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A neuro-fuzzy decision support model for therapy of heart failure

机译:用于心力衰竭的神经模糊决策支持模型

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Most medical decision support systems focus on diagnosis with little emphasis on therapy to the effect that though an accurate diagnosis is undertaken patients still have problems of drug misuse as a result of inaccurate therapy. The purpose of this paper is to design an assistive model for therapy of heart failure using artificial neural networks (ANN). Artificial neural networks have been found to be a very veritable tool in learning from existing datasets and based on the results, can perform accurate prediction on the data it has not encountered before through generalisation. It was based on this that 134 datasets on heart failure were collected from three hospitals and trained in a feed forward back propagation learning neural networks. This was further refined through the fuzzy system and some decision support filters. Results obtained from the neuro-fuzzy system indicate that the model has the ability to refine and enhance the physician's ability to prescribe an appropriate therapy based on the diagnosis. This study is one of the few attempts at utilising soft computing technology in the diagnosis and therapy of cardiovascular diseases. The authors had previously developed neuro-fuzzy models for diagnosis of heart failure.
机译:大多数医学决策支持系统专注于诊断,很少强调治疗,以至于尽管进行了准确的诊断,但由于治疗不准确,患者仍然存在药物滥用的问题。本文的目的是设计一种使用人工神经网络(ANN)治疗心力衰竭的辅助模型。已经发现,人工神经网络是从现有数据集中学习的一种非常可靠的工具,并且基于结果,可以通过归纳对之前未遇到的数据进行准确的预测。基于此,从三家医院收集了134个心力衰竭数据集,并在前馈传播学习神经网络中进行了培训。通过模糊系统和一些决策支持过滤器进一步完善了这一点。从神经模糊系统获得的结果表明,该模型具有完善和增强医师根据诊断开出适当疗法的能力。这项研究是利用软计算技术诊断和治疗心血管疾病的少数尝试之一。作者先前已经开发了用于诊断心力衰竭的神经模糊模型。

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