基于神经网络和决策树的情境关怀协议

Yash Sinha, Pranshu Malviya, Minerva Panda, Syed Mohd Ali
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引用次数: 0

摘要

根据指定患者所处的上下文或情况,医生使用上下文护理协议进行患者保健。本文提出了一种构建自动自适应协议的方法,该协议可以帮助为有效的医疗保健服务做出相关的早期决策。混合模型利用神经网络和决策树。神经网络估计每种疾病的几率,决策树中的每棵树代表一种疾病的护理方案。如果诊断人员发现异常,这些树可能会发生变化。这些修正或预测错误被聚集到类似的组中,以供专家进行可伸缩性和审查。专家建议的修正被纳入模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Contextual Care Protocol using Neural Networks and Decision Trees
A contextual care protocol is used by a medical practitioner for patient healthcare, given the context or situation that the specified patient is in. This paper proposes a method to build an automated self-adapting protocol which can help make relevant, early decisions for effective healthcare delivery. The hybrid model leverages neural networks and decision trees. The neural network estimates the chances of each disease and each tree in the decision trees represents care protocol for a disease. These trees are subject to change in case of aberrations found by the diagnosticians. These corrections or prediction errors are clustered into similar groups for scalability and review by the experts. The corrections as suggested by the experts are incorporated into the model.
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