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Automated delineation of non-small cell lung cancer: A step toward quantitative reasoning in medical decision science
Authors:Maliazurina Saad  Ik Hyun Lee  Tae-Sun Choi
Affiliation:1. Mechatronics Department, Korea Polytechnic University, Siheung-si, South Korea;2. School of Mechatronics, Gwangju Institute of Science and Technology, Gwangju, South Korea
Abstract:Quantitative reasoning in medical decision science relies on the delineation of pathological objects. For example, evidence-based clinical decisions regarding lung diseases require the segmentation of nodules, tumors, or cancers. Non-small cell lung cancer (NSCLC) tends to be large sized, irregularly shaped, and grows against surrounding structures imposing challenges in the segmentation, even for expert clinicians. An automated delineation tool based on spatial analysis was developed and studied on 25 sets of computed tomography scans of NSCLC. Manual and automated delineations were compared, and the proposed method exhibited robustness in terms of the tumor size (5.32–18.24 mm), shape (spherical or irregular), contouring (lobulated, spiculated, or cavitated), localization (solitary, pleural, mediastinal, endobronchial, or tagging), and laterality (left or right lobe) with accuracy between 80% and 99%. Small discrepancies observed between the manual and automated delineations may arise from the variability in the practitioners' definitions of region of interest or imaging artifacts that reduced the tissue resolution.
Keywords:collinearity  computer-aided delineation  convexity  non-small cell lung cancer  spatial analysis  topological processing
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