The Role of Artificial Intelligence in Sports Analytics: A Systematic Review and Meta-Analysis of Performance Trends
Abstract
1. Introduction
2. Materials and Methods
2.1. Eligibility Criteria and Search Strategy
2.2. Exclusion Criteria
2.3. Text Screening and PRISMA Search
2.4. Data Extraction and Study Coding
2.5. Quality Assessment
3. Results
3.1. Quality Assessment
Experimental Studies
- Computer Vision and Predictive Modeling Studies
3.2. Systematic Review and Meta-Analysis
- Subgroup Analyses
- Sensitivity Analysis
- Pooled Effects
- Heterogeneity Analysis
- Risk of Bias and Reporting Considerations
- Certainty of Evidence (GRADE)
4. Discussion
4.1. AI Performance
- Most Popular Metrics in AI-Based Sports Analysis
- Chatterjee et al. [7] developed an AI-driven, pose-based sports activity classification framework that accurately captures athletes’ dynamic postures across multiple disciplines, demonstrating improved biomechanical assessment over traditional methods.
- Salim et al. [10] integrated advanced sensing modalities with convolutional and recurrent neural networks in volleyball training, enabling real-time action recognition and delivering immediate, data-driven feedback to both athletes and coaches.
- Li [14] applied supervised machine learning to player movement trajectories for defensive strategy analysis in basketball, showing how AI models can reveal tactical patterns and support in-game decision-making.
- García-Aliaga et al. [16] employed ensemble machine learning techniques on player statistics to derive composite key performance indicators in football, blending individual and team metrics to refine talent evaluation.
- Krstić et al. [1] conducted a systematic review of AI applications in sports, mapping out implementation contexts from training optimization and performance monitoring to health management and injury risk prediction.
4.2. Implementation Contexts Across Sports
4.3. Ethical and Societal Considerations
4.4. Data Quality, Granularity, and Ethical Constraints
4.5. Study Limitations
5. Conclusions
Supplementary Materials
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
AI | Artificial Intelligence |
ML | Machine Learning |
DL | Deep Learning |
CNN | Convolutional Neural Network |
LSTM | Long Short-Term Memory |
RL | Reinforcement Learning |
GPS | Global Positioning System |
IMU | Inertial Measurement Unit |
IoT | Internet of Things |
PCA | Principal Component Analysis |
PICO(S) | Population, Intervention, Comparison, Outcome (±Study design) |
PRISMA | Preferred Reporting Items for Systematic Reviews and Meta-Analyses |
PROSPERO | Prospective Register of Systematic Reviews |
MMAT | Mixed Methods Appraisal Tool |
JBI | Joanna Briggs Institute |
PROBAST | Prediction model Risk Of Bias ASsessment Tool |
TRIPOD+AI | Transparent Reporting of a multivariable prediction model for Individual Prognosis Or Diagnosis (extended for AI) |
AMSTAR 2 | A Measurement Tool to Assess Systematic Reviews |
CI | Confidence Interval |
I2 | Higgins’ I-squared statistic (measure of heterogeneity) |
τ2 | Tau-squared (between-study variance estimate) |
SVM | Support Vector Machine |
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Component | Description |
---|---|
Population (P) | Competitive athletes and team sports as well as individual sports (e.g., soccer, basketball, tennis) at both amateur and professional levels. |
Intervention (I) | Application of artificial intelligence techniques, such as machine learning, deep learning, computer vision, and reinforcement learning, to analyze and enhance sports performance (e.g., real-time feedback, predictive analytics, automated motion analysis). |
Comparison (C) | Traditional performance analysis methods (e.g., manual assessments, conventional statistical techniques) or comparisons among different AI-based methodologies. |
Outcomes (O) | Quantitative metrics (e.g., accuracy, precision, recall, F1-score, mean absolute error) and qualitative outcomes (e.g., tactical decision support, improved training strategies, enhanced performance monitoring). |
Study Design (S) | Empirical studies including experimental, observational, and quasi-experimental designs, as well as systematic reviews and meta-analyses that report on AI applications in sports performance analysis. |
Study | MMAT Score (Out of 5) | JBI Quasi-Experimental Score (Out of 5) | Overall Quality Rating |
---|---|---|---|
Biró et al. (2023) [30] | 4 | 3 | Moderate |
Campaniço et al. (2018) [31] | 5 | Not Applicable | High |
Chen et al. (2023) [32] | 4 | 4 | High |
Demosthenous et al. (2022) [33] | 3 | 3 | Moderate |
