Privacy concerns around sharing personally identifiable information are a major barrier to data sharing in medical research. In many cases, researchers have no interest in a particular individual's information but rather aim to derive insights at the level of cohorts. Here, we utilise generative adversarial networks (GANs) to create medical imaging datasets consisting entirely of synthetic patient data. The synthetic images ideally have, in aggregate, similar statistical properties to those of a source dataset but do not contain sensitive personal information. We assess the quality of synthetic data generated by two GAN models for chest radiographs with 14 radiology findings and brain computed tomography (CT) scans with six types of intracr...
In the last decade, Generative Adversarial Nets (GAN) have become a subject of growing interest in m...
In biomedical image analysis, data imbalance is common across several imaging modalities. Data augme...
Anonymising medical data for use in machine learning is important to preserve patient privacy and, i...
Privacy concerns around sharing personally identifiable information are a major barrier to data shar...
Even as medical data sets become more publicly accessible, most are restricted to specific medical c...
Problem: There is a lack of big data for the training of deep learning models in medicine, character...
Medical data is privacy-sensitive and protected by national legislation and GDPR making data sharing...
Artificial intelligence techniques involving the use of artificial neural networks—that is, deep lea...
An auxiliary classifier generative adversarial network (ac-GAN) was trained from a dataset composed ...
Obtaining data is challenging for researchers, especially when it comes to medical data. Moreover, u...
Restrictions in sharing Patient Health Identifiers (PHI) limit cross-organizational re-use of free-t...
Background: Deep learning algorithms are increasingly used for automatic medical imaging analysis an...
The use of machine learning algorithms to enhance and facilitate medical diagnosis and analysis is a...
Synthetic dataset for A Deep Learning Approach to Private Data Sharing of Medical Images Using Condi...
Despite technological and medical advances, the detection, interpretation, and treatment of cancer b...
In the last decade, Generative Adversarial Nets (GAN) have become a subject of growing interest in m...
In biomedical image analysis, data imbalance is common across several imaging modalities. Data augme...
Anonymising medical data for use in machine learning is important to preserve patient privacy and, i...
Privacy concerns around sharing personally identifiable information are a major barrier to data shar...
Even as medical data sets become more publicly accessible, most are restricted to specific medical c...
Problem: There is a lack of big data for the training of deep learning models in medicine, character...
Medical data is privacy-sensitive and protected by national legislation and GDPR making data sharing...
Artificial intelligence techniques involving the use of artificial neural networks—that is, deep lea...
An auxiliary classifier generative adversarial network (ac-GAN) was trained from a dataset composed ...
Obtaining data is challenging for researchers, especially when it comes to medical data. Moreover, u...
Restrictions in sharing Patient Health Identifiers (PHI) limit cross-organizational re-use of free-t...
Background: Deep learning algorithms are increasingly used for automatic medical imaging analysis an...
The use of machine learning algorithms to enhance and facilitate medical diagnosis and analysis is a...
Synthetic dataset for A Deep Learning Approach to Private Data Sharing of Medical Images Using Condi...
Despite technological and medical advances, the detection, interpretation, and treatment of cancer b...
In the last decade, Generative Adversarial Nets (GAN) have become a subject of growing interest in m...
In biomedical image analysis, data imbalance is common across several imaging modalities. Data augme...
Anonymising medical data for use in machine learning is important to preserve patient privacy and, i...