Title of article :
Diagnosis and Treatment Effect of Convolutional Neural Network-Based Magnetic Resonance Image Features on Severe Stroke and Mental State
Author/Authors :
Han, Lihong Department of Medical Education - The First Affiliated Hospital of Jiamusi University - Jiamusi - Heilongjiang, China , Liu, Li Department of Emergency - The First Affiliated Hospital of Jiamusi University - Jiamusi - Heilongjiang, China , Hao, Yankun Department of Medical Function - Mudanjiang Medical University - Mudanjiang - Heilongjiang, China , Zhang, Lan Department of Student Affairs - Mudanjiang Medical University - Mudanjiang - Heilongjiang, China
Abstract :
The purpose of this paper is to explore the impact of magnetic resonance imaging (MRI) image features based on convolutional
neural network (CNN) algorithm and conditional random field on the diagnosis and mental state of patients with severe stroke.
208 patients with severe stroke who all received MRI examination were recruited as the research objects. According to cerebral
small vascular disease (CSVD) score, the patients were divided into CSVD 0∼4 groups. The patients who completed the threemonth follow-up were classified into cognitive impairment group (124 cases) and the noncognitive impairment group (84 cases)
according to the cut-off point of the Montreal cognitive assessment (MOCA) scale score of 26. A novel image segmentation
algorithm was proposed based on U-shaped fully CNN (U-Net) and conditional random field, which was compared with the fully
CNN (FCN) algorithm and U-Net algorithm, and was applied to the MRI segmentation training of patients with severe stroke. It
was found that the average symmetric surface distance (ASSD) (3.13 ± 1.35), Hoffman distance (HD) (28.71 ± 9.05), Dice coefficient (0.78 ± 1.35), accuracy (0.74 ± 0.11), and sensitivity (0.85 ± 0.13) of the proposed algorithm were superior to those of FCN
algorithm and U-Net algorithm. .ere were significant differences in the MOCA scores among the five groups of patients from
CSVD 0 to CSVD 4 in the three time periods (0, 1, and 3 months) (P < 0.05). Differences in cerebral microhemorrhage (CMB),
perivascular space (PVS), and number of cavities, Fazekas, and total CSVD scores between the two groups were significant
(P < 0.05). Multivariate regression found that the number of PVS, white matter hyperintensity (WMH) Fazekas, and total CSVD
score were independent factors of cognitive impairment. In short, MRI images based on deep learning image segmentation
algorithm had good application value for clinical diagnosis and treatment of stroke and can effectively improve the detection effect
of brain domain characteristics and psychological state of patients after stroke.
Keywords :
CNN , MRI , psychological
Journal title :
Contrast Media and Molecular Imaging