The SLICE-3D dataset: 400,000 skin lesion image crops extracted from 3D TBP for skin cancer detection.
Nicholas R KurtanskyBrian M D'AlessandroMaura C GillisBrigid Betz-StableinSara E CerminaraRafael GarciaMarcela Alves GirundiElisabeth Victoria GoessingerPhilippe GottfroisPascale GuiteraAllan C HalpernValerie JakrotHarald KittlerKivanc KoseKonstantinos LiopyrisJosep Malvehy GuileraVictoria J MarLinda K MartinThomas MathewLara Valeska MaulAdam MothershawAlina M MuellerChristoph MuellerAlexander A NavariniTarlia RajeswaranVin RajeswaranAnup SahaMaithili SashindranathLaura Serra-GarcíaHans Peter SoyerGeorgios TheocharisAyesha VosJochen WeberVeronica M RotembergPublished in: Scientific data (2024)
AI image classification algorithms have shown promising results when applied to skin cancer detection. Most public skin cancer image datasets are comprised of dermoscopic photos and are limited by selection bias, lack of standardization, and lend themselves to development of algorithms that can only be used by skilled clinicians. The SLICE-3D ("Skin Lesion Image Crops Extracted from 3D TBP") dataset described here addresses those concerns and contains images of over 400,000 distinct skin lesions from seven dermatologic centers from around the world. De-identified images were systematically extracted from sensitive 3D Total Body Photographs and are comparable in optical resolution to smartphone images. Algorithms trained on lower quality images could improve clinical workflows and detect skin cancers earlier if deployed in primary care or non-clinical settings, where photos are captured by non-expert physicians or patients. Such a tool could prompt individuals to visit a specialized dermatologist. This dataset circumvents many inherent limitations of prior datasets and may be used to build upon previous applications of skin imaging for cancer detection.
Keyphrases
- deep learning
- skin cancer
- artificial intelligence
- convolutional neural network
- primary care
- machine learning
- soft tissue
- wound healing
- end stage renal disease
- high resolution
- loop mediated isothermal amplification
- palliative care
- healthcare
- ejection fraction
- optical coherence tomography
- label free
- real time pcr
- chronic kidney disease
- magnetic resonance
- mental health
- young adults
- rna seq
- computed tomography
- quality improvement
- general practice
- peritoneal dialysis
- single cell
- fluorescence imaging
- quantum dots