DenSFFNet:基于spark框架下视网膜眼底图像的心血管风险预测的密集尖峰前向分数网络。

IF 2.5 4区 医学 Q3 ENDOCRINOLOGY & METABOLISM
Kanchanamala P, Anuradha G, Radhika Gouni
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引用次数: 0

摘要

心血管风险预测在症状出现之前识别高危个体。为了解决诸如整合不同数据、确保质量和管理患者变异性等挑战,在Spark框架中引入了Dense spike Forward Fractional Network (DenSFFNet)模型。该过程首先使用深度嵌入聚类(DEC)进行图像采集和分割,然后进行预处理任务,如灰度转换,使用通道先验卷积注意(CPCA)进行视盘(OD)分割,以及使用Frangi-Net跨从节点进行血管分割。提取的特征,包括学习不变特征变换(LIFT)和统计指标,由主节点聚合,主节点利用DenSFFNet模型(DenseNet和深度峰值神经网络(DSNN)的结合)。对于数据集1,DenSFFNet方法的准确性、灵敏度、特异性和马修斯相关系数(MCC)分别为91.119%、90.366%、89.922%和92.643%。对于RFMiD 2.0数据集,该方法的准确度为90.881%,灵敏度为90.286%,特异性为89.660%,MCC为91.469%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DenSFFNet: dense spiking forward fractional network for cardiovascular risk prediction using retinal fundus images in spark framework.

Cardiovascular risk prediction identifies individuals at high risk before symptoms arise. To address challenges such as integrating diverse data, ensuring quality, and managing patient variability, the Dense Spiking Forward Fractional Network (DenSFFNet) model is introduced within the Spark framework. The process begins with image acquisition and partitioning using Deep Embedded Clustering (DEC), followed by preprocessing tasks like Greyscale Conversion, Optic Disc (OD) segmentation with Channel Prior Convolutional Attention (CPCA), and blood vessel segmentation using Frangi-Net across slave nodes. Extracted features, including Learned Invariant Feature Transformation (LIFT) and statistical metrics, are aggregated by the master node, which utilises the DenSFFNet model a combination of DenseNet and Deep Spiking Neural Network (DSNN). The DenSFFNet method attained accuracy, sensitivity, specificity, and Matthews correlation coefficient (MCC) is 91.119%, 90.366%, 89.922%, and 92.643% for dataset 1. For the RFMiD 2.0 dataset, the proposed method attained 90.881% accuracy, 90.286% sensitivity, 89.660% specificity, and 91.469% MCC.

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来源期刊
Archives of Physiology and Biochemistry
Archives of Physiology and Biochemistry ENDOCRINOLOGY & METABOLISM-PHYSIOLOGY
CiteScore
6.90
自引率
3.30%
发文量
21
期刊介绍: Archives of Physiology and Biochemistry: The Journal of Metabolic Diseases is an international peer-reviewed journal which has been relaunched to meet the increasing demand for integrated publication on molecular, biochemical and cellular aspects of metabolic diseases, as well as clinical and therapeutic strategies for their treatment. It publishes full-length original articles, rapid papers, reviews and mini-reviews on selected topics. It is the overall goal of the journal to disseminate novel approaches to an improved understanding of major metabolic disorders. The scope encompasses all topics related to the molecular and cellular pathophysiology of metabolic diseases like obesity, type 2 diabetes and the metabolic syndrome, and their associated complications. Clinical studies are considered as an integral part of the Journal and should be related to one of the following topics: -Dysregulation of hormone receptors and signal transduction -Contribution of gene variants and gene regulatory processes -Impairment of intermediary metabolism at the cellular level -Secretion and metabolism of peptides and other factors that mediate cellular crosstalk -Therapeutic strategies for managing metabolic diseases Special issues dedicated to topics in the field will be published regularly.
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