Widespread interest in artificial intelligence (AI) in health care has focused mainly on deductive systems that analyze available real-world data to discover patterns not otherwise visible. Generative adversarial network, a new type of inductive AI, has recently evolved to generate high-fidelity virtual synthetic data (SD) trained on relatively limited real-world information. The AI system is fed with a collection of real data, and it learns to generate new augmented data while maintaining the general characteristics of the original data set. The use of SD to enhance clinical research and protect patient privacy has drawn a lot of interest in medicine and in the complex field of oncology. This article summarizes the main characteristics of this innovative technology and critically discusses how it can be used to accelerate data access for secondary purposes, providing an overview of the opportunities and challenges of SD generation for clinical cancer research and health care.

Jacobs, F., D'Amico, S., Benvenuti, C., Gaudio, M., Saltalamacchia, G., Miggiano, C., et al. (2023). Opportunities and Challenges of Synthetic Data Generation in Oncology. JCO CLINICAL CANCER INFORMATICS, 7(7) [10.1200/CCI.23.00045].

Opportunities and Challenges of Synthetic Data Generation in Oncology

Zambelli, A
2023

Abstract

Widespread interest in artificial intelligence (AI) in health care has focused mainly on deductive systems that analyze available real-world data to discover patterns not otherwise visible. Generative adversarial network, a new type of inductive AI, has recently evolved to generate high-fidelity virtual synthetic data (SD) trained on relatively limited real-world information. The AI system is fed with a collection of real data, and it learns to generate new augmented data while maintaining the general characteristics of the original data set. The use of SD to enhance clinical research and protect patient privacy has drawn a lot of interest in medicine and in the complex field of oncology. This article summarizes the main characteristics of this innovative technology and critically discusses how it can be used to accelerate data access for secondary purposes, providing an overview of the opportunities and challenges of SD generation for clinical cancer research and health care.
Articolo in rivista - Review Essay
Artificial Intelligence; Humans; Medical Oncology
English
3-ago-2023
2023
7
7
e2300045
reserved
Jacobs, F., D'Amico, S., Benvenuti, C., Gaudio, M., Saltalamacchia, G., Miggiano, C., et al. (2023). Opportunities and Challenges of Synthetic Data Generation in Oncology. JCO CLINICAL CANCER INFORMATICS, 7(7) [10.1200/CCI.23.00045].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/526664
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