» Articles » PMID: 37928464

Finetuning of GLIDE Stable Diffusion Model for AI-based Text-conditional Image Synthesis of Dermoscopic Images

Abstract

Background: The development of artificial intelligence (AI)-based algorithms and advances in medical domains rely on large datasets. A recent advancement in text-to-image generative AI is GLIDE (Guided Language to Image Diffusion for Generation and Editing). There are a number of representations available in the GLIDE model, but it has not been refined for medical applications.

Methods: For text-conditional image synthesis with classifier-free guidance, we have fine-tuned GLIDE using 10,015 dermoscopic images of seven diagnostic entities, including melanoma and melanocytic nevi. Photorealistic synthetic samples of each diagnostic entity were created by the algorithm. Following this, an experienced dermatologist reviewed 140 images (20 of each entity), with 10 samples originating from artificial intelligence and 10 from original images from the dataset. The dermatologist classified the provided images according to the seven diagnostic entities. Additionally, the dermatologist was asked to indicate whether or not a particular image was created by AI. Further, we trained a deep learning model to compare the diagnostic results of dermatologist versus machine for entity classification.

Results: The results indicate that the generated images possess varying degrees of quality and realism, with melanocytic nevi and melanoma having higher similarity to real images than other classes. The integration of synthetic images improved the classification performance of the model, resulting in higher accuracy and precision. The AI assessment showed superior classification performance compared to dermatologist.

Conclusion: Overall, the results highlight the potential of synthetic images for training and improving AI models in dermatology to overcome data scarcity.

Citing Articles

The Evolution of Artificial Intelligence in Medical Imaging: From Computer Science to Machine and Deep Learning.

Avanzo M, Stancanello J, Pirrone G, Drigo A, Retico A Cancers (Basel). 2024; 16(21).

PMID: 39518140 PMC: 11545079. DOI: 10.3390/cancers16213702.


Exploring the Potential of DALL-E 2 in Pediatric Dermatology: A Critical Analysis.

Lim S, Kooper-Johnson S, Chau C, Robinson S, Cobos G Cureus. 2024; 16(8):e67752.

PMID: 39318913 PMC: 11421884. DOI: 10.7759/cureus.67752.


Health Economic Consequences Associated With COVID-19-Related Delay in Melanoma Diagnosis in Europe.

Maul L, Jamiolkowski D, Lapides R, Mueller A, Hauschild A, Garbe C JAMA Netw Open. 2024; 7(2):e2356479.

PMID: 38363565 PMC: 10873772. DOI: 10.1001/jamanetworkopen.2023.56479.


Possible Explanations for Rising Melanoma Rates Despite Increased Sunscreen Use over the Past Several Decades.

Lapides R, Saravi B, Mueller A, Wang-Evers M, Maul L, Nemeth I Cancers (Basel). 2023; 15(24).

PMID: 38136411 PMC: 10741796. DOI: 10.3390/cancers15245868.

References
1.
Man K, Chahl J . A Review of Synthetic Image Data and Its Use in Computer Vision. J Imaging. 2022; 8(11). PMC: 9698631. DOI: 10.3390/jimaging8110310. View

2.
Rajpurkar P, Chen E, Banerjee O, Topol E . AI in health and medicine. Nat Med. 2022; 28(1):31-38. DOI: 10.1038/s41591-021-01614-0. View

3.
Saravi B, Hassel F, Ulkumen S, Zink A, Shavlokhova V, Couillard-Despres S . Artificial Intelligence-Driven Prediction Modeling and Decision Making in Spine Surgery Using Hybrid Machine Learning Models. J Pers Med. 2022; 12(4). PMC: 9029065. DOI: 10.3390/jpm12040509. View

4.
Baig R, Bibi M, Hamid A, Kausar S, Khalid S . Deep Learning Approaches Towards Skin Lesion Segmentation and Classification from Dermoscopic Images - A Review. Curr Med Imaging. 2020; 16(5):513-533. DOI: 10.2174/1573405615666190129120449. View

5.
Kather J, Laleh N, Foersch S, Truhn D . Medical domain knowledge in domain-agnostic generative AI. NPJ Digit Med. 2022; 5(1):90. PMC: 9273760. DOI: 10.1038/s41746-022-00634-5. View