Considering causality in normal tissue complication probability model development: a literature review

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Abstract

Background

normal-tissue probability models that estimate the probability of complications often associated with radiotherapy could potentially be used to help clinicians make decisions regarding the radiation dose or the type of radiation treatment. In order to be able to use NTCP models in this way, they should accurately capture the causal relation between dose and complication risk. The question then remains: do current normal-tissue complication probability models for radiation treatment optimization look at causality during model development?

Objective

to evaluate the consistency of causal statements in existing NTCP model development studies discussing the relationship between radiation and complications in patients with head and neck cancer. Methods: a comprehensive search by a recent systematic Cochrane review was used to obtain articles reporting on the development and external validation of NTCP models that predicted complications. The full text of all the relevant articles were assessed for: stated aim; claims for potential use; if adjustments for confounding were made; and use of language implying causality.

Results

out of the 98 evaluated studies, the minority (11.2%) stated causal aims even though 43.9% of studies made causal recommendations. Overall, 31.6% studies started out with an apparent predictive intent but ended up making causal claims in their conclusion or discussion. Out of all the studies that made causal recommendations there were none that explicitly adjusted for confounding.

Conclusion

misalignment between the aims of studies and the interpretation of their results in term of causality is common in observational research of NTCP models for patients with head and neck cancer. Researchers should precisely express their aim; if their aim is to make causal recommendations, they should at least discuss and consider confounding factors when formulating their study design.

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