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A Multi-layer Feed Forward Neural Network Approach for Diagnosing Diabetes

机译:糖尿病的多层前馈神经网络方法

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Diabetes is one of the worlds major health problems according to the World Health Organization. Recent surveys indicate that there is an increase in the number of diabetic patients resulting in an increase in serious complications such as heart attacks and deaths. Early diagnosis of diabetes, particularly of type 2 diabetes, is critical since it is vital for patients to get insulin treatments. However, diagnoses could be difficult especially in areas with few medical doctors. It is, therefore, a need for practical methods for the public for early detection and prevention with minimal intervention from medical professionals. A promising method for automated diagnosis is the use of artificial intelligence and in particular artificial neural networks. This paper presents an application of Multi-Layer Feed Forward Neural Networks (MLFNN) in diagnosing diabetes on publicly available Pima Indian Diabetes (PID) data set. A series of experiments are conducted on this data set with variation in learning algorithms, activation units, techniques to handle missing data and their impact on diagnosis accuracy is discussed. Finally, the results are compared with other states of art methods reported in the literature review. The achieved accuracy is 82.5% best of all related studies.
机译:根据世界卫生组织,糖尿病是世界上主要的健康问题之一。最近的调查表明,糖尿病患者人数增加,导致严重的并发症(如心脏病发作和死亡)增加。糖尿病,特别是2型糖尿病的早期诊断至关重要,因为这对患者进行胰岛素治疗至关重要。但是,诊断可能会很困难,尤其是在医生很少的地区。因此,需要一种实用的方法,使公众能够在医疗专业人员的最少干预下,进行早期发现和预防。自动诊断的一种有前途的方法是使用人工智能,尤其是人工神经网络。本文介绍了多层前馈神经网络(MLFNN)在公开可用的Pima印度糖尿病(PID)数据集诊断糖尿病中的应用。对该数据集进行了一系列实验,其中学习算法,激活单元,处理丢失数据的技术都有变化,并讨论了它们对诊断准确性的影响。最后,将结果与文献综述中报告的其他现有技术方法进行比较。在所有相关研究中,达到的准确度最高为82.5%。

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