SCIsegV2: A Universal Tool for Segmentation of Intramedullary Lesions in Spinal Cord Injury
Karthik, Enamundram Naga, Valošek, Jan, Farner, Lynn, Pfyffer, Dario, Schading-Sassenhausen, Simon, Lebret, Anna, David, Gergely, Smith, Andrew C., Weber, Kenneth A. II, Seif, Maryam, Group, RHSCIR Network Imaging, Freund, Patrick, Cohen-Adad, Julien
–arXiv.org Artificial Intelligence
Spinal cord injury (SCI) is a devastating incidence leading to permanent paralysis and loss of sensory-motor functions potentially resulting in the formation of lesions within the spinal cord. Imaging biomarkers obtained from magnetic resonance imaging (MRI) scans can predict the functional recovery of individuals with SCI and help choose the optimal treatment strategy. Currently, most studies employ manual quantification of these MRI-derived biomarkers, which is a subjective and tedious task. In this work, we propose (i) a universal tool for the automatic segmentation of intramedullary SCI lesions, dubbed SCIsegV2, and (ii) a method to automatically compute the width of the tissue bridges from the segmented lesion. Tissue bridges represent the spared spinal tissue adjacent to the lesion, which is associated with functional recovery in SCI patients. The tool was trained and validated on a heterogeneous dataset from 7 sites comprising patients from different SCI phases (acute, sub-acute, and chronic) and etiologies (traumatic SCI, ischemic SCI, and degenerative cervical myelopathy). Tissue bridges quantified automatically did not significantly differ from those computed manually, suggesting that the proposed automatic tool can be used to derive relevant MRI biomarkers. SCIsegV2 and the automatic tissue bridges computation are open-source and available in Spinal Cord Toolbox (v6.4 and above) via the sct_deepseg -task seg_sc_lesion_t2w_sci and sct_analyze_lesion functions, respectively. Keywords: Spinal Cord Injury Segmentation MRI Deep Learning Tissue Bridges these authors contributed equally to this work joint senior authors arXiv:2407.17265v1
arXiv.org Artificial Intelligence
Jul-24-2024
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