2020
DOI: 10.48550/arxiv.2007.03788
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Trajectories, bifurcations and pseudotime in large clinical datasets: applications to myocardial infarction and diabetes data

Sergey E. Golovenkin,
Jonathan Bac,
Alexander Chervov
et al.

Abstract: Large observational clinical datasets become increasingly available for mining associations between various disease traits and administered therapy. These datasets can be considered as representations of the landscape of all possible disease conditions, in which a concrete pathology develops through a number of stereotypical routes, characterized by 'points of no return' and ' nal states' (such as lethal or recovery states). Extracting this information directly from the data remains challenging, especially in … Show more

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