External validation of radiomics‐based predictive models in low‐dose CT screening for early lung cancer diagnosis
Medical Physics2020Vol. 47(9), pp. 4125–4136
Citations Over TimeTop 10% of 2020 papers
Noemi Garau, Chiara Paganelli, Paul Summers, Wookjin Choi, Sadegh Alam, Wei Lü, Cristiana Fanciullo, Massimo Bellomi, G. Baroni, Cristiano Rampinelli
Abstract
Although no significant improvements were observed when applying the Combat harmonization method, both in-house and literature-based models were able to classify lung nodules with good generalization to an independent dataset, thus showing their potential as tools for clinical decision-making in lung cancer screening.
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