Suppr超能文献

数字健康时代的辅助诊断技术途径:一种自适应疾病预测模型。

The Technology-Oriented Pathway for Auxiliary Diagnosis in the Digital Health Age: A Self-Adaptive Disease Prediction Model.

机构信息

School of Business and Management, Jilin University, Changchun 130012, China.

Information Resource Research Center, Jilin University, Changchun 130012, China.

出版信息

Int J Environ Res Public Health. 2022 Sep 30;19(19):12509. doi: 10.3390/ijerph191912509.

Abstract

The advent of the digital age has accelerated the transformation and upgrading of the traditional medical diagnosis pattern. With the rise of the concept of digital health, the emerging information technologies, such as machine learning (ML) and data mining (DM), have been extensively applied in the medical and health field, where the construction of disease prediction models is an especially effective method to realize auxiliary medical diagnosis. However, the existing related studies mostly focus on the prediction analysis for a certain disease, using models with which it might be challenging to predict other diseases effectively. To address the issues existing in the aforementioned studies, this paper constructs four novel strategies to achieve a self-adaptive disease prediction process, i.e., the hunger-state foraging strategy of producers (PHFS), the parallel strategy for exploration and exploitation (EEPS), the perturbation-exploration strategy (PES), and the parameter self-adaptive strategy (PSAS), and eventually proposes a self-adaptive disease prediction model with applied universality, strong generalization ability, and strong robustness, i.e., multi-strategies optimization-based kernel extreme learning machine (MsO-KELM). Meanwhile, this paper selects six different real-world disease datasets as the experimental samples, which include the Breast Cancer dataset (cancer), the Parkinson dataset (Parkinson's disease), the Autistic Spectrum Disorder Screening Data for Children dataset (Autism Spectrum Disorder), the Heart Disease dataset (heart disease), the Cleveland dataset (heart disease), and the Bupa dataset (liver disease). In terms of the prediction accuracy, the proposed MsO-KELM can obtain ACC values in analyzing these six diseases of 94.124%, 84.167%, 91.079%, 72.222%, 70.184%, and 70.476%, respectively. These ACC values have all been increased by nearly 2-7% compared with those obtained by the other models mentioned in this paper. This study deepens the connection between information technology and medical health by exploring the self-adaptive disease prediction model, which is an intuitive representation of digital health and could provide a scientific and reliable diagnostic basis for medical workers.

摘要

数字时代的到来加速了传统医学诊断模式的转型和升级。随着数字健康概念的兴起,新兴信息技术,如机器学习 (ML) 和数据挖掘 (DM),已经广泛应用于医疗保健领域,其中疾病预测模型的构建是实现辅助医疗诊断的一种特别有效的方法。然而,现有的相关研究大多集中在对某一种疾病的预测分析上,使用这些模型可能难以有效地预测其他疾病。为了解决上述研究中存在的问题,本文构建了四种新颖的策略来实现自适应疾病预测过程,即生产者饥饿状态觅食策略 (PHFS)、探索与开发的并行策略 (EEPS)、扰动探索策略 (PES) 和参数自适应策略 (PSAS),并最终提出了一种具有应用普遍性、强泛化能力和强鲁棒性的自适应疾病预测模型,即基于多策略优化的核极端学习机 (MsO-KELM)。同时,本文选择了六个不同的真实世界疾病数据集作为实验样本,包括乳腺癌数据集 (cancer)、帕金森病数据集 (Parkinson's disease)、儿童自闭症谱系障碍筛查数据数据集 (Autism Spectrum Disorder)、心脏病数据集 (heart disease)、克利夫兰数据集 (heart disease) 和布帕数据集 (liver disease)。在预测精度方面,所提出的 MsO-KELM 可以在分析这六种疾病时获得 94.124%、84.167%、91.079%、72.222%、70.184%和 70.476%的 ACC 值,与本文中提到的其他模型相比,这些 ACC 值都提高了近 2-7%。本研究通过探索自适应疾病预测模型,加深了信息技术与医疗保健的联系,这是数字健康的直观表现,可以为医务人员提供科学可靠的诊断依据。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/629c/9566816/ad1ce7a1451a/ijerph-19-12509-g001.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验