Abstract
AbstractNon-small cell lung cancer (NSCLC) patients with the metastatic spread of disease to the bone have high morbidity and mortality. Stereotactic ablative body radiotherapy increases the progression free survival and overall survival of these patients with oligometastases. FDG-PET/CT, a functional imaging technique combining positron emission tomography (PET) with 18 F-fluorodeoxyglucose (FDG) and computer tomography (CT) provides improved staging and identification of treatment response. It is also associated with reduction in size of the radiotherapy tumour volume delineation compared with CT based contouring in radiotherapy, thus allowing for dose escalation to the target volume with lower doses to the surrounding organs at risk. FDG-PET/CT is increasingly being used for the clinical management of NSCLC patients undergoing radiotherapy and has shown high sensitivity and specificity for the detection of bone metastases in these patients. Here, we present a software tool for detection, delineation and quantification of bone metastases using FDG-PET/CT images. The tool extracts standardised uptake values (SUV) from FDG-PET images for auto-segmentation of bone lesions and calculates volume of each lesion and associated mean and maximum SUV. The tool also allows automatic statistical validation of the auto-segmented bone lesions against the manual contours of a radiation oncologist. A retrospective review of FDG-PET/CT scans of more than 30 candidate NSCLC patients was performed and nine patients with one or more metastatic bone lesions were selected for the present study. The SUV threshold prediction model was designed by splitting the cohort of patients into a subset of ‘development’ and ‘validation’ cohorts. The development cohort yielded an optimum SUV threshold of 3.0 for automatic detection of bone metastases using FDG-PET/CT images. The validity of the derived optimum SUV threshold on the validation cohort demonstrated that auto-segmented and manually contoured bone lesions showed strong concordance for volume of bone lesion (r = 0.993) and number of detected lesions (r = 0.996). The tool has various applications in radiotherapy, including but not limited to studies determining optimum SUV threshold for accurate and standardised delineation of bone lesions and in scientific studies utilising large patient populations for instance for investigation of the number of metastatic lesions that can be treated safety with an ablative dose of radiotherapy without exceeding the normal tissue toxicity.
Funder
National Health and Medical Research Council
The University of Wollongong
Publisher
Springer Science and Business Media LLC
Subject
Radiology, Nuclear Medicine and imaging,Instrumentation,Biomedical Engineering,Biophysics,Radiological and Ultrasound Technology,Biotechnology
Reference50 articles.
1. Hanna TP, Shafiq J, Delaney GP, Vinod SK, Thompson SR, Barton MB (2018) The population benefit of evidence-based radiotherapy: 5-Year local control and overall survival benefits. Radiother Oncol 126(2):191–197
2. O’Sullivan GJ, Carty FL, Cronin CG (2015) Imaging of bone metastasis: an update. World J Radiol 7(8):202–211
3. Erdi YE, Humm JL, Imbriaco M, Yeung H, Larson SM (1997) Quantitative bone metastases analysis based on image segmentation. J Nucl Med 38:1401–1406
4. Svensson E, Christiansen CF, Ulrichsen SP et al (2017) Survival after bone metastasis by primary cancer type: a danish population-based cohort study. BMJ Open 7:e016022
5. Cetin K, Christiansen CF, Jacobsen JB, Nørgaard M, Sørensen HT (2014) Bone metastasis, skeletal-related events, and mortality in lung cancer patients: a danish population-based cohort study. Lung Cancer 86(2):247–254
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