Paring Neural Networks and Linear Discriminant Functions for Glaucoma

assessment of atypical birefringence images using scanning laser polarime-try with variable corneal compensation. New algorithms for multi-class cancer diagnosis using tumor gene expression signatures. The protein data bank: a computer-based archival file for macromolecular structures. Substructure-based support vector machine classifiers for prediction of adverse effects in diverse classes of drugs.

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