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<i>A supervised framework with intensity subtraction and deformation field features for the detection of new T2-w lesions in multiple sclerosis</i>

Research Authors
<b>Mostafa Salem</b>, Mariano Cabezas, Sergi Valverde, Deborah Pareto, Arnau Oliver, Joaquim Salvi, Àlex Rovira, Xavier Lladó
Research Department
Research Journal
NeuroImage: Clinical [Quality index: (JCR N IF 3.943, Q1(3/14)]
Research Rank
1
Research Publisher
Elsevier
Research Vol
vol. 17
Research Website
<a href= "https://doi.org/10.1016/j.nicl.2017.11.015"> <font color="blue"> DOI: 10.1016/j.nicl.2017.11.015</font></a>
Research Year
2017
Research_Pages
pp. 607-615
Research Abstract

Introduction
Longitudinal magnetic resonance imaging (MRI) analysis has an important role in multiple sclerosis diagnosis and follow-up. The presence of new T2-w lesions on brain MRI scans is considered a prognostic and predictive biomarker for the disease. In this study, we propose a supervised approach for detecting new T2-w lesions using features from image intensities, subtraction values, and deformation fields (DF).

Methods
One year apart multi-channel brain MRI scans were obtained for 60 patients, 36 of them with new T2-w lesions. Images from both temporal points were preprocessed and co-registered. Afterwards, they were registered using multi-resolution affine registration, allowing their subtraction. In particular, the DFs between both images were computed with the Demons non-rigid registration algorithm. Afterwards, a logistic regression model was trained with features from image intensities, subtraction values, and DF operators. We evaluated the performance of the model following a leave-one-out cross-validation scheme.

Results
In terms of detection, we obtained a mean Dice similarity coefficient of 0.77 with a true-positive rate of 74.30% and a false-positive detection rate of 11.86%. In terms of segmentation, we obtained a mean Dice similarity coefficient of 0.56. The performance of our model was significantly higher than state-of-the-art methods.

Conclusions
The performance of the proposed method shows the benefits of using DF operators as features to train a supervised learning model. Compared to other methods, the proposed model decreases the number of false-positives while increasing the number of true-positives, which is relevant for clinical settings.