首页> 外文期刊>Journal of ambient intelligence and humanized computing >Analysis of inter-concept dependencies in disease diagnostic cognitive maps using recurrent neural network and genetic algorithms in time series clinical data for targeted treatment
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Analysis of inter-concept dependencies in disease diagnostic cognitive maps using recurrent neural network and genetic algorithms in time series clinical data for targeted treatment

机译:在时间序列临床数据中使用递归神经网络和遗传算法分析疾病诊断认知图中的概念间依赖性

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摘要

The knowledge of dependency of a particular factor on another is a very important aspect in the healthcare field. If we have a rough idea about the effect a prescribed drug has on the cure of a disease or sufficient information about certain symptoms of a disease being linked to each other, we can make an informed decision about its treatment over a period of time. This paper proposes a method which makes use of a special kind of recurrent neural network (RNN) known as long short term memory network (LSTM) to make predictions for time series data. Genetic algorithms are also incorporated to identify the most important concepts affecting a patient over that period of time. The output of the LSTM network is in the form of binary strings and is utilized to generate a fuzzy cognitive map (FCM) for the same and a novel method is proposed to find the values of the interdependencies between various concepts, an approach which can be applied in clinical decision support systems. This method makes use of the weight matrices obtained after training the neural network. It is shown to be an improvement over the previous work done in this domain. The proposed method was tested with various clinical datasets and results were obtained for the same.
机译:在医疗保健领域中,特定因素对另一个因素的依赖是非常重要的方面。如果我们对处方药对疾病的治疗有粗略的了解,或者对某种疾病的某些症状有足够的相互联系的足够信息,我们可以在一段时间内做出明智的治疗决定。本文提出一种利用称为长期短期记忆网络(LSTM)的特殊类型的递归神经网络(RNN)来预测时间序列数据的方法。还集成了遗传算法,以识别在这段时间内影响患者的最重要概念。 LSTM网络的输出采用二进制字符串的形式,并用于为其生成模糊认知图(FCM),并提出了一种新颖的方法来查找各个概念之间的相互依赖关系的值,这种方法可以应用于临床决策支持系统。该方法利用了训练神经网络后获得的权重矩阵。与以前在此领域所做的工作相比,它显示出了改进。用各种临床数据集对提出的方法进行了测试,并获得了相同的结果。

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