Title :
Pilot study of applying shape analysis to liver cirrhosis diagnosis
Author :
Jie Luo ; Yen-Wei Chen ; Xian-Hua Han ; Tateyama, Tomoko ; Furukawa, A. ; Kanasaki, Shuzo
Author_Institution :
Grad. Sch. of Frontier Sci., Univ. of Tokyo, Tokyo, Japan
Abstract :
This paper explores the potential of applying shape analysis to classify normal/cirrhotic liver and in addition estimate the severity of abnormal cases. Conventional Computer-Aided Diagnosis (CAD) systems are developed for automatically providing a binary output as a second opinion to assist radiologists to draw conclusions about the condition of the pathology (normal or abnormal). After the disease is diagnosed, grasping the proceeding stage of the abnormal degree is essential for adopting the appropriate strength of treatment. However, none of existing CAD system is well established for such a challenging task. Liver cirrhosis has an important feature: morphological changes of the liver and the spleen occur during the clinical course of liver cirrhosis. In this study we constructed liver, spleen and their joint Statistical Shape Models (SSMs) to quantitatively assess the global shape variation and selected several modes from the SSMs. Then we learnt a mapping function between coefficients of selected modes and the ground truth staging label by Support Vector Regression (SVR). Using this mapping function, the proceeding stage of new input data can be estimated. Experimental results have validated the potential of our method on assisting the cirrhosis diagnosis.
Keywords :
diseases; liver; medical image processing; patient diagnosis; principal component analysis; regression analysis; shape recognition; support vector machines; CAD systems; SSM; SVR; binary output; cirrhosis diagnosis; cirrhotic liver; computer-aided diagnosis systems; disease; global shape variation; ground truth staging label; liver cirrhosis; mapping function; normal liver; pathology; radiologists; shape analysis; statistical shape models; support vector regression; Computer-Aided Diagnosis; Liver Cirrhosis; Multi-organ-based analysis; Statistical Shape Model; Support Vector Regression;
Conference_Titel :
Image Processing (ICIP), 2013 20th IEEE International Conference on
Conference_Location :
Melbourne, VIC
DOI :
10.1109/ICIP.2013.6738730