2022
DOI: 10.1186/s41512-022-00119-9
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Multivariable prediction models for health care spending using machine learning: a protocol of a systematic review

Abstract: Background With rising cost pressures on health care systems, machine-learning (ML)-based algorithms are increasingly used to predict health care costs. Despite their potential advantages, the successful implementation of these methods could be undermined by biases introduced in the design, conduct, or analysis of studies seeking to develop and/or validate ML models. The utility of such models may also be negatively affected by poor reporting of these studies. In this systematic review, we aim … Show more

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“…A starting point is pre-registration through relevant repositories or even journals that publish protocols of systematic reviews. For example, we recently published a protocol of a systematic review of multivariable models for prediction of health care spending using machine learning by following all the relevant frameworks and methodological guidance [ 30 ]. We hope that this research practice can become more prevalent in the near future.…”
Section: Main Textmentioning
confidence: 99%
“…A starting point is pre-registration through relevant repositories or even journals that publish protocols of systematic reviews. For example, we recently published a protocol of a systematic review of multivariable models for prediction of health care spending using machine learning by following all the relevant frameworks and methodological guidance [ 30 ]. We hope that this research practice can become more prevalent in the near future.…”
Section: Main Textmentioning
confidence: 99%