Abstract

The objective of this study was to investigate the diagnosis of colonic polyps (CP) through the computed tomography (CT) images combined with colonoscopy based on Fourier central slice theorem algorithm. In this study, 86 patients with CP admitted to hospital were selected as research objects. CT imaging and colonoscopy were applied to diagnose the patients based on the algorithm of Fourier central slice theorem. The results showed that the diagnostic detection rates of CP and colon cancer (CC) were 88.2% and 94.2%, respectively. The occurrence site of CP was the sigmoid and ascending colon. 38 patients were positive for serosal invasion of CP while 42 patients were negative for serosal invasion of CP, and there were no statistical differences ( P > 0.05 ). The lesion positions of remaining 6 cases were hard to find and could not be detected accurately. Besides, the diagnostic accuracy of preoperative and postoperative stages III and IV was all 100.00%. The combination of CT imaging and colonoscopy was employed to diagnose CP, which was found to be able to accurately locate the lesions, to effectively evaluate the tumor stage before and after surgery, and to have a good diagnostic efficacy in detecting tumor serosal layer.

Highlights

  • colonic polyps (CP) refers to all projecting vegetation into the colon lumen, including neoplastic and nonneoplastic vegetation [1]

  • computed tomography (CT) examination has become an indispensable method for the diagnosis of colon in the medicine through CT scanning on the injured parts of human body and analyzing the images to determine the disease situation [8]. e deep learning technology was applied in this study for iterative statistics in order to further optimize CT images

  • SPSS20.0 statistical analysis software was used for data processing, and percentage (%) was used for calculation data. e detection rate, specificity, sensitivity, and diagnostic rate were compared through analysis of variance (ANOVA), and the difference was statistically obvious with P < 0.05

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Summary

Introduction

CP refers to all projecting vegetation into the colon lumen, including neoplastic and nonneoplastic vegetation [1]. CT is a kind of tomography that applies X-ray, c-ray, and ultrasound with high sensitivity to scanning a certain part of the human body and has the features of fast scanning time and clear scanning images [5]. CT imaging has been widely applied in the medical clinical diagnosis. CT examination has become an indispensable method for the diagnosis of colon in the medicine through CT scanning on the injured parts of human body and analyzing the images to determine the disease situation [8]. E deep learning technology was applied in this study for iterative statistics in order to further optimize CT images CT examination has become an indispensable method for the diagnosis of colon in the medicine through CT scanning on the injured parts of human body and analyzing the images to determine the disease situation [8]. e deep learning technology was applied in this study for iterative statistics in order to further optimize CT images

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