Virto Naiara, Dequin Danielle Marie, Río Xabier, Méndez-Zorrilla Amaia, García-Zapirain Begoña
eVida Research Lab, Faculty of Engineering, University of Deusto, Deusto, Spain.
Department of Physical Activity and Sport Sciences, Faculty of Education and Sport, University of Deusto, Deusto, Spain.
PLoS One. 2024 Dec 31;19(12):e0316174. doi: 10.1371/journal.pone.0316174. eCollection 2024.
Sarcopenia and reduced muscle quality index have garnered special attention due to their prevalence among older individuals and the adverse effects they generate. Early detection of these geriatric pathologies holds significant potential, enabling the implementation of interventions that may slow or reverse their progression, thereby improving the individual's overall health and quality of life. In this context, artificial intelligence opens up new opportunities to identify the key identifying factors of these pathologies, thus facilitating earlier intervention and personalized treatment approaches.
investigate anthropomorphic, functional, and socioeconomic factors associated with muscle quality and sarcopenia using machine learning approaches and identify key determinant factors for their potential future integration into clinical practice.
A total of 1253 older adults (89.5% women) with a mean age of 78.13 ± 5.78 voluntarily participated in this descriptive cross-sectional study, which examines determining factors in sarcopenia and MQI using machine learning techniques. Feature selection was completed using a variety of techniques and feature datasets were constructed according to feature selection. Three machine learning classification algorithms classified sarcopenia and MQI in each dataset, and the performance of classification models was compared.
The predictive models used in this study exhibited AUC scores of 0.7671 for MQI and 0.7649 for sarcopenia, with the most successful algorithms being SVM and MLP. Key factors in predicting both conditions have been shown to be relative power, age, weight, and the 5STS. No single factor is sufficient to predict either condition, and by comprehensively considering all selected features, the study underscores the importance of a holistic approach in understanding and addressing sarcopenia and MQI among older adults.
Exploring the factors that affect sarcopenia and MQI in older adults, this study highlights that relative power, age, weight, and the 5STS are significant determinants. While considering these clinical markers and using a holistic approach, this can provide crucial information for designing personalized and effective interventions to promote healthy aging.
肌肉减少症和肌肉质量指数降低因其在老年人中的普遍存在及其产生的不良影响而受到特别关注。早期发现这些老年疾病具有巨大潜力,能够实施可能减缓或逆转其进展的干预措施,从而改善个体的整体健康和生活质量。在此背景下,人工智能为识别这些疾病的关键识别因素开辟了新机会,从而便于更早地进行干预和采用个性化治疗方法。
使用机器学习方法研究与肌肉质量和肌肉减少症相关的人体测量学、功能和社会经济因素,并确定关键决定因素,以便未来有可能将其纳入临床实践。
共有1253名平均年龄为78.13±5.78岁的老年人(89.5%为女性)自愿参与了这项描述性横断面研究,该研究使用机器学习技术检查肌肉减少症和肌肉质量指数的决定因素。使用多种技术完成特征选择,并根据特征选择构建特征数据集。三种机器学习分类算法对每个数据集中的肌肉减少症和肌肉质量指数进行分类,并比较分类模型的性能。
本研究中使用的预测模型对肌肉质量指数的AUC评分为0.7671,对肌肉减少症的AUC评分为0.7649,最成功的算法是支持向量机(SVM)和多层感知器(MLP)。已证明预测这两种情况的关键因素是相对力量、年龄、体重和5次坐立试验(5STS)。没有单一因素足以预测任何一种情况,并且通过综合考虑所有选定特征,该研究强调了整体方法在理解和解决老年人肌肉减少症和肌肉质量指数问题中的重要性。
通过探索影响老年人肌肉减少症和肌肉质量指数的因素,本研究强调相对力量、年龄、体重和5STS是重要决定因素。在考虑这些临床指标并采用整体方法时,这可为设计个性化和有效的干预措施以促进健康老龄化提供关键信息。