2014
DOI: 10.1260/2040-2295.5.4.393
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Model‐Independent Evaluation of Tumor Markers and a Logistic‐Tree Approach to Diagnostic Decision Support

Abstract: Sensitivity and specificity of using individual tumor markers hardly meet the clinical requirement. This challenge gave rise to many efforts, e.g., combing multiple tumor markers and employing machine learning algorithms. However, results from different studies are often inconsistent, which are partially attributed to the use of different evaluation criteria. Also, the wide use of model-dependent validation leads to high possibility of data overfitting when complex models are used for diagnosis. We propose two… Show more

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