Prediction of colorectal tumor grade and invasion depth through narrow-band imaging scoring.

WORLD JOURNAL OF GASTROENTEROLOGY(2018)

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摘要
AIM To determine the usefulness of assigning narrow-band imaging (NBI) scores for predicting tumor grade and invasion depth in colorectal tumors. METHODS A total of 161 colorectal lesions were analyzed from 138 patients who underwent endoscopic or surgical resection after conventional colonoscopy and magnifying endoscopy with NBI. The relationships between the surface and vascular patterns of the lesions, as visualized with NBI, and the tumor grade and depth of submucosa (SM) invasion were determined histopathologically. Scores were assigned to distinct features of the surface microstructures of tubular and papillary-type lesions. Using a multivariate analysis, a model was developed for predicting the tumor grade and depth of invasion based on NBI-finding scores. RESULTS NBI findings that correlated with a high tumor grade were associated with the "regular/irregular" (P < 0.0001) surface patterns and the "avascular area" pattern (P = 0.0600). The vascular patterns of "disrupted vessels" (P = 0.0714) and "thick vessels" (P = 0.0133) but none of the surface patterns were associated with a depth of invasion of >= 1000 mu M. In our model, a total NBI-finding score >= 1 was indicative of a high tumor grade (sensitivity: 0.97; specificity: 0.24), and a total NBI-finding score >= 9 (sensitivity: 0.56; specificity: 1.0) was predictive of a SM invasion depth >= 1000 mu m. Scores less than these cutoff values signified adenomas and a SM invasion depth < 1000 mu m, respectively. Associations were also noted between selected NBI findings and tumor tissue architecture and histopathology. CONCLUSION Our multivariate statistical model for predicting tumor grades and invasion depths from NBI-finding scores may help standardize the diagnosis of colorectal lesions and inform therapeutic strategies.
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关键词
Colorectal cancer,Magnifying narrow-band imaging,Score,Surface pattern,Vascular pattern
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