Nagovitsyn et al. (2023) [34] | 4 | 3 | Moderate |
Rodrigues et al. (2020) [35] | 4 | 3 | Moderate |
Román-Gallego et al. (2023) [17] | 5 | Not Applicable | High |
Yu et al. (2024) [36] | 4 | 4 | High |
Study | JBI Score (Out of 8) | Overall Quality Rating |
---|---|---|
Fernández et al. (2016) [18] | 7 | High |
Marquina et al. (2023) [37] | 6 | Moderate |
Study | PROBAST Risk | TRIPOD-ML Adherence | Overall Quality Rating |
---|---|---|---|
Chatterjee et al. (2021) [7] | Low | High | High |
Hu (2023) [15] | Moderate | Moderate | Moderate |
Quinn and Corcoran (2022) [12] | Low | Moderate | High |
Ramanayaka et al. (2023) [38] | Moderate | Moderate | Moderate |
Yu and Chung (2019) [36] | Moderate | Low | Moderate |
Study: Campaniço et al., 2018 [31] Sport: Fencing AI Used: Neural Network, Dynamic Time Warping Performance Measured: Prediction accuracy Study Design: Experimental study using inertial sensors Performance Metrics: 76.6% accuracy | Study: Chatterjee et al., 2021 [7] Sport: Tennis AI Used: Detectron2, Pose Estimation, Convolutional Neural Networks (CNNs) Performance Measured: Classification accuracy Study Design: Computer vision study Performance Metrics: 98.60% accuracy | Study: Chen et al., 2023 [32] Sport: Volleyball AI Used: Machine Learning Performance Measured: Accuracy in identifying skill levels Study Design: Experimental study using wearable sensors Performance Metrics: Up to 95% accuracy | Study: Yu and Chung, 2019 [36] Sport: Basketball AI Used: Motion tracking Performance Measured: Sensitivity Study Design: Machine learning study Performance Metrics: 90% sensitivity, 8% improvement compared with the existing literature |
Study: Yu et al., 2024 [9] Sport: Gymnastics AI Used: AI-embedded Inertial Measurement Units, Visual Analysis Performance Measured: Segmentation of vaulting phases, evaluation of detailed movements Study Design: Experimental study Performance Metrics: 4.57% estimation error in flight height | Study: Yunus et al., 2024 [19] Sport: Football AI Used: Machine Learning, Data Mining, Classification Models, Regression Models Performance Measured: Accuracy in performance score for forward positions Study Design: Review Performance Metrics: Classification and regression models: up to 94% accuracy | Study: Román-Gallego et al., 2023 [17] Sport: Soccer AI Used: Fuzzy Logic Performance Measured: Agreement with actual rankings Study Design: Experimental study Performance Metrics: Fuzzy Logic System: 75% agreement with actual top team rankings, 87.5% agreement with lower-ranked teams | Study: Ramanayaka et al., 2023 [38] Sport: Cricket AI Used: Deep Learning, Convolutional Neural Network Performance Measured: Accuracy in detecting player in danger area, detecting position of front leg, detecting angle of bowling arm, detecting no ball delivery Study Design: Computer vision study Performance Metrics: Overall accuracy above 95% |
Study: Demosthenous et al., 2022 [33] Sport: Cycling AI Used: Model-based Reinforcement Learning, Deep Reinforcement Learning, Deep Q-Learning, Stochastic Gradient Boosting, Random Forests, Symbolic Regression Performance Measured: Mean absolute error Study Design: Experimental study Performance Metrics: Random Forest: Average MAE for speed prediction: 4.34 kmh Neural Network: Average MAE for speed prediction: 4.24 kmh | Study: Rodrigues et al., 2020 [35] Sport: Futsal AI Used: Artificial Neural Networks (ANNs), Long Short-Term Memory Network, Dynamic Bayesian Mixture Model (DBMM) Performance Measured: Accuracy, precision, recall, F1-score Study Design: Experimental study Performance Metrics: ANN: 90.03% accuracy, 16.06% precision, 67.87% recall, 14.74% F1-score LSTM: 60.92% accuracy, 29.89% precision, 57.61% recall, 36.31% F1-score DBMM: 96.47% accuracy, 77.70% precision, 84.12% recall, 80.54% F1-score | Study: Nagovitsyn et al., 2023 [34] Sport: Wrestling AI Used: Deep Neural Networks, Logistic Regression, Random Forest Performance Measured: Error probability in predicting competitive performance Study Design: Experimental study Performance Metrics: The improvement metrics include an 11% error probability in predictions, indicating an 89% accuracy rate; the program achieves 100% prediction efficiency when three specific trait categories are identified; specific conditions can increase the probability of achieving high sports performance to 92% or not achieving it to 89% | Study: Quinn and Corcoran, 2022 [12] Sport: Combat sports AI Used: Computer Vision, YOLOv5, Human Action Recognition (HAR), Object Tracking, Deep Learning Performance Measured: Mean average precision, F1-score Study Design: Computer vision study Performance Metrics: mean average precision: 95.5% at a confidence threshold of 50% F1-Score: -Sample One: 0.95 at a confidence threshold of 0.489 -All classes: 0.99 at a confidence of 0.684 |
