Objective The objective of this study was to use machine learning and health standards to address the problem of clinical data interoperability across healthcare institutions. Addressing this problem has the potential to make clinical data comparable, searchable and exchangeable between healthcare providers. Data sources Structured and unstructured data has been used to conduct the experiments in this study. The data was collected from two disparate data sources namely MIMIC-III and NHanes. The MIMIC-III database stored data from two electronic health record systems which are CareVue and MetaVision. The data stored in these systems was not recorded with the same standards; therefore, it was not comparable because some values were conflicti...
Interoperability is a well-known challenge in medical informatics. Current trends in interoperabilit...
BackgroundInteroperability is a well-known challenge in medical informatics. Current trends in inter...
<p>The present–day health data ecosystem comprises a wide array of complex heterogeneous data source...
The objective of this study was to use rules, NLP and machine learning for addressing the problem of...
Background Increasing digitalisation in the medical domain gives rise to large amounts of healthcare...
Data interoperability is a key ingredient for modern health information technology. Interoperability...
The diversity in representation of medical data prevents straightforward data mapping, standardizati...
Data interoperability is a key ingredient for modern health information technology. Interoperability...
Semantic interoperability within the health care sector requires that patient data be fully availabl...
Today, in times of outbreaks of epidemics such as the Zika virus and COVID-19, health systems around...
Due to the signi¯cant amount of data generated by modern medicine there is a growing reliance on too...
A great asset of any healthcare system is “information” which includes, but not limited to patient d...
A primary concern of the medical e-research community is the availability of suitable data sets for ...
The "big data" challenge is changing the way we acquire, store, analyse, and draw conclusions from d...
Interoperability is the faculty of making information systems work together. In this paper we will d...
Interoperability is a well-known challenge in medical informatics. Current trends in interoperabilit...
BackgroundInteroperability is a well-known challenge in medical informatics. Current trends in inter...
<p>The present–day health data ecosystem comprises a wide array of complex heterogeneous data source...
The objective of this study was to use rules, NLP and machine learning for addressing the problem of...
Background Increasing digitalisation in the medical domain gives rise to large amounts of healthcare...
Data interoperability is a key ingredient for modern health information technology. Interoperability...
The diversity in representation of medical data prevents straightforward data mapping, standardizati...
Data interoperability is a key ingredient for modern health information technology. Interoperability...
Semantic interoperability within the health care sector requires that patient data be fully availabl...
Today, in times of outbreaks of epidemics such as the Zika virus and COVID-19, health systems around...
Due to the signi¯cant amount of data generated by modern medicine there is a growing reliance on too...
A great asset of any healthcare system is “information” which includes, but not limited to patient d...
A primary concern of the medical e-research community is the availability of suitable data sets for ...
The "big data" challenge is changing the way we acquire, store, analyse, and draw conclusions from d...
Interoperability is the faculty of making information systems work together. In this paper we will d...
Interoperability is a well-known challenge in medical informatics. Current trends in interoperabilit...
BackgroundInteroperability is a well-known challenge in medical informatics. Current trends in inter...
<p>The present–day health data ecosystem comprises a wide array of complex heterogeneous data source...