Prediction of periventricular leukomalacia. Part II: Selection of hemodynamic features using computational intelligence
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Daniel J. Licht | Chandrasekhar Nataraj | Gail P. Jarvik | Biswanath Samanta | Geoffrey L. Bird | Marijn Kuijpers | Robert A. Zimmerman | Gil Wernovsky | Robert R. Clancy | J. William Gaynor | R. Zimmerman | G. Jarvik | D. Licht | J. Gaynor | R. Clancy | G. Wernovsky | C. Nataraj | B. Samanta | Marijn Kuijpers
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