Generative artificial intelligence: synthetic datasets in dentistry

Author:

Umer FahadORCID,Adnan NihaORCID

Abstract

Abstract Introduction Artificial Intelligence (AI) algorithms, particularly Deep Learning (DL) models are known to be data intensive. This has increased the demand for digital data in all domains of healthcare, including dentistry. The main hindrance in the progress of AI is access to diverse datasets which train DL models ensuring optimal performance, comparable to subject experts. However, administration of these traditionally acquired datasets is challenging due to privacy regulations and the extensive manual annotation required by subject experts. Biases such as ethical, socioeconomic and class imbalances are also incorporated during the curation of these datasets, limiting their overall generalizability. These challenges prevent their accrual at a larger scale for training DL models. Methods Generative AI techniques can be useful in the production of Synthetic Datasets (SDs) that can overcome issues affecting traditionally acquired datasets. Variational autoencoders, generative adversarial networks and diffusion models have been used to generate SDs. The following text is a review of these generative AI techniques and their operations. It discusses the chances of SDs and challenges with potential solutions which will improve the understanding of healthcare professionals working in AI research. Conclusion Synthetic data customized to the need of researchers can be produced to train robust AI models. These models, having been trained on such a diverse dataset will be applicable for dissemination across countries. However, there is a need for the limitations associated with SDs to be better understood, and attempts made to overcome those concerns prior to their widespread use.

Publisher

Springer Science and Business Media LLC

Cited by 5 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Ethical dimensions of generative AI: a cross-domain analysis using machine learning structural topic modeling;International Journal of Ethics and Systems;2024-09-05

2. Applied artificial intelligence in dentistry: emerging data modalities and modeling approaches;Frontiers in Artificial Intelligence;2024-07-23

3. Artificial Intelligence in Newborn Medicine;Newborn;2024-06-21

4. Transforming dentistry using artificial intelligence based innovations for advanced diagnostics and sustainable healthcare;2024 3rd International Conference on Computational Modelling, Simulation and Optimization (ICCMSO);2024-06-14

5. Navigating the Promise and Perils of Generative AI in Healthcare;Advances in Medical Technologies and Clinical Practice;2024-06-14

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