• DocumentCode
    1298023
  • Title

    Prostate Cancer Localization With Multispectral MRI Using Cost-Sensitive Support Vector Machines and Conditional Random Fields

  • Author

    Artan, Yusuf ; Haider, Masoom A. ; Langer, Deanna L. ; van der Kwast, Theodorus H ; Evans, Andrew J. ; Yang, Yongyi ; Wernick, Miles N. ; Trachtenberg, John ; Yetik, Imam Samil

  • Author_Institution
    Med. Imaging Res. Center, Illinois Inst. of Technol., Chicago, IL, USA
  • Volume
    19
  • Issue
    9
  • fYear
    2010
  • Firstpage
    2444
  • Lastpage
    2455
  • Abstract
    Prostate cancer is a leading cause of cancer death for men in the United States. Fortunately, the survival rate for early diagnosed patients is relatively high. Therefore, in vivo imaging plays an important role for the detection and treatment of the disease. Accurate prostate cancer localization with noninvasive imaging can be used to guide biopsy, radiotheraphy, and surgery as well as to monitor disease progression. Magnetic resonance imaging (MRI) performed with an endorectal coil provides higher prostate cancer localization accuracy, when compared to transrectal ultrasound (TRUS). However, in general, a single type of MRI is not sufficient for reliable tumor localization. As an alternative, multispectral MRI, i.e., the use of multiple MRI-derived datasets, has emerged as a promising noninvasive imaging technique for the localization of prostate cancer; however almost all studies are with human readers. There is a significant inter and intraobserver variability for human readers, and it is substantially difficult for humans to analyze the large dataset of multispectral MRI. To solve these problems, this study presents an automated localization method using cost-sensitive support vector machines (SVMs) and shows that this method results in improved localization accuracy than classical SVM. Additionally, we develop a new segmentation method by combining conditional random fields (CRF) with a cost-sensitive framework and show that our method further improves cost-sensitive SVM results by incorporating spatial information. We test SVM, cost-sensitive SVM, and the proposed cost-sensitive CRF on multispectral MRI datasets acquired from 21 biopsy-confirmed cancer patients. Our results show that multispectral MRI helps to increase the accuracy of prostate cancer localization when compared to single MR images; and that using advanced methods such as cost-sensitive SVM as well as the proposed cost-sensitive CRF can boost the performance significantly when compared t- - o SVM.
  • Keywords
    biological organs; biomedical MRI; cancer; image segmentation; medical image processing; radiation therapy; support vector machines; surgery; tumours; biopsy; conditional random fields; cost-sensitive support vector machines; disease progression monitoring; disease treatment; endorectal coil; in vivo imaging; interobserver variability; intraobserver variability; magnetic resonance imaging; men cancer death; multispectral MRI datasets; noninvasive imaging; noninvasive imaging technique; prostate cancer localization; radiotheraphy; segmentation method; spatial information; surgery; survival rate; transrectal ultrasound; tumor localization; Image segmentation; Magnetic resonance imaging; Prostate cancer; Support vector machines; Training; Automatic segmentation; conditional random fields (CRF); multispectral magnetic resonance imaging (MRI); prostate cancer localization; support vector machine (SVM); Algorithms; Area Under Curve; Artificial Intelligence; Humans; Image Interpretation, Computer-Assisted; Magnetic Resonance Imaging; Male; Markov Chains; Prostatic Neoplasms; ROC Curve;
  • fLanguage
    English
  • Journal_Title
    Image Processing, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1057-7149
  • Type

    jour

  • DOI
    10.1109/TIP.2010.2048612
  • Filename
    5550479