通过移动应用程序利用混合卷积门控递归糖尿病预测和严重程度分级模型。

IF 3.5 4区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
PeerJ Computer Science Pub Date : 2025-02-12 eCollection Date: 2025-01-01 DOI:10.7717/peerj-cs.2642
Alhuseen Omar Alsayed, Nor Azman Ismail, Layla Hasan, Muhammad Binsawad, Farhat Embarak
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引用次数: 0

摘要

糖尿病是一种常见病,发病率和死亡率都很高。早期发现糖尿病对于预防长期健康并发症至关重要。现有的机器学习模型与准确性和可靠性问题以及数据不平衡作斗争,阻碍了建立可靠的糖尿病预测模型。该研究使用一种名为卷积门控循环单元(CGRU)的新型深度学习机制解决了这个问题,该机制可以准确检测糖尿病疾病及其严重程度。为了克服这些障碍,本研究提出了一种全新的深度学习技术——CGRU,该技术通过从数据中提取时空特征来提高预测精度。该机制从输入数据中提取空间和时间属性,以实现有效的分类。提出的框架包括三个主要阶段:数据准备、模型训练和评估。具体来说,该技术被应用于BRFSS数据集用于糖尿病预测。收集到的数据经过预处理步骤,包括缺失数据的输入、不相关特征的去除和规范化,以使其适合进一步处理。此外,预处理的数据被输入到CGRU模型中,该模型经过训练以识别指示糖尿病阶段的复杂模式。根据患者的特征和身份模式对患者进行分组,采用聚类算法对患者的严重程度进行分类。通过对现有最先进方法的实验结果进行验证,证明了所提出的CGRU框架的有效性。与现有的方法(如基于注意力的CNN和集成ML模型)相比,所提出的模型优于传统的机器学习技术,证明了CGRU架构对糖尿病预测的有效性,准确率高达99.9%。聚类算法更有用,因为它们有助于识别数据集中的微妙模式。与其他方法相比,该方法的预测更加准确可靠。该研究强调了尖端的CGRU模型如何增强糖尿病的早期发现和诊断,从而最终改善医疗保健结果。然而,该研究限制了对不同数据集的研究,这是该研究的唯一缺点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leveraging a hybrid convolutional gated recursive diabetes prediction and severity grading model through a mobile app.

Diabetes mellitus is a common illness associated with high morbidity and mortality rates. Early detection of diabetes is essential to prevent long-term health complications. The existing machine learning model struggles with accuracy and reliability issues, as well as data imbalance, hindering the creation of a dependable diabetes prediction model. The research addresses the issue using a novel deep learning mechanism called convolutional gated recurrent unit (CGRU), which could accurately detect diabetic disorder and their severity level. To overcome these obstacles, this study presents a brand-new deep learning technique, the CGRU, which enhances prediction accuracy by extracting temporal and spatial characteristics from the data. The proposed mechanism extracts both the spatial and temporal attributes from the input data to enable efficient classification. The proposed framework consists of three primary phases: data preparation, model training, and evaluation. Specifically, the proposed technique is applied to the BRFSS dataset for diabetes prediction. The collected data undergoes pre-processing steps, including missing data imputation, irrelevant feature removal, and normalization, to make it suitable for further processing. Furthermore, the pre-processed data is fed to the CGRU model, which is trained to identify intricate patterns indicating the stages of diabetes. To group the patients based on their characteristics and identity patterns, the research uses the clustering algorithm which helps them to classify the severity level. The efficacy of the proposed CGRU framework is demonstrated by validating the experimental findings against existing state-of-the-art approaches. When compared to existing approaches, such as Attention-based CNN and Ensemble ML model, the proposed model outperforms conventional machine learning techniques, demonstrating the efficacy of the CGRU architecture for diabetes prediction with a high accuracy rate o f 99.9%. Clustering algorithms are more beneficial as they help in identifying the subtle pattern in the dataset. When compared to other methods, it can lead to more accurate and reliable prediction. The study highlights how the cutting-edge CGRU model enhances the early detection and diagnosis of diabetes, which will eventually lead to improved healthcare outcomes. However, the study limits to work on diverse datasets, which is the only thing considered to be the drawback of this research.

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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.
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