Study: Fernández et al., 2016 [18] Sport: Football AI Used: Machine Learning, Feature Selection Techniques, Principal Component Analysis (PCA) Performance Measured: Predictive models of locomotor variables, metabolic variables, mechanical variables Study Design: Observational study using tracking data Performance Metrics: Successful prediction rates in 11 out of 17 total variables | Study: Marquina et al., 2023 [37] Sport: Handball AI Used: Machine Learning, Natural Language Processing (NLP) Performance Measured: Intraclass correlation coefficient, Cohen’s kappa Study Design: Observational study Performance Metrics: Automatic Variables: ICC = 0.957 (intra-observer), ICC = 0.937 (inter-observer) Manual Variables: ICC = 0.913 (intra-observer), ICC = 0.904 (inter-observer) Cohen’s kappa: 0.889 (expert agreement) | Study: Hu, 2023 [15] Sport: Basketball AI Used: Whale Optimized Artificial Neural Network (WO-ANN), Convolutional Random Forest (ConvRF), Attention Random Forest (AttRF), Convolutional Long Short-Term Memory (ConvLSTM), Attention Long Short-Term Memory (AttLSTM), 3D Convolutional Neural Network, Posture Normalized CNN Performance Measured: Accuracy, mean average precision (mAP) Study Design: Computer vision study Performance Metrics: ARBIGNet: 98.8% accuracy, 95.5% mAP Alternative configuration: 96.5% accuracy, 90.5% mAP ConvRF unit improvement: +1.3% accuracy, +1.1% mAP AttRF unit improvement: +1.7% accuracy, +1.5% mAP | Study: Biró et al., 2023 [30] Sport: Running AI Used: Random Forest, Gradient Boosting Machines, Long Short-Term Memory Network (LSTM) Performance Measured: Accuracy, precision, recall, F1-score Study Design: Experimental study using Inertial Measurement Units (IMUs) Performance Metrics: Extra Trees Classifier–Accuracy: 50.75%, F1-score: 50.22% Random Forest Classifier–Accuracy: 50.51%, F1-score: 49.57% Quadratic Discriminant Analysis–Accuracy: 48.98%, F1-score: 52.76% K-Nearest Neighbor Classifier–Accuracy: 48.65%, F1-score: 47.22% Decision Tree Classifier–Accuracy: 50.66%, F1-score: 51.15% Gradient Boosting Classifier–Accuracy: 47.13%, F1-score: 45.90% Logistic Regression–Accuracy: 48.96%, F1-score: 51.09% AdaBoost Classifier–Accuracy: 48.40%, F1-score: 48.95% Linear Discriminant Analysis–Accuracy: 48.81%, F1-score: 51.08% Ridge Classifier–Accuracy: 48.81%, F1-score: 51.08% Light Gradient Boosting Machine–Accuracy: 49.58%, F1-score: 47.16% SVM (Linear Kernel)–Accuracy: 49.12%, F1-score: 54.39% Naive Bayes–Accuracy: 48.12%, F1-score: 52.09% Dummy Classifier–Accuracy: 51.30%, F1-score: 67.78% LSTM Model–Accuracy: 59.00%, F1-Score: 59.00% |
Domain/Outcome | Classification Accuracy | Precision | Recall | F1-Score |
---|---|---|---|---|
Risk of Bias | 0 | 0 | 0 | 0 |
Inconsistency | 1 | 1 | 1 | 1 |
Indirectness | 0 | 0 | 0 | 0 |
Imprecision | 0 | 0 | 0 | 0 |
Publication Bias | 0 | 0 | 0 | 0 |
Total Downgrades | 1 | 1 | 1 | 1 |
Score (4-downgrades) | 3 | 3 | 3 | 3 |
Grade | Moderate | Moderate | Moderate | Moderate |
Effect Estimate | 87.8% (95% CI 82.7–92.9%) | 48–97% | 47–96% | 45–95% |
Number of Studies | 16 | 13 | 13 | 13 |
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Pietraszewski, P.; Terbalyan, A.; Roczniok, R.; Maszczyk, A.; Ornowski, K.; Manilewska, D.; Kuliś, S.; Zając, A.; Gołaś, A. The Role of Artificial Intelligence in Sports Analytics: A Systematic Review and Meta-Analysis of Performance Trends. Appl. Sci. 2025, 15, 7254. https://doi.org/10.3390/app15137254
Pietraszewski P, Terbalyan A, Roczniok R, Maszczyk A, Ornowski K, Manilewska D, Kuliś S, Zając A, Gołaś A. The Role of Artificial Intelligence in Sports Analytics: A Systematic Review and Meta-Analysis of Performance Trends. Applied Sciences. 2025; 15(13):7254. https://doi.org/10.3390/app15137254
Chicago/Turabian StylePietraszewski, Przemysław, Artur Terbalyan, Robert Roczniok, Adam Maszczyk, Kajetan Ornowski, Daria Manilewska, Szymon Kuliś, Adam Zając, and Artur Gołaś. 2025. "The Role of Artificial Intelligence in Sports Analytics: A Systematic Review and Meta-Analysis of Performance Trends" Applied Sciences 15, no. 13: 7254. https://doi.org/10.3390/app15137254
APA StylePietraszewski, P., Terbalyan, A., Roczniok, R., Maszczyk, A., Ornowski, K., Manilewska, D., Kuliś, S., Zając, A., & Gołaś, A. (2025). The Role of Artificial Intelligence in Sports Analytics: A Systematic Review and Meta-Analysis of Performance Trends. Applied Sciences, 15(13), 7254. https://doi.org/10.3390/app15137254