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Prospective Cohort Study of Villarreal CF Youth Players (VILLAREALFC)

2026年6月16日 更新者:JAVIER MARTI NEZ-GRAMAGE、Cardenal Herrera University

A Single-season Prospective Observational Cohort Study of the Villarreal CF Male Youth Academy"

Anterior cruciate ligament (ACL) injuries represent a highly relevant issue in both grassroots and professional sports, with a particularly high incidence in young and female populations. The objective of this project is to develop and validate a multiscale predictive algorithm for ACL injury risk in athletes from Villarreal CF (aged 10-45), integrating biomechanical, physiological, genetic, and gut microbiome biomarkers.

The study, with a prospective and longitudinal design (4 years), will include a cohort of 200-250 players from the academy and first team. The following assessments will be conducted: biomechanical analysis of jumps using force platforms (instrumented LESS), physiological monitoring through resting heart rate and nocturnal heart rate variability (HRV), genotyping from saliva samples, and characterization of the gut microbiome 16 rRNA sequencing. The systematic recording of training, exposures, and injuries will follow OSTRC criteria and will be supervised by the club's medical team.

The expected outcome is a multivariate predictive model, validated in a professional sports setting, capable of identifying individual risk profiles and generating a personalized score to guide preventive interventions (exercise, strength training, nutritional or probiotic strategies). This approach aims to reduce the incidence of ACL injuries, optimize performance, and translate biomedical knowledge into clinical and sports practice.

調査の概要

状態

まだ募集していません

詳細な説明

Quality Assurance Plan: The quality of the data and project processes is guaranteed through a centralized technological infrastructure and a strict biological sample traceability protocol. The pseudonymized database is hosted within the institutional cloud-based data infrastructure of the CEU Cardenal Herrera University (UCH-CEU). The system implements restricted access control through personal, non-transferable credentials, institutional authentication, and automated operation logging (activity logs). The laboratories responsible for biological processing (saliva and stool) operate under international quality certifications ISO 9001, ISO 15189, and ISO 27001. Additionally, the genetic bioinformatic analysis integrates an automated quality control system (QC-System) that filters and validates genetic variants based on international standards (call rate >98%, Hardy-Weinberg equilibrium, and minor allele frequency/MAF).

Data Checks:Automated and manual consistency checks are applied across the different analytical dimensions. In the bioinformatic layer, the AIG (Automated Intelligence Genetics) platform executes automatic duplication checks and filters artifacts during DNA sequencing. In the microbiome dimension, the bioinformatic workflow utilizes QIIME2® and DADA2 tools alongside positive controls (standard microbial communities) and negative controls (blank extractions) to identify and correct methodological biases or batch effects. For the biomechanical (LESS test) and clinical assessments (Lachmeter®), three valid trials are performed per participant, and the measurements are averaged, verifying internal consistency via the intraclass correlation coefficient (ICC), standard error of measurement (SEM), and smallest detectable change (SDC).

Source Data Verification (SDV):The study design requires cross-referencing records with external platforms to ensure the accuracy of longitudinal information. Daily physiological data (resting heart rate and nocturnal heart rate variability) are automatically synchronized from the WHOOP Strap 4.0 wearable devices to the internal monitoring platform of Villarreal CF. Furthermore, the primary variable-injury incidence-is verified through direct clinical confirmation by the Villarreal CF medical team following the club's standardized diagnostic criteria, which are prospectively contrasted against weekly exposure records filled out under technical staff supervision.

Data Dictionary:The protocol defines a set of multiscale variables coded under a unique alphanumeric code for each participant, omitting any directly identifiable information.

The variable dictionary explicitly includes:

