"Combining Automated Lesion Risk and Change Assessment Improves Melanoma Detection: A Retrospective Accuracy Study" Featured on Journal of Investigative Dermatology
Artificial intelligence (AI) in dermatology has high accuracy in classifying skin cancer, particularly in collaboration with dermatologists. Although clinical studies have evaluated AI tools on both single-timepoint lesion images and sequential imaging data, they lack reporting on clinical utility in real-world settings. We retrospectively evaluate performances of 2 AI models for lesion change and malignancy risk assessment.
Recent News in Clinical Publications
- "3D-total body photography identifies cutaneous phenotypes associated with late-onset invasive melanoma risk" Featured in the British Journal of Dermatology
- "Clinical outcomes of 3D-total body photography and digital dermoscopy for surveillance of high-risk melanoma patients. A prospective longitudinal observational study" Featured in the European Journal of Cancer
- "The TRIAGE and ASSIST scan: A new concept in 3D total body imaging for early melanoma detection" Featured on EJC Skin Cancer
- "Remote evaluation of general skin diseases using three-dimensional total body photography: An observer agreement study" Featured in Journal of the American Academy of Dermatology
Most Recent News
- "3D-total body photography identifies cutaneous phenotypes associated with late-onset invasive melanoma risk" Featured in the British Journal of Dermatology
- "Clinical outcomes of 3D-total body photography and digital dermoscopy for surveillance of high-risk melanoma patients. A prospective longitudinal observational study" Featured in the European Journal of Cancer
- "The TRIAGE and ASSIST scan: A new concept in 3D total body imaging for early melanoma detection" Featured on EJC Skin Cancer
- "Remote evaluation of general skin diseases using three-dimensional total body photography: An observer agreement study" Featured in Journal of the American Academy of Dermatology