| Literature DB >> 27570626 |
Andrew J Vickers1, Emily A Vertosick1.
Abstract
BACKGROUND: Studies of endurance running have typically involved elite athletes, small sample sizes and measures that require special expertise or equipment.Entities:
Keywords: Performance; Prediction modeling; Running; Sports training
Year: 2016 PMID: 27570626 PMCID: PMC5000509 DOI: 10.1186/s13102-016-0052-y
Source DB: PubMed Journal: BMC Sports Sci Med Rehabil ISSN: 2052-1847
Characteristics of study participants (N = 2,303)
| Age | 35 (29, 42) |
| Sex | |
| Female | 890 (39 %) |
| Male | 1,413 (61 %) |
| BMI | 23.4 (21.7, 25.2) |
| Type of runner | |
| Strictly endurance | 706 (31 %) |
| Generally endurance | 1287 (56 %) |
| Generally speed | 297 (13 %) |
| Strictly speed | 13 (<1 %) |
| Typical weekly training mileage | 30 (20, 42) |
| Any injury during training? | |
| Nothing that stopped me running | 1564 (68 %) |
| Yes, I had to take a few days off | 532 (23 %) |
| Yes, I had to take more than a week off from running | 207 (9 %) |
| Ran intervals most weeks | 1181 (51 %) |
| Did tempo runs most weeks | 1328 (58 %) |
| Type of footwear | |
| Minimalist | 465 (20 %) |
| Normal running shoe | 1805 (78 %) |
| Vibrams, sandals, or barefoot | 33 (1.4 %) |
Given as median (IQR) or frequency (%). Data for all participants were available for all predictors listed in the table
Age, sex, race training, velocity and time, by race distance
| 5 km | 5 mile | 10 km | 10 mile | Half-marathon | Marathon | |
|---|---|---|---|---|---|---|
| ( | ( | ( | ( | ( | ( | |
| Age | 34 (29, 42) | 34 (28, 41) | 35 (30, 43) | 34 (29, 42) | 35 (30, 43) | 35 (30, 43) |
| Female | 532 (38 %) | 106 (34 %) | 339 (36 %) | 137 (38 %) | 686 (43 %) | 366 (36 %) |
| Typical Mileage | 28 (18, 40) | 25 (16, 40) | 25 (18, 40) | 28 (20, 40) | 30 (20, 40) | 40 (30, 50) |
| Intervals | 716 (52 %) | 165 (53 %) | 462 (49 %) | 177 (50 %) | 839 (53 %) | 579 (57 %) |
| Tempo Runs | 773 (56 %) | 164 (52 %) | 535 (57 %) | 208 (58 %) | 942 (60 %) | 684 (67 %) |
| Race Time | 00:20:35 (00:18:20, 00:23:28) | 00:34:59 (00:29:44, 00:41:04) | 00:44:51 (00:39:48, 00:51:30) | 01:14:21 (01:03:41, 01:23:08) | 01:39:06 (01:28:00, 01:52:10) | 03:28:02 |
| Race Time | 00:26:01 | 00:43:34 | 00:54:58 (00:48:12, 01:02:08) | 01:32:00 | 01:56:32 (01:44:02, 02:12:16) | 03:54:36 |
| Race Velocity | 06:37 (05:54, 07:33) | 07:00 (05:57, 08:13) | 07:13 (06:24, 08:17) | 07:26 (06:22, 08:19) | 07:33 (06:43, 08:33) | 07:56 (07:00, 09:04) |
| Race Velocity | 08:22 (07:18, 09:23) | 08:43 (07:30, 09:52) | 08:51 (07:45, 10:00) | 09:12 (08:01, 10:24) | 08:53 (07:56, 10:05) | 08:57 (08:04, 10:18) |
Given as median (IQR) or frequency (%). Note that data from an individual runner will appear in two or three different columns. Race velocity is given as minutes per mile
Multivariable analysis of race time
| Covariate | Marathon | % change | Half Marathon | % change | 10 km | % change | 5 km | % change | Interaction |
