2018
DOI: 10.14236/jhi.v25i2.1062
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Learning health systems need to bridge the ‘two cultures’ of clinical informatics and data science

Abstract: BackgroundUK health research policy and plans for population health management are predicated upon transformative knowledge discovery from operational ‘Big Data’. Learning health systems require not only data, but feedback loops of knowledge into changed practice. This depends on knowledge management and application, which in turn depends upon effective system design and implementation. Biomedical informatics is the interdisciplinary field at the intersection of health science, social science and information s… Show more

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Cited by 26 publications
(33 citation statements)
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“…Available natural language processing or other techniques that extract information from unstructured data are of limited use, 18 but utilization of structured data fields makes the information more useful for research. Systematic capture of health status data can inform the care of individual patients contributing the data and improve disease management generally, a so-called “learning health system.” 19 This model may be more scalable than passive data collection or active data collection added to clinical care, increasing the range of data elements collected and improving the representativeness of the patients (Table 3 presents an example).…”
Section: Rwdmentioning
confidence: 99%
“…Available natural language processing or other techniques that extract information from unstructured data are of limited use, 18 but utilization of structured data fields makes the information more useful for research. Systematic capture of health status data can inform the care of individual patients contributing the data and improve disease management generally, a so-called “learning health system.” 19 This model may be more scalable than passive data collection or active data collection added to clinical care, increasing the range of data elements collected and improving the representativeness of the patients (Table 3 presents an example).…”
Section: Rwdmentioning
confidence: 99%
“…A transition towards "knowledge discovery", "knowledge management", and "knowledge application", in such a way that big data become actionable and operational data, is absolutely necessary, even if it is highly challenging [57]. A shift towards a "competency-based medical educational system" is also of paramount importance [58,59].…”
Section: Discussionmentioning
confidence: 99%
“…To develop a real learning health system, the different 'cultures' and 'languages' underlying it have to communicate and interact with each other in an inter-, multi-disciplinary perspective [58,60]. Boundaries have to be crossed and the gaps have to be filled [58].…”
Section: Discussionmentioning
confidence: 99%
“…The strategy rightly aims to recruit more analysts and data scientists. However, a learning health and care system is sociotechnical—it includes people working in interdisciplinary teams, not just technology and data science—so must include a broader range of informatics skills 1718…”
Section: Learning Systemmentioning
confidence: 99%