智能分析改善肺癌临床路径

Yan Kang, Wenbo Xu, Yan Zhu, Fang Xie, Shuangshuang Dai, Weihui Dai
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引用次数: 0

摘要

为了针对不同的肺癌患者制定最佳的治疗方案,必须准确评估和分析疾病发展的预后及其影响因素。在传统的临床路径中,我们只能考虑这些因素的线性分类或将其划分为不同的阶段。本文提出了一种基于Cox回归模型和BP-GA神经网络相结合的有效的机器学习方法来预测患者的预期生存率,从而为每个不同的患者找到最佳的治疗方案。通过以上智能分析,提出了改善目前肺癌临床路径的治疗决策流程,并设计成基于Hadoop系统和Spring云框架的决策支持系统,用于医生工作台系统或医院移动终端的分布式应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Analysis for Improving The Clinical Pathway of Lung Cancer
In order to make a best treatment plan for different patients of lung cancers, the prognosis of disease's development and its influence factors should be evaluated and analyzed accurately. In the traditional clinical pathway, we can only consider the linear classification of those factors or divide them into different stages. This paper proposed an effective machine learning method based on the combination of Cox regressive model and BP-GA neural network to predict the patient's expectation of survival rate, and so as to find the best treatment regime for each different patient. After the above intelligent analysis, the treatment decision procedures were presented for improving the current clinical pathway of lung cancer, and had been designed into the decision support system based on Hadoop system and Spring cloud framework for distributed applications of doctor's workbench system or mobile terminals from hospitals.
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