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Intelligence System Based Classification Approach for Medical Disease Diagnosis

机译:基于智能系统的医学疾病诊断分类方法

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The prediction of breast cancer in women who have no signs or symptoms of the disease as well as survivability after undergone certain surgery has been a challenging problem for medical researchers. The decision about presence or absence of diseases depends on the physician's intuition, experience and skill for comparing current indicators with previous one than on knowledge rich data hidden in a database. This measure is a very crucial and challenging task. The goal is to predict patient condition by using an adaptive neuro fuzzy inference system (ANFIS) pre-processed by grid partitioning. To achieve an accurate diagnosis at this complex stage of symptom analysis, the physician may need efficient diagnosis system. A framework describes methodology for designing and evaluation of classification performances of two discrete ANFIS systems of hybrid learning algorithms least square estimates with Modified Levenberg-Marquardt and Gradient descent algorithms that can be used by physicians to accelerate diagnosis process. The proposed method's performance was evaluated based on training and test datasets with mammographic mass and Haberman's survival Datasets obtained from benchmarked datasets of University of California at Irvine's (UCI) machine learning repository. The robustness of the performance measuring total accuracy, sensitivity and specificity is examined. In comparison, the proposed method achieves superior performance when compared to conventional ANFIS based gradient descent algorithm and some related existing methods. The software used for the implementation is MATLAB R2014a (version 8.3) and executed in PC Intel Pentium IV E7400 processor with 2.80 GHz speed and 2.0 GB of RAM.
机译:在经过某些手术后没有疾病的迹象或症状的患者和生存性的乳腺癌的预测是医学研究人员的挑战性问题。关于存在或缺乏疾病的决定取决于医生的直觉,经验和技巧,将当前指标与上一个人与隐藏在数据库中隐藏的知识丰富的数据相比。这项措施是一项非常重要和挑战性的任务。目标是通过使用网格分区预处理的自适应神经模糊推理系统(ANFIS)来预测患者状况。为了在这种复杂的症状分析阶段进行准确的诊断,医生可能需要高效的诊断系统。框架描述了用于使用医生使用的改进的Levenberg-Marquardt和梯度下降算法的两个离散ANFIS系统的分类性能的设计和评估方法的设计和评估方法。提出的方法的性能是根据训练和测试数据集评估了乳房XMPORACT MASOMET和Haberman的生存数据集,从加州大学的Irvine(UCI)机器学习存储库中获得的基准数据集。检查了衡量总精度,灵敏度和特异性的性能的稳健性。相比之下,与传统的基于ANFIS的梯度下降算法和一些相关的现有方法相比,所提出的方法达到卓越的性能。用于实现的软件是Matlab R2014A(版本8.3),并在PC Intel Pentium IV E7400处理器中执行,具有2.80 GHz速度和2.0 GB的RAM。

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