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Using Signal-To-Noise Ratio to Connect the Quality Assessment Of Natural and Medical Images

机译:使用信噪比连接自然和医学图像的质量评估

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Medical image quality assessment (MIQA) is highly related to content interpretation and disease diagnosis in medical community. However, a few metrics have been developed. On the contrary, massive models have been designed for natural image quality assessment (NIQA) in the field of computer vision. Connect both sides of MIQA and NIQA is useful and challenging. This study explores signal-to-noise ratio (SNR) as the intermediate metric to bridge the gap between MIQA and NIQA and consequently, models for NIQA can be employed or modified for MIQA applications. A number of 411 images from 4 magnetic resonance (MR) imaging sequences are collected. First, the consistency of SNR in MIQA is validated which involves inter-rater and intra-rater (inter-session) reliability analysis. Then, 4 NIQA models (BIQI. BLIINDS-Ⅱ. BRISQUE and NIQE) are evaluated on these MR images. After that, the correlation between SNR values and NIQA results are analyzed. Statistical analysis indicates that SNR measurement shows reliability regard to different raters in each sequence. Moreover, BLIINDS-Ⅱ and BRISQUE have the potential for automated MIQA tasks. This study attempts to use SNR bridging the gap between MIQA and NIQA, and a large-scale experiment should be further conducted to verify the conclusion.
机译:医学图像质量评估(MIQA)与医学界的内容解释和疾病诊断高度相关。但是,已经开发了一些指标。相反,已经为计算机视觉领域的自然图像质量评估(NIQA)设计了大规模模型。连接MIQA和NIQA的两面既有用又充满挑战。这项研究探索了信噪比(SNR)作为弥合MIQA和NIQA之间差距的中间指标,因此,可以将MIQA模型用于MIQA应用程序或对其进行修改。收集了来自4个磁共振(MR)成像序列的411张图像。首先,验证了MIQA中SNR的一致性,这涉及评估者之间和评估者内部(会话间)的可靠性分析。然后,在这些MR图像上评估了4种NIQA模型(BIQI。BLIINDS-Ⅱ。BRISQUE和NIQE)。之后,分析SNR值与NIQA结果之间的相关性。统计分析表明,SNR测量显示了每个序列中不同评估者的可靠性。此外,BLIINDS-Ⅱ和BRISQUE具有执行自动MIQA任务的潜力。本研究试图利用SNR来弥合MIQA和NIQA之间的差距,并应进一步进行大规模实验以验证结论。

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