MRIQA: Subjective Method and Objective Model for Magnetic Resonance Image Quality Assessment

Qi Chen, F. Liu, Huiyu Duan, Yao Wang, Xiongkuo Min, Yan Zhou, Guangtao Zhai
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Abstract

Magnetic Resonance Imaging (MRI) is widely used for medical diagnosis, staging and follow-up of disease. However, MRI images may have artifacts due to various reasons such as patient movement or machine distortion, which may be unintentionally introduced during the procedure of medical image acquisition, processing, etc. These artifacts may affect the effectiveness of diagnosis or even cause false diagnosis. To solve this problem, we propose a general medical image quality assessment (MIQA) methodology, including subjective MIQA procedures and objective MIQA algorithms. We further apply this methodology to MRI images in this paper due to its widespread use in practical applications. We first establish a magnetic resonance imaging quality assessment (MRIQA) database, which contains 3809 MRI images. Then a subjective image quality assessment experiment is conducted by expert doctors according to the diagnostic value of these images, which split all MRI images into 1285 low quality images and 2524 high quality images. We then conduct a baseline deep learning experiment, and propose an attention based MIQANet model to automatically separate MRI images into high quality and low quality based on their diagnosis value. Our proposed method achieves a great quality assessment accuracy of 96.59%. The constructed MRIQA database and proposed MIQA model will be public available to further promote medical IQA research.
磁共振图像质量评价的主观方法和客观模型
磁共振成像(MRI)广泛应用于医学诊断、疾病分期和随访。然而,在医学图像采集、处理等过程中,由于患者运动或机器畸变等各种原因,MRI图像可能会出现伪影。这些伪影可能会影响诊断的有效性,甚至导致错误的诊断。为了解决这一问题,我们提出了一种通用的医学图像质量评估(MIQA)方法,包括主观MIQA程序和客观MIQA算法。由于该方法在实际应用中的广泛应用,我们在本文中进一步将其应用于MRI图像。我们首先建立了磁共振成像质量评估(MRIQA)数据库,该数据库包含3809张MRI图像。然后由专家医生根据这些图像的诊断价值进行主观图像质量评估实验,将所有MRI图像分成1285张低质量图像和2524张高质量图像。然后,我们进行了基线深度学习实验,并提出了一种基于注意力的MIQANet模型,根据MRI图像的诊断价值自动将其划分为高质量和低质量。该方法的质量评价准确率达到96.59%。构建的MRIQA数据库和提出的MIQA模型将向公众开放,进一步推动医学IQA研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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