Prostate Tissue Characterization/Classification in 144 Patient Population Using Wavelet and Higher Order Spectra Features from Transrectal Ultrasound Images
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Ayman El-Baz | Roshan Joy Martis | Jasjit S. Suri | Ganapathy Krishnamurthi | Luca Saba | Gyan Pareek | G. Swapna | U. Rajendra Acharya | J. Suri | U. Acharya | L. Saba | A. El-Baz | M. Beland | Ganapathy Krishnamurthi | R. J. Martis | G. Swapna | S. Sree | G. Mallarini | Giorgio Mallarini | G. Pareek | R. Yantri | S. Vinitha Sree | Ratna Yantri | Shadi Al Ekish | Michael Beland | S. Ekish | R. Martis | Rajendra Acharya | D. Eng | M. Eng
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