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Hauptverfasser: Murray, Olivia N, Haroon, Hamied, Ryu, Paul, Patel, Hiren, Harston, George, Wermer, Marieke, Jolink, Wilmar, Hanley, Daniel, Klijn, Catharina, Hammerbeck, Ulrike, Parry-Jones, Adrian, Cootes, Timothy
Format: Preprint
Veröffentlicht: 2024
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Online-Zugang:https://arxiv.org/abs/2408.06403
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author Murray, Olivia N
Haroon, Hamied
Ryu, Paul
Patel, Hiren
Harston, George
Wermer, Marieke
Jolink, Wilmar
Hanley, Daniel
Klijn, Catharina
Hammerbeck, Ulrike
Parry-Jones, Adrian
Cootes, Timothy
author_facet Murray, Olivia N
Haroon, Hamied
Ryu, Paul
Patel, Hiren
Harston, George
Wermer, Marieke
Jolink, Wilmar
Hanley, Daniel
Klijn, Catharina
Hammerbeck, Ulrike
Parry-Jones, Adrian
Cootes, Timothy
contents The preservation of the corticospinal tract (CST) is key to good motor recovery after stroke. The gold standard method of assessing the CST with imaging is diffusion tensor tractography. However, this is not available for most intracerebral haemorrhage (ICH) patients. Non-contrast CT scans are routinely available in most ICH diagnostic pipelines, but delineating white matter from a CT scan is challenging. We utilise nnU-Net, trained on paired diagnostic CT scans and high-directional diffusion tractography maps, to segment the CST from diagnostic CT scans alone, and we show our model reproduces diffusion based tractography maps of the CST with a Dice similarity coefficient of 57%. Surgical haematoma evacuation is sometimes performed after ICH, but published clinical trials to date show that whilst surgery reduces mortality, there is no evidence of improved functional recovery. Restricting surgery to patients with an intact CST may reveal a subset of patients for whom haematoma evacuation improves functional outcome. We investigated the clinical utility of our model in the MISTIE III clinical trial dataset. We found that our model's CST integrity measure significantly predicted outcome after ICH in the acute and chronic time frames, therefore providing a prognostic marker for patients to whom advanced diffusion tensor imaging is unavailable. This will allow for future probing of subgroups who may benefit from surgery.
format Preprint
id arxiv_https___arxiv_org_abs_2408_06403
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle From Diagnostic CT to DTI Tractography labels: Using Deep Learning for Corticospinal Tract Injury Assessment and Outcome Prediction in Intracerebral Haemorrhage
Murray, Olivia N
Haroon, Hamied
Ryu, Paul
Patel, Hiren
Harston, George
Wermer, Marieke
Jolink, Wilmar
Hanley, Daniel
Klijn, Catharina
Hammerbeck, Ulrike
Parry-Jones, Adrian
Cootes, Timothy
Image and Video Processing
Computer Vision and Pattern Recognition
Medical Physics
The preservation of the corticospinal tract (CST) is key to good motor recovery after stroke. The gold standard method of assessing the CST with imaging is diffusion tensor tractography. However, this is not available for most intracerebral haemorrhage (ICH) patients. Non-contrast CT scans are routinely available in most ICH diagnostic pipelines, but delineating white matter from a CT scan is challenging. We utilise nnU-Net, trained on paired diagnostic CT scans and high-directional diffusion tractography maps, to segment the CST from diagnostic CT scans alone, and we show our model reproduces diffusion based tractography maps of the CST with a Dice similarity coefficient of 57%. Surgical haematoma evacuation is sometimes performed after ICH, but published clinical trials to date show that whilst surgery reduces mortality, there is no evidence of improved functional recovery. Restricting surgery to patients with an intact CST may reveal a subset of patients for whom haematoma evacuation improves functional outcome. We investigated the clinical utility of our model in the MISTIE III clinical trial dataset. We found that our model's CST integrity measure significantly predicted outcome after ICH in the acute and chronic time frames, therefore providing a prognostic marker for patients to whom advanced diffusion tensor imaging is unavailable. This will allow for future probing of subgroups who may benefit from surgery.
title From Diagnostic CT to DTI Tractography labels: Using Deep Learning for Corticospinal Tract Injury Assessment and Outcome Prediction in Intracerebral Haemorrhage
topic Image and Video Processing
Computer Vision and Pattern Recognition
Medical Physics
url https://arxiv.org/abs/2408.06403