| Literature DB >> 35348932 |
Lluc Montull1,2, Agne Slapšinskaitė-Dackevičienė1,3, John Kiely4, Robert Hristovski5, Natàlia Balagué6.
Abstract
Current trends in sports monitoring are characterized by the massive collection of tech-based biomechanical, physiological and performance data, integrated through mathematical algorithms. However, the application of algorithms, predicated on mechanistic assumptions of how athletes operate, cannot capture, assess and adequately promote athletes' health and performance. The objective of this paper is to reorient the current integrative proposals of sports monitoring by re-conceptualizing athletes as complex adaptive systems (CAS). CAS contain higher-order perceptual units that provide continuous and multilevel integrated information about performer-environment interactions. Such integrative properties offer exceptional possibilities of subjective monitoring for outperforming any objective monitoring system. Future research should investigate how to enhance this human potential to contribute further to athletes' health and performance. This line of argument is not intended to advocate for the elimination of objective assessments, but to highlight the integrative possibilities of subjective monitoring.Entities:
Keywords: Awareness; Complex adaptive systems; Health; Performance; Self-regulation; Technology
Year: 2022 PMID: 35348932 PMCID: PMC8964908 DOI: 10.1186/s40798-022-00432-z
Source DB: PubMed Journal: Sports Med Open ISSN: 2198-9761
Characteristics of athletes from traditional and complex system-based approaches. Adapted from Pol et al. [23], with permission
| Approach | Traditional | Complex system-based |
|---|---|---|
| Concept of organism | Machine | CAS |
| Control | Internal/external programmes | Synergies1 |
| Organization | Centrally regulated | Self-organized2 |
| Interaction with the environment | Multifactorial additive, decontextualized | Non-additive, transactional |
| Relations | Linear and static | Nonlinear3, dynamic and path-dependent4 |
1Synergy: spontaneous formation of structural and functional couplings among reciprocally compensating components to achieve task goals [39, 41, 42]
2Self-organization: spontaneous order process where some form of overall order arises from local or global interactions between parts of a system, without internal or external programme [43, 44]
3Nonlinear means non-proportional: although many CAS' behaviours may for long periods perform in a linear regime (A as independent variable provokes a proportional effect on B over time, i.e., small ΔA = small ΔB or big ΔA = big ΔB), for a certain small change of constraints their dynamics can also become non-proportional (small ΔA = big ΔB)
4Path-dependent: CAS’ behaviours are influenced by their past (i.e., history)
Characteristics of the training process from traditional and complex system-based approaches. Adapted from Balagué et al. [22], with permission
| Approach | Traditional | Complex system-based |
|---|---|---|
| Role of athletes and coaches | Executers and controllers | Co-designers, co-adapters |
| Periodization | Preprogrammed | Co-adapted |
| Monitoring (dominantly) | Objective | Subjective and objective |
| Measures | Quantitative | Qualitative and quantitative |
| Monitoring information | Fragmented and decontextualized | Integrated, contextualized |
Fig. 1Integrative proposals of objective and subjective monitoring. Objective monitoring: "integration achieved by algorithmic treatment of a collection of independent variables". Subjective monitoring: "integration achieved by experiential dimensional reduction (i.e., information compression) of multilevel organism–environment interactions acting at multiple timescales". Adapted from Balagué et al. [22], with permission
Fig. 2Relations between slow-changing and fast-changing constraints influencing subjective perception. Adapted from Balagué et al. (89), with permission