Advanced Hybridization and Optimization of DNNs for Medical Imaging: A Survey on Disease Detection Techniques

IF 10.7 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Maneet Kaur Bohmrah, Harjot Kaur
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引用次数: 0

Abstract

Due to the high classification accuracy and fast computational speed offered by Deep Neural Networks (DNNs), they have been widely used for the design and development of automated Artificial Intelligence (AI) tools for the detection of various diseases. These tools, which are intensive computational learning models, hold tremendous significance in healthcare for identifying various diseases. The primary goal of this review is to understand the applicability and methodology for implementing DNNs, including computational costs, for the classification of distinct diseases from disparate medical imaging datasets. This study presents an extensive survey of DNNs along with their various hybridization forms. To achieve this, the research papers surveyed have been grouped into five categories: pretrained DNNs, hyperparameter-tuned optimized DNNs, hybrid DNNs and ML classifiers, hybrid models with optimization techniques, and meta-heuristics based feature selection DNNs. The major part of this review highlights the significant role of nature-inspired meta-heuristic techniques used for hyperparameter optimization or feature selection algorithms of DNNs. Besides the frameworks and computational costs, descriptions of disparate medical image datasets and image preprocessing techniques have also been discussed under each category. Furthermore, a comparative analysis for each category has been performed on the basis of different parameters, including the type and size of datasets used, image preprocessing, methodology (as per the mentioned category), and performance (in terms of classification accuracy). This study also presents a bibliometric analysis based on the publication count of various articles related to hyperparameter-tuned optimized DNNs and meta-heuristic based feature selection DNNs. This review aims to assist potential AI researchers in choosing the most sound and appropriate DNN-based techniques for disease detection and prediction, all consolidated into a one single research paper.

用于医学影像的深度神经网络的高级杂交和优化:疾病检测技术综述
由于深度神经网络(Deep Neural Networks, dnn)提供的高分类精度和快速计算速度,它们已被广泛用于设计和开发用于检测各种疾病的自动化人工智能(AI)工具。这些工具是密集的计算学习模型,在医疗保健中识别各种疾病具有巨大的意义。本综述的主要目的是了解实现dnn的适用性和方法,包括计算成本,用于从不同的医学成像数据集中对不同的疾病进行分类。本研究对dnn及其各种杂交形式进行了广泛的调查。为了实现这一目标,调查的研究论文被分为五类:预训练dnn,超参数调谐优化dnn,混合dnn和ML分类器,混合模型与优化技术,以及基于元启发式的特征选择dnn。这篇综述的主要部分强调了自然启发的元启发式技术在深度神经网络的超参数优化或特征选择算法中的重要作用。除了框架和计算成本,不同的医学图像数据集和图像预处理技术的描述也在每个类别下进行了讨论。此外,根据不同的参数对每个类别进行了比较分析,包括使用的数据集的类型和大小、图像预处理、方法(根据所提到的类别)和性能(就分类精度而言)。本研究还基于与超参数调谐优化深度神经网络和基于元启发式特征选择深度神经网络相关的各种文章的发表数进行了文献计量分析。这篇综述旨在帮助潜在的人工智能研究人员选择最健全和合适的基于dnn的疾病检测和预测技术,所有这些技术都整合到一篇研究论文中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Artificial Intelligence Review
Artificial Intelligence Review 工程技术-计算机:人工智能
CiteScore
22.00
自引率
3.30%
发文量
194
审稿时长
5.3 months
期刊介绍: Artificial Intelligence Review, a fully open access journal, publishes cutting-edge research in artificial intelligence and cognitive science. It features critical evaluations of applications, techniques, and algorithms, providing a platform for both researchers and application developers. The journal includes refereed survey and tutorial articles, along with reviews and commentary on significant developments in the field.
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