Novel deep learning-based noise reduction technique for prostate magnetic resonance imaging

医学 前列腺癌 磁共振成像 前列腺 图像质量 人工智能 深度学习 可视化 放射科 核医学 医学物理学 癌症 计算机科学 图像(数学) 内科学
作者
Xinzeng Wang,Jingfei Ma,Priya Bhosale,Juan J. Ibarra Rovira,Aliya Qayyum,Jia Sun,Ersin Bayram,Janio Szklaruk
出处
期刊:Abdominal Imaging [Springer Nature]
卷期号:46 (7): 3378-3386 被引量:38
标识
DOI:10.1007/s00261-021-02964-6
摘要

Abstract Introduction Magnetic 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 AIR TM 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. Methods This 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): ERC DLR , ERC Conv , Non-ERC DLR , and Non-ERC Conv . 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. Results The Non-ERC DLR 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. Conclusion Prostate 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.
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