scispace - formally typeset
Journal ArticleDOI

The inevitable application of big data to health care.

Travis B. Murdoch, +1 more
- 03 Apr 2013 - 
- Vol. 309, Iss: 13, pp 1351-1352
Reads0
Chats0
TLDR
The application of big data to health care is discussed, using an economic framework to highlight the opportunities it will offer and the roadblocks to implementation, and suggests that leveraging the collection of patient and practitioner data could be an important way to improve quality and efficiency of health care delivery.
Abstract
THE AMOUNT OF DATA BEING DIGITALLY COLLECTED AND stored is vast and expanding rapidly. As a result, the science of data management and analysis is also advancing to enable organizations to convert this vast resource into information and knowledge that helps them achieve their objectives. Computer scientists have invented the term big data to describe this evolving technology. Big data has been successfully used in astronomy (eg, the Sloan Digital Sky Survey of telescopic information), retail sales (eg, Walmart’s expansive number of transactions), search engines (eg, Google’s customization of individual searches based on previous web data), and politics (eg, a campaign’s focus of political advertisements on people most likely to support their candidate based on web searches). In this Viewpoint, we discuss the application of big data to health care, using an economic framework to highlight the opportunities it will offer and the roadblocks to implementation. We suggest that leveraging the collection of patient and practitioner data could be an important way to improve quality and efficiency of health care delivery. Widespread uptake of electronic health records (EHRs) has generated massive data sets. A survey by the American Hospital Association showed that adoption of EHRs has doubled from 2009 to 2011, partly a result of funding provided by the Health Information Technology for Economic and Clinical Health Act of 2009. Most EHRs now contain quantitative data (eg, laboratory values), qualitative data (eg, text-based documents and demographics), and transactional data (eg, a record of medication delivery). However, much of this rich data set is currently perceived as a byproduct of health care delivery, rather than a central asset to improve its efficiency. The transition of data from refuse to riches has been key in the big data revolution of other industries. Advances in analytic techniques in the computer sciences, especially in machine learning, have been a major catalyst for dealing with these large information sets. These analytic techniques are in contrast to traditional statistical methods (derived from the social and physical sciences), which are largely not useful for analysis of unstructured data such as text-based documents that do not fit into relational tables. One estimate suggests that 80% of business-related data exist in an unstructured format. The same could probably be said for health care data, a large proportion of which is text-based. In contrast to most consumer service industries, medicine adopted a practice of generating evidence from experimental (randomized trials) and quasi-experimental studies to inform patients and clinicians. The evidence-based movement is founded on the belief that scientific inquiry is superior to expert opinion and testimonials. In this way, medicine was ahead of many other industries in terms of recognizing the value of data and information guiding rational decision making. However, health care has lagged in uptake of newer techniques to leverage the rich information contained in EHRs. There are 4 ways big data may advance the economic mission of health care delivery by improving quality and efficiency. First, big data may greatly expand the capacity to generate new knowledge. The cost of answering many clinical questions prospectively, and even retrospectively, by collecting structured data is prohibitive. Analyzing the unstructured data contained within EHRs using computational techniques (eg, natural language processing to extract medical concepts from free-text documents) permits finer data acquisition in an automated fashion. For instance, automated identification within EHRs using natural language processing was superior in detecting postoperative complications compared with patient safety indicators based on discharge coding. Big data offers the potential to create an observational evidence base for clinical questions that would otherwise not be possible and may be especially helpful with issues of generalizability. The latter issue limits the application of conclusions derived from randomized trials performed on a narrow spectrum of participants to patients who exhibit very different characteristics. Second, big data may help with knowledge dissemination. Most physicians struggle to stay current with the latest evidence guiding clinical practice. The digitization of medical literature has greatly improved access; however, the sheer

read more

Citations
More filters
Journal ArticleDOI

Artificial intelligence in healthcare: past, present and future

TL;DR: The current status of AI applications in healthcare, in the three major areas of early detection and diagnosis, treatment, as well as outcome prediction and prognosis evaluation, are surveyed and its future is discussed.
Journal ArticleDOI

Big data analytics: Understanding its capabilities and potential benefits for healthcare organizations

TL;DR: The historical development, architectural design and component functionalities of big data analytics, including analytical capability for patterns of care, unstructured data analytical capability, decision support capability, predictive capability and traceability are examined.
Journal ArticleDOI

The practical implementation of artificial intelligence technologies in medicine.

TL;DR: The current regulatory environment in the United States is summarized and comparisons are highlighted with other regions in the world, notably Europe and China, to bring the full potential of AI to the clinic.
Journal ArticleDOI

Big Data In Health Care: Using Analytics To Identify And Manage High-Risk And High-Cost Patients

TL;DR: Six use cases are presented where some of the clearest opportunities exist to reduce costs through the use of big data: high-cost patients, readmissions, triage, decompensation, adverse events, and treatment optimization for diseases affecting multiple organ systems.
Journal ArticleDOI

Big Data Analytics in Intelligent Transportation Systems: A Survey

TL;DR: Several case studies of big data analytics applications in intelligent transportation systems, including road traffic accidents analysis, road traffic flow prediction, public transportation service plan, personal travel route plan, rail transportation management and control, and assets maintenance are introduced.
References
More filters
Journal ArticleDOI

Mining electronic health records: towards better research applications and clinical care

TL;DR: The potential for furthering medical research and clinical care using EHR data and the challenges that must be overcome before this is a reality are considered.
Journal ArticleDOI

Toward a National Framework for the Secondary Use of Health Data: An American Medical Informatics Association White Paper

TL;DR: The nation requires a framework for the secondary use of health data with a robust infrastructure of policies, standards, and best practices that can guide and facilitate widespread collection, storage, aggregation, linkage, and transmission of healthData.
Journal ArticleDOI

Automated identification of postoperative complications within an electronic medical record using natural language processing

TL;DR: Among patients undergoing inpatient surgical procedures at VA medical centers, natural language processing analysis of electronic medical records to identify postoperative complications had higher sensitivity and lower specificity compared with patient safety indicators based on discharge coding.
Journal ArticleDOI

Longitudinal histories as predictors of future diagnoses of domestic abuse: modelling study

TL;DR: Commonly available longitudinal diagnostic data can be useful for predicting a patient’s future risk of receiving a diagnosis of abuse, and could serve as the basis for an early warning system to help doctors identify high risk patients for further screening.
Journal ArticleDOI

The Unasked Question

TL;DR: Although there had been dozens of medical encounters, without my prompt, it was only recently that I realized that I had never been asked by a medical student, resident, or attending physician if I had served in the military, or if my deployment might be responsible for my medical symptoms.
Related Papers (5)