Machine Learning-Guided Training for Elite Athletes (MLGT) (MLGT)
A Machine Learning-Guided Training Approach to Reduce Injuries and Enhance Performance in Elite Athletes: A Prospective Cohort Evaluation
Plaintext The purpose of this study is to evaluate whether a personalized training protocol driven by machine learning can successfully reduce time-loss sports injuries and enhance athletic performance in elite athletes.
During a 9-month competitive sports season, a group of elite athletes was divided into two training
연구 개요
상태
상태
정황
정황
개입 / 치료
개입 / 치료
상세 설명
This study evaluated the efficacy of an adaptive, machine learning-driven training protocol compared to traditional athletic preparation over a full 9-month competitive sports season. The primary objective was to determine if a dynamic, technology-led approach to training load management could minimize time-loss injuries while concurrently optimizing athletic performance markers.
Participants were elite athletes randomly allocated into two parallel groups:
- The Experimental Group, which underwent training regimens dynamically adjusted using a machine learning algorithm that analyzed individual biomechanical data and historical workload parameters to optimize training volume and intensity.
- The Control Group, which followed standard, predetermined high-performance athletic training protocols typical for competitive season preparation.
Throughout the 9-month intervention period, daily tracking was maintained by technical and coaching staff. Data collection focused on the incidence, severity, and duration of all time-loss sports injuries. Concurrently, sport-specific performance parameters were periodically assessed to evaluate physical conditioning and competitive readiness. Statistical analyses were subsequently conducted to compare cumulative injury rates, total days lost to injury, and net performance adaptations between the two cohorts.
연구 유형
연구 유형
등록 (실제)
등록
단계
단계
- 해당 없음
연락처 및 위치
연구 장소
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Shewa
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Debre Berhan, Shewa, 에티오피아, 445
- Dr. Arefayne
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Debre Berhan, Shewa, 에티오피아, 445
- M Dessye
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참여기준
자격 기준
자격 기준
공부할 수 있는 나이
- 성인
건강한 자원 봉사자를 받아들입니다
설명
Inclusion Criteria:
- Must be a competitive, elite-level or sub-elite track and field athlete specializing in short-to-mid distance running events.
- Aged between 18 and 35 years old.
- Actively participating in structured athletic training programs for at least 2 years prior to enrollment.
- Free from any acute musculoskeletal injuries or medical conditions that prevent full participation in high-intensity training protocols.
- Capable and willing to provide written informed consent to participate in the study.
Exclusion Criteria: 1. Current or recent (within the past 3 months) major lower-limb injury or surgery that restricts maximal sprint or aerobic performance.
2. Concurrent use of performance-enhancing drugs or medications that influence metabolic or cardiovascular responses.
3. Inability to maintain consistent participation in the designated training protocols due to scheduling conflicts or travel.
4. Any underlying cardiovascular, respiratory, or systemic condition that creates a health risk during exhaustive exercise testing.
공부 계획
연구는 어떻게 설계됩니까?
디자인 세부사항
- 주 목적: 방지
- 할당: 무작위
- 중재 모델: 병렬 할당
- 마스킹: 없음(오픈 라벨)
팔의 수
무기와 개입
참가자 그룹 / 팔참가자 그룹 / 팔 |
개입 / 치료개입 / 치료 |
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활성 비교기: Control Cohort
Elite adolescent sprinters who followed standard, predetermined high-performance athletic training protocols typical for competitive season preparation.
This group received structured training volume and intensity matching standard athletic coaching guidelines, without any machine learning interventions or adaptive workload adjustments.
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A personalized, data-driven training intervention where athletic workloads are dynamically adjusted based on predictive modeling.
The protocol continuously tracks individual physiological markers, biomechanical data, and workload history to optimize training volume and intensity.
This adaptive approach aims to maximize performance gains while minimizing the risk of overtraining and injury during the competitive season.
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실험적: Algorithmic Cohort
Elite adolescent sprinters who received a personalized training protocol dynamically optimized by a machine learning algorithm.
The framework evaluated individual biomechanical variables, morning heart rate variability (HRV), sleep quality, and physiological fatigue metrics to adjust training volume and intensity.
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A personalized, data-driven training intervention where athletic workloads are dynamically adjusted based on predictive modeling.
The protocol continuously tracks individual physiological markers, biomechanical data, and workload history to optimize training volume and intensity.
This adaptive approach aims to maximize performance gains while minimizing the risk of overtraining and injury during the competitive season.
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연구는 무엇을 측정합니까?
주요 결과 측정
주요 결과 측정
결과 측정 |
측정값 설명 |
기간 |
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Changes in Sprint Performance Time
기간: 12 weeks
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Sprint performance will be assessed using electronic timing gates to record running times over a specific distance from a stationary start.
Lower times indicate improved sprint performance.
Measurements will be taken at baseline and at the conclusion of the training intervention period to evaluate the impact of the workload protocols.
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12 weeks
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공동 작업자 및 조사자
수사관
수사관
- 수석 연구원: Dr. Arefayne M Dessye, PhD, Debre Berhan Univeristy
연구 기록 날짜
연구 주요 날짜
연구 시작 (실제)
연구 시작
기본 완료 (실제)
기본 완료
연구 완료 (실제)
연구 완료
연구 등록 날짜
최초 제출
최초 제출
QC 기준을 충족하는 최초 제출
QC 기준을 충족하는 최초 제출
처음 게시됨 (실제)
처음 게시됨
연구 기록 업데이트
마지막 업데이트 게시됨 (실제)
마지막 업데이트 게시됨
QC 기준을 충족하는 마지막 업데이트 제출
QC 기준을 충족하는 마지막 업데이트 제출
마지막으로 확인됨
마지막으로 확인됨
추가 정보
이 연구와 관련된 용어
기타 연구 ID 번호
기타 연구 ID 번호
- DBU-SS-2023-008
- IRB#DBU-SS-2023-008 (레지스트리 식별자: ClinicalTrials.gov)
개별 참가자 데이터(IPD) 계획
개별 참가자 데이터(IPD)를 공유할 계획입니까?
IPD 계획 설명
약물 및 장치 정보, 연구 문서
미국 FDA 규제 의약품 연구
미국 FDA 규제 기기 제품 연구
이 정보는 변경 없이 clinicaltrials.gov 웹사이트에서 직접 가져온 것입니다. 귀하의 연구 세부 정보를 변경, 제거 또는 업데이트하도록 요청하는 경우 register@clinicaltrials.gov. 문의하십시오. 변경 사항이 clinicaltrials.gov에 구현되는 즉시 저희 웹사이트에도 자동으로 업데이트됩니다. .
Adaptive Machine Learning Workload Optimization에 대한 임상 시험
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