| Literature DB >> 31883068 |
Vijay Sarthy M Sreedhara1, Gregory M Mocko2, Randolph E Hutchison3.
Abstract
The ability to predict the systematic decrease of power during physical exertion gives valuable insights into health, performance, and injury. This review surveys the research of power-based models of fatigue and recovery within the area of human performance. Upon a thorough review of available literature, it is observed that the two-parameter critical power model is most popular due to its simplicity. This two-parameter model is a hyperbolic relationship between power and time with critical power as the power-asymptote and the curvature constant denoted by W'. Critical power (CP) is a theoretical power output that can be sustained indefinitely by an individual, and the curvature constant (W') represents the amount of work that can be done above CP. Different methods and models have been validated to determine CP and W', most of which are algebraic manipulations of the two-parameter model. The models yield different CP and W' estimates for the same data depending on the regression fit and rounding off approximations. These estimates, at the subject level, have an inherent day-to-day variability called intra-individual variability (IIV) associated with them, which is not captured by any of the existing methods. This calls for a need for new methods to arrive at the IIV associated with CP and W'. Furthermore, existing models focus on the expenditure of W' for efforts above CP and do not model its recovery in the sub-CP domain. Thus, there is a need for methods and models that account for (i) the IIV to measure the effectiveness of individual training prescriptions and (ii) the recovery of W' to aid human performance optimization.Entities:
Keywords: Critical power; Energy expenditure; Fatigue; Human performance modeling; Recovery; Time to exhaustion
Year: 2019 PMID: 31883068 PMCID: PMC6934642 DOI: 10.1186/s40798-019-0230-z
Source DB: PubMed Journal: Sports Med Open ISSN: 2198-9761
Fig. 1The two-parameter model. a The hyperbolic form and b the linear transformation with critical power (CP) as the -intercept and curvature constant (W′) as the slope
Fig. 2The two-parameter model and its limitations. As tLim tends to 0, P tends to ∞, and critical power (CP) is the power asymptote at tLim = ∞
Fig. 3The two-parameter model (solid line), the three-parameter model (dashed line), and the exponential model (dotted line) fitted to the same experimental data (solid circles) presented by Gaesser and colleagues [34]. Data extracted from Fig. 2 in [34] (p. 1434) and redrawn with permission using the values reported in the original article
Summary of estimates from all models fit to the data presented by Gaesser and colleagues [34]
| Model | CP ( | Additional model parameters (λ, τ, kcycle, or k) (s) | ||
|---|---|---|---|---|
| Two-parameter model | 1 176 | 2 29100 | 3 NA | 4 NA |
| 5 Three-parameter model | 6 165 | 7 47900 | 8 491 | 9 − 146.93 |
| 10 Exponential model | 11 205 | 12 NA | 13 452 | 14 0.0044 or − 225.2867* |
*Morton’s [54] k = − 225.2867, Hopkins’ [49] τ = 225.2867, which are same as Weyand’s [53] − 1/kcycle and Ward-Smith’s [3] − 1/λ
Fig. 4Schematic representation of a 3-min all-out test to determine critical power (CP) and the curvature constant (W′). The average power of the last 30s yields CP and the area below the curve and above CP yields W′
Fig. 5Repeated constant work-rate (CWR) tests to capture intra-individual variability (IIV) associated with critical power (CP) and curvature constant (W′) estimates. The dotted, dashed, and dot-dashed lines show the fits to the different sets of data and their respective asymptotes. The grand means for CP and W′ are obtained by averaging the respective parameters estimates from each curve fitting
Fig. 6Morton’s biexponential model [54] plots showing positive inertial resistance of ergometer flywheel, PIN (solid line) and negative PIN (dashed line). The positive PIN term does not yield the shape shown in Fig. 4
Fig. 7Critical power (CP) concept using Morton’s hydraulic vessel analogy [38]: Energy domains show sub-CP and supra-CP vessels connected by a tube of fixed diameter. Morton’s aerobic and anaerobic vessels are replaced by < CP and > CP respectively as the curvature constant (W′) and anaerobic work capacity (AWC) cannot be used interchangeably
Theme-wise research opportunities and applications of human performance modeling
| Themes | Research opportunities and applications |
|---|---|
| Groups versus individuals | Models derived from the data pertaining to a group of individuals may not accurately model performance of athletes outside the group, thus, suggesting a need for individual specific models [ |
| Influence of mathematical modeling on | Understanding of |
| Natural variability within an individual | Methods need to be developed to quantify the IIV associated with physiological parameters, which will be useful in measuring training effectiveness, developing higher fidelity models, and optimizing performance. |
| Recovery of | Current models described in [ |
| Performance optimization | The recovery model in conjunction with the two-parameter model enables optimization of time-trial performance as illustrated in [ |
| Wearable sensor integration | Wearable sensors provide opportunities in real-time performance tracking, optimization, and methods to reduce the reliance on laboratory equipment. Similar to studies in [ |
| Integration of individual performance modeling into team performance | Athlete-specific models could be used in determining team strategies, training interventions, planning training needs, and team selection as illustrated in [ |
| Physical exertion and health | Models of human performance could be used to gain insight into the effect of physical exertion on overall health and well-being as discussed in [ |