Journal article
Predicting prostate tumour location from multiparametric MRI using Gaussian kernel support vector machines: a preliminary study
Y Sun, H Reynolds, D Wraith, S Williams, ME Finnegan, C Mitchell, D Murphy, MA Ebert, A Haworth
Australasian Physical and Engineering Sciences in Medicine | SPRINGER | Published : 2017
Abstract
The performance of a support vector machine (SVM) algorithm was investigated to predict prostate tumour location using multi-parametric MRI (mpMRI) data. The purpose was to obtain information of prostate tumour location for the implementation of bio-focused radiotherapy. In vivo mpMRI data were collected from 16 patients prior to radical prostatectomy. Sequences included T2-weighted imaging, diffusion-weighted imaging and dynamic contrast enhanced imaging. In vivo mpMRI was registered with ‘ground truth’ histology, using ex vivo MRI as an intermediate registration step to improve accuracy. Prostate contours were delineated by a radiation oncologist and tumours were annotated on histology by ..
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Funding Acknowledgements
This research is supported by the Prostate Cancer Foundation of Australia, The University of Melbourne and Cancer Therapeutics CRC. The authors would also like to show their gratitude to Courtney Savill and Lauren Caspersz who have made substantial contributions during data collections.