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Appealing against an editor’s negative decision is likely to be more fruitful when considering the basis of the editorial assessment and offering ways forward.
Increasingly physiological in vitro models and techniques for measuring forces at multiple scales are enabling unanticipated findings in tissue mechanopathology.
The management of health and of disease conditions will eventually be supported by ever more integrated and less conspicuous wireless bioelectronic devices designed to continuously monitor multiple biomarkers.
Leveraging or improving established technology for clinical imaging to extract additional physiological information can enhance the quality of the subsequent assessments and widen the technology’s uses.
The development of machine-learning systems for safer, robust and fairer outcomes should leverage fine-tuning, generalization, explainability and metrics of uncertainty.
Graph neural networks and transformers taking advantage of contextual information and large unannotated multimodal datasets are redefining what is possible in computational medicine.
Research manuscripts and the associated scientific data generated for projects that are funded by federal agencies in the United States will need to be made publicly available immediately on publication.