| Literature DB >> 33344952 |
Gareth N Sandford1,2,3, Trent Stellingwerff1,2,3.
Abstract
Middle-distance running provides unique complexity where very different physiological and structural/mechanical profiles may achieve similar elite performances. Training and improving the key determinants of performance and applying interventions to athletes within the middle-distance event group are probably much more divergent than many practitioners and researchers appreciate. The addition of maximal sprint speed and other anaerobic and biomechanical based parameters, alongside more commonly captured aerobic characteristics, shows promise to enhance our understanding and analysis within the complexities of middle-distance sport science. For coaches, athlete diversity presents daily training programming challenges in order to best individualize a given stimulus according to the athletes profile and avoid "non-responder" outcomes. It is from this decision making part of the coaching process, that we target this mini-review. First we ask researchers to "question their categories" concerning middle-distance event groupings. Historically broad classifications have been used [from 800 m (~1.5 min) all the way to 5,000 m (~13-15 min)]. Here within we show compelling rationale from physiological and event demand perspectives for narrowing middle-distance to 800 and 1,500 m alone (1.5-5 min duration), considering the diversity of bioenergetics and mechanical constraints within these events. Additionally, we provide elite athlete data showing the large diversity of 800 and 1,500 m athlete profiles, a critical element that is often overlooked in middle-distance research design. Finally, we offer practical recommendations on how researchers, practitioners, and coaches can advance training study designs, scientific interventions, and analysis on middle-distance athletes/participants to provide information for individualized decision making trackside and more favorable and informative study outcomes.Entities:
Keywords: anaerobic speed reserve; bioenergetics; coaching; fiber type; individualized training; training science
Year: 2019 PMID: 33344952 PMCID: PMC7739647 DOI: 10.3389/fspor.2019.00028
Source DB: PubMed Journal: Front Sports Act Living ISSN: 2624-9367
Proposed framework for standardizing researcher and practitioner categories of events 800 m—marathon considering both average race velocity and subsequent physiological consequences of a given race demand.
| Male world record event duration (hr:min:ss:ms) | 1:40.91 | 3:26.00 | 7:20.67 | 12:37.35 | 26:17.53 | 58.18 | 2:01:39 |
| Average race pace intensity (% VO2max; Billat, | 115–130 | 105–115 | ~100 | 95–100 | 90–95 | 85–90 | 75–80 |
| Physiological threshold | Above VO2max | ≤VO2max, ≥ Critical velocity | <Critical velocity | ||||
| % Aerobic energy contribution (Billat, | 65–75 | 80–85 | 85–90 | 90–95 | 97 | 98 | 99.9 |
| % Aerobic energy contribution (Spencer and Gastin, | 66 ± 4 | 84 ± 3 | n/a | n/a | n/a | n/a | n/a |
| % Aerobic energy contribution (Duffield et al., | 60.3 ± 9 | 77 ± 7 | 86 ± 7 | n/a | n/a | n/a | n/a |
| Coach interpretation of % aerobic energy contribution (Gamboa et al., | 35–65 | n/a | n/a | n/a | n/a | n/a | n/a |
| % difference in aerobic contribution to 800 m | – | 5–20 | 10–25 | 20–30 | 22–32 | 23–33 | 24.9–34.9 |
Adapted from Gamboa et al. (.
Figure 1(A) Anaerobic speed reserve profiles of 19 elite male 800 and 1,500 m athletes across 800 m sub-group continuum as described in Sandford et al. (2019a). All participants seasons best (SB) 800 m ≤1:47.50 and 1,500 m SB ≤3:40.00. vVO2max estimated from 1,500 m race time as per methods of Bellenger et al. (2015) and validated in elite male runners in Sandford et al. (2019b). (B) Anaerobic speed reserve and velocity at 4 mmol/l lactate (v@4 mmol/l) across three elite middle-distance female profiles from each of the 800 m sub-groups tested in 2017. Note the between individual diversity across v@4 mmol/l, vVO2max and Maximal sprint speed—despite all having a season's best over 800 m within 1.3 s of each other. Rankings in brackets from 2017 season. vVO2max generated using methods developed by Bellenger et al. (2015) and utilized in Sandford et al. (2019a) (A). Informed consent was obtained through Auckland University of Technology ethics committee as part of Sandford et al. (2019a).
Study design principles for middle-distance running populations.
| “18 middle-distance runners,” height, weight, age, international ranking level, VO2max, middle-distance performance times | Does not provide enough information to distinguish what type of middle-distance athlete the participants since MSS is not assessed | MSS measured over 50 m used to complement the aerobic characterization of vVO2max. Elite Athletes presented across the middle distance continuum, | Allows for sub-group characterization even in underpowered studies that can have closer application and relevance for coaches and support staff frontline or for future study hypothesis generation | |
| II. Exercise prescription | %vVO2max (>VO2max) %HRmax (>VO2max) Event personal best running speeds (e.g., intervals at 800 or 1,500 m race pace) | Human locomotor performance (i.e., time to exhaustion) at intensities beyond vVO2max can be surprisingly “predicted” using only 2 locomotor entities: vVO2max and MSS (Bundle et al., | % ASR (or exercise prescription decisions set relative to both %vVO2max and %MSS) | Accounts for mechanical differences between athletes and allows the same relative physiological stimulus to be applied (Buchheit and Laursen, |
| Ill. Analysis | (1) All runners grouped together for analysis (despite some studies having 800 m (1.5–2 min) to marathon (130–160 min) specialists. | Misrepresentation of athletes ability to “respond.” Should we expect all athletes to respond equally to the same stimulus despite having very different event specialty or diverse profile to approach the same event? | Analyze data as a single group, BUT also display individual and sub-group response and differences between subgroups | Further understanding the appropriateness of a stimulus for a given sub-group profile |