EMRBots are experimental artificially generated electronic medical records. The aim of EMRBots is to allow non-commercial entities to use the artificial patient repositories to practice statistical and machine-learning algorithms. Commercial entities can also use the repositories for any purpose, as long as they do not create software products using the repositories. A letter published in Communications of the ACM emphasizes the importance of using synthetic medical data, "... EMRBots can generate a synthetic patient population of any size, including demographics, admissions, comorbidities, and laboratory values. A synthetic patient has no confidentiality restrictions and thus can be used by anyone to practice machine learning algorithms."
Background
EMRs contain sensitive personal information. For example, they may include details about infectious diseases, such as human immunodeficiency virus, or they may contain information about a mental disorder. They may also contain other sensitive information such as medical details related to fertility treatments. Because EMRs are subject to confidentiality requirements, accessing and analyzing EMR databases is a privilege given to only a small number of individuals. Individuals who work at institutions that do not have access to EMR systems have no opportunity to gain hands-on experience with this valuable resource. Simulated medical databases are currently available; however, they are difficult to configure and are limited in their resemblance to real clinical databases. Generating highly accessible repositories of artificial patient EMRs while relying only minimally on real patient data is expected to serve as a valuable resource to a broader audience of medical personnel, including those who reside in underdeveloped countries.
The repositories can be downloaded after registration. The repositories are available to download from Figshare without registration. Full source code for creating the repositories is available to download from Figshare. All source code for EMRBots is available in Elsevier's Software ImpactsGitHub site.
Northwell Health's EMRBot
In May 2018 Northwell Health funded a project denoted as EMRBot in the health system's third annual innovation challenge. Northwell Health's EMRBot, however, is neither related to Uri Kartoun's website nor to any of its repositories or applications.
Criticism
" are... pregenerated datasets of synthetic EHR with an insufficient explanation of how the datasets were generated. These datasets exhibit several inconsistencies between health problems, age, and gender." An additional criticism is described in a thesis granted by Massey University.