scholarly journals Making Sense of Big Data to Improve Perioperative Care: Learning Health Systems and the Multicenter Perioperative Outcomes Group

2020 ◽  
Vol 34 (3) ◽  
pp. 582-585
Author(s):  
Michael R. Mathis ◽  
Timur Z. Dubovoy ◽  
Matthew D. Caldwell ◽  
Milo C. Engoren
Author(s):  
Sally A. Applin ◽  
Michael D. Fischer

As healthcare professionals and others embrace the Internet of Things (IoT) and smart environment paradigms, developers will bear the brunt of constructing the IT relationships within these, making sense of the big data produced as a result, and managing the relationships between people and technologies. This chapter explores how PolySocial Reality (PoSR), a framework for representing how people, devices and communication technologies interact, can be applied to developing use cases combining IoT and smart environment paradigms, giving special consideration to the nature of location-aware messaging from sensors and the resultant data collection in a healthcare environment. Based on this discussion, the authors suggest ways to enable more robust intra-sensor messaging through leveraging social awareness by software agents applied in carefully considered healthcare contexts.


2019 ◽  
Author(s):  
Kelsey Berg ◽  
Chelsea Doktorchik ◽  
Hude Quan ◽  
Vineet Saini

Abstract Background: Electronic Health Records (EHRs) are key tools for integrating patient data into health information systems (IS). Advances in automated data collection methodology, particularly the collection of social determinants of health (SDOH), provide opportunities to advance health promotion and illness prevention through advanced analytics (i.e. “Big Data” techniques). We ask how current data collection processes in EHRs permit SDOH data to flow throughout health systems. Methods: Using a scoping review framework, we searched through medical literature to identify current practices in SDOH data collection within EHR systems. We extracted relevant information on data collection methodology, specifically focusing on uses of automated technology. We discuss our findings in the context of research methodology and potential for health equity. Results: Practitioners collect a variety of SDOH data at point of care through EHR, predominantly via embedded screening tools and clinical notes, and primarily capturing data on financial security, housing status, and social support. Health systems are increasingly using digital technology in data collection, including natural language processing algorithms. However overall use of automated technology is limited to date. End uses of data pertain to improving system efficiency, patient care-coordination, and addressing health disparities. Discussion & Conclusion: EHRs can realistically promote collection and meaningful use of SDOH data, although EHRs have not extensively been used to collect and manage this type of information. Future applied research on systems-level application of SDOH data is necessary, and should incorporate a range of stakeholders and interdisciplinary teams of researchers and practitioners in fields of health, computing, and social sciences.


Impact ◽  
2019 ◽  
Vol 2019 (1) ◽  
pp. 25-29
Author(s):  
Duncan Greaves

Author(s):  
Oluwakemi Ola ◽  
Kamran Sedig

Health data is often big data due to its high volume, low veracity, great variety, and high velocity. Big health data has the potential to improve productivity, eliminate waste, and support a broad range of tasks related to disease surveillance, patient care, research, and population health management. Interactive visualizations have the potential to amplify big data’s utilization. Visualizations can be used to support a variety of tasks, such as tracking the geographic distribution of diseases, analyzing the prevalence of disease, triaging medical records, predicting outbreaks, and discovering at-risk populations. Currently, many health visualization tools use simple charts, such as bar charts and scatter plots, that only represent few facets of data. These tools, while beneficial for simple perceptual and cognitive tasks, are ineffective when dealing with more complex sensemaking tasks that involve exploration of various facets and elements of big data simultaneously. There is need for sophisticated and elaborate visualizations that encode many facets of data and support human-data interaction with big data and more complex tasks. When not approached systematically, design of such visualizations is labor-intensive, and the resulting designs may not facilitate big-data-driven tasks. Conceptual frameworks that guide the design of visualizations for big data can make the design process more manageable and result in more effective visualizations. In this paper, we demonstrate how a framework-based approach can help designers create novel, elaborate, non-trivial visualizations for big health data. We present four visualizations that are components of a larger tool for making sense of large-scale public health data. 


Subject Eastern EU’s handling of COVID-19 pandemic. Significance Central-East European (CEE) authorities are more reactive than proactive on COVID-19 management and have devised an ad hoc patchwork of measures; all are relying on 'stay-at-home' strategies to curb excessive demand on health systems. Politically, COVID-19 is not creating new attitudes but amplifying existing ones. It offers national-populists a fertile environment for centralising decision-making further and adopting measures incompatible with normal democratic standards. Impacts The next EU budget may take into account the latest revelation of less affluent members’ structural weaknesses. However, EU solidarity will be further stretched, creating new tensions between east and west. Although working online is less advanced in most CEE countries, appreciation of and investment in big data and technology will increase. Lockdowns will hold back education, with teachers, even at university level, underprepared to deliver courses remotely.


2013 ◽  
Vol 11 (suppl 2) ◽  
pp. S-1-S-12 ◽  
Author(s):  
Jessica K. DeMartino ◽  
Jonathan K. Larsen
Keyword(s):  
Big Data ◽  

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