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Deep Learning (DL) holds great promise to improve patient outcomes by improving the precision and speed of disease diagnosis and treatment recommendations. Given the efficacy of DL in image analysis, pathology will likely be one of the first medical fields transformed by DL. However, several challenges must be overcome before we can expect to see the use of DL transform the digital future of pathology.
The increasing prevalence of chronic kidney disease (CKD) is placing a growing burden on healthcare systems, which results in considerable economic and environmental challenges. Sustainable CKD care and optimization of patient outcomes requires a new approach to the organization of healthcare systems, in which home monitoring will have a pivotal role.