Abstract

IntroductionMagnetic resonance imaging (MRI) has played an increasingly major role in the evaluation of patients with prostate cancer, although prostate MRI presents several technical challenges. Newer techniques, such as deep learning (DL), have been applied to medical imaging, leading to improvements in image quality. Our goal is to evaluate the performance of a new deep learning-based reconstruction method, “DLR” in improving image quality and mitigating artifacts, which is now commercially available as AIRTM Recon DL (GE Healthcare, Waukesha, WI). We hypothesize that applying DLR to the T2WI images of the prostate provides improved image quality and reduced artifacts.MethodsThis study included 31 patients with a history of prostate cancer that had a multiparametric MRI of the prostate with an endorectal coil (ERC) at 1.5 T or 3.0 T. Four series of T2-weighted images were generated in total: one set with the ERC signal turned on (ERC) and another set with the ERC signal turned off (Non-ERC). Each of these sets then reconstructed using two different reconstruction methods: conventional reconstruction (Conv) and DL Recon (DLR): ERCDLR, ERCConv, Non-ERCDLR, and Non-ERCConv. Three radiologists independently reviewed and scored the four sets of images for (i) image quality, (ii) artifacts, and (iii) visualization of anatomical landmarks and tumor.ResultsThe Non-ERCDLR scored as the best series for (i) overall image quality (p < 0.001), (ii) reduced artifacts (p < 0.001), and (iii) visualization of anatomical landmarks and tumor.ConclusionProstate imaging without the use of an endorectal coil could benefit from deep learning reconstruction as demonstrated with T2-weighted imaging MRI evaluations of the prostate.

Highlights

  • Magnetic resonance imaging (MRI) has played an increasingly major role in the evaluation of patients with prostate cancer, prostate MRI presents several technical challenges

  • The DL Recon (DLR) network was embedded into the conventional reconstruction pathway such that two sets of image series could be generated from a single set of raw MRI data

  • Our results indicate an overwhelming preference for the Non-ERCDLR series by all radiologists (p < 0.001)

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Summary

Introduction

Magnetic resonance imaging (MRI) has played an increasingly major role in the evaluation of patients with prostate cancer, prostate MRI presents several technical challenges. Newer techniques, such as deep learning (DL), have been applied to medical imaging, leading to improvements in image quality. MRI has been increasingly used in the detection of primary tumors in all patients, including “biopsy naïve” patients Technical guidelines such as the Prostate Imaging Reporting and Data System (PI-RADS) have been instrumental in making these changes and in improving the interpretation of the MRIs of the prostate by establishing minimum standards for high-quality images and a protocol for optimal image interpretation. These techniques are used to evaluate the primary malignancy and to stage the extent of disease

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