  • Biomechanical Biomarkers: Peak vertical force, vertical loading rate (first 50-100 ms), mediolateral/anteroposterior forces, contact time, jump height, and Reactive Strength Index (RSI) using ForceDecks platforms, evaluating interlimb asymmetries with a clinical relevance threshold set at >10-15%. Normalized muscle activation (%) and median frequency (Hz) obtained via BTS FreeEMG® surface electromyography. Anterior tibial displacement in millimeters measured by the Lachmeter® device (considering a side-to-side difference >3 mm as clinically relevant).
  • Physiological Biomarkers: Nocturnal heart rate variability (HRV) and resting heart rate (RHR) measured via optical photoplethysmography (PPG).
  • Genetic Biomarkers: Single nucleotide variants (SNVs) and insertions/deletions within targeted gene categories (ACTN3 rs1815739, ACE rs4343, COL5A1 rs12722, COL1A1 rs1800012, IL6 rs1800795, SOD2 rs4880, PPARGC1A rs8192678, MCT1 rs1049434, CYP1A2 rs762551, FTO rs9939609, MTHFR rs1801133, VDR rs2228570, ADRB2 rs1042713).
  • Microbiome Biomarkers: Alpha and beta diversity indices, and taxonomic profiles organized into 14 characteristic profiles (clusters) using FISABIO's CLOM platform.
  • Exposure and Injury Variables: Injury type, location, mechanism, time-loss duration, and number of exposure hours to training sessions and competitions (questionnaire adapted from the UEFA Champions League injury study).

Standard Operating Procedures (SOPs):The study operations are governed by sequential, standardized processes:

  • Recruitment: Coordinated with the club in consecutive phases including a verbal/written information session, signing of informed consent (or written assent for minors aged ≥12 along with parental/legal guardian consent), and immediate assignment of a pseudonymization code.
  • Data Collection: Genetics are collected only once at baseline via buccal swab (using the Overgenes® kit). Gut microbiome, biomechanics (LESS and sEMG), and clinical laxity are systematically measured twice per season (beginning and end). Physiology is recorded daily. Exposure and injury data are logged weekly.
  • Management of Individual Findings / Incidental Findings: If high-risk injury profiles are identified, a confidential individual communication protocol is triggered through Dr. Simón Bueno López (Club Medical Service), respecting the participant's signed "right not to know". Disclosing individual data to coaching or technical staff, or using it for contractual or sports selection purposes, is strictly prohibited.
  • Management of Changes: A progressive transition from 16S rRNA sequencing to shotgun metagenomics is planned, requiring a technical equivalence control report to be submitted to the Ethics Committee as a minor amendment prior to operational implementation.

Sample Size Calculation:The calculation is based on the documented incidence of ACL injuries in Spanish First Division professional football (approximately 0.0364 injuries per 1,000 total exposure hours) and the significantly higher relative risk (2- to 8-fold higher) observed in female players. Under the assumptions of a 95% confidence level and 80% statistical power, it was estimated that at least 16 to 20 incident ACL cases are required to achieve adequate power for sex-based comparisons. Given that a professional team accumulates roughly 30,000 exposure hours per season, it was determined that this number of events can be achieved through the longitudinal follow-up of a cohort of approximately 200 to 250 athletes monitored continuously over a minimum of two to three consecutive seasons.

Statistical Analysis Plan:The integration of data into a learning matrix is structured across six successive phases combining classical statistics and machine learning:

  • Phase 1: Calculation of means, standard deviations, medians, and confidence intervals to characterize the cohort and identify potential confounding variables.
  • Phase 2: Group differences evaluated using parametric tests (t-test, ANOVA) or non-parametric tests (Mann-Whitney U, Kruskal-Wallis) depending on data distribution, applying the Benjamini-Hochberg procedure (FDR) for multiple comparison adjustments.
  • Phase 3: Logistic regression models to estimate injury risk adjusted for predictors (sex, age, load) and Cox proportional hazards models to analyze time-to-injury events.
  • Phase 4: Development of predictive models optimized through the AIG framework using random forests, gradient boosting, penalized regression (LASSO), and multilayer neural networks, utilizing k-fold cross-validation (k=5 or 10) and bootstrap resampling to prevent overfitting.
  • Phase 5: Analysis of ROC curves, calculation of the Area Under the Curve (AUC), Hosmer-Lemeshow calibration tests, sensitivity, specificity, positive predictive value (PPV), and negative predictive value (NPV). - Phase 6 (Score Development): Integration of variables with the highest predictive weight into a multiscale quantitative index (score) to assign each player an individualized risk level (low, moderate, high), internally validated via cross-validation or temporally by season.

