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               <dc:title>Automatic segmentation of intramedullary multiple sclerosis lesions delimited in DIR sequences with convolutional neural networks</dc:title>
               <dc:creator>Gambús i Moreno, Paula</dc:creator>
               <dc:subject>Multiple sclerosis</dc:subject>
               <dc:subject>Spinal cord lesion</dc:subject>
               <dc:subject>Deep learning</dc:subject>
               <dc:subject>Convolutional neural network</dc:subject>
               <dc:subject>DIR sequence</dc:subject>
               <dc:subject>Ground truth</dc:subject>
               <dc:subject>Dice coefficient</dc:subject>
               <dc:description>Tutors: Dr. Deborah Pareto Onghena, Dr. Gerard Martí Juan.&#xd;
Treball de fi de grau en Biomèdica</dc:description>
               <dc:description>Multiple sclerosis (MS) is a neurodegenerative disease affecting the central nervous&#xd;
system (CNS), characterized by the destruction of myelin sheaths, that has become&#xd;
the leading cause of disability in young adults. Since this disease does not have a&#xd;
cure, an early diagnosis is crucial to start treatment and slow down its progression.&#xd;
Current diagnostic criteria are based on detecting lesions on magnetic resonance&#xd;
imaging (MRI). Accurate detection of spinal cord (SC) lesions is currently missing.&#xd;
In this context, the aim of this project was to develop an artificial intelligence&#xd;
tool using convolutional neural networks to automatically segment SC lesions from&#xd;
Double Inversion Recovery (DIR) sequences.&#xd;
For this purpose, two different raters manually segmented SC lesions from patients&#xd;
with MS. From these masks, three different networks were obtained using the&#xd;
same hyperparameters: the Rater 1 model was trained with masks segmented by&#xd;
the first rater; the Rater 2 model with segmentations from the rater 2; and the&#xd;
Hybrid one, with masks from both of them. Their performance was evaluated using&#xd;
a test set of 30 patients, with half of them not having SC lesions. To assess the&#xd;
performance of the method, the Dice coefficient between the manual ground truths&#xd;
and the automatic masks was calculated.&#xd;
The three models showed good performance, with a Dice score of around 50%.&#xd;
However, the Rater 2 model had better results since a Dice coefficient of 0.557&#xd;
± 0.102 was obtained. Moreover, this algorithm demonstrated a non-overlapping&#xd;
volume percentage of 34.119 ± 49.629 % meaning that it exhibited a tendency to&#xd;
over-segment lesions, leading to false positives. Further analysis and discussions with&#xd;
neuroradiologists determined that removing falsely detected voxels was preferable&#xd;
to missing true SC lesions.&#xd;
Even though the successful results, further improvements to increase its accuracy&#xd;
are necessary for clinical viability. Overall, this research presents a step towards&#xd;
automated SC lesion segmentation in MS using DIR sequences, which could aid to&#xd;
assist radiologists in scanner assessment.</dc:description>
               <dc:date>2023-09-22T17:01:38Z</dc:date>
               <dc:date>2023-09-22T17:01:38Z</dc:date>
               <dc:date>2023-09-22</dc:date>
               <dc:type>info:eu-repo/semantics/bachelorThesis</dc:type>
               <dc:rights>Llicència CC Reconeixement-NoComercial-SenseObraDerivada 4.0 Internacional (CC BY-NC-ND 4.0)</dc:rights>
               <dc:rights>https://creativecommons.org/licenses/by-nc-nd/4.0/deed.ca</dc:rights>
               <dc:rights>info:eu-repo/semantics/openAccess</dc:rights>
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