Mathew Jimsha K, Sathyalakshmi S
Department of Computer science & Engineering, Hindustan Institute of Technology & Science, Chennai, India.
Biomed Signal Process Control. 2023 May;83:104635. doi: 10.1016/j.bspc.2023.104635. Epub 2023 Jan 31.
A metabolic disease known as diabetes mellitus (DM) is primarily brought on by an increase in blood sugar levels. On the other hand, DM and the complications it causes, such as diabetic Retinopathy (DR), will quickly emerge as one of the major health challenges of the twenty-first century. This indicates a huge economic burden on health-related authorities and governments. The detection of DM in the earlier stage can lead to early diagnosis and a considerable drop in mortality. Therefore, in order to detect DM at an early stage, an efficient detection system having the ability to detect DM is required. An effective classification method, named Exponential Anti Corona Virus Optimization (ExpACVO) is devised in this research work for Diabetes Mellitus (DM) detection using tongue images. Here, the UNet-Conditional Random Field-Recurrent Neural Network (UNet-CRF-RNN) is used to segment the images, and the proposed ExpACVO algorithm is used to train the UNet-CRF-RNN. Deep Q Network (DQN) classifier is used for DM detection, and the proposed ExpACVO is used for DQN training. The proposed ExpACVO algorithm is a newly created formula that combines Anti Corona Virus Optimization(ACVO) with Exponential Weighted Moving Average (EWMA). With maximum testing accuracy, sensitivity, and specificity values of 0.932, 0.950, and 0.914, respectively, the developed technique thus achieved improved performance.
一种被称为糖尿病(DM)的代谢性疾病主要是由血糖水平升高引起的。另一方面,糖尿病及其引发的并发症,如糖尿病视网膜病变(DR),将迅速成为21世纪的主要健康挑战之一。这给卫生相关部门和政府带来了巨大的经济负担。早期检测糖尿病可以实现早期诊断并大幅降低死亡率。因此,为了早期检测糖尿病,需要一个能够检测糖尿病的高效检测系统。本研究工作设计了一种名为指数抗冠状病毒优化(ExpACVO)的有效分类方法,用于使用舌部图像检测糖尿病。在这里,使用UNet-条件随机场-循环神经网络(UNet-CRF-RNN)对图像进行分割,并使用提出的ExpACVO算法训练UNet-CRF-RNN。深度Q网络(DQN)分类器用于糖尿病检测,提出的ExpACVO用于DQN训练。提出的ExpACVO算法是一个新创建的公式,它将抗冠状病毒优化(ACVO)与指数加权移动平均(EWMA)相结合。所开发的技术因此实现了改进的性能,其最大测试准确率、灵敏度和特异性值分别为0.932、0.950和0.914。