Pix2Pix generative-adversarial network in improving the quality of T2-weighted prostate magnetic resonance imaging: a multi-reader study.

IF 1.4 4区 医学 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Yeliz Başar, Mustafa Said Kartal, Mustafa Ege Seker, Deniz Alis, Delal Seker, Müjgan Orman, Sabri Şirolu, Serpil Kurtcan, Aydan Arslan, Nurper Denizoğlu, İlkay Öksüz, Ercan Karaarslan
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引用次数: 0

Abstract

Purpose: To assess the performance and feasibility of generative deep learning in enhancing the image quality of T2-weighted (T2W) prostate magnetic resonance imaging (MRI).

Methods: Axial T2W images from the prostate imaging: cancer artificial intelligence dataset (n = 1,476, biologically males; n = 1,500 scans) were used, partitioned into training (n = 1300), validation (n = 100), and testing (n = 100) sets. A Pix2Pix model was trained on original and synthetically degraded images, generated using operations such as motion, Gaussian noise, blur, ghosting, spikes, and bias field inhomogeneities to enhance image quality. The efficacy of the model was evaluated by seven radiologists using the prostate imaging quality criteria to assess original, degraded, and improved images. The evaluation also included tests to determine whether the images were original or synthetically improved. Additionally, the model's performance was tested on the in-house external testing dataset of 33 patients. The statistical significance was assessed using the Wilcoxon signedrank test.

Results: Results showed that synthetically improved images [median score (interquartile range) 4.71 (1)] were of higher quality than degraded images [3.36 (3), P = 0.0001], with no significant difference from original images [5 (1.14), P > 0.05]. Observers equally identified original and synthetically improved images as original (52% and 53%), proving the model's ability to retain realistic attributes. External testing on a dataset of 33 patients confirmed a significant improvement (P = 0.001) in image quality, from a median score of 4 (2.286)-4.71 (1.715).

Conclusion: The Pix2Pix model, trained on synthetically degraded data, effectively improved prostate MRI image quality while maintaining realism and demonstrating both applicability to real data and generalizability across various datasets.

Clinical significance: This study critically assesses the efficacy of the Pix2Pix generative-adversarial network in enhancing T2W prostate MRI quality, demonstrating its potential to produce high-quality, realistic images indistinguishable from originals, thereby potentially advancing radiology practice by improving diagnostic accuracy and image reliability.

Pix2Pix生成对抗网络在提高t2加权前列腺磁共振成像质量中的应用:一项多读卡器研究。
目的:评估生成式深度学习在提高前列腺t2加权(T2W)磁共振成像(MRI)图像质量中的性能和可行性。方法:来自前列腺成像:癌症人工智能数据集的T2W轴向图像(n = 1476,生理男性;使用了N = 1500次扫描),分为训练集(N = 1300)、验证集(N = 100)和测试集(N = 100)。使用运动、高斯噪声、模糊、重影、尖峰和偏置场不均匀性等操作生成的原始图像和综合退化图像,对Pix2Pix模型进行了训练,以提高图像质量。该模型的疗效由7名放射科医生使用前列腺成像质量标准来评估原始,退化和改进的图像。评估还包括确定图像是原始的还是经过综合改进的测试。此外,在33例患者的内部外部测试数据集上对模型的性能进行了测试。采用Wilcoxon符号检验评估统计学显著性。结果:结果显示,综合改进图像[中位数得分(四分位间距)4.71(1)]的质量优于退化图像[3.36 (3),P = 0.0001],与原始图像[5 (1.14),P = 0.0001]无显著差异。观察者对原始图像和综合改进图像的识别程度相同(52%和53%),证明了模型保留真实属性的能力。对33名患者的数据集进行的外部测试证实了图像质量的显着改善(P = 0.001),中位评分为4(2.286)-4.71(1.715)。结论:在综合退化数据上训练的Pix2Pix模型,在保持真实感的同时,有效地提高了前列腺MRI图像质量,并展示了对真实数据的适用性和跨各种数据集的通用性。临床意义:本研究批判性地评估了Pix2Pix生成-对抗网络在提高T2W前列腺MRI质量方面的功效,证明了其产生高质量、真实图像的潜力,与原始图像没有区别,从而通过提高诊断准确性和图像可靠性,潜在地推进放射学实践。
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来源期刊
Diagnostic and interventional radiology
Diagnostic and interventional radiology Medicine-Radiology, Nuclear Medicine and Imaging
自引率
4.80%
发文量
0
期刊介绍: Diagnostic and Interventional Radiology (Diagn Interv Radiol) is the open access, online-only official publication of Turkish Society of Radiology. It is published bimonthly and the journal’s publication language is English. The journal is a medium for original articles, reviews, pictorial essays, technical notes related to all fields of diagnostic and interventional radiology.
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