摘要
Over recent years,the importance of the patent literature has become increasingly more recognized in the aca-demic setting.In the context of artificial intelligence,deep learning,and data sciences,patents are relevant to not only industry but also academe and other communities.In this article,we focus on deep tomographic imaging and perform a preliminary landscape analysis of the related patent literature.Our search tool is PatSeer.Our patent biblio-metric data is summarized in various figures and tables.In particular,we qualitatively analyze key deep tomographic patent literature.
基金
US National Institutes of Health,Nos.R01EB026646,R01CA233888,R01CA237267,R01HL151561,R21CA264772,and R01EB031102.