Artificial Intelligence in Three-Dimensional Complete-Physique Images for Skin Most cancers Surveillance

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Abstract

Artificial intelligence is commonly utilized in research that detect pores and skin most cancers, however most work makes use of pictures of chosen lesions. These pictures are helpful for classification. However, they don’t absolutely match actual screening conditions. In lesion surveillance, clinicians want to examine many lesions throughout the entire physique and monitor whether or not lesions change over time. Three-dimensional total-body images is ready to seize a wider pores and skin floor and may help lesion choice, lesion triage, danger evaluation, and follow-up comparability. This strategy offers synthetic intelligence extra alternative to research the affected person past one chosen lesion. This Mini Review discusses current proof on synthetic intelligence-assisted three-dimensional total-body images for pores and skin most cancers surveillance. In present purposes, this strategy can be utilized in automated triage and lesion detection, multimodal danger prediction, phenotype extraction, and longitudinal monitoring. The reviewed papers present early progress, however the proof stays restricted. Skin tone reporting, workflow integration, dataset transparency, false-positive and false-negative hurt, value, and fairness stay key adoption points. The goal is to give attention to the shift from selected-lesion classification to whole-body imaging. Clinical worth shouldn’t be judged solely by lesion-level accuracy, but additionally by whether or not synthetic intelligence-assisted three-dimensional total-body images can enhance patient-level surveillance throughout the entire pores and skin floor and over time. Stronger potential, longitudinal, workflow, value, and fairness proof remains to be wanted earlier than routine scientific adoption in observe.

Summary

Keywords

Artificial intelligence in dermatology, Clinical Readiness, External validation, Melanoma, skin cancer surveillance, skin tone reporting, three-dimensional total body photography

Copyright

© 2026 Lew, Sim and Chan. This is an open-access article distributed below the phrases of the Creative Commons Attribution License (CC BY). The use, distribution or copy in different boards is permitted, supplied the unique writer(s) or licensor are credited and that the unique publication on this journal is cited, in accordance with accepted tutorial observe. No use, distribution or copy is permitted which doesn’t adjust to these phrases.

*Correspondence: Kok Swee Sim

Disclaimer

All claims expressed on this article are solely these of the authors and don’t essentially characterize these of their affiliated organizations, or these of the writer, the editors and the reviewers. Any product which may be evaluated on this article or declare which may be made by its producer will not be assured or endorsed by the writer.


This web page was created programmatically, to learn the article in its authentic location you’ll be able to go to the hyperlink bellow:
https://www.frontiersin.org/journals/medicine/articles/10.3389/fmed.2026.1882075/full
and if you wish to take away this text from our web site please contact us