研究の種類

観察的

入学 (推定)

200

連絡先と場所

このセクションには、調査を実施する担当者の連絡先の詳細と、この調査が実施されている場所に関する情報が記載されています。

研究連絡先

  • 名前:Javier Martínez Gramage, Professor
  • 電話番号:+34617024366
  • メールjmg@uchceu.es

研究連絡先のバックアップ

研究場所

    • Spain
      • Villarreal、Spain、スペイン、12540
        • Villareal Football Club
        • コンタクト:
          • Javier Mr Martínez Gramage, Professor
          • 電話番号:+34617024366
          • メールjmg@uchceu.es
        • コンタクト:

参加基準

研究者は、適格基準と呼ばれる特定の説明に適合する人を探します。これらの基準のいくつかの例は、人の一般的な健康状態または以前の治療です。

適格基準

就学可能な年齢

  • 大人

健康ボランティアの受け入れ

いいえ

サンプリング方法

確率サンプル

調査対象母集団

The target population includes active athletes, both in developmental stages and at the professional level, participating in sports with a high risk of ACL injury, such as soccer, basketball, handball, and volleyball. These disciplines share biomechanical patterns involving jumping, deceleration, and changes of direction that impose high loads on the knee joint complex, justifying their selection for the development of predictive models applicable across different sports contexts.

説明

Inclusion Criteria:

  • Active federation license with Villarreal CF during the study period.
  • Regular participation in training sessions and official competitions.
  • Aged between 10 and 45 years (encompassing academy, youth development, and first-team categories).
  • For participants under 18 years of age: mandatory written informed consent from a parent or legal guardian.
  • For minor participants aged ≥12 years: written informed assent must be provided by the athlete in addition to parental consent.

Exclusion Criteria:

  • Previous bilateral anterior cruciate ligament (ACL) reconstruction.
  • Active severe musculoskeletal injury that prevents the execution of biomechanical or physiological testing.
  • Systemic disease or medical condition that limits sports participation or interferes with the study's biological/physiological parameters.
  • Deregistration or transfer to another sports club during the prospective follow-up period. Refusal or inability to comply with the protocol's testing procedures or long-term follow-up requirements.

研究計画

このセクションでは、研究がどのように設計され、研究が何を測定しているかなど、研究計画の詳細を提供します。

研究はどのように設計されていますか?

デザインの詳細

コホートと介入

グループ/コホート
Villareal FC Group
The target population includes active athletes, both male and female players, both in developmental stages and at the professional level, participating in sports with a high risk of ACL injury, such as soccer, basketball, handball, and volleyball.

この研究は何を測定していますか?

主要な結果の測定

結果測定
メジャーの説明
時間枠
Incidence of anterior cruciate ligament (ACL) injury
時間枠:From baseline up to 36 months, across 3 consecutive seasons.
Number of new acute ACL injuries confirmed clinically and radiologically by the medical staff, recorded alongside total training and match exposure hours to calculate injury rates. Unit of measure: absolute number.
From baseline up to 36 months, across 3 consecutive seasons.

