Title of article :
Broad Learning Enhanced 1 H-MRS for Early Diagnosis of Neuropsychiatric Systemic Lupus Erythematosus
Author/Authors :
Li, Yan Department of Medical Imaging - The 2nd Affiliated Hospital - Shantou University Medical College - Shantou, China , Ge, Zuhao Department of Computer Science - Shantou University - Shantou, China , Zhang, Zhiyan Department of Medical Imaging - Huizhou Central Hospital - Huizhou, China , Shen, Zhiwei Department of Medical Imaging - The 2nd Affiliated Hospital - Shantou University Medical College - Shantou, China , Wang, Yukai Department of Rheumatology and Immunology - Shantou Central Hospital - Shantou, China , Zhou, Teng Department of Computer Science - Shantou University - Shantou, China , Wu, Renhua Department of Medical Imaging - The 2nd Affiliated Hospital - Shantou University Medical College - Shantou, China
Pages :
12
From page :
1
To page :
12
Abstract :
In this paper, we explore the potential of using the multivoxel proton magnetic resonance spectroscopy (1 H-MRS) to diagnose neuropsychiatric systemic lupus erythematosus (NPSLE) with the assistance of a support vector machine broad learning system (BL-SVM). We retrospectively analysed 23 confirmed patients and 16 healthy controls, who underwent a 3.0 T magnetic resonance imaging (MRI) sequence with multivoxel 1 H-MRS in our hospitals. One hundred and seventeen metabolic features were extracted from the multivoxel 1 H-MRS image. Thirty-three metabolic features selected by the Mann-Whitney U test were considered to have a statistically significant difference (p < 0:05). However, the best accuracy achieved by conventional statistical methods using these 33 metabolic features was only 77%. We turned to develop a support vector machine broad learning system (BL-SVM) to quantitatively analyse the metabolic features from 1 H-MRS. Although not all the individual features manifested statistics significantly, the BL-SVM could still learn to distinguish the NPSLE from the healthy controls. The area under the receiver operating characteristic curve (AUC), the sensitivity, and the specificity of our BL-SVM in predicting NPSLE were 95%, 95.8%, and 93%, respectively, by 3-fold cross-validation. We consequently conclude that the proposed system effectively and efficiently working on limited and noisy samples may brighten a noinvasive in vivo instrument for early diagnosis of NPSLE.
Keywords :
1 H-MRS , Broad , NPSLE , Systemic , Neuropsychiatric , Erythematosus
Journal title :
Computational and Mathematical Methods in Medicine
Serial Year :
2020
Full Text URL :
Record number :
2612098
Link To Document :
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