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  An inductive learning approach to prognostic prediction (1995) [8 citations — 4 self]

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by W. Nick Street, O. L. Mangasarian, W. H. Wolberg
in Machine Learning: Proceedings of the Twelfth International Conference
http://www.biz.uiowa.edu/faculty/nstreet/mlc95.ps
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Abstract:

This paper introduces the Recurrence Surface Approximation, an inductive learning method based on linear programming that predicts recurrence times using censored training examples, that is, examples in which the available training output may be only a lower bound on the "right answer. " This approach is augmented with a feature selection method that chooses an appropriate feature set within the context of the linear programming generalizer. Computational results in the field of breast cancer prognosis are shown. A straightforward translation of the prediction method to an artificial neural network model is also proposed. 1

Citations

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16 Statistical Methods for Survival Data Analysis – Lee - 1992
12 Nuclear feature extraction for breast tumor diagnosis – Street, Wolberg, et al. - 1905
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8 A technique for using neural network analysis to perform survival analysis of censored data – Laurentiis, Ravdin - 1994
8 A practical application of neural network analysis for predicting outcome of individual breast cancer patients. Breast Cancer Res – Ravdin, Clark - 1992
7 Breast cytology diagnosis via digital image analysis. Analytical and Quantitative Cytology and Histology – Wolberg, Street, et al. - 1993
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4 Breast cancer diagnosis and prognostic determination from cell analysis – Wolberg, Bennett, et al. - 1992
4 Computer-derived nuclear grade and breast cancer prognosis. Analytical and Quantitative Cytology and Histology – Wolberg, Street, et al. - 1995
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2 Risk of lymphoedema following the treatment of breast cancer – Kissin, Rovere, et al. - 1986