二次結果の測定

結果測定
メジャーの説明
時間枠
Landing Error Scoring System (LESS)
時間枠:From enrollment to the beginning and end of each season, across 36 months.
Assessment of landing biomechanics and neuromuscular control using the instrumented Landing Error Scoring System (LESS). It is a total score (a numerical score ranging from 0 to 17). Unit of measure: absolute value.
From enrollment to the beginning and end of each season, across 36 months.
Peak vertical force
時間枠:From enrollment to the beginning and end of each season, across 36 months
Peak vertical force, The maximum impact force recorded along the vertical axis during landing. (unit of measure: Newton)
From enrollment to the beginning and end of each season, across 36 months
Time to peak force
時間枠:From enrollment to the beginning and end of each season, across 36 months
Time to peak force: The time interval that elapses from the exact moment of initial ground contact until the peak vertical force (described above) is reached. Unit of measurement: Milliseconds (ms) or Seconds (s).
From enrollment to the beginning and end of each season, across 36 months
Loading Rate
時間枠:From enrollment to the beginning and end of each season, across 36 months
Loading Rate, ndicates how rapidly force is applied to the body during impact. Mathematically, it is the slope of the force-time curve. Unit of measurement: Newtons per second (N/s).
From enrollment to the beginning and end of each season, across 36 months
Interlimb Asymmetries
時間枠:From enrollment to the beginning and end of each season, across 36 months
Interlimb Asymmetries, Compares the difference in performance or loading between the dominant (or healthy) limb and the non-dominant (or injured) limb using data from the dual force plates. Unit of measurement: Percentage (%).
From enrollment to the beginning and end of each season, across 36 months
Reactive Strength Index (RSI)
時間枠:From enrollment to the beginning and end of each season, across 36 months.
Measures an athlete's ability to quickly transition from an eccentric to a concentric contraction (the stretch-shortening cycle) during a plyometric jump (such as a Drop Jump). It is calculated by dividing jump height by contact time.Unit of measurement: it is derived from dividing meters by seconds (m/s).
From enrollment to the beginning and end of each season, across 36 months.
Genetic Predisposition Risk Profile
時間枠:Baseline
Identification of genetic polymorphisms related to collagen structure, inflammatory response, oxidative stress, and mechanotransduction, analyzed from saliva samples using high-density genotyping technologies.
Baseline
Gut microbiome composition and diversity
時間枠:From the beginning and end of each season, across 36 months.
Characterization of the gut microbiome using 16S rRNA sequencing (V3-V4 region), including alpha diversity, beta diversity, taxonomic composition, and identification of pro-inflammatory or tissue-recovery-modulating microbial profiles.
From the beginning and end of each season, across 36 months.
Neuromuscular Activation Patterns (sEMG) of the Rectus Femoris
時間枠:From the beginning and end of each season, across 36 months.
Normalized muscle activation (%) and median frequency (Hz) of the rectus femoris during treadmill running
From the beginning and end of each season, across 36 months.
Neuromuscular Activation Patterns (sEMG) of gluteus maximus
時間枠:From the beginning and end of each season, across 36 months.
Normalized muscle activation (%) and median frequency (Hz) of gluteus maximus during treadmill running.
From the beginning and end of each season, across 36 months.
Neuromuscular Activation Patterns (sEMG) of biceps femoris
時間枠:From the beginning and end of each season, across 36 months.
Normalized muscle activation (%) and median frequency (Hz) of biceps femoris during treadmill running
From the beginning and end of each season, across 36 months.
Neuromuscular Activation Patterns (sEMG) of semitendinosus
時間枠:From the beginning and end of each season, across 36 months.
Normalized muscle activation (%) and median frequency (Hz) of semitendinosus during treadmill running
From the beginning and end of each season, across 36 months.
Resting Heart Rate (RHR)
時間枠:Daily continuous monitoring from baseline up to 36 months
Resting heart rate measures the number of times the heart beats per minute while the subject is completely at rest (in this case, during sleep). Unit of measurement: Beats per minute (bpm).
Daily continuous monitoring from baseline up to 36 months
Heart Rate Variability (HRV)
時間枠:Daily continuous monitoring from baseline up to 36 months
HRV measures the variation in time intervals between consecutive heartbeats (R-R intervals).
Daily continuous monitoring from baseline up to 36 months

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ここでは、この調査に関係する人々や組織を見つけることができます。

スポンサー

捜査官

  • スタディチェア:Javier Martínez Gramage, Professor、Cardenal Herrera University

出版物と役立つリンク

研究に関する情報を入力する責任者は、自発的にこれらの出版物を提供します。これらは、研究に関連するあらゆるものに関するものである可能性があります。

研究記録日

これらの日付は、ClinicalTrials.gov への研究記録と要約結果の提出の進捗状況を追跡します。研究記録と報告された結果は、国立医学図書館 (NLM) によって審査され、公開 Web サイトに掲載される前に、特定の品質管理基準を満たしていることが確認されます。

主要日程の研究

研究開始 (推定)

2026年7月1日

一次修了 (推定)

2027年1月1日

研究の完了 (推定)

2027年5月1日

試験登録日

最初に提出

2026年6月11日

QC基準を満たした最初の提出物

2026年6月16日

最初の投稿 (実際)

2026年6月17日

学習記録の更新

投稿された最後の更新 (実際)

2026年6月17日

QC基準を満たした最後の更新が送信されました

2026年6月16日

最終確認日

2026年5月1日

詳しくは

本研究に関する用語

追加の関連 MeSH 用語

その他の研究ID番号

  • CEEI25/769

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いいえ

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いいえ

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