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多发性硬化磁共振成像中不确定性感知与病灶特异性图像合成:一项多中心验证研究

Uncertainty-Aware and Lesion-Specific Image Synthesis in Multiple Sclerosis Magnetic Resonance Imaging: A Multicentric Validation Study.

作者信息

Finck Tom, Li Hongwei, Schlaeger Sarah, Grundl Lioba, Sollmann Nico, Bender Benjamin, Bürkle Eva, Zimmer Claus, Kirschke Jan, Menze Björn, Mühlau Mark, Wiestler Benedikt

机构信息

Department of Diagnostic and Interventional Neuroradiology, School of Medicine, Klinikum rechts der Isar, Technical University of Munich, Munich, Germany.

Image-Based Biomedical Modeling, Technical University of Munich, Munich, Germany.

出版信息

Front Neurosci. 2022 Apr 26;16:889808. doi: 10.3389/fnins.2022.889808. eCollection 2022.

Abstract

Generative adversarial networks (GANs) can synthesize high-contrast MRI from lower-contrast input. Targeted translation of parenchymal lesions in multiple sclerosis (MS), as well as visualization of model confidence further augment their utility, provided that the GAN generalizes reliably across different scanners. We here investigate the generalizability of a refined GAN for synthesizing high-contrast double inversion recovery (DIR) images and propose the use of uncertainty maps to further enhance its clinical utility and trustworthiness. A GAN was trained to synthesize DIR from input fluid-attenuated inversion recovery (FLAIR) and T1w of 50 MS patients (training data). In another 50 patients (test data), two blinded readers (R1 and R2) independently quantified lesions in synthetic DIR (synthDIR), acquired DIR (trueDIR) and FLAIR. Of the 50 test patients, 20 were acquired on the same scanner as training data (internal data), while 30 were scanned at different scanners with heterogeneous field strengths and protocols (external data). Lesion-to-Background ratios (LBR) for MS-lesions vs. normal appearing white matter, as well as image quality parameters were calculated. Uncertainty maps were generated to visualize model confidence. Significantly more MS-specific lesions were found in synthDIR compared to FLAIR (R1: 26.7 ± 2.6 vs. 22.5 ± 2.2 < 0.0001; R2: 22.8 ± 2.2 vs. 19.9 ± 2.0, = 0.0005). While trueDIR remained superior to synthDIR in R1 [28.6 ± 2.9 vs. 26.7 ± 2.6 ( = 0.0021)], both sequences showed comparable lesion conspicuity in R2 [23.3 ± 2.4 vs. 22.8 ± 2.2 ( = 0.98)]. Importantly, improvements in lesion counts were similar in internal and external data. Measurements of LBR confirmed that lesion-focused GAN training significantly improved lesion conspicuity. The use of uncertainty maps furthermore helped discriminate between MS lesions and artifacts. In conclusion, this multicentric study confirms the external validity of a lesion-focused Deep-Learning tool aimed at MS imaging. When implemented, uncertainty maps are promising to increase the trustworthiness of synthetic MRI.

摘要

生成对抗网络(GANs)可以从低对比度输入中合成高对比度磁共振成像(MRI)。对多发性硬化症(MS)实质病变进行靶向翻译,以及对模型置信度进行可视化,进一步增强了它们的实用性,前提是GAN能够在不同扫描仪之间可靠地泛化。我们在此研究一种改进的GAN在合成高对比度双反转恢复(DIR)图像方面的泛化能力,并提出使用不确定性图来进一步提高其临床实用性和可信度。训练了一个GAN,根据50例MS患者的输入液体衰减反转恢复(FLAIR)和T1加权像(训练数据)来合成DIR。在另外50例患者(测试数据)中,两名盲态阅片者(R1和R2)独立对合成DIR(synthDIR)、采集的DIR(trueDIR)和FLAIR中的病变进行定量分析。在50例测试患者中,20例与训练数据在同一台扫描仪上采集(内部数据),而30例在具有不同场强和协议的不同扫描仪上扫描(外部数据)。计算了MS病变与正常白质的病变与背景比值(LBR)以及图像质量参数。生成不确定性图以可视化模型置信度。与FLAIR相比,synthDIR中发现的MS特异性病变明显更多(R1:26.7±2.6对22.5±2.2,<0.0001;R2:22.8±2.2对19.9±2.0,=0.0005)。虽然在R1中trueDIR仍优于synthDIR [28.6±2.9对26.7±2.6(=0.0021)],但在R2中两个序列的病变清晰度相当[23.3±2.4对22.8±2.2(=0.98)]。重要的是,内部和外部数据中病变计数的改善相似。LBR测量证实,以病变为重点的GAN训练显著提高了病变清晰度。使用不确定性图进一步有助于区分MS病变和伪影。总之,这项多中心研究证实了一种针对MS成像的以病变为重点的深度学习工具的外部有效性。在实施时,不确定性图有望提高合成MRI的可信度。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a071/9087732/206a9d044080/fnins-16-889808-g001.jpg

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