|---|---|---|---|---|---|---|---|---|---|
| Without adjustment for BMI | |||||||||
| Male | 03:47:46 | 01:39:48 | 00:44:42 | 00:20:46 | |||||
| Female | 04:11:56 | 10.6 % | 01:54:42 | 14.9 % | 00:52:58 | 18.5 % | 00:25:06 | 20.9 % | <0.0001 |
| No tempo runs | 04:02:55 | 01:48:17 | 00:49:59 | 00:23:15 | |||||
| Tempo runs | 03:52:50 | −4.2 % | 01:43:34 | −4.4 % | 00:46:22 | −7.2 % | 00:21:51 | −6.0 % | 0.002 |
| No intervals | 04:01:28 | 01:47:35 | 00:48:32 | 00:22:53 | |||||
| Intervals | 03:52:57 | −3.5 % | 01:43:39 | −3.7 % | 00:47:18 | −2.5 % | 00:22:01 | −3.8 % | 0.5 |
| Adjusting for BMI | |||||||||
| Male | 03:43:06 | 01:37:40 | 00:43:32 | 00:20:18 | |||||
| Female | 04:13:23 | 13.6 % | 01:55:43 | 18.5 % | 00:53:12 | 22.2 % | 00:25:12 | 24.2 % | <0.0001 |
| No tempo runs | 03:59:38 | 01:46:52 | 00:49:05 | 00:22:49 | |||||
| Tempo runs | 03:51:15 | −3.5 % | 01:43:01 | −3.6 % | 00:45:56 | −6.4 % | 00:21:44 | −4.7 % | 0.005 |
| No intervals | 03:58:21 | 01:46:18 | 00:47:32 | 00:22:29 | |||||
| Intervals | 03:51:26 | −2.9 % | 01:43:04 | −3.0 % | 00:47:01 | −1.1 % | 00:21:55 | −2.5 % | 0.6 |
The model used here was adjusted for sex, intervals, tempo runs, age, and typical mileage, and separately with and without adjustment for BMI. After creating the model, all covariates except the covariate of interest were set to the mean, velocity was predicted and velocity converted to time in minutes
Fig. 1Race velocity in minutes per mile by age (a, adjusted for BMI and typical training mileage), BMI (b, adjusted for age and typical training mileage) and typical training mileage (c, adjusted for age and BMI). All models were also adjusted for sex and whether the runner trained with intervals or tempo runs. The tables underneath each figure represent the number of runners within the given age, BMI or mileage categories who ran a race of that distance. Yellow line: 5 km velocity; green line: 10 km velocity; red line: half-marathon velocity; blue line: marathon velocity
Fig. 2Calibration plots comparing observed marathon times to those predicted by Model 1 (a, using information from one prior race), Model 2 (b, using information from two prior races), and the Riegel formula (c, where k = 1.07 and the shorter race is the longest reported non-marathon race)
Distribution of residuals
| Centile | Model 1 | Model 2 | Riegel |
|---|---|---|---|
| 5th | −23:53 | −21:38 | −36:17 |
| 10th | −18:25 | −16:47 | −30:24 |
| 25th | −9:55 | −7:31 | −19:47 |
| 33rd | −7:18 | −4:53 | −16:50 |
| 50th | −1:47 | 0:23 | −10:09 |
| 67th | 3:21 | 4:46 | −5:08 |
| 75th | 6:28 | 7:20 | −2:48 |
| 90th | 11:49 | 15:01 | 2:53 |
| 95th | 15:23 | 21:05 | 5:12 |
The table shows differences between predicted and observed race times. A negative time indicates that predicted race time is shorter than observed, that is, predicted velocity is too fast. The table shows that, for instance, nearly 25 % of runners have a predicted race time from the Riegel formula greater than 20 min too fast