CardioRiskNet:基于人工智能的混合模型,用于心血管疾病的可解释风险预测和预后。

IF 3.8 3区 医学 Q2 ENGINEERING, BIOMEDICAL Bioengineering Pub Date : 2024-08-12 DOI:10.3390/bioengineering11080822
Fatma M Talaat, Ahmed R Elnaggar, Warda M Shaban, Mohamed Shehata, Mostafa Elhosseini
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引用次数: 0

摘要

心血管疾病(CVDs)是全球普遍存在的主要死亡原因,这凸显了对精细化风险评估和预后方法的迫切需求。包括弗雷明汉风险评分、血液化验、成像技术和临床评估在内的传统方法虽然被广泛使用,但由于缺乏精确性、依赖静态风险变量以及无法适应新的患者数据等局限性而受到阻碍,因此有必要探索替代策略。为此,本研究引入了 CardioRiskNet,这是一种基于人工智能的混合模型,旨在超越这些局限性。所提出的 CardioRiskNet 包括七个部分:数据预处理、特征选择和编码、eXplainable AI(XAI)集成、主动学习、注意机制、风险预测和预后、评估和验证以及部署和集成。首先,通过清理数据、处理缺失值、应用归一化流程和提取特征对患者数据进行预处理。然后,选择信息量最大的特征,并将分类变量转换为数字形式。与众不同的是,CardioRiskNet 采用了主动学习方法来迭代选择信息量大的样本,从而提高了学习效率,同时其关注机制会动态地关注相关特征,以进行精确的风险预测。此外,XAI 的集成还提高了决策过程的可解释性和透明度。实验结果表明,CardioRiskNet 在准确性、灵敏度、特异性和 F1-Score 方面表现出色,分别达到 98.7%、98.7%、99% 和 98.7%。这些结果表明,CardioRiskNet 可以准确评估和预测心血管疾病风险,显示了主动学习和人工智能超越传统方法的力量。因此,CardioRiskNet 的新方法和高性能推动了心血管疾病的管理,并为医护人员提供了一个强大的病人护理工具。
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CardioRiskNet: A Hybrid AI-Based Model for Explainable Risk Prediction and Prognosis in Cardiovascular Disease.

The global prevalence of cardiovascular diseases (CVDs) as a leading cause of death highlights the imperative need for refined risk assessment and prognostication methods. The traditional approaches, including the Framingham Risk Score, blood tests, imaging techniques, and clinical assessments, although widely utilized, are hindered by limitations such as a lack of precision, the reliance on static risk variables, and the inability to adapt to new patient data, thereby necessitating the exploration of alternative strategies. In response, this study introduces CardioRiskNet, a hybrid AI-based model designed to transcend these limitations. The proposed CardioRiskNet consists of seven parts: data preprocessing, feature selection and encoding, eXplainable AI (XAI) integration, active learning, attention mechanisms, risk prediction and prognosis, evaluation and validation, and deployment and integration. At first, the patient data are preprocessed by cleaning the data, handling the missing values, applying a normalization process, and extracting the features. Next, the most informative features are selected and the categorical variables are converted into a numerical form. Distinctively, CardioRiskNet employs active learning to iteratively select informative samples, enhancing its learning efficacy, while its attention mechanism dynamically focuses on the relevant features for precise risk prediction. Additionally, the integration of XAI facilitates interpretability and transparency in the decision-making processes. According to the experimental results, CardioRiskNet demonstrates superior performance in terms of accuracy, sensitivity, specificity, and F1-Score, with values of 98.7%, 98.7%, 99%, and 98.7%, respectively. These findings show that CardioRiskNet can accurately assess and prognosticate the CVD risk, demonstrating the power of active learning and AI to surpass the conventional methods. Thus, CardioRiskNet's novel approach and high performance advance the management of CVDs and provide healthcare professionals a powerful tool for patient care.

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来源期刊
Bioengineering
Bioengineering Chemical Engineering-Bioengineering
CiteScore
4.00
自引率
8.70%
发文量
661
期刊介绍: Aims Bioengineering (ISSN 2306-5354) provides an advanced forum for the science and technology of bioengineering. It publishes original research papers, comprehensive reviews, communications and case reports. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. All aspects of bioengineering are welcomed from theoretical concepts to education and applications. There is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced. There are, in addition, four key features of this Journal: ● We are introducing a new concept in scientific and technical publications “The Translational Case Report in Bioengineering”. It is a descriptive explanatory analysis of a transformative or translational event. Understanding that the goal of bioengineering scholarship is to advance towards a transformative or clinical solution to an identified transformative/clinical need, the translational case report is used to explore causation in order to find underlying principles that may guide other similar transformative/translational undertakings. ● Manuscripts regarding research proposals and research ideas will be particularly welcomed. ● Electronic files and software regarding the full details of the calculation and experimental procedure, if unable to be published in a normal way, can be deposited as supplementary material. ● We also accept manuscripts communicating to a broader audience with regard to research projects financed with public funds. Scope ● Bionics and biological cybernetics: implantology; bio–abio interfaces ● Bioelectronics: wearable electronics; implantable electronics; “more than Moore” electronics; bioelectronics devices ● Bioprocess and biosystems engineering and applications: bioprocess design; biocatalysis; bioseparation and bioreactors; bioinformatics; bioenergy; etc. ● Biomolecular, cellular and tissue engineering and applications: tissue engineering; chromosome engineering; embryo engineering; cellular, molecular and synthetic biology; metabolic engineering; bio-nanotechnology; micro/nano technologies; genetic engineering; transgenic technology ● Biomedical engineering and applications: biomechatronics; biomedical electronics; biomechanics; biomaterials; biomimetics; biomedical diagnostics; biomedical therapy; biomedical devices; sensors and circuits; biomedical imaging and medical information systems; implants and regenerative medicine; neurotechnology; clinical engineering; rehabilitation engineering ● Biochemical engineering and applications: metabolic pathway engineering; modeling and simulation ● Translational bioengineering
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