Journal article
Voxel-wise prostate cell density prediction using multiparametric magnetic resonance imaging and machine learning
Y Sun, HM Reynolds, D Wraith, S Williams, ME Finnegan, C Mitchell, D Murphy, A Haworth
Acta Oncologica | TAYLOR & FRANCIS LTD | Published : 2018
Abstract
Background: There are currently no methods to estimate cell density in the prostate. This study aimed to develop predictive models to estimate prostate cell density from multiparametric magnetic resonance imaging (mpMRI) data at a voxel level using machine learning techniques. Material and methods:In vivo mpMRI data were collected from 30 patients before radical prostatectomy. Sequences included T2-weighted imaging, diffusion-weighted imaging and dynamic contrast-enhanced imaging. Ground truth cell density maps were computed from histology and co-registered with mpMRI. Feature extraction and selection were performed on mpMRI data. Final models were fitted using three regression algorithms in..
View full abstractGrants
Awarded by National Health and Medical Research Council
Funding Acknowledgements
This study was supported by NHMRC grant 1126955, PdCCRS grant 628592 with funding partners: Prostate Cancer Foundation of Australia, and the Radiation Oncology Section of the Australian Government of Health and Aging and Cancer Australia. Yu Sun is funded by the Melbourne International Research Scholarship, the Movember Young Investigator Grant through Prostate Cancer Foundation of Australia (PCFA) and Cancer Therapeutics Top-up Funding. Dr Reynolds is funded by the Movember Young Investigator Grant through PCFA's Research Program.