine & medical imaging
03 medical and health sciences
0302 clinical medicine
Applied learning
Radiation oncology
Medicine
1306 Cancer Research
ddc:610
image
personalised therapy
medicine.diagnostic_test
business.industry
radiomic
Cancer
Retrospective cohort study
radiation oncology
medicine.disease
lcsh:Neoplasms. Tumors. Oncology. Including cancer and carcinogens
Head and neck squamous-cell carcinoma
10044 Clinic for Radiation Oncology
image-based risk modelling
machine learning
Oncology
030220 oncology & carcinogenesis
2730 Oncology
Nuclear medicine
business
based risk modelling
Subjects
Details
- Language :
- English
- Database :
- OpenAIRE
- Journal :
- Cancers, Volume 12, Issue 10, Cancers 12:3047 (2020), Cancers 12(2020)10, 3047, Cancers, Vol 12, Iss 3047, p 3047 (2020)
- Accession number :
- edsair.doi.dedup.....1a8cd0fc62a03a3d4f0d9b8f01eb1794