Title of article :
The Value of Convolutional Neural Network-Based Magnetic Resonance Imaging Image Segmentation Algorithm to Guide Targeted Controlled Release of Doxorubicin Nanopreparation
Author/Authors :
Liu, Hujun Department of Pharmaceuticals - Affiliated Hospital of Yan’an University - Yan’an - Shaanxi, China , Gao, Hui Department of Pharmaceuticals - Affiliated Hospital of Yan’an University - Yan’an - Shaanxi, China , Jia, Fei Department of Pharmaceuticals - Affiliated Hospital of Yan’an University - Yan’an - Shaanxi, China
Abstract :
There was an investigation of the auxiliary role of convolutional neural network- (CNN-) based magnetic resonance imaging
(MRI) image segmentation algorithm in MRI image-guided targeted drug therapy of doxorubicin nanomaterials so that the value
of drug-controlled release in liver cancer patients was evaluated. In this study, 80 patients with liver cancer were selected as the
research objects. It was hoped that the CNN-based MRI image segmentation algorithm could be applied to the guided analysis of
MRI images of the targeted controlled release of doxorubicin nanopreparation to analyze the imaging analysis effect of this
algorithm on the targeted treatment of liver cancer with doxorubicin nanopreparation. The results of this study showed that the
upgraded three-dimensional (3D) CNN-based MRI image segmentation had a better effect compared with the traditional CNNbased MRI image segmentation, with significant improvement in indicators such as accuracy, precision, sensitivity, and specificity,
and the differences were all statistically marked (p < 0.05). In the monitoring of the targeted drug therapy of doxorubicin
nanopreparation for liver cancer patients, it was found that the MRI images of liver cancer patients processed by 3D CNN-based
MRI image segmentation neural algorithm could be observed more intuitively and guided to accurately reach the target of liver
cancer. The accuracy of targeted release determination of nanopreparation reached 80 ± 6.25%, which was higher markedly than
that of the control group (66.6 ± 5.32%) (p < 0.05). In a word, the MRI image segmentation algorithm based on CNN had good
application potential in guiding patients with liver cancer for targeted therapy with doxorubicin nanopreparation, which was
worth promoting in the adjuvant treatment of targeted drugs for cancer.
Keywords :
Doxorubicin , Nanopreparation , CNN , MRI
Journal title :
Contrast Media and Molecular Imaging