Abstract

BackgroundCervical cancer is the fifth most common cancer among women, which is the third leading cause of cancer death in women worldwide. Brachytherapy is the most effective treatment for cervical cancer. For brachytherapy, computed tomography (CT) imaging is necessary since it conveys tissue density information which can be used for dose planning. However, the metal artifacts caused by brachytherapy applicators remain a challenge for the automatic processing of image data for image-guided procedures or accurate dose calculations. Therefore, developing an effective metal artifact reduction (MAR) algorithm in cervical CT images is of high demand.MethodsA novel residual learning method based on convolutional neural network (RL-ARCNN) is proposed to reduce metal artifacts in cervical CT images. For MAR, a dataset is generated by simulating various metal artifacts in the first step, which will be applied to train the CNN. This dataset includes artifact-insert, artifact-free, and artifact-residual images. Numerous image patches are extracted from the dataset for training on deep residual learning artifact reduction based on CNN (RL-ARCNN). Afterwards, the trained model can be used for MAR on cervical CT images.ResultsThe proposed method provides a good MAR result with a PSNR of 38.09 on the test set of simulated artifact images. The PSNR of residual learning (38.09) is higher than that of ordinary learning (37.79) which shows that CNN-based residual images achieve favorable artifact reduction. Moreover, for a 512 × 512 image, the average removal artifact time is less than 1 s.ConclusionsThe RL-ARCNN indicates that residual learning of CNN remarkably reduces metal artifacts and improves critical structure visualization and confidence of radiation oncologists in target delineation. Metal artifacts are eliminated efficiently free of sinogram data and complicated post-processing procedure.

Highlights

  • Cervical cancer is the fifth most common cancer among women, which is the third leading cause of cancer death in women worldwide

  • Developing an effective metal artifact reduction (MAR) algorithm in cervical computed tomography (CT) images is of high demand

  • In this paper, we have proposed a novel residual learning method based on convolutional neural network (CNN) to reduce the metal artifact in cervical CT images for brachytherapy

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Summary

Introduction

Cervical cancer is the fifth most common cancer among women, which is the third leading cause of cancer death in women worldwide. If the X-ray detector lacks a sufficient dynamic range in detecting the weak signal, there will be metal shadows in the raw projection data These metal shadows will introduce streak artifacts, which can spread to nearby soft tissue regions in the reconstructed cervical CT images, obscuring the crucial diagnostic information of the tissues surrounding the metallic implants [4]. These metal artifacts caused by brachytherapy applicators remain a challenge for the automatic processing of image data for image-guided procedures or accurate dose calculations [5]. Developing an effective metal artifact reduction (MAR) algorithm in cervical CT images is of high demand

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