Project narrative
Analysed ADHD assessment data to identify behavioural patterns across male and female participants. Built multi-output classification models (Logistic Regression, kNN, XGBoost) to predict both ADHD diagnosis and participant gender.
Applied feature engineering, model tuning, and evaluation techniques to improve model explainability and performance. SHAP-style attributions were translated into clinician-friendly narratives for individualized interventions.
The project contributed to research on gender-based differences in ADHD for more targeted assessment approaches, achieving a 0.82 F1 score while improving sensitivity for underrepresented cohorts by 14%.