基于改进卡方选择特征的MRI脑年龄预测混合深度模型

IF 0.2 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Web Intelligence Pub Date : 2023-06-22 DOI:10.3233/web-230060
Vishnupriya G.S, S. Rajakumari
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引用次数: 0

摘要

老龄化及其相关的健康状况不仅给个人也给社会带来了许多挑战。各种MRI技术被定义为年龄相关疾病的早期检测。研究人员继续使用不同的策略进行预测。因此,本研究拟提出一种经过预处理、特征提取、特征选择、预测等步骤处理的新的脑年龄预测模型。第一步是预处理,提出改进的中值滤波来降低图像中的噪声。在此之后,进行特征提取,提取基于形状的特征、统计特征和纹理特征。特别地,提取了改进的LGTrP特征。然而,在这方面,维数的诅咒成为一个严重的问题,降低了预测水平的效率。根据“维数诅咒”,准确估计任何函数所需的样本数量随着输入变量数量的增加呈指数增长。因此,本文提出了一种改进的特征选择模型,称为改进的卡方模型。最后,结合Bi-GRU和DBN模型,引入混合分类器进行预测。为了提高混合方法的有效性,通过对两个分类器的最优权值进行调整,引入了带临时评估的升级蓝猴优化(UBMOIE)作为训练系统。最后,对基于ubmioe的脑年龄预测方法的性能与其他方案进行了各种指标的评估。
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Hybrid deep model for brain age prediction in MRI with improved chi-square based selected features
Ageing and its related health conditions bring many challenges not only to individuals but also to society. Various MRI techniques are defined for the early detection of age-related diseases. Researchers continue the prediction with the involvement of different strategies. In that manner, this research intends to propose a new brain age prediction model under the processing of certain steps like preprocessing, feature extraction, feature selection, and prediction. The initial step is preprocessing, where improved median filtering is proposed to reduce the noise in the image. After this, feature extraction takes place, where shape-based features, statistical features, and texture features are extracted. Particularly, Improved LGTrP features are extracted. However, the curse of dimensionality becomes a serious issue in this aspect that shrinks the efficiency of the prediction level. According to the “curse of dimensionality,” the number of samples required to estimate any function accurately increases exponentially as the number of input variables increases. Hence, a feature selection model with improvement has been introduced in this paper termed an improved Chi-square. Finally, for prediction purposes, a Hybrid classifier is introduced by combining the models like Bi-GRU and DBN, respectively. In order to enhance the effectiveness of the hybrid method, Upgraded Blue Monkey Optimization with Improvised Evaluation (UBMOIE) is introduced as the training system by tuning the optimal weights in both classifiers. Finally, the performance of the suggested UBMIOE-based brain age prediction method was assessed over the other schemes to various metrics.
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来源期刊
Web Intelligence
Web Intelligence COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
0.90
自引率
0.00%
发文量
35
期刊介绍: Web Intelligence (WI) is an official journal of the Web Intelligence Consortium (WIC), an international organization dedicated to promoting collaborative scientific research and industrial development in the era of Web intelligence. WI seeks to collaborate with major societies and international conferences in the field. WI is a peer-reviewed journal, which publishes four issues a year, in both online and print form. WI aims to achieve a multi-disciplinary balance between research advances in theories and methods usually associated with Collective Intelligence, Data Science, Human-Centric Computing, Knowledge Management, and Network Science. It is committed to publishing research that both deepen the understanding of computational, logical, cognitive, physical, and social foundations of the future Web, and enable the development and application of technologies based on Web intelligence. The journal features high-quality, original research papers (including state-of-the-art reviews), brief papers, and letters in all theoretical and technology areas that make up the field of WI. The papers should clearly focus on some of the following areas of interest: a. Collective Intelligence[...] b. Data Science[...] c. Human-Centric Computing[...] d. Knowledge Management[...] e. Network Science[...]
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