利用舌头图像检测糖尿病的正弦猎手猎物优化深度残差网络

Jimsha K Mathew, S. S. Sathyalakshmi
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引用次数: 0

摘要

背景:许多人患有糖尿病(DM),这是一种由高血糖引起的疾病。为了获得较高的准确率,人们采用了许多实时方法来诊断糖尿病,但这些方法仍然成本较高。目标开发一种准确度高且成本最低的 DM 检测方法。材料和方法:在这项研究中,使用基于 DL 模型的舌头图像检测 DM,该模型被命名为深度残差网络(DRN),它是由提议的正弦猎手猎物优化(SHPO)训练而成的。在此,预处理阶段使用自适应中值滤波器,图像分割使用由指数反电晕病毒优化(ExpACVO)训练的 ResUNet++ 完成。在这里,ExpACVO 集成了反电晕病毒优化 (ACVO) 和指数加权移动平均 (EWMA)。此外,还进行了图像增强和适当的特征提取阶段,从而通过 DRN 检测出 DM。此外,结合正弦余弦算法(SCA)和亨特猎物优化算法(HPO)形成了 SHPO。使用舌头图像数据集和糖尿病图像数据集分析了所提方法的性能。结果使用准确度、灵敏度、特异性和 f-measure 四个评价指标来评估 SHPO_DRN 的性能。其中,这些指标表现出卓越的性能,高范围值分别为 0.961、0.970、0.948 和 0.961。结论所提出的方法能在早期阶段检测出 DM,且准确率较高。
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Sine hunter prey optimization enabled deep residual network for diabetes mellitus detection using tongue image
Background: Many people suffer from Diabetes Mellitus (DM), a disease caused by high blood glucose levels. In real-time, many methods are implemented to diagnose DM to obtain a good accuracy level, but those methods remain costlier. Objective: To develop a method for DM detection with good accuracy and minimum cost. Materials and methods: In this research, DM is detected using tongue image based on DL model, named Deep Residual Network (DRN) that is trained by proposed Sine Hunter Prey Optimization (SHPO). Here, an adaptive median filter is used for the pre-processing phase, and image segmentation is done using ResUNet++, which is trained by Exponential Anti Corona Virus Optimization (ExpACVO). Here, ExpACVO integrates Anti Corona Virus Optimization (ACVO) and Exponential Weighted Moving Average (EWMA). Further, image augmentation and appropriate feature extraction stages are carried out, leading to DM detection by DRN. Moreover, SHPO is formed by combining the Sine Cosine Algorithm (SCA) and Hunter Prey Optimization (HPO). The performance of the proposed method is analyzed using the Tongue image dataset and the Diabetic images dataset. Results: The performance of SHPO_DRN is found using four evaluation metrics: accuracy, sensitivity, specificity, and f-measure. Here, these metrics exhibit superior performance with high-range values of 0.961, 0.970, 0.948, and 0.961. Conclusion: The proposed method detects the DM at earlier stages with a good accuracy.
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