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首页> 外文期刊>Investigative radiology >Deep-Learning Generated Synthetic Double Inversion Recovery Images Improve Multiple Sclerosis Lesion Detection.
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Deep-Learning Generated Synthetic Double Inversion Recovery Images Improve Multiple Sclerosis Lesion Detection.

机译:深学习生成的合成双反转恢复图像改善多发性硬化病变检测。

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The aim of the study was to implement a deep-learning tool to produce synthetic double inversion recovery (synthDIR) images and compare their diagnostic performance to conventional sequences in patients with multiple sclerosis (MS). For this retrospective analysis, 100 MS patients (65 female, 37 [22-68] years) were randomly selected from a prospective observational cohort between 2014 and 2016. In a subset of 50 patients, an artificial neural network (DiamondGAN) was trained to generate a synthetic DIR (synthDIR) from standard acquisitions (T1, T2, and fluid-attenuated inversion recovery [FLAIR]). With the resulting network, synthDIR was generated for the remaining 50 subjects. These images as well as conventionally acquired DIR (trueDIR) and FLAIR images were assessed for MS lesions by 2 independent readers, blinded to the source of the DIR image. Lesion counts in the different modalities were compared using a Wilcoxon signed-rank test, and interrater analysis was performed. Contrast-to-noise ratios were compared for objective image quality. Utilization of synthDIR allowed to detect significantly more lesions compared with the use of FLAIR images (31.4 ± 20.7 vs 22.8 ± 12.7, P < 0.001). This improvement was mainly attributable to an improved depiction of juxtacortical lesions (12.3 ± 10.8 vs 7.2 ± 5.6, P < 0.001). Interrater reliability was excellent in FLAIR 0.92 (95% confidence interval [CI], 0.85-0.95), synthDIR 0.93 (95% CI, 0.87-0.96), and trueDIR 0.95 (95% CI, 0.85-0.98).Contrast-to-noise ratio in synthDIR exceeded that of FLAIR (22.0 ± 6.4 vs 16.7 ± 3.6, P = 0.009); no significant difference was seen in comparison to trueDIR (22.0 ± 6.4 vs 22.4 ± 7.9, P = 0.87). Computationally generated DIR images improve lesion depiction compared with the use of standard modalities. This method demonstrates how artificial intelligence can help improving imaging in specific pathologies.
机译:该研究的目的是实施一种深度学习工具,用于产生合成双重反转恢复(SynthDir)图像,并将其对多发性硬化症(MS)患者的常规序列进行比较。对于这种回顾性分析,100毫米患者(65例女性,37〜22-68岁)是从2014年和2016年期间的前瞻性观察队队中选择的。在50名患者的子集中,培训了一个人工神经网络(Diamondgan)从标准采集(T1,T2和流体衰减的反转恢复[Flair])产生合成毒剂(SynthDir)。通过所得到的网络,为剩余的50个受试者产生合成符。通过2个独立读取器评估这些图像以及常规获取的DIR(TRUDIR)和FLAIR图像,对MS病变进行了蒙蔽,蒙蔽到DIR图像的源极。使用Wilcoxon签名 - 秩测试进行比较不同方式的病变计数,并进行Interrater分析。比较对比噪音比率,以实现目标图像质量。与使用Flair图像相比,合成符的利用允许检测显着更大的病变(31.4±20.7 Vs 22.8±12.7,p <0.001)。这种改进主要是可归因于改善的对70.3±10.8 Vs 7.2±5.6,p <0.001)的改进的描述。 Interrater可靠性在Flair 0.92(95%置信区间[CI],0.85-0.95),SynthDir 0.93(95%CI,0.87-0.96)和Truedir 0.95(95%CI,0.85-0.98).Contrast-to- Synthdir中的噪声比超过Flair(22.0±6.4 Vs 16.7±3.6,P = 0.009);与Truedir相比,没有显着差异(22.0±6.4 vs 22.4±7.9,p = 0.87)。与使用标准模态相比,计算生成的DIR图像改善病变张贴。该方法表明人工智能如何有助于改善特定病理中的成像。

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