Nursing Needs Big Data and Big Data Needs Nursing.

PURPOSE Contemporary big data initiatives in health care will benefit from greater integration with nursing science and nursing practice; in turn, nursing science and nursing practice has much to gain from the data science initiatives. Big data arises secondary to scholarly inquiry (e.g., -omics) and everyday observations like cardiac flow sensors or Twitter feeds. Data science methods that are emerging ensure that these data be leveraged to improve patient care. ORGANIZING CONSTRUCT Big data encompasses data that exceed human comprehension, that exist at a volume unmanageable by standard computer systems, that arrive at a velocity not under the control of the investigator and possess a level of imprecision not found in traditional inquiry. Data science methods are emerging to manage and gain insights from big data. METHODS The primary methods included investigation of emerging federal big data initiatives, and exploration of exemplars from nursing informatics research to benchmark where nursing is already poised to participate in the big data revolution. We provide observations and reflections on experiences in the emerging big data initiatives. CONCLUSIONS Existing approaches to large data set analysis provide a necessary but not sufficient foundation for nursing to participate in the big data revolution. Nursing's Social Policy Statement guides a principled, ethical perspective on big data and data science. There are implications for basic and advanced practice clinical nurses in practice, for the nurse scientist who collaborates with data scientists, and for the nurse data scientist. CLINICAL RELEVANCE Big data and data science has the potential to provide greater richness in understanding patient phenomena and in tailoring interventional strategies that are personalized to the patient.

[1]  Richard Platt,et al.  Launching PCORnet, a national patient-centered clinical research network , 2014, Journal of the American Medical Informatics Association : JAMIA.

[2]  E. Krishnan,et al.  Big Data and Clinicians: A Review on the State of the Science , 2014, JMIR medical informatics.

[3]  Blackford Middleton,et al.  Fall prevention in acute care hospitals: a randomized trial. , 2010, JAMA.

[4]  Patricia C. Dykes,et al.  Harmonizing and extending standards from a domain-specific and bottom-up approach: an example from development through use in clinical applications , 2015, J. Am. Medical Informatics Assoc..

[5]  Patricia Flatley Brennan Editorial: Standing in the Shadows of Theory , 2008, J. Am. Medical Informatics Assoc..

[6]  Sunmoo Yoon,et al.  A practical approach for content mining of Tweets. , 2013, American journal of preventive medicine.

[7]  Kevin Ponto,et al.  Virtualizing living and working spaces: Proof of concept for a biomedical space-replication methodology , 2015, J. Biomed. Informatics.

[8]  Nicholas R. Hardiker,et al.  Incorporating personalized gene sequence variants, molecular genetics knowledge, and health knowledge into an EHR prototype based on the Continuity of Care Record standard , 2012, J. Biomed. Informatics.

[9]  J. Garrett,et al.  The role of race and trust in tissue/blood donation for genetic research , 2010, Genetics in Medicine.

[10]  T. Manolio,et al.  Obtaining informed consent for genetic studies: The multiethnic study of atherosclerosis. , 2006, American journal of epidemiology.

[11]  F. Collins,et al.  A new initiative on precision medicine. , 2015, The New England journal of medicine.

[12]  Suzanne Bakken,et al.  Online Health Information Seeking Behaviors of Hispanics in New York City , 2013 .

[13]  Kathleen M. Carley,et al.  A comparative study of 11 local health department organizational networks. , 2010, Journal of public health management and practice : JPHMP.

[14]  Sterling C. Johnson,et al.  Heritability of cognitive traits among siblings with a parental history of Alzheimer's disease. , 2015, Journal of Alzheimer's disease : JAD.

[15]  N. Leonard,et al.  Increasing and Supporting the Participation of Persons of Color Living with HIV/AIDS in AIDS Clinical Trials , 2010, Current HIV/AIDS reports.

[16]  Jung In Park,et al.  A national action plan for sharable and comparable nursing data to support practice and translational research for transforming health care , 2015, J. Am. Medical Informatics Assoc..