Department of Computer Science & Engineering, Mody University of Science and Technology, Sikar, India.
JECRC Foundation, Jaipur, India.
Int J Numer Method Biomed Eng. 2021 Aug;37(8):e3496. doi: 10.1002/cnm.3496. Epub 2021 May 31.
Diabetes is a faction of metabolic ailments distinguished by hyperglycemia which is the consequence of a defect, in the action of insulin, insulin secretion, or both and producing various abnormalities in the human body. In recent years, the utilization of intelligent systems has been expanded in disease classification and numerous researches have been proposed. In this research article, a variant of Convolutional Neural Network (CNN) that is, Functional Link Convolutional Neural Network (FLCNN) is proposed for the diabetes classification. The main goal of this article is to find the potential of a computationally less complex deep learning network like FLCNN and applied the proposed technique on a real dataset of diabetes for classification. This article also presents the comparative studies where various other machine learning techniques are implemented and outcomes are compared with the proposed FLCNN network. The performance of each classification techniques have been evaluated based on standard measures and also validated with a non-parametric statistical test such as Friedman. Data for modeling diabetes classification is collected from Bombay Medical Hall, Upper Bazar, Ranchi, India. Accuracy achieve by the proposed classifier is more than 90% which is closer to the other state-of-the-art implemented classifiers.
糖尿病是一种代谢疾病,其特征是高血糖,这是由于胰岛素作用、胰岛素分泌或两者的缺陷引起的,并导致人体出现各种异常。近年来,智能系统在疾病分类中的应用得到了扩展,提出了许多研究。在本研究文章中,提出了一种卷积神经网络(CNN)的变体,即功能链接卷积神经网络(FLCNN),用于糖尿病分类。本文的主要目的是发现像 FLCNN 这样计算复杂度较低的深度学习网络的潜力,并将该技术应用于糖尿病的真实数据集进行分类。本文还介绍了比较研究,其中实现了各种其他机器学习技术,并将结果与所提出的 FLCNN 网络进行了比较。基于标准度量对每种分类技术的性能进行了评估,并使用 Friedman 等非参数统计检验进行了验证。用于建模糖尿病分类的数据是从印度兰契班博医疗厅收集的。所提出的分类器的准确率超过 90%,接近其他最先进的实现分类器。