IBM Explorys Electronic Health Record (EHR) Database Data Sheet

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IBM Explorys Electronic Health Record (EHR) Database Data Sheet DATA SHEET IBM Explorys Electronic Health Record (EHR) Database Confidently and efficiently generate Highlights: the data-driven insights that you – A rich, integrated, and growing living need to make business-critical clinical data set that is HIPAA- decisions enabled, including more than 63 million unique patients – A comprehensive picture of the How Users May Benefit patient experience is provided with data sourcing from integrated For life sciences organizations that require clinical delivery networks (IDNs), clinically insights, IBM® Explorys® offerings are real-world, integrated networks (CINs), and near real-time, cloud-based clinical data assets accountable care organizations and analytic solutions. They help industry (ACOs), closing the data gaps that professionals confidently and efficiently generate plague other electronic medical data-driven insights needed to make business- record (EMR)-based data sets critical decisions across a range of functional areas – Extensive data curation, quality including medical affairs, clinical development, assurance, and quality control to health economics and outcomes research, strengthen data quality, accuracy, epidemiology, and commercialization. and harmonization – Unique capabilities, including near Rich Data > Deep Insights > Confident Decisions real-time analyses, supported by strong relationships with an Built upon clinical data, captured with breadth, expanding group of providers depth, and completeness, the IBM Explorys – Turnkey functionality and advanced offerings for life sciences tap a wealth of clinical data management through seamless information for more than 63 million unique partnering with IBM's analytic tools patients. Deep, longitudinal data is available for and consulting services these patients for an average of 3-4 years. The data – Cloud-based, security-rich platform also spans the continuum of care, from ambulatory for ease-of-access and flexibility to inpatient to specialty care. IDN, CIN, and ACO data sourcing provides a comprehensive picture of the patient experience, closing the gaps that plague other EMR-based data sets. An extensive curation process helps improve accuracy and facilitates analysis by transforming disparate date and mapping key elements to widely-accepted standards. This living data set uses a data collection system that combines data streamed from a diverse and growing array of large, integrated health delivery systems and community-based networks. As a result, it can uniquely enable near real-time analyses, data enrichment, and innovative, customized offerings. How the IBM Explorys Offerings for Life A Wealth of Clinical Information Sciences Can Help Your Organization in a Living Data Set - Understand the complete patient - Streams partner IDN, CIN, and ACO data experience, including treatment adherence direction from a multitude of data sources, -Explore market dynamics and test business including clinical EMRs, community practice assumptions management systems, billing, adjudicated payer - Support outcomes and quality-of-life claims, HL7, enterprise data warehouse (EDW), modeling and health information exchange (HIE) feeds. - Conduct analyses that facilitate outcome- - Provides readily available clinical information not based contracting typically found in other data sets, including -Focus research and development (R&D) provider interactions and behavior, deep efforts, optimize clinical trial protocols and laboratory results (including microbiology), vitals enhance clinical trial enrollment and and biometrics, patient-reported outcomes, and management implantable device details. - Monitor product launches in near real-time - Provides particularly rich data in major chronic and conduct post-marketing surveillance disease areas, including cardiology, diabetes, - Assess impacts of regulatory and immunology, infectious disease, and neurology. competitive changes - Constantly refines data to meet evolving client needs, with the ability to obtain additional data elements through direct connections to provider partners. Examples include microbiology data, implantable device data, and oncology information. Efficient Generation of Real-World Data for Health Informatics The Smart Choice for Your Clinical Insight Needs The IBM Explorys offerings for life sciences provide turnkey functionality and advanced data management capabilities through seamless partnering with IBM's first-class analytics, software, and consulting services, with the future addition of cognitive computing. The solutions offer flexible tools that can be scaled to meet specific and organization-wide objectives. As part of the IBM Watson Health digital ecosystem, the IBM Explorys offerings for life sciences are strongly supported by IBM's unparalleled experience, track record, and research and innovation. The goal is to provide the fully integrated information management solutions needed to succeed in today's rapidly changing healthcare environment. IBM Explorys Data and Associated Tools For More Information To learn more about IBM Explorys EHR Database offerings for Life Sciences, please contact your IBM representative or visit the followig website: http://www.ibm.com/watson/health/explorys/ healthcare-analytics/ The information in this document is provided “as is” without any warranty, express or implied, including without any warranties of merchantability, IBM Corporation © Copyright IBM Corporation 2017, 2019 fitness for a particular purpose and any warranty or condition of non- Software Group infringement. Route 100 Somers, NY 10589 IBM products are warranted according to the terms and conditions of the agreements under which they are provided. 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