Title :
31P-MRS data analysis of liver based on self-organizing map neural networks
Author :
Qiang Liu ; Ma, Van-hong ; Wang, Ning ; Liu, Yi-hui ; Wang, Shao-qing ; Wang, Li-juan ; Cheng, Jin-yong ; Chen, Jie ; Yu, Dong-yue
Author_Institution :
MRI Dept., Shandong Med. Imaging Res. Inst., Jinan, China
Abstract :
Objective: Discussion based on neural networks in the 31P MR spectroscopy to distinguish hepatocellular carcinoma, normal liver and cirrhosis in value. Methods: Using self-organizing map neural network (SOM) analyse 66 data of 31P MRS, including hepatocellular carcinoma (13 samples), normal liver (16 samples) and liver cirrhosis (37 samples). Results: 31P MRS can be used for the diagnosis and differential diagnosis between hepatocellular carcinoma and liver cirrhosis nodules. The four experiments show that neural network model based on the 31P MR spectroscopy data analysis may increase diagnostic accuracy rate of hepatocellular carcinoma from 85.4% to 92.31%. Conclusion: 31P MRS data analysis based on neural network model provides a valuable diagnostic means of of hepatocellular carcinoma in vivo.
Keywords :
data analysis; medical administrative data processing; patient diagnosis; self-organising feature maps; 31P-MRS data analysis; MR spectroscopy data analysis; hepatocellular carcinoma; liver cirrhosis nodules; self-organizing map neural networks; Biological neural networks; Biomedical imaging; Biopsy; Data analysis; In vivo; Liver; Magnetic resonance imaging; Medical diagnostic imaging; Neural networks; Spectroscopy; 31-Phosphorus; hepatocellular carcinoma; magnetic resonance spectroscopy; neural network;
Conference_Titel :
Computational Intelligence and Industrial Applications, 2009. PACIIA 2009. Asia-Pacific Conference on
Conference_Location :
Wuhan
Print_ISBN :
978-1-4244-4606-3
DOI :
10.1109/PACIIA.2009.5406618