Collections
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Cellular Responses to Stress
This Collection aims to gain a deeper understanding of how cells face diverse stresses, offering insights into the fundamental principles of cellular response. It welcomes original research on cellular response to stress, from molecular mechanisms to disease treatment and cancer therapies.
Image: © [M] Dr_Microbe / Stock.adobe.comOpen for submissions -
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Contemplative practices and social well-being
This Collection welcomes original research articles from Psychology, Psychiatry, Neuroscience and related fields that report work on the application of contemplative practices to social well-being outcomes and associated neurophysiological, behavioral, and other mechanisms.
Image: © [M] New Africa / stock.adobe.comOpen for submissions -
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Immune cell engineering for cancer therapy
In this cross-journal Collection, we invite submissions of primary research articles that focus on preclinical and clinical development of immune cell-based therapies for cancer treatment.
Image: © [M] catalin / stock.adobe.comOpen for submissions -
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Neuromorphic Hardware and Computing 2024
An interdisciplinary approach is being taken to address the challenge of creating more efficient and intelligent computing systems that can perform diverse tasks, to design hardware with increasing complexity from single device to system architecture level, and to develop new theories and brain-inspired algorithms for future computing. In this cross-journal collection, we aim to bring together cutting-edge research of neuromorphic architecture and hardware, computing algorithms and theories, and the related innovative applications.
Image: Featured image of Jiang et al., Nat Commun 14, 1344 (2023)Open for submissions -
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Non-equilibrium dynamics of biological droplets: from Phase Separation to Self-Assembly
This cross-journal Collection between Communications Physics, Nature Communications, and Scientific Reports welcomes contributions where the description of the dynamics of biological droplets advances our understanding of specific biological processes, as well as more general contributions identifying common mechanisms and generating novel biophysical insight across the realm of biological droplets.
Image: © [M] Justlight / Generated with AI / Stock.adobe.comOpen for submissions -
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Advances in climate modeling
This Collection welcomes original research on climate models of variable complexity, including at the global or regional scale.
Image: © [M] slavemotion / Getty Images / iStockOpen for submissions -
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Advances in dialysis
This multi-disciplined Collection welcomes original research from the fields of nephrology, biotechnology, bioengineering and membrane science that contribute to improving performance, implementation and tolerance of dialysis for the future.
Image: © [M] adventtr / Getty Images / iStockOpen for submissions -
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Biology of rare genetic disorders
This cross-journal Collection between Nature Communications, Communications Biology, npj Genomic Medicine and Scientific Reports brings together research articles that provide new insights into the biology of rare genetic disorders, also known as Mendelian or monogenic disorders.
Image: © [M] Dr_Microbe / Getty Images / iStockOpen for submissions -
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Exceptional climate conditions in 2023
In this cross-journal Collection, we invite submissions that investigate at a local, regional or global scale how the climate or climate impacts of the year 2023 were remarkable or unexpected.
Image: © [M] oraziopuccio / STOCK.ADOBE.COMOpen for submissions -
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Regulatory T cells
This Collection welcomes original research on all aspects of regulatory T cells, including their development, their function, and their roles in conditions and diseases such as autoimmunity and cancer.
Image: © [M] Dr_Microbe / stock.adobe.comOpen for submissions -
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Smart manufacturing systems and industry 4.0 technologies
Explore how advanced sensors, robotics, and machine learning algorithms are optimizing production efficiency, quality control, and supply chain management.
Image: © Kien / stock.adobe.com / Generated with AIOpen for submissions