Lin Xie , Bo Gou , Shuwen Bai , Dong Yang , Zhe Zhang , Xiaohui Di , Chunwang Su , Xiaoni Wang , Kun Wang , Jianbao Zhang
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引用次数: 0
Abstract
Background/Objective
Considerable attention has been paid to interindividual differences in the cardiorespiratory fitness (CRF) response to exercise. However, the complex multifactorial nature of CRF response variability poses a significant challenge to our understanding of this issue. We aimed to explore whether unsupervised clustering can take advantage of large amounts of clinical data and identify latent subgroups with different CRF exercise responses within a healthy population.
Methods
252 healthy participants (99 men, 153 women; 36.8 ± 13.4 yr) completed moderate endurance training on 3 days/week for 4 months, with exercise intensity prescribed based on anaerobic threshold (AT). Detailed clinical measures, including resting vital signs, ECG, cardiorespiratory parameters, echocardiography, heart rate variability, spirometry and laboratory data, were obtained before and after the exercise intervention. Baseline phenotypic variables that were significantly correlated with CRF exercise response were identified and subjected to selection steps, leaving 10 minimally redundant variables, including age, BMI, maximal oxygen uptake (VO2max), maximal heart rate, VO2 at AT as a percentage of VO2max, minute ventilation at AT, interventricular septal thickness of end-systole, E velocity, root mean square of heart rate variability, and hematocrit. Agglomerative hierarchical clustering was performed on these variables to detect latent subgroups that may be associated with different CRF exercise responses.
Results
Unsupervised clustering revealed two mutually exclusive groups with distinct baseline phenotypes and CRF exercise responses. The two groups differed markedly in baseline characteristics, initial fitness, echocardiographic measurements, laboratory values, and heart rate variability parameters. A significant improvement in CRF following the 16-week endurance training, expressed by the absolute change in VO2max, was observed only in one of the two groups (3.42 ± 0.4 vs 0.58 ± 0.65 ml⋅kg−1⋅min−1, P = 0.002). Assuming a minimal clinically important difference of 3.5 ml⋅kg−1⋅min−1 in VO2max, the proportion of population response was 56.1% and 13.9% for group 1 and group 2, respectively (P<0.001). Although group 1 exhibited no significant improvement in CRF at group level, a significant decrease in diastolic blood pressure (70.4 ± 7.8 vs 68.7 ± 7.2 mm Hg, P = 0.027) was observed.
Conclusions
Unsupervised learning based on dense phenotypic characteristics identified meaningful subgroups within a healthy population with different CRF responses following standardized aerobic training. Our model could serve as a useful tool for clinicians to develop personalized exercise prescriptions and optimize training effects.
背景/目的人们对运动心肺功能(CRF)反应的个体差异给予了相当大的关注。然而,CRF反应变异性的复杂多因素性质对我们理解这一问题提出了重大挑战。我们旨在探索无监督聚类是否可以利用大量临床数据,并在健康人群中识别具有不同CRF运动反应的潜在亚组。方法252名健康参与者(99名男性,153名女性;36.8±13.4岁)完成了为期4个月的中等耐力训练,每周3天,运动强度根据无氧阈值(AT)确定。在运动干预前后获得详细的临床测量,包括静息生命体征、心电图、心肺参数、超声心动图、心率变异性、肺活量测定和实验室数据。确定与CRF运动反应显著相关的基线表型变量并进行选择步骤,留下10个最小冗余变量,包括年龄、BMI、最大摄氧量(VO2max)、最大心率、at时VO2占VO2max的百分比、at时的分钟通气量、收缩末期室间隔厚度、E速度,心率变异性的均方根和红细胞压积。对这些变量进行聚集层次聚类,以检测可能与不同CRF运动反应相关的潜在亚组。结果无监督聚类显示两个相互排斥的组具有不同的基线表型和CRF运动反应。两组在基线特征、初始适应度、超声心动图测量、实验室值和心率变异性参数方面存在显著差异。在16周耐力训练后,CRF的显著改善(以VO2max的绝对变化表示)仅在两组中的一组中观察到(3.42±0.4 vs 0.58±0.65 ml·kg−1·min−1,P=0.002),第1组和第2组的人群反应比例分别为56.1%和13.9%(P<;0.001)。尽管第1组CRF在组水平上没有显著改善,但舒张压显著降低(70.4±7.8 vs 68.7±7.2 mm Hg,P=0.027)。结论基于密集表型特征的无监督学习在标准化有氧训练后的健康人群中确定了具有不同CRF反应的有意义的亚组。我们的模型可以作为临床医生开发个性化运动处方和优化训练效果的有用工具。
期刊介绍:
The Journal of Exercise Science and Fitness is the official peer-reviewed journal of The Society of Chinese Scholars on Exercise Physiology and Fitness (SCSEPF), the Physical Fitness Association of Hong Kong, China (HKPFA), and the Hong Kong Association of Sports Medicine and Sports Science (HKASMSS). It is published twice a year, in June and December, by Elsevier.
The Journal accepts original investigations, comprehensive reviews, case studies and short communications on current topics in exercise science, physical fitness and physical education.