Department of Electrical and Computer Engineering, Medical Imaging Research Center, Illinois Institute of Technology, Chicago, Illinois 60616, USA.
Med Phys. 2010 Apr;37(4):1873-83. doi: 10.1118/1.3359459.
Magnetic resonance imaging (MRI) has been proposed as a promising alternative to transrectal ultrasound for the detection and localization of prostate cancer and fusing the information from multispectral MR images is currently an active research area. In this study, the goal is to develop automated methods that combine the pharmacokinetic parameters derived from dynamic contrast enhanced (DCE) MRI with quantitative T2 MRI and diffusion weighted imaging (DWI) in contrast to most of the studies which were performed with human readers. The main advantages of the automated methods are that the observer variability is removed and easily reproducible results can be efficiently obtained when the methods are applied to a test data. The goal is also to compare the performance of automated supervised and unsupervised methods for prostate cancer localization with multispectral MRI.
The authors use multispectral MRI data from 20 patients with biopsy-confirmed prostate cancer patients, and the image set consists of parameters derived from T2, DWI, and DCE-MRI. The authors utilize large margin classifiers for prostate cancer segmentation and compare them to an unsupervised method the authors have previously developed. The authors also develop thresholding schemes to tune support vector machines (SVMs) and their probabilistic counterparts, relevance vector machines (RVMs), for an improved performance with respect to a selected criterion. Moreover, the authors apply a thresholding method to make the unsupervised fuzzy Markov random fields method fully automatic.
The authors have developed a supervised machine learning method that performs better than the previously developed unsupervised method and, additionally, have found that there is no significant difference between the SVM and RVM segmentation results. The results also show that the proposed methods for threshold selection can be used to tune the automated segmentation methods to optimize results for certain criteria such as accuracy or sensitivity. The test results of the automated algorithms indicate that using multispectral MRI improves prostate cancer segmentation performance when compared to single MR images, a result similar to the human reader studies that were performed before.
The automated methods presented here can help diagnose and detect prostate cancer, and improve segmentation results. For that purpose, multispectral MRI provides better information about cancer and normal regions in the prostate when compared to methods that use single MRI techniques; thus, the different MRI measurements provide complementary information in the automated methods. Moreover, the use of supervised algorithms in such automated methods remain a good alternative to the use of unsupervised algorithms.
磁共振成像(MRI)已被提议作为检测和定位前列腺癌的经直肠超声的一种有前途的替代方法,并且融合多谱 MR 图像的信息是当前一个活跃的研究领域。在这项研究中,目标是开发自动化方法,将来自动态对比增强(DCE)MRI 的药代动力学参数与定量 T2 MRI 和扩散加权成像(DWI)相结合,与大多数使用人类读者进行的研究相比。自动化方法的主要优点是消除了观察者的可变性,并且当方法应用于测试数据时,可以高效地获得可重复的结果。目标还在于比较多谱 MRI 前列腺癌定位的自动化监督和无监督方法的性能。
作者使用来自 20 名经活检证实患有前列腺癌的患者的多谱 MRI 数据,图像集由来自 T2、DWI 和 DCE-MRI 的参数组成。作者利用大边缘分类器进行前列腺癌分割,并将其与作者之前开发的无监督方法进行比较。作者还开发了阈值方案来调整支持向量机(SVM)及其概率对应物相关向量机(RVM),以针对选定的标准提高性能。此外,作者应用了一种阈值方法,使无监督模糊马尔可夫随机场方法完全自动化。
作者已经开发了一种监督机器学习方法,该方法的性能优于之前开发的无监督方法,并且还发现 SVM 和 RVM 分割结果之间没有显著差异。结果还表明,可以使用提出的阈值选择方法来调整自动化分割方法,以针对特定标准(例如准确性或敏感性)优化结果。自动化算法的测试结果表明,与使用单一磁共振图像相比,多谱 MRI 可提高前列腺癌的分割性能,这与之前进行的人类读者研究结果相似。
本文提出的自动化方法可以帮助诊断和检测前列腺癌,并改善分割结果。为此,与使用单一 MRI 技术的方法相比,多谱 MRI 提供了关于前列腺癌和正常区域的更好信息;因此,不同的 MRI 测量在自动化方法中提供了互补信息。此外,在这种自动化方法中使用监督算法仍然是使用无监督算法的一个很好的替代方案。