Automated detection and classification of liver fibrosis stages using contourlet transform and nonlinear features
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U. Raghavendra | U. Rajendra Acharya | Filippo Molinari | Kristen M. Meiburger | Chai Hong Yeong | Joel E. W. Koh | Yuki Hagiwara | Edward J. Ciaccio | Wai Ling Leong | Anushya Vijayananthan | Nur Adura Yaakup | Mohd Kamil Bin Mohd Fabell | N. A. Yaakup | F. Molinari | U. Acharya | Yuki Hagiwara | U. Raghavendra | E. Ciaccio | C. Yeong | K. Meiburger | A. Vijayananthan
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