Computer extracted texture features on T2w MRI to predict biochemical recurrence following radiation therapy for prostate cancer
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Anant Madabhushi | John Kurhanewicz | Mirabela Rusu | Shoshana Ginsburg | J. Kurhanewicz | A. Madabhushi | M. Rusu | S. Ginsburg
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