预测长期心脏骤停风险的神经网络模型

M. N. Nachappa, D. Yadav, Surjeet Yadav
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引用次数: 0

摘要

它研究了对长时间心脏骤停危险预测的革命性神经网络建模。我们生成了一个全面的心脏骤停患者数据集,并使用双向长短期记忆(Bi-LSTM)版本来评估风险。结果表明,Bi-LSTM 在准确性和灵敏度方面优于传统的机器研究技术,如逻辑回归和提升树。我们还使用了可视化方法来解释版本预测,结果表明我们的模型能够恰当地挑选出与心脏骤停危险相关的患者特征。我们的结论是,我们的模型可以为心脏骤停患者提供实用的长期几率估计,并可用于人工科学干预和临床预防心脏骤停。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural Network Modeling of Long-Term Cardiac Arrest Risk Forecasting
It has a look at examines revolutionary neural network modeling of lengthy-time period cardiac arrest hazard forecasting. We generated a comprehensive dataset of cardiac arrest sufferers and used a bidirectional lengthy brief-term memory (Bi-LSTM) version to evaluate the risk. Our effects tested that the Bi-LSTM version outperformed conventional machine-studying techniques such as logistic regression and boosted trees in phrases of accuracy and sensitivity. We also used a visualization approach to interpret version predictions, which indicated that our model became capable of appropriately picking out affected person traits associated with cardiac arrest hazards. We concluded that our model could provide practical long-time period chance estimation for cardiac arrest sufferers and may be used for manual scientific interventions and prevent cardiac arrests in clinical contexts.
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