Literature DB >> 26178303

The use of big data in transfusion medicine.

K Pendry1.   

Abstract

'Big data' refers to the huge quantities of digital information now available that describe much of human activity. The science of data management and analysis is rapidly developing to enable organisations to convert data into useful information and knowledge. Electronic health records and new developments in Pathology Informatics now support the collection of 'big laboratory and clinical data', and these digital innovations are now being applied to transfusion medicine. To use big data effectively, we must address concerns about confidentiality and the need for a change in culture and practice, remove barriers to adopting common operating systems and data standards and ensure the safe and secure storage of sensitive personal information. In the UK, the aim is to formulate a single set of data and standards for communicating test results and so enable pathology data to contribute to national datasets. In transfusion, big data has been used for benchmarking, detection of transfusion-related complications, determining patterns of blood use and definition of blood order schedules for surgery. More generally, rapidly available information can monitor compliance with key performance indicators for patient blood management and inventory management leading to better patient care and reduced use of blood. The challenges of enabling reliable systems and analysis of big data and securing funding in the restrictive financial climate are formidable, but not insurmountable. The promise is that digital information will soon improve the implementation of best practice in transfusion medicine and patient blood management globally.
© 2015 British Blood Transfusion Society.

Entities:  

Keywords:  benchmarking; big data; data collection; patient blood management

Mesh:

Year:  2015        PMID: 26178303     DOI: 10.1111/tme.12223

Source DB:  PubMed          Journal:  Transfus Med        ISSN: 0958-7578            Impact factor:   2.019


  4 in total

1.  Quality indicators for Transfusion Medicine in Spain: a survey among hospital transfusion services.

Authors:  Iñigo Romon; Miguel Lozano
Journal:  Blood Transfus       Date:  2016-07-21       Impact factor: 3.443

2.  Current Understanding of Transfusion-associated Necrotizing Enterocolitis: Review of Clinical and Experimental Studies and a Call for More Definitive Evidence.

Authors:  Minesh Khashu; Christof Dame; Pascal M Lavoie; Isabelle G De Plaen; Parvesh M Garg; Venkatesh Sampath; Atul Malhotra; Michael D Caplan; Praveen Kumar; Pankaj B Agrawal; Giuseppe Buonocore; Robert D Christensen; Akhil Maheshwari
Journal:  Newborn (Clarksville)       Date:  2022-03-31

3.  RBC Inventory-Management System Based on XGBoost Model.

Authors:  Xiaolin Sun; Zhenhua Xu; Yannan Feng; Qingqing Yang; Yan Xie; Deqing Wang; Yang Yu
Journal:  Indian J Hematol Blood Transfus       Date:  2020-11-02       Impact factor: 0.900

4.  Audit and feedback to improve laboratory test and transfusion ordering in critical care: a systematic review.

Authors:  Madison Foster; Justin Presseau; Nicola McCleary; Kelly Carroll; Lauralyn McIntyre; Brian Hutton; Jamie Brehaut
Journal:  Implement Sci       Date:  2020-06-19       Impact factor: 7.327

  4 in total

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