“If things like hamstring injuries, calf injuries are coming up in a space, previously you'd have just said, oh, that's unlucky, that's unfortunate. But actually, now you have to start asking questions and auditing every injury and going, is this isolated to this person or is this across the squad? Do we have to investigate this thing further? Because the idea would be that you should be able to manage and mitigate the load related injuries pretty well” – Bebhinn Flaherty (Hockey Ireland Physio)
Availability of accurate data for athletes, teams and leagues allows for more individualised analysis and programs to be created. Utilising data effectively empowers practitioners to recognise trends and patterns that are normal for specific sports, positions, all the way down to the individual themselves to keep them on their field of play for longer. Even if we gather extensive data on an athlete, it is useless unless it conveys meaningful insights or paints a comprehensive picture of that athlete. For example, GPS data in hockey informs sports scientists on variances of how much time, distances, and speed everyone expends on the pitch informing their training expectations (McGuinness et al., 2017). Aggregation of injury data indicates the high biomechanical strain induced by hockey players' trunks flexed forwards for long periods risks increasing stiffness and common injuries to the lower back, hips and thigh area in comparison to other sports (Wilmes et al., 2023), and being a drag flicker in hockey which is a specialist skill leaves them even more vulnerable to injury in this area as they have to rapidly generate a large force while in this hinged position (Ng et al., 2016).
Such data allows coaches and physios to make informed decisions around training to maximise workloads. However, where a tool could provide quantifiable information on how the response to training demands such as pain / stiffness alters normal movement patterns replicable to their specific sport could prove vital for early injury identification, injury risk, as well as athlete development and rehab. This is where DANU’s potential is realised as it detects alterations in movement strategy to the individual for both performance progressions and injury risk as evident in this case study.
DANU
The DANU system was used as a remote load monitoring tool to complement GPS and internal load data analysis for three Irish international hockey players competing in the nine-week Hockey One league in Australia.
By utilising DANU to monitor player movement profiles during the intense nine-week period and deliver meaningful biomechanical analysis, a comprehensive understanding of each athlete's response to training loads was gained. Immediate feedback was also available to coaches monitoring the athletes back in Ireland on how their players were moving at regular intervals, to provide an extensive picture of their training adaptations remotely. The three athletes covered three different positions on the pitch with a forward (KM), midfield (SH), and defender (RU) represented. RU also engaged in drag flicking sessions throughout the block, which meant that she had extra sessions involving little running load, but heavy biomechanical strain exerted on her, which has no current quantifiable load monitoring tool.
Danu integrated into their training program in two ways:
Daily Training Readiness Screening
The daily neuromuscular fatigue screening test demonstrated little change throughout the block which highlighted the athletes’ capabilities to tolerate the chronic load and recover effectively. Danu provides longitudinal athlete progression data, and alerts if any athlete deviates outside one standard deviation from their norm which none did for these tests as visible in the graphs below.
DANU Performance Progression Protocol
All plyometric assessments in the protocol for the athletes remained relatively consistent with only minor drops in scores, and the dominant limb remaining dominant throughout. Like other field-based sports, jumping alone does not capture the normative patterns in hockey and that is why a combined gait screening, which is a bonus of DANU, was performed. So, what is pivotal to a hockey player's performance on the pitch? Running effectiveness, asymmetries, change of direction and speed. It was therefore decided to take a closer look into the DANU gait testing in relation to the athletes’ response to load.
Gait Response to Load:
DANU was utilised as a periodic assessment tool to visualise how the athletes were running both at low and high speeds, and combined this with bilateral jump tests to identify dominant limbs and any deviations throughout the block during periods of high training volume that may indicate injury risk. What was found was that the bilateral analysis provided much more meaningful and actionable information than unilateral feedback alone, especially for injury and load management parameters.
DANU delivered meaningful feedback that reinforced how the athletes’ gait was responding during periods of heavy training, indicated by GPS reports where high-speed running peaked, by using the 5-minute steady state assessment. Each athlete had varied responses: Where stride time remained consistent for all athletes, what was occurring within those strides was changing as the weeks progressed. Both KM and SH showed a slight increase in average contact times, but these times remained relatively stable overall. At the same time, flight times decreased steadily, which may be attributed to fatigue as the load increased. Both athletes missed one steady state jog assessment within the block.
DANU identified an interesting change in gait in RU’s bilateral analysis. In between Test 2 and Test 3, she had a significant alteration in flight times and a shift in dominant limb contact times. This corresponded with minor discomfort identified by the athlete in her upper right hamstring area.
DANU Injury Management:
Two of the three athletes successfully completed the block, however RU suffered from an injury that was initially identified as hamstring discomfort causing a significant change in jogging strategy as highlighted in the DANU. In combining DANU with GPS, one could see how she sustained high levels of high-speed running as well as drag flicking sessions between Test 2 and 3. Taking the individualised approach, it is known that defenders, and drag flickers can be more susceptible to load based injuries (Ng et al., 2016). DANU demonstrated a shift in gait patterns which coincided with pain in her right upper hamstring, where contact times and flight times altered and an asymmetry different from her earlier norms presented. What progressed was a diagnosis of osteitis pubis by the team medical group which is inflammation in the joint between the pubic bones. DANU flagged a pain management strategy early in this injury that the athlete was compensating by loading her left leg to avoid discomfort on the injured side, which shifted her asymmetries from earlier gait assessments. How an athlete adapts their movement patterns to deal with discomfort is important to recognise as it could help identify not only if an issue is present, but also pose a second injury risk to the loaded side. DANU allowed data collection to be longitudinal, providing more data points throughout the nine-week period which not only helped to identify when the injury developed but could also be used throughout rehab empowering the athlete to take an active approach to her rehabilitation using quantitative data. A final Test 4 steady state jog was completed by RU which ascertained further asymmetry indicating how she was still offsetting to take load off her right side.
Danu Performance Monitoring
DANU reflected performance related outcomes in the sprinting mechanics of all the athletes. While outcome measures of time for both the 25- and 50-yard sprints were not recorded by the system, sprinting strategy was. Two of the athletes in particular experienced decreased contact times, and stride times combined with increased flight times, peak tibial acceleration, and cadence over both sprint distances. Combining this with a maintained or progressive RSI from jump assessments might suggest a capacity to maintain and improve the max velocity phase in the 50-yard sprint where leg stiffness is increased (Haugen et al., 2019). Danu provided a quantifiable measure of how each athlete completed a sprint which can be as valuable as the outcome time itself while remaining in their sport specific environment.
Conclusion
While sports technology is integrated throughout performance related outputs today, an individualised approach to early identification of athlete movement strategy, and how it changes on the field of play, could be a game changer.
Here, DANU helped three athletes and their practitioners understand their own responses to a high workload by individual limb load, as well as provide meaningful feedback on an injury profile for one of the athletes in a remote environment. The learnings obtained were related to how one assesses field-based athletes who often must sustain chronic load in their season schedules, while not always feeling 100%. If they play a sport that places a heavy demand on running, perhaps an analysis tool that can assess bilateral gait seamlessly could help bridge the gap between injury and adaptations in their sport.
Bibliography
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