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Sharing Data With Shared Benefits: Artificial Intelligence Perspective. | LitMetric

Sharing Data With Shared Benefits: Artificial Intelligence Perspective.

J Med Internet Res

Department of Data Science in Biomedicine, Faculty of Mathematics and Computer Science, University of Marburg, Marburg, Germany.

Published: August 2023

AI Article Synopsis

  • AI is essential for creating effective medical models, but data sharing across multiple centers is hindered by privacy concerns.
  • Federated and swarm learning offer solutions for collaboration while maintaining data privacy, yet private sector partnerships face challenges due to unequal contributions.
  • The proposed approach aims to ensure that each participant in data sharing receives AI models proportional to their data input, promoting fairness and better diagnostic tools for all.

Article Abstract

Artificial intelligence (AI) and data sharing go hand in hand. In order to develop powerful AI models for medical and health applications, data need to be collected and brought together over multiple centers. However, due to various reasons, including data privacy, not all data can be made publicly available or shared with other parties. Federated and swarm learning can help in these scenarios. However, in the private sector, such as between companies, the incentive is limited, as the resulting AI models would be available for all partners irrespective of their individual contribution, including the amount of data provided by each party. Here, we explore a potential solution to this challenge as a viewpoint, aiming to establish a fairer approach that encourages companies to engage in collaborative data analysis and AI modeling. Within the proposed approach, each individual participant could gain a model commensurate with their respective data contribution, ultimately leading to better diagnostic tools for all participants in a fair manner.

Download full-text PDF

Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10498316PMC
http://dx.doi.org/10.2196/47540DOI Listing

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