Presentation + Paper
15 February 2021 A multi-modality radiomics-based model for predicting recurrence in non-small cell lung cancer
Author Affiliations +
Abstract
Non-small cell lung cancer (NSCLC) is one of the leading causes of death worldwide. Medical imaging is used to determine cancer staging; however, these images may hold additional information which could be utilized to aid in outcome prediction. A multi-modality radiomics approach incorporating quantitative and qualitative features from the tumor and its surrounding regions, along with clinical features, has yet to be explored. Therefore, we hypothesize that a model containing CT and PET radiomic features, in addition to clinical and qualitative features, has the potential improve risk-stratification of NSCLC patients better than cancer stage alone. Our dataset consisted of 135 NSCLC patients (training: n=94, testing: n=41) who underwent surgical resection. Each region of interest was segmented using a semi-automatic approach on both the pre-treatment CT and PET images. Radiomic features were extracted using the Quantitative Image Feature Engine. A total of 1030 features were extracted including clinical, qualitative, and radiomic features. LASSO regression was used to identify the top features to predict time to recurrence in the training cohort and the model was evaluated in the testing cohort. A total of nine features were selected, including two clinical, one CT, and six PET radiomic features. The model achieved a concordance of 0.81 in the training cohort, which was validated in the testing cohort (concordance=0.79) and outperformed stage alone (concordances=0.68-0.69). This model has the potential to assist physicians in risk-stratifying patients with NSCLC and could be used to identify patients that may benefit from more aggressive or personalized treatment options.
Conference Presentation
© (2021) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Jaryd R. Christie, Mohamed Abdelrazek, Pencilla Lang, and Sarah A. Mattonen "A multi-modality radiomics-based model for predicting recurrence in non-small cell lung cancer", Proc. SPIE 11600, Medical Imaging 2021: Biomedical Applications in Molecular, Structural, and Functional Imaging, 116000L (15 February 2021); https://doi.org/10.1117/12.2586233
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KEYWORDS
Lung cancer

Tumor growth modeling

Positron emission tomography

Cancer

Feature extraction

Image segmentation

Computed tomography

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