<p>Evaluation of data quality in large healthcare datasets.</p> <p> </p> <p>abstract:</p> <p>Data quality and fitness for analysis are crucial if outputs of big data analyses should be trusted by the public and the research community. Here we analyze the output from a data quality tool called Achilles Heel as it was applied to 24 datasets across seven different organizations. We highlight 12 data quality rules that identified issues in at least 10 of the 24 datasets and provide a full set of 71 rules identified in at least one dataset. Achilles Heel is developed by Observational Health Data Sciences and Informatics (OHDSI) community and is a freely available software that provides a useful starter set of data quality rules. Our analysis rep...
The Data Warehousing Institute (TDWI) estimates that data quality problems cost U.S. businesses more...
Medical big data has generated much excitement in recent years and for good reason. It can be an inv...
The aim of this review is to highlight issues in data quality research and to discuss potential rese...
In the health industry, the use of data (including Big Data) is of growing importance. The term &lsq...
Data quality is an important part of information processing, but its application in practice is ofte...
OBJECTIVE: Advances in standardization of observational healthcare data have enabled methodological ...
In the health industry, the use of data (including Big Data) is of growing importance. The term ‘Big...
Healthcare data has economic value and is evaluated as such. Therefore, it attracted global attentio...
Advances in standardization of observational healthcare data have enabled methodological breakthroug...
Big data analysis in healthcare sector is still in its early stages when comparing with that of othe...
Data governance Refers to the management of public health information systems and data. The article ...
Big Data quality is a field which is emerging. Many authors nowadays agree that data quality is stil...
This deliverable entails: 1. a generic method to assess primary care EHR data quality by quantifiabl...
High quality data and effective data quality assessment are required for accurately evaluating the i...
Achieving high level of data quality is considered one of the most important assets for any small, m...
The Data Warehousing Institute (TDWI) estimates that data quality problems cost U.S. businesses more...
Medical big data has generated much excitement in recent years and for good reason. It can be an inv...
The aim of this review is to highlight issues in data quality research and to discuss potential rese...
In the health industry, the use of data (including Big Data) is of growing importance. The term &lsq...
Data quality is an important part of information processing, but its application in practice is ofte...
OBJECTIVE: Advances in standardization of observational healthcare data have enabled methodological ...
In the health industry, the use of data (including Big Data) is of growing importance. The term ‘Big...
Healthcare data has economic value and is evaluated as such. Therefore, it attracted global attentio...
Advances in standardization of observational healthcare data have enabled methodological breakthroug...
Big data analysis in healthcare sector is still in its early stages when comparing with that of othe...
Data governance Refers to the management of public health information systems and data. The article ...
Big Data quality is a field which is emerging. Many authors nowadays agree that data quality is stil...
This deliverable entails: 1. a generic method to assess primary care EHR data quality by quantifiabl...
High quality data and effective data quality assessment are required for accurately evaluating the i...
Achieving high level of data quality is considered one of the most important assets for any small, m...
The Data Warehousing Institute (TDWI) estimates that data quality problems cost U.S. businesses more...
Medical big data has generated much excitement in recent years and for good reason. It can be an inv...
The aim of this review is to highlight issues in data quality research and to discuss potential rese...