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A fast and adaptive automated disease diagnosis method with an innovative neural network model

机译:具有创新神经网络模型的快速自适应疾病自动诊断方法

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Automatic disease diagnosis systems have been used for many years. While these systems are constructed, the data used needs to be classified appropriately. For this purpose, a variety of methods have been proposed in the literature so far. As distinct from the ones in the literature, in this study, a general-purpose, fast and adaptive disease diagnosis system is developed. This newly proposed method is based on Learning Vector Quantization (LVQ) artificial neural networks which are powerful classification algorithms. In this study, the classification ability of LVQ. networks is developed by embedding a reinforcement mechanism into the LVQ network in order to increase the success rate of the disease diagnosis method and reduce the decision time. The parameters of the reinforcement learning mechanism are updated in an adaptive way in the network. Thus, the loss of time due to incorrect selection of the parameters and decrement in the success rate are avoided. After the development process mentioned, the newly proposed classification technique is named "Adaptive LVQ with Reinforcement Mechanism (ALVQ-RM)". The method proposed handles data with missing values. To prove that this method did not offer a special solution for a particular disease, because of its adaptive structure, it is used both for diagnosis of breast cancer, and for diagnosis of thyroid disorders, and a correct diagnosis rate after replacing missing values using median method over 99.5% is acquired in average for both diseases. In addition, the success rate of determination of the parameters of the proposed "LVQ with Reinforcement Mechanism (LVQ-RM)" classifier, and how this determination affected the required number of iterations for acquiring that success rate are discussed with comparison to the other studies.
机译:自动疾病诊断系统已经使用了很多年。在构建这些系统时,需要对使用的数据进行适当分类。为此目的,迄今为止在文献中已经提出了多种方法。与文献中的不同,本研究开发了一种通用,快速且自适应的疾病诊断系统。此新提出的方法基于学习向量量化(LVQ)人工神经网络,该网络是强大的分类算法。在这项研究中,LVQ的分类能力。通过将增强机制嵌入LVQ网络来开发网络,以提高疾病诊断方法的成功率并减少决策时间。增强学习机制的参数以自适应方式在网络中更新。因此,避免了由于参数选择错误和成功率降低而造成的时间损失。在提到了开发过程之后,新提出的分类技术被称为“带有增强机制的自适应LVQ(ALVQ-RM)”。所提出的方法处理具有缺失值的数据。为了证明该方法由于其适应性结构而不能为特定疾病提供特殊的解决方案,因此可用于乳腺癌的诊断和甲状腺疾病的诊断,并使用中位数替换缺失值后的正确诊断率两种疾病的平均获得率超过99.5%。此外,与其他研究相比,讨论了确定建议的“带强化机制的LVQ(LVQ-RM)”分类器的参数的成功率,以及该确定如何影响获得该成功率的所需迭代次数。 。

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