Title of article :
MRI Image Segmentation Model with Support Vector Machine Algorithm in Diagnosis of Solitary Pulmonary Nodule
Author/Authors :
Feng, Bo Department of Radiology - Hangzhou Ninth People’s Hospital - Yilong Road - Yipeng Street - Qiantang District - Hangzhou - Zhejiang Province, China , Zhang, Meihua Department of Radiology - Hangzhou Ninth People’s Hospital - Yilong Road - Yipeng Street - Qiantang District - Hangzhou - Zhejiang Province, China , Zhu, Hanlin Department of Radiology - Hangzhou Ninth People’s Hospital - Yilong Road - Yipeng Street - Qiantang District - Hangzhou - Zhejiang Province, China , Wang, Lingang Department of Radiology - Hangzhou Ninth People’s Hospital - Yilong Road - Yipeng Street - Qiantang District - Hangzhou - Zhejiang Province, China , Zheng, Yanli Department of Radiology - Hangzhou Ninth People’s Hospital - Yilong Road - Yipeng Street - Qiantang District - Hangzhou - Zhejiang Province, China
Abstract :
This study focused on the application value of MRI images processed by a Support Vector Machine (SVM) algorithm-based model
in diagnosis of benign and malignant solitary pulmonary nodule (SPN). The SVM algorithm was constrained by a self-paced
regularization item and gradient value to establish the MRI image segmentation model (SVM-L) for lung. Its performance was
compared factoring into the Dice index (DI), sensitivity (SE), specificity (SP), and Mean Square Error (MSE). 28 SPN patients who
underwent the parallel MRI examination were selected as research subjects and were divided into the benign group (11 patients)
and malignant group (17 patients) according to different plans for diagnosis and treatment. The apparent diffusion coefficient
(ADC) at different b values was analyzed, and the steepest slope (SS) and washout ratio (WR) values in the two groups were
calculated. The result showed that the MSE, DI, SE, SP values, and operation time of the SVM-L model were (0.41 ± 0.02),
(0.84 ± 0.13), (0.89 ± 0.04), (0.993 ± 0.004), and (30.69 ± 2.60)s, respectively, apparently superior to those of the other algorithms,
but there were no statistic differences (P > 0.05) in the WR value between the two groups of patients. The SS values of the timesignal curve in the benign and malignant groups were (2.52 ± 0.69) %/s and (3.34 ± 00.41) %/s, respectively. Obviously, the SS value
of the benign group was significantly lower than that of the malignant group (P < 0.01). The ADC value with different b values in
the benign group was significantly lower than that of the malignant group (P < 0.01). It suggested that the SVM-L model
significantly improved the quality of lung MRI images and increased the accuracy to differentiate benign and malignant SPN,
providing reference for the diagnosis and treatment of SPN patients.
Keywords :
MRI , Pulmonary , Algorithm , PET-CT
Journal title :
Contrast Media and Molecular Imaging