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Approaching disease transmission with network science

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Social connections are an important means for people to cope with adversity and illness. Thus, technologies, such as social network analysis, that can leverage close, face-to-face social networks could help optimize healthcare interventions and reduce healthcare-related costs, particularly in low-resource settings.

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Acknowledgements

Our work is supported by the NOMIS Foundation.

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Correspondence to Nicholas A. Christakis.

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Vishnempet Shridhar, S., Christakis, N.A. Approaching disease transmission with network science. Nat Rev Bioeng 2, 6–7 (2024). https://doi.org/10.1038/s44222-023-00139-0

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