'Institute of Electrical and Electronics Engineers (IEEE)'
Abstract
Organ morphology is a key indicator for prostate disease diagnosis and prognosis. For instance, In longitudinal study
of prostate cancer patients under active surveillance, the volume, boundary smoothness and their changes are closely
monitored on time-series MR image data. In this paper, we
describe a new framework for forecasting prostate morphological changes, as the ability to detect such changes earlier
than what is currently possible may enable timely treatment
or avoiding unnecessary confirmatory biopsies. In this work,
an efficient feature-based MR image registration is first developed to align delineated prostate gland capsules to quantify
the morphological changes using the inferred dense displacement fields (DDFs). We then propose to use kernel density
estimation (KDE) of the probability density of the DDFrepresented future morphology changes, between current and
future time points, before the future data become available.
The KDE utilises a novel distance function that takes into
account morphology, stage-of-progression and duration-ofchange, which are considered factors in such subject-specific
forecasting. We validate the proposed approach on image
masks unseen to registration network training, without using
any data acquired at the future target time points. The experiment results are presented on a longitudinal data set with
331 images from 73 patients, yielding an average Dice score
of 0.865 on a holdout set, between the ground-truth and the
image masks warped by the KDE-predicted-DDFs