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Integration of MRI and somatosensory evoked potentials facilitate diagnosis of spinal cord compression.


ABSTRACT: This study aimed to integrate magnetic resonance imaging (MRI) and related somatosensory evoked potential (SSEP) features to assist in the diagnosis of spinal cord compression (SCC). MRI scans were graded from 0 to 3 according to the changes in the subarachnoid space and scan signals to confirm differences in SCC levels. The amplitude, latency, and time-frequency analysis (TFA) power of preoperative SSEP features were extracted and the changes were used as standard judgments to detect neurological function changes. Then the patient distribution was quantified according to the SSEP feature changes under the same and different MRI compression grades. Significant differences were found in the amplitude and TFA power between MRI grades. We estimated three degrees of amplitude anomalies and power loss under each MRI grade and found the presence or absence of power loss occurs after abnormal changes in amplitude only. For SCC, few integrated approach combines the advantages of both MRI and evoked potentials. However, integrating the amplitude and TFA power changes of SSEP features with MRI grading can help in the diagnosis and speculate progression of SCC.

SUBMITTER: Sun SP 

PROVIDER: S-EPMC10185544 | biostudies-literature | 2023 May

REPOSITORIES: biostudies-literature

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Integration of MRI and somatosensory evoked potentials facilitate diagnosis of spinal cord compression.

Sun Shu-Pin SP   Phang Chun-Ren CR   Tzou Shey-Cherng SC   Chen Chang-Mu CM   Ko Li-Wei LW  

Scientific reports 20230515 1


This study aimed to integrate magnetic resonance imaging (MRI) and related somatosensory evoked potential (SSEP) features to assist in the diagnosis of spinal cord compression (SCC). MRI scans were graded from 0 to 3 according to the changes in the subarachnoid space and scan signals to confirm differences in SCC levels. The amplitude, latency, and time-frequency analysis (TFA) power of preoperative SSEP features were extracted and the changes were used as standard judgments to detect neurologic  ...[more]

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