Title of article :
Intelligent Segmentation Algorithm for Diagnosis of Meniere’s Disease in the Inner Auditory Canal UsingMRI Images with ThreeDimensional Level Set
Author/Authors :
Liu, Ting Department of Otolaryngology - Qingdao Hospital of Traditional Chinese Medicine (Qingdao Hiser Hospital) - Qingdao - Shandong, China , Xu, Ying Department of Otolaryngology - Qingdao Hospital of Traditional Chinese Medicine (Qingdao Hiser Hospital) - Qingdao - Shandong, China , An, Yujuan Department of Intravenous Infusion Center - Qingdao Hospital of Traditional Chinese Medicine (Qingdao Hiser Hospital) - Qingdao - Shandong, China , Ge, Hongzhou Department of Otolaryngology - Qingdao Hospital of Traditional Chinese Medicine (Qingdao Hiser Hospital) - Qingdao - Shandong, China
Abstract :
This paper aimed to explore segmentation effects of the magnetic resonance imaging (MRI) images of the inner auditory
canal of patients with Meniere’s disease under the intelligent segmentation method of the inner ear based on threedimensional (3D) level set (IS3DLS). The statistical shape model and the level set segmentation algorithm were combined to
propose the IS3DLS. First, the shape training samples of the inner ear model were determined, and the results were
manually segmented to further obtain region of interest (ROI) of the inner ear. The IS3DLS was employed to accurately
segment MRI images of the inner auditory canal of patients with Meniere’s disease. The segmentation performance of
IS3DLS was compared with the expert manual segmentation method and the region growth level set-based segmentation
algorithm. Results showed that Matthews correlation coefficient (MCC), Dice similarity coefficient (DSC), false positive
rate (FPR), and false negative rate (FNR) of this algorithm were 0.9599, 0.9594, 0.0325, and 0.03655, respectively. Therefore,
the IS3DLS could achieve good segmentation effect in MRI images of the inner auditory canal of patients with Meniere’s
disease, which was helpful for diagnosis and subsequent treatment of Meniere’s disease.
Keywords :
MRI , Dimensional , Segmentation
Journal title :
Contrast Media and Molecular Imaging