TL;DR
This paper introduces a novel deep learning approach combining unsupervised and supervised methods to accurately predict the final stroke lesion location and size from neuroimaging data, aiding clinical decision-making.
Contribution
It presents a two-branch Restricted Boltzmann Machine integrated with CNN and RNN architectures for improved stroke lesion prediction.
Findings
Achieved a Dice score of 0.38 on ISLES 2017 dataset
Demonstrated the effectiveness of combining data-driven features with parametric MRI maps
Provided a fully automatic method supporting clinical treatment planning
Abstract
Predicting the final ischaemic stroke lesion provides crucial information regarding the volume of salvageable hypoperfused tissue, which helps physicians in the difficult decision-making process of treatment planning and intervention. Treatment selection is influenced by clinical diagnosis, which requires delineating the stroke lesion, as well as characterising cerebral blood flow dynamics using neuroimaging acquisitions. Nonetheless, predicting the final stroke lesion is an intricate task, due to the variability in lesion size, shape, location and the underlying cerebral haemodynamic processes that occur after the ischaemic stroke takes place. Moreover, since elapsed time between stroke and treatment is related to the loss of brain tissue, assessing and predicting the final stroke lesion needs to be performed in a short period of time, which makes the task even more complex. Therefore,…
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Taxonomy
MethodsRestricted Boltzmann Machine
