Abstract 361P
Background
Thoracic stereotactic body radiotherapy (SBRT) is widely applied in both early and metastatic disease. Pathological CR rate after SBRT was quoted around 60%. Thus, it is important to predict responder and non-responder to SBRT. With advent of radiomics, textual features of tumor can be extracted from imaging. We propose a model to predict radiological response after SBRT based on tumor radiomics features regardless of histology and staging.
Methods
Patients receiving thoracic SBRT using active breathing control (ABC) were retrospectively recruited regardless of tumor histology/primary and staging. All patients received 50-54 Gy in 3-4 fractions equivalent to BED >100Gy. All patients had regular contrast CT Thorax per protocol and PET/CT if indicated. Tumor response was assessed by an independent senior radiologist based on RECIST criteria. Responders are defined as complete response (CR) or partial response (PR). Non-responders were defined as those with stable or progressive disease. Gross tumor volumes (GTV) were contoured on the initial planning CT. 110 radiomics features including voxel intensities, textual and gray level features were extracted using pyradiomics module. The features were then analyzed using in-house software. A model using support vector machine (SVM) was trained to predict response based solely on the extracted radiomics features. 10-fold cross validation was used to avoid overfitting. ROC curves were constructed to evaluate model performance.
Results
68 patients were recruited from 2008 to 2018. 54 patients had lung primaries while 14 patients had thoracic oligo-metastases. Secondaries include colorectal, head and neck squamous cell carcinoma and hepatocellular carcinoma. 85 tumors were analyzed, of which 31 tumors had CR and 11 tumors had PR. The radiomic model developed had an accuracy of 74.8%. The AUC for CR, PR and non-responder prediction was 0.865 (95% CI: 0.794 – 0.921), 0.946 (95% CI: 0.873 – 0.978) and 0.857 (95% CI: 0.789 – 0.915) respectively. Under the threshold, the sensitivity was 89% while the specificity was 68% for detecting non-responders.
Conclusions
Radiomic is a promising technique that can predict tumor response with good accuracy.
Clinical trial identification
Editorial acknowledgement
Legal entity responsible for the study
Department of Clinical Oncology, Queen Mary Hospital.
Funding
Has not received any funding.
Disclosure
All authors have declared no conflicts of interest.
Resources from the same session
312P - Identification of neoantigen-specific T cell response and anti-tumour immunity in pancreatic cancer
Presenter: Xiaoxiao Du
Session: e-Poster Display Session
313P - Diagnostic value of micro RNA (miRNA) in renal cell cancer: A meta-analysis and systemic review
Presenter: Jestoni Aranilla
Session: e-Poster Display Session
314P - Comprehensive microbial signatures and genomic profiling in tumour samples using next generation sequencing
Presenter: Mei Qi Yee
Session: e-Poster Display Session
315P - High-penetrance breast and/or ovarian cancer susceptibility genes in Filipinos
Presenter: Frances Victoria Que
Session: e-Poster Display Session
316P - Implementation of Vela Analytics to accelerate comprehensive interpretation and reporting of next-generation sequencing-based oncology testing in clinical diagnostic laboratories
Presenter: Yingnan Yu
Session: e-Poster Display Session
317P - Genomic profiling and molecular pathology of Chinese glioma patients
Presenter: yuanli Zhao
Session: e-Poster Display Session
320P - Psychometric interplay of the perception of the real-life impact of COVID-19 pandemic: A cross-sectional survey of patients with newly diagnosed malignancies
Presenter: Kelvin Bao
Session: e-Poster Display Session
321P - Impact of COVID-19 and lockdown on adherence to treatment schedule among cancer patients
Presenter: Krishnamani Kalpathi
Session: e-Poster Display Session
322P - Challenged faced by cancer patients during the COVID-19 pandemic
Presenter: mithra Krishnamani
Session: e-Poster Display Session
323P - Oncology care in the Republic of Kazakhstan during COVID-19
Presenter: Dilyara Kaidarova
Session: e-Poster Display Session