实现精准的慢性病管理:二元元启发式与集合深度学习相结合的方法

IF 1.7 4区 综合性期刊 Q2 MULTIDISCIPLINARY SCIENCES
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引用次数: 0

摘要

慢性疾病(CD)识别包括识别个人是否患有慢性疾病或患有慢性疾病的风险。慢性疾病是一种慢性健康疾病,其特点是病情发展缓慢,并经常因复杂的原因而减轻。慢性疾病包括慢性呼吸系统疾病、心脏病、糖尿病和某些癌症。早期诊断对于有效处理 CD 至关重要。然后,可以通过调整生活方式、及时干预和医疗服务来避免疾病恶化,减少对健康的影响。近来,技术的发展,尤其是医疗统计和人工智能(AI)方面的发展,有助于推进CD识别的复杂方法和系统。这些方法通常采用深度学习(DL)和机器学习(ML)模型来调查庞大的数据库、识别模式并根据不同的健康相关参数进行预测。本研究提出了一种使用二元元启发式与集合深度学习(ACDDC-BMEDL)方法的精确慢性疾病检测和分类模型。ACDDC-BMEDL 方法侧重于平均集合分类器的程序,以及基于元启发式的特征选择(FS)和超参数调整过程。ACDDC-BMEDL 方法使用二进制算术优化算法(BAOA)来选择更好的特征子集。此外,ACDDC-BMEDL 方法在分类过程中使用了平均集合技术,包括循环神经网络(RNN)、门控循环单元(GRU)和极端学习机(ELM)。超参数调整过程采用了海洋捕食者算法(MPA)。在 2 个 CD 数据集上检验了 ACDDC-BMEDL 方法的实验价值。ACDDC-BMEDL 方法的性能验证结果表明,在糖尿病和 HD 数据集的多个指标上,ACDDC-BMEDL 方法分别比最近的方法高出 98.70% 和 94.51%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards precise chronic disease management: A combined approach with binary metaheuristics and ensemble deep learning

Chronic disease (CD) recognition involves identifying the existence or risk of CDs in individuals. CDs have chronic health illnesses categorized by slow progression and frequent reduction from intricate reasons. CDs comprise chronic respiratory diseases, heart disease, diabetes mellitus, and certain cancers. Earlier diagnosis is vital in handling CDs proficiently. Then, it permits lifestyle modifications, timely intervention, and medical services to avoid the progression of the disease and reduce its effect on their health. Recently, technical development, particularly in healthcare statistics and artificial intelligence (AI), has assisted in advancing sophisticated approaches and systems for CD recognition. These methodologies usually employ deep learning (DL) and machine learning (ML) models for investigating enormous databases, identifying patterns, and making predictions that rely on distinct health-related parameters. This study presents an accurate chronic disease detection and classification model using binary meta-heuristics with an ensemble deep learning (ACDDC-BMEDL) approach. The ACDDC-BMEDL methodology focuses on the procedure of average ensemble classifier with meta-heuristic-based feature selection (FS) and hyperparameter tuning processes. The ACDDC-BMEDL methodology uses a binary arithmetic optimization algorithm (BAOA) to choose better feature subsets. Additionally, the ACDDC-BMEDL methodology uses an average ensemble technique encompassing recurrent neural network (RNN), gated recurrent unit (GRU), and extreme learning machine (ELM) for classification procedure. The marine predator's algorithm (MPA) is employed for the hyperparameter tuning process. The experimental value of the ACDDC-BMEDL methodology was examined on 2 CD datasets. The performance validation of the ACDDC-BMEDL methodology portrays a superior value of 98.70% and 94.51% with recent methods concerning several metrics under Diabetes and HD datasets.

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来源期刊
自引率
5.90%
发文量
130
审稿时长
16 weeks
期刊介绍: Journal of Radiation Research and Applied Sciences provides a high quality medium for the publication of substantial, original and scientific and technological papers on the development and applications of nuclear, radiation and isotopes in biology, medicine, drugs, biochemistry, microbiology, agriculture, entomology, food technology, chemistry, physics, solid states, engineering, environmental and applied sciences.
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