逻辑回归
人工智能
肾病
人工神经网络
机器学习
支持向量机
计算机科学
回归
分类器(UML)
回归分析
医学
统计
数学
内分泌学
糖尿病
作者
Junhyug Noh,Dharani Punithan,Hajeong Lee,Jungpyo Lee,Yon-Su Kim,Dong Ki Kim,Bob McKay
标识
DOI:10.1142/s0218194015400227
摘要
We predict the progression of Immunoglobulin A Nephropathy using three classification methods: Classification and Regression Trees, Logistic Regression, and Feed-Forward Artificial Neural Networks. We treat it as a classification problem, of predicting progression to end-stage renal disease in the ten years following initial diagnosis. We compared classifier performance using ROC analysis. All three methods yielded good classifiers, with AUC between 0.85 and 0.95. The results were generally in-line with expectations, with poor kidney performance on presentation, and evident macroscopic and microscopic damage, all associated with poorer prognosis.
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