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Enterprise AI Analysis: Design and development of a model for tennis elbow injury prediction and prevention using Artificial Neural Network (ANN) and Adaptive Neuro-Fuzzy Inference System (ANFIS) approaches

Enterprise AI Analysis

Design and development of a model for tennis elbow injury prediction and prevention using Artificial Neural Network (ANN) and Adaptive Neuro-Fuzzy Inference System (ANFIS) approaches

Lateral epicondylitis (tennis elbow) is a common sports injury posing diagnostic and management challenges. This study introduces a novel approach integrating Design of Experiments (DoE) with Response Surface Methodology (RSM) and an Expert System (ES) using Artificial Neural Network (ANN) and Adaptive Neuro-Fuzzy Inference System (ANFIS) for personalized injury prevention recommendations. This methodology empowers players with safer practices and aims to reduce incidence. Comprehensive education for athletes, coaches, and physicians is also emphasized for improved outcomes. The ANFIS approach achieved 99% accuracy for injury prediction, validated through multi-model prediction.

Executive Impact: Key Metrics at a Glance

Our analysis highlights the superior predictive capability of AI models in musculoskeletal disorder management. With ANFIS achieving an impressive 99% accuracy, this research demonstrates a significant advancement in early identification and personalized prevention of tennis elbow, offering actionable insights for athletes and medical professionals.

0 ANFIS Prediction Accuracy
0 ANN Correlation Coefficient
0 ANFIS Mean Absolute Error
0 ANFIS Root Mean Square Error

Deep Analysis & Enterprise Applications

Select a topic to dive deeper, then explore the specific findings from the research, rebuilt as interactive, enterprise-focused modules.

Enterprise Process Flow

Data Pre-processing
Artificial Neural Network Design
ANN Model Training and Validation
Model Evaluation and Testing
Expert System Development
Validation and Conclusions

Comparison of Predictive Model Factors

Model Key Factors Identified Benefits
ANN Flexion Angle, Elbow Torque, Elbow Strength
  • Learns complex, nonlinear patterns
  • High accuracy for injury severity prediction
FLS Flexion Angle, Elbow Torque, Elbow Strength
  • Handles uncertainty/imprecision
  • Provides interpretable rules (linguistic variables)
ANFIS Flexion Angle, Elbow Torque, Elbow Strength
  • Combines ANN learning with FLS interpretability
  • Achieves 99% prediction accuracy
  • Provides personalized recommendations

Injury Classification & MRI Mapping

The study categorizes tennis elbow injuries based on MRI findings, mapping clinical assessments to computational predictions.

  • Mild Injury: Tendon thickening or thinning with increased internal signal intensity; the ligament appears thickened with intact structure and normal-to-increased signal. ANN Predicted Output: No or Low Injury Risk (0-0.3)
  • Moderate Injury: Partial ligament tear, moderate edema, joint space narrowing. ANN Predicted Output: Moderate Injury Risk (0-0.6)
  • Severe Injury: Complete ligament rupture, joint effusion, bone contusion. ANN Predicted Output: High Injury Risk (0.7-1.0)
99% Prediction Accuracy Achieved by ANFIS

Quantify Your AI ROI

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Estimated Annual Savings $0
Annual Hours Reclaimed 0

Your AI Implementation Roadmap

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Phase 01: Discovery & Strategy

Comprehensive analysis of existing infrastructure, data readiness, and identification of key objectives. Develop a tailored AI strategy.

Phase 02: Data Integration & Model Training

Securely integrate enterprise data sources, pre-process for optimal quality, and train custom AI models based on your specific use cases.

Phase 03: Pilot Deployment & Validation

Implement AI solutions in a controlled environment, rigorously test performance against KPIs, and refine models for accuracy and efficiency.

Phase 04: Full-Scale Integration & Monitoring

Seamlessly deploy AI across your enterprise, establish continuous monitoring systems, and provide ongoing support and optimization.

Phase 05: Performance Review & Scaling

Regularly review AI performance, identify new opportunities for expansion, and scale solutions to unlock further enterprise-wide value.

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