Quantifying vascular invasion in pancreatic cancer - A contrast CT based method for surgical resectability evaluation Journal Article


Authors: Lao, Y.; David, J.; Fan, Z.; Bian, S.; Shiu, A.; Chang, E. L.; Sheng, K.; Yang, W.; Tuli, R.
Article Title: Quantifying vascular invasion in pancreatic cancer - A contrast CT based method for surgical resectability evaluation
Abstract: Pancreatic cancer (PC) is one of the most lethal cancers, with frequent local therapy resistance and dismal 5-year survival rate. To date, surgical resection remains to be the only treatment option offering potential cure. Unfortunately, at diagnosis, the majority of patients demonstrate varying levels of vascular infiltration, which can contraindicate surgical resection. Patients unsuitable for immediate resection are further divided into locally advanced (LA) and borderline resectable (BR), with different treatment goals and therapeutic designs. Accurate definition of resectability is thus critical for PC patients, yet the existing methods to determine resectability rely on descriptive abutment to surrounding vessels rather than quantitative geometric characterization. Here, we aim to introduce a novel intra-subject object-space support-vector-machine (OsSVM) method to quantitatively characterize the degree of vascular involvement-the main factor determining the PC resectability. Intra-subject OsSVMs were applied on 107 contrast CT scans (56 LA, BR and 26 resectable (RE) PC cases) for optimized tumor-vessel separations. Nine metrics derived from OsSVM margins were calculated as indicators of the overall vascular infiltration. The combined sets of matrics selected by the elastic net yielded high classification capability between LA and BR (AUC = 0.95), as well as BR and RE (AUC = 0.98). The proposed OsSVM method may provide an improved quantitative imaging guideline to refine the PC resectability grading system. © 2020 Institute of Physics and Engineering in Medicine.
Keywords: local therapy; computerized tomography; geometry; diagnosis; surgery; quantitative imaging; surgical resection; diseases; support vector machines; grading; grading system; pancreatic cancers; vascular invasion; vector spaces; different treatments; geometric characterization
Journal Title: Physics in Medicine and Biology
Volume: 65
Issue: 10
ISSN: 0031-9155
Publisher: IOP Publishing Ltd  
Date Published: 2020-05-21
Start Page: 105012
Language: English
DOI: 10.1088/1361-6560/ab8106
PROVIDER: scopus
PMCID: PMC7316342
PUBMED: 32187583
DOI/URL:
Notes: Article -- Source: Scopus
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  1. Richard Tuli
    27 Tuli