Pinheiro Rafael F, Fonseca-Pinto Rui
Center for Innovative Care and Health Technology (ciTechCare), School of Health Sciences (ESSLei), Polytechnic University of Leiria, Leiria, Leiria, Portugal.
PeerJ Comput Sci. 2025 Jan 30;11:e2474. doi: 10.7717/peerj-cs.2474. eCollection 2025.
For preventing health complications and reducing the strain on healthcare systems, early identification of diseases is imperative. In this context, artificial intelligence has become increasingly prominent in the field of medicine, offering essential support for disease diagnosis. This article introduces an algorithm that builds upon an earlier methodology to assess biosignals acquired through cardiopulmonary exercise testing (CPET) for identifying metabolic syndrome (MS), heart failure (HF), and healthy individuals (H). Leveraging support vector machine (SVM) technology, a well-known machine learning classification method, in combination with wavelet transforms for feature extraction, the algorithm takes an innovative approach. The model was trained on CPET data from 45 participants, including 15 with MS, 15 with HF, and 15 healthy controls. For binary classification tasks, the SVM with a polynomial kernel and 5-level wavelet transform (SVM-POL-BW5) outperformed similar methods described in the literature. Moreover, one of the main contributions of this study is the development of a multi-class classification algorithm using the SVM employing a linear kernel and 3-level wavelet transforms (SVM-LIN-MW3), reaching an average accuracy of 95%. In conclusion, the application of SVM-based algorithms combined with wavelet transforms to analyze CPET data shows promise in diagnosing various diseases, highlighting their adaptability and broader potential applications in healthcare.
为预防健康并发症并减轻医疗系统的负担,疾病的早期识别至关重要。在此背景下,人工智能在医学领域日益突出,为疾病诊断提供了重要支持。本文介绍了一种基于早期方法构建的算法,用于评估通过心肺运动试验(CPET)获取的生物信号,以识别代谢综合征(MS)、心力衰竭(HF)和健康个体(H)。该算法采用支持向量机(SVM)技术(一种著名的机器学习分类方法)并结合小波变换进行特征提取,采取了创新的方法。该模型使用45名参与者的CPET数据进行训练,其中包括15名患有MS的参与者、15名患有HF的参与者和15名健康对照者。对于二元分类任务,具有多项式核和5级小波变换的支持向量机(SVM-POL-BW5)优于文献中描述的类似方法。此外,本研究的主要贡献之一是开发了一种使用具有线性核和3级小波变换的支持向量机(SVM-LIN-MW3)的多类分类算法,平均准确率达到95%。总之,基于支持向量机的算法与小波变换相结合来分析CPET数据在诊断各种疾病方面显示出前景,突出了它们在医疗保健中的适应性和更广泛的潜在应用。