Title
Improved parameter extraction and classification for dynamic contrast enhanced MRI of prostate
Abstract
Magnetic resonance imaging (MRI), particularly dynamic contrast enhanced (DCE) imaging, has shown great potential in prostate cancer diagnosis and prognosis. The time course of the DCE images provides measures of the contrast agent uptake kinetics. Also, using pharmacokinetic modelling, one can extract parameters from the DCE-MR images that characterize the tumor vascularization and can be used to detect cancer. A requirement for calculating the pharmacokinetic DCE parameters is estimating the Arterial Input Function (AIF). One needs an accurate segmentation of the cross section of the external femoral artery to obtain the AIF. In this work we report a semi-automatic method for segmentation of the cross section of the femoral artery, using circular Hough transform, in the sequence of DCE images. We also report a machine-learning framework to combine pharmacokinetic parameters with the model-free contrast agent uptake kinetic parameters extracted from the DCE time course into a nine-dimensional feature vector. This combination of features is used with random forest and with support vector machine classification for cancer detection. The MR data is obtained from patients prior to radical prostatectomy. After the surgery, wholemount histopathology analysis is performed and registered to the DCE-MR images as the diagnostic reference. We show that the use of a combination of pharmacokinetic parameters and the model-free empirical parameters extracted from the time course of DCE results in improved cancer detection compared to the use of each group of features separately. We also validate the proposed method for calculation of AIF based on comparison with the manual method.
Year
DOI
Venue
2014
10.1117/12.2043352
Proceedings of SPIE
Keywords
Field
DocType
Dynamic contrast enhanced magnetic resonance imaging,arterial input function,random forests,support vector machine
Biomedical engineering,Computer vision,Feature vector,Segmentation,Support vector machine,Hough transform,Image segmentation,Artificial intelligence,Random forest,Dynamic contrast-enhanced MRI,Physics,Magnetic resonance imaging
Conference
Volume
ISSN
Citations 
9035
0277-786X
2
PageRank 
References 
Authors
0.58
0
6
Name
Order
Citations
PageRank
Nandinee Fariah Haq1204.70
Piotr Kozlowski2203.65
Edward C. Jones3263.65
Silvia D Chang4347.23
Larry Goldenberg5294.33
Mehdi Moradi621931.03