Panoramic imaging errors in machine learning model development: a systematic review

CONCLUSIONS: This study revealed significant inconsistencies in the management of PAN imaging errors in ML research. However, most studies agree that such errors are detrimental when building ML models. More research is needed to understand the impact of low-quality inputs on model performance. Prospective studies may streamline image quality assessment by leveraging DL models, which excel at pattern recognition tasks.PMID:38273661 | DOI:10.1093/dmfr/twae002
Source: Dentomaxillofacial Radiology - Category: Radiology Authors: Source Type: research