Prostata saratonida izohlanadigan, yuqori aniqlikdagi AI Pipeline

Avtorlar

Gilt sózler: prostate cancer, machine learning, feature engineering, PCA, SHAP, diagnostics

Annotaciya

This study presents a comprehensive feature engineering process for the early detection of prostate cancer using machine learning methodology. The dataset consisted of key clinical indicators — PSA level, patient age, prostate volume, Gleason score, and clinical stage — which were processed using ANOVA, Chi-square, PCA, RFE, LASSO, and SHAP techniques. The primary objective was to identify the most influential diagnostic features that improve model performance and ensure interpretability.

Paydalanılǵan ádebiyatlar

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