Overinterpretation of findings in machine learning prediction model studies in oncology: a systematic review
<strong>Objectives<br></strong> In biomedical research, spin is the overinterpretation of findings, and it is a growing concern. To date, the presence of spin has not been evaluated in prognostic model research in oncology, including studies developing and validating models for ind...
Autores principales: | Dhiman, P, Ma, J, Andaur Navarro, CL, Speich, B, Bullock, G, Damen, JAA, Hooft, L, Kirtley, S, Riley, RD, Van Calster, B, Moons, KGM, Collins, GS |
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Formato: | Journal article |
Lenguaje: | English |
Publicado: |
Elsevier
2023
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