A big data analysis algorithm for massive sensor medical images.

IF 3.5 4区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE PeerJ Computer Science Pub Date : 2024-11-26 eCollection Date: 2024-01-01 DOI:10.7717/peerj-cs.2464
Sarah A Alzakari, Nuha Alruwais, Shaymaa Sorour, Shouki A Ebad, Asma Abbas Hassan Elnour, Ahmed Sayed
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引用次数: 0

Abstract

Big data analytics for clinical decision-making has been proposed for various clinical sectors because clinical decisions are more evidence-based and promising. Healthcare data is so vast and readily available that big data analytics has completely transformed this sector and opened up many new prospects. The smart sensor-based big data analysis recommendation system has significant privacy and security concerns when using sensor medical images for suggestions and monitoring. The danger of security breaches and unauthorized access, which might lead to identity theft and privacy violations, increases when sending and storing sensitive medical data on the cloud. Our effort will improve patient care and well-being by creating an anomaly detection system based on machine learning specifically for medical images and providing timely treatments and notifications. Current anomaly detection methods in healthcare systems, such as artificial intelligence and big data analytics-intracerebral hemorrhage (AIBDA-ICH) and parallel conformer neural network (PCNN), face several challenges, including high resource consumption, inefficient feature selection, and an inability to handle temporal data effectively for real-time monitoring. Techniques like support vector machines (SVM) and the hidden Markov model (HMM) struggle with computational overhead and scalability in large datasets, limiting their performance in critical healthcare applications. Additionally, existing methods often fail to provide accurate anomaly detection with low latency, making them unsuitable for time-sensitive environments. We infer the extraction, feature selection, attack detection, and data collection and processing procedures to anticipate anomaly inpatient data. We transfer the data, take care of missing values, and sanitize it using the pre-processing mechanism. We employed the recursive feature elimination (RFE) and dynamic principal component analysis (DPCA) algorithms for feature selection and extraction. In addition, we applied the Auto-encoded genetic recurrent neural network (AGRNN) approach to identify abnormalities. Data arrival rate, resource consumption, propagation delay, transaction epoch, true positive rate, false alarm rate, and root mean square error (RMSE) are some metrics used to evaluate the proposed task.

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海量传感器医学图像的大数据分析算法。
临床决策的大数据分析已被提出用于临床各个领域,因为临床决策更具循证性和前景。医疗保健数据是如此庞大和容易获得,大数据分析已经完全改变了这个行业,并开辟了许多新的前景。基于智能传感器的大数据分析推荐系统在使用传感器医学图像进行建议和监控时存在明显的隐私和安全问题。在云上发送和存储敏感医疗数据时,安全漏洞和未经授权访问的危险(可能导致身份盗窃和隐私侵犯)会增加。我们的努力将通过创建一个专门针对医学图像的基于机器学习的异常检测系统,并提供及时的治疗和通知,来改善患者的护理和福祉。当前医疗保健系统中的异常检测方法,如人工智能和大数据分析-脑出血(AIBDA-ICH)和并行共形神经网络(PCNN),面临着一些挑战,包括资源消耗高,特征选择效率低,以及无法有效处理实时监测的时间数据。支持向量机(SVM)和隐马尔可夫模型(HMM)等技术在大型数据集中的计算开销和可扩展性方面存在问题,限制了它们在关键医疗保健应用中的性能。此外,现有的方法往往不能提供准确的低延迟异常检测,使得它们不适合时间敏感的环境。我们推断提取、特征选择、攻击检测、数据收集和处理过程,以预测异常住院患者数据。我们传输数据,处理丢失的值,并使用预处理机制对其进行清理。采用递归特征消除(RFE)和动态主成分分析(DPCA)算法进行特征选择和提取。此外,我们应用自编码遗传递归神经网络(AGRNN)方法来识别异常。数据到达率、资源消耗、传播延迟、事务历元、真阳性率、虚警率和均方根误差(RMSE)是用来评估提议任务的一些指标。
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来源期刊
PeerJ Computer Science
PeerJ Computer Science Computer Science-General Computer Science
CiteScore
6.10
自引率
5.30%
发文量
332
审稿时长
10 weeks
期刊介绍: PeerJ Computer Science is the new open access journal covering all subject areas in computer science, with the backing of a prestigious advisory board and more than 300 academic editors.
期刊最新文献
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