Title :
Cross-Device Automated Prostate Cancer Localization With Multiparametric MRI
Author :
Artan, Yusuf ; Oto, A. ; Yetik, I.S.
Author_Institution :
Xerox Res. Center, Webster, NY, USA
Abstract :
Prostate cancer localization using supervised classification techniques has aroused considerable interest in medical imaging community in recent years. However, it is crucial to have an accurate training data set for supervised classification techniques. Since different devices with, e.g., different protocols and/or field strengths cause different intensity profiles, each device/protocol must have an accompanying training data set, which is very costly to obtain. It is highly desirable to adapt the existing classifier(s) trained for one device/protocol to help classify data coming from another device/protocol. In this paper, we propose a novel method that has the ability to design classifiers obtained from one imaging protocol and/or MRI device to be used on a data set from another protocol and/or imaging device. As an example problem, we consider prostate cancer localization with multiparametric MRI. We show that simple normalization techniques such as z-score are not sufficient for cross-device automated cancer localization. On the other hand, the method we have originally developed based on relative intensity allows us to successfully use a classifier obtained from one device to be applied on a test patient imaged with another device. Proposed method also allows us to employ T2-weighted MR images directly instead of an additional step to normalize T2-weighted images usually performed in an ad hoc manner when T2 maps are not available. To demonstrate the effectiveness of the proposed method, we use a multiparametric MRI data set acquired from 18 biopsy-confirmed cancer patients with two separate scanners: 1) 1.5-T (Excite HD) GE and 2) 1.5-T (Achieva) Philips Healthcare scanners. A comprehensive visual, quantitative, and statistical analysis of the results show that methods we have developed allow us to: 1) perform cross-device automated classification and 2) use T2-weighted images without an ad hoc subject-specific normalization.
Keywords :
biomedical MRI; cancer; health care; image classification; medical image processing; statistical analysis; 1.5-T Achieva Philips Healthcare scanners; 1.5-T Excite HD GE; MRI device; T2-weighted MR images; biopsy-confirmed cancer patients; cross-device automated classification; cross-device automated prostate cancer localization; data classification; field strengths; imaging device; imaging protocol; intensity profiles; medical imaging community; multiparametric MRI; normalize T2-weighted images; protocols; quantitative analysis; relative intensity; statistical analysis; supervised classification techniques; visual analysis; Magnetic resonance imaging; Prostate cancer; Protocols; Training; Tumors; Intensity normalization; discriminant analysis; magnetic resonance imaging (MRI); prostate cancer;
Journal_Title :
Image Processing, IEEE Transactions on
DOI :
10.1109/TIP.2013.2285626