利用机器学习实现ACR MRI低对比度分辨率测试的自动化

J. E. Ramos, H. Y. Kim, F. Tancredi
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引用次数: 3

摘要

磁共振成像(MRI)是一种强大、广泛和不可或缺的医学成像方式。美国放射学会(ACR)建议每周采集幻像来评估扫描仪的质量。通常,这些图像必须由经验丰富的技术人员进行分析。这些图像的自动分析将降低成本并提高可重复性。已经提出了一些自动化的方法,但是两个ACR图像质量测试的自动化仍然是一个开放的问题。关于高和低对比度分辨率测试的报告很少,到目前为止,提议的方法都没有产生足够强大的结果,可以取代人工工作。我们使用机器学习来模拟,由经验丰富的专业人员以高精度检测120个低对比度的ACR幻像结构。我们使用了一个包含620组ACR幻象图像的数据库,这些图像是在不同厂商、不同领域和不同线圈的扫描仪上获得的,总计74,400个低对比度结构。具有10年以上经验的技术人员将每个结构标记为“可检测”或“不可检测”。机器学习算法从结构及其周围环境中提取图像特征。在5种检验方法中,Logistic回归的ROC曲线下面积最大(0.878),Krippendorff(s alpha)最高(0.995)。本研究取得的结果大大优于先前文献报道的结果。他们也比初级技术人员(经验少于5年)所做的分类要好。这表明ACR MRI低对比度分辨率测试可以使用机器学习实现自动化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automation of the ACR MRI Low-Contrast Resolution Test Using Machine Learning
Magnetic Resonance Imaging (MRI) is a powerful, widespread and indispensable medical imaging modality. The American College of Radiology (ACR) recommends weekly acquisition of phantom images to assess the quality of scanner. Usually, these images must be analyzed by experienced technicians. Automatic analysis of these images would reduce costs and improve repeatability. Some automated methods have been proposed, but the automation of two of the ACR image quality tests remains open problem. Reports on the high- and low-contrast resolution tests are scarce and so far none of the proposed methods produce results robust enough to allow replacing human work. We use Machine Learning to emulate, with high accuracy, the detection of 120 low-contrast structures of ACR phantom by an experienced professional. We used a database with 620 sets of ACR phantom images that were acquired on scanners of different vendors, fields and coils, totaling 74,400 low-contrast structures. Technicians with more than 10 years of experience labeled each structure as ‘detectable’ or ‘undetectable’. Machine learning algorithms were fed with image features extracted from the structures and their surroundings. Among the five methods we tested, Logistic Regression yielded the largest area under the ROC curve (0.878) and the highest Krippendorff(s alpha (0.995). The results achieved in this study are substantially better than those previously reported in the literature. They are also better than the classifications made by junior technicians (with less than 5 years of experience). This indicate that the ACR MRI low-contrast resolution test may be automated using Machine Learning.
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