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El. knyga: Actionable Intelligence in Healthcare

Edited by (Select Medical, Mechanicsburg, Pennsylvania, USA), Edited by (Harrisburg University of Science and Technology, Pennsylvania, USA)
  • Formatas: 293 pages
  • Serija: Data Analytics Applications
  • Išleidimo metai: 07-Apr-2017
  • Leidėjas: Auerbach Publishers Inc.
  • ISBN-13: 9781351803663
Kitos knygos pagal šią temą:
  • Formatas: 293 pages
  • Serija: Data Analytics Applications
  • Išleidimo metai: 07-Apr-2017
  • Leidėjas: Auerbach Publishers Inc.
  • ISBN-13: 9781351803663
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This book shows healthcare professionals how to turn data points into meaningful knowledge upon which they can take effective action. Actionable intelligence can take many forms, from informing health policymakers on eective strategies for the population to providing direct and predictive insights on patients to healthcare providers so they can achieve positive outcomes. It can assist those performing clinical research where relevant statistical methods are applied to both identify the ecacy of treatments and improve clinical trial design. It also benefits healthcare data standards groups through which pertinent data governance policies are implemented to ensure quality data are obtained, measured, and evaluated for the benet of all involved.

Although the obvious constant thread among all of these important healthcare use cases of actionable intelligence is the data at hand, such data in and of itself merely represents one element of the full structure of healthcare data analytics. This book examines the structure for turning data into actionable knowledge and discusses:





The importance of establishing research questions Data collection policies and data governance Principle-centered data analytics to transform data into information Understanding the "why" of classified causes and effects Narratives and visualizations to inform all interested parties

Actionable Intelligence in Healthcare is an important examination of how proper healthcare-related questions should be formulated, how relevant data must be transformed to associated information, and how the processing of information relates to knowledge. It indicates to clinicians and researchers why this relative knowledge is meaningful and how best to apply such newfound understanding for the betterment of all.
Foreword ix
Editors xi
Contributors xiii
1 Empowering Clinician-Scientists in the Information Age of Omics and Data Science
1(18)
Pamela A. Tamez
Mary B. Engler
2 Making Data Matter: Identifying Care Opportunities for US Healthcare Transformation
19(20)
Mark A. Caron
3 Turning Data into Enhanced Value for Patients
39(12)
Kyun Hee (Ken) Lee
4 Data Analytics for the Clinical Researcher
51(14)
Minjae Kim
5 Intelligent Healthcare: The Case of the Emergency Department
65(20)
Shivaram Poigai Arunachalam
Mustafa Sir
Kalyan S. Pasupathy
6 Network Analytics to Enable Decisions in Healthcare Management
85(28)
Uma Srinivasan
Arif Khan
Shahadat Uddin
7 Modeling and Analysis of Behavioral Health Data Using Graph Analytics
113(32)
Rose Yesha
Aryya Gangopadhyay
8 The Heart of the Digital Workplace: Intelligent Search Moves the Measure from Efficiency to Proficiency for a Fortune 50 Healthcare Company
145(12)
Jay Liebowitz
Diane Berry
9 The Promise of Big Data Analytics---Transcending Knowledge Discovery through Point-of-Care Applications
157(22)
Lavi Oud
10 Predictive Analytics and Machine Learning in Medicine
179(22)
L. Nelson Sanchez-Pinto
Matthew M. Churpek
11 High-Dimensional Models and Analytics in Large Database Applications
201(18)
Michael Brimacombe
12 Learning to Extract Actionable Evidence from Medical Insurance Claims Data
219(22)
Jieshi Chen
Artur Dubrawski
13 The Role of Unstructured Data in Healthcare Analytics
241(22)
Amanda Dawson
Sergei Ananyan
Index 263
Dr. Jay Liebowitz is the DiSanto Visiting Chair in Applied Business and Finance at Harrisburg University of Science and Technology. He previously served as the Orkand Endowed Chair of Management and Technology in the Graduate School at the University of Maryland University College (UMUC). Prior to UMUC, Dr. Liebowitz was a full professor in the Carey Business School at Johns Hopkins University. He was ranked one of the top 10 knowledge management researchers/practitioners out of 11,000 worldwide. Dr. Liebowitz is the founding editor-in-chief of Expert Systems with Applications: An International Journal, which is ranked as a top-tier journal worldwide.



Amanda Dawson holds a Ph.D. in Experimental Psychology and is the Director of Research at Select Medical where she oversees clinical research and quality improvement initiatives at more than 100 nation-wide long-term acute care hospitals. Prior to joining Select Medical, she was a research fellow in biomedicine at Albert Einstein Hospitals Moss Rehabilitation Research Institute and completed her post-doctoral training in Physical Medicine & Rehabilitation from the University of Pennsylvania Medical School. Over the past decade, she has published numerous articles on identifying patient subpopulations and characterizing clinical practice patterns and patient outcomes over time.