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Risk stratification in heart failure using artificial neural networks.

机译:使用人工神经网络进行心力衰竭的风险分层。

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摘要

Accurate risk stratification of heart failure patients is critical to improve management and outcomes. Heart failure is a complex multisystem disease in which several predictors are categorical. Neural network models have successfully been applied to several medical classification problems. Using a simple neural network, we assessed one-year prognosis in 132 patients, consecutively admitted with heart failure, by classifying them in 3 groups: death, readmission and one-year event-free survival. Given the small number of cases, the neural network model was trained using a resampling method. We identified relevant predictors using the Automatic Relevance Determination (ARD) method, and estimated their mean effect on the 3 different outcomes. Only 9 individuals were misclassified. Neural networks have the potential to be a useful tool for making prognosis in the domain of heart failure.
机译:心力衰竭患者的准确风险分层对于改善管理和结果至关重要。心力衰竭是一种复杂的多系统疾病,其中一些预测因子是分类的。神经网络模型已成功应用于几个医学分类问题。通过使用简单的神经网络,我们将132例连续入院的心衰患者的一年预后评估为三类:死亡,再入院和一年无事件生存。在少数情况下,使用重采样方法来训练神经网络模型。我们使用自动相关性确定(ARD)方法确定了相关的预测变量,并估计了它们对3种不同结果的平均影响。只有9个人被错误分类。神经网络有可能成为心力衰竭预后的有用工具。

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