Stratifying risk of disease in haematuria patients using machine learning techniques to improve diagnostics
Anna Drożdż,
Brian Duggan,
Mark W. Ruddock
et al.
Abstract:BackgroundDetailed and invasive clinical investigations are required to identify the causes of haematuria. Highly unbalanced patient population (predominantly male) and a wide range of potential causes make the ability to correctly classify patients and identify patient-specific biomarkers a major challenge. Studies have shown that it is possible to improve the diagnosis using multi-marker analysis, even in unbalanced datasets, by applying advanced analytical methods. Here, we applied several machine learning … Show more
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