深度卷积神经网络用于超声成像预测慢性肾脏疾病

IF 1.2 Q3 Computer Science Bio-Algorithms and Med-Systems Pub Date : 2021-04-22 DOI:10.1515/bams-2020-0068
Smitha Patil, Savita Choudhary
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引用次数: 4

摘要

摘要目的慢性肾脏病(CKD)是一种常见疾病,它与心血管疾病和终末期肾脏疾病的高风险有关,可以通过早期识别和诊断高危个体来预防。尽管CKD的风险因素已经被认识到,但通过预测模型进行CKD风险分类的有效性仍然不确定。本文旨在介绍一种新的基于US图像的CKD预测模型。方法该模型包括三个主要阶段:(1)预处理、(2)特征提取、(3)分类。在第一阶段,对输入图像进行预处理,包括图像修复和中值滤波过程。经过预处理后,在四种情况下进行特征提取;(a) 通过纹理分析来检测纹理的特征,(b)提出了基于高级特征的局部二值模式(LBP)提取,(c)基于区域的特征提取,以及(d)基于平均强度的特征提取。然后对这些提取的特征进行分类,其中使用“优化深度卷积神经网络(DCNN)”。为了使预测更加准确,DCNN的权重和激活函数通过一种新的混合模型进行了优化选择,该模型被称为多样性保持混合鲸蛾火焰优化(DM-HWM)模型。结果所采用的模型在第40个训练百分比时的准确率分别比传统的人工神经网络(ANN)、支持向量机(SVM)、NB、J48、NB-tree、LR、基于迭代随机投影的复合超立方体(CHIRP)、CNN、蛾焰优化(MFO)和鲸鱼优化算法(WOA)模型高44.72、11.02、5.59、3.92、3.57、2.59、1.71、1.68和0.42%。结论最后,验证了所采用的方案在各种措施方面优于其他传统模型。
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Deep convolutional neural network for chronic kidney disease prediction using ultrasound imaging
Abstract Objectives Chronic kidney disease (CKD) is a common disease and it is related to a higher risk of cardiovascular disease and end-stage renal disease that can be prevented by the earlier recognition and diagnosis of individuals at risk. Even though risk factors for CKD have been recognized, the effectiveness of CKD risk classification via prediction models remains uncertain. This paper intends to introduce a new predictive model for CKD using US image. Methods The proposed model includes three main phases “(1) preprocessing, (2) feature extraction, (3) and classification.” In the first phase, the input image is subjected to preprocessing, which deploys image inpainting and median filtering processes. After preprocessing, feature extraction takes place under four cases; (a) texture analysis to detect the characteristics of texture, (b) proposed high-level feature enabled local binary pattern (LBP) extraction, (c) area based feature extraction, and (d) mean intensity based feature extraction. These extracted features are then subjected for classification, where “optimized deep convolutional neural network (DCNN)” is used. In order to make the prediction more accurate, the weight and the activation function of DCNN are optimally chosen by a new hybrid model termed as diversity maintained hybrid whale moth flame optimization (DM-HWM) model. Results The accuracy of adopted model at 40th training percentage was 44.72, 11.02, 5.59, 3.92, 3.92, 3.57, 2.59, 1.71, 1.68, and 0.42% superior to traditional artificial neural networks (ANN), support vector machine (SVM), NB, J48, NB-tree, LR, composite hypercube on iterated random projection (CHIRP), CNN, moth flame optimization (MFO), and whale optimization algorithm (WOA) models. Conclusions Finally, the superiority of the adopted scheme is validated over other conventional models in terms of various measures.
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来源期刊
Bio-Algorithms and Med-Systems
Bio-Algorithms and Med-Systems MATHEMATICAL & COMPUTATIONAL BIOLOGY-
CiteScore
3.80
自引率
0.00%
发文量
3
期刊介绍: The journal Bio-Algorithms and Med-Systems (BAMS), edited by the Jagiellonian University Medical College, provides a forum for the exchange of information in the interdisciplinary fields of computational methods applied in medicine, presenting new algorithms and databases that allows the progress in collaborations between medicine, informatics, physics, and biochemistry. Projects linking specialists representing these disciplines are welcome to be published in this Journal. Articles in BAMS are published in English. Topics Bioinformatics Systems biology Telemedicine E-Learning in Medicine Patient''s electronic record Image processing Medical databases.
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