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The CRIO at UW-Health Umberto Tachinardi, MD, MSc Chief Research Information Officer UW Health Associate Dean for Biomedical Informatics School of Medicine & Public Health Director, Biomedical Informatics Core Institute for Clinical and Translational Research (ICTR) UW-Health Dean - CEOs COOs CRIO BCG CIO HIMC Clarity Applications IT Help-Desk CTSA BMI Core Advisory Commitees Director Umberto Tachinardi MD, MSc Council of CIOs UWHC, MC, UWMF Co-Director TBN (MCRF) Adm-Assistant Sue Ann Hubanks HIMC Bioinformatics Mark Craven PhD Imaging Informatics Elisabeth Burnside MD EDW U Tachinardi MD, MSc and P Peissig MBA Clinical/Health Informatics Eneida Mendonca MD, PhD Innovative Technologies Miron Livny PhD IT Infrastructure David Towers MBA and MCRF equivalent User request Triage/Routing Packaged Services/Prods Yes Packaged Servs/Prods available? ICTR IT Infrastructure No Ad-Hoc EDW Queries NLP Project Analysis CTMS customizations Image Processing (PACS) Genomic Analysis Interfacing Data Storage Data Security Collaborations Research Project Analysis Research/ Development req’d? Yes Project not-viable No BARD Data Analysis Regulatory/Compliance Image Analysis Project viable Grant Proposal Data Modeling Consulting Training CRIS TTRC (Imaging Facility) REC BMIC Services Partnerships Advanced Technologies (R&D) Information documentation, storage and retrieval Machine learning, including data mining Networking, security, databases NLP, semantic technologies Image and Signal Analysis Representation of logical and probabilistic knowledge and reasoning Simulation and modeling Software Engineering Biomedical Informatics – proposed changes for next renewal - - - Goal: Define a common “BMI Core” for both CTSA and UWCCC Opportunities - Across the board Epic implementation (HC/MF/Unity) - UW Health DW project (HIMC) - OnCore integration - Integrated IT infra-structure (servers, networks, storage) Competitive Advantage - HIMSS Level 7 (Epic) - Strong Bioinformatics - Improved Clinical Informatics (new Faculty) - Coordinated human subject recruitment policies and tools - Data Governance plan - Marshfield Clinic partnership Drivers - Cost efficiency (non unnecessary redundancies, common standards for all NIH funded projects) - Research empowerment (trhough more robust and sophisticated tools and services) - Collaboration vs Competition (same teams working towards the same objectives) Core Services HealthLink (Clarity) NLP Bioinformatics Security Ontology Interfaces Finance OnCore (Cancer) DW-Metadata HealthLink (Other) OnCore (ICTR) DW-Ontology DW-Hybrid Molecular, images data UWCCC Administrative Systems & IT Infrastructure UWCCC Informatics ICTR (BMIC) UWCCC Bioinformatics Clinical & Health, IT SMPH UW-Biomedical Informatics Services Data Services (caBIG, i2B2, HL7, Portal, APIs, SQL, FTP) Networking/Computing/Storage Security Honest Broker OnCore Epic NLP UW-DW HIMC (UW-Health) Ontologies PACS “omics” Molecular Data Images Biosamples Registries External DBs Literature The Clinical/Research Data Warehouse The Hybrid Model Semantic ONTOLOGY METADATA Implementation EAV DIMENSIONAL Integrated Design Event General Event Measurable Event Substance RED Observation General Observation Measurable Observation Substance EAV Level 1 Rollup Patient Education Community Education Patient Outcomes Care Giver Performance Panel Management Case Management Clinical, Quality and Safety Measurements Financial Health Measures Quality and Safety Improvement Outcomes Measurement Population Health Resource Utilization Service Line Utilization Improving Patient Experience Clinical Trials/ Research Operational Efficiencies Patient Population Definitions Clinical Patient Care Revenue Cycle Level 0 (Atomic Level) Clinical Effectiveness Market Position Revenue Cycle Activity Definitions Coverage/ Authorization Patient Tracking Immunization PCP & Referrals Patient Survey Repetitive Services Safety Events Treatment / Procedure Complaints Risk Assessments Clinically Administered Medications Tests In-Basket Communication Follow-up Retail Pharmacy Patient Consult Peer Review Payment Collection Payroll Costing Budget Charging Accounts DME ` Pre Access/ Registration Visits/ Appointments Patient History Problem / Medication Patient Resource Needs Vitals Diagnosis Plan Care/ Orders Best Practice Advisories ETL and Data Integration Registries/Data Silos Research Collaborations External to