Department of Endocrinology, First People's Hospital of Nanning, Nanning 530021, China.
Comput Intell Neurosci. 2022 Jun 27;2022:4755728. doi: 10.1155/2022/4755728. eCollection 2022.
At present, diabetes is one of the most important chronic noncommunicable diseases, that have threatened human health. By 2020, the number of diabetic patients worldwide has reached 425 million. This amazing number has attracted the great attention of various countries. With the progress of computing technology, many mathematical models and intelligent algorithms have been applied in different fields of health care. 822 subjects were selected in this paper. They were divided into 389 diabetic patients and 423 nondiabetic patients. Each of the subjects included 41 indicators. Too many indicator variables would increase the computational effort and there could be a strong correlation and data redundancy between the data. Therefore, the sample features were first dimensionally reduced to generate seven new features in the new space, retaining up to 99.9% of the valid information from the original data. A diagnostic and classification model for diabetes clinical data based on recurrent neural networks were constructed, and particle swarm optimization (PSO) was introduced to optimise recurrent neural network's hyperparameters to achieve effective diagnosis and classification of diabetes.
目前,糖尿病是威胁人类健康的最重要的慢性非传染性疾病之一。到 2020 年,全球糖尿病患者人数已达到 4.25 亿。这一惊人的数字引起了各国的高度关注。随着计算技术的进步,许多数学模型和智能算法已经应用于医疗保健的不同领域。本文选取了 822 名受试者,他们被分为 389 名糖尿病患者和 423 名非糖尿病患者。每位受试者包含 41 个指标。过多的指标变量会增加计算量,并且数据之间可能存在很强的相关性和数据冗余。因此,首先对样本特征进行降维,在新空间中生成 7 个新特征,保留原始数据中高达 99.9%的有效信息。基于递归神经网络构建了糖尿病临床数据的诊断和分类模型,并引入粒子群优化(PSO)来优化递归神经网络的超参数,以实现对糖尿病的有效诊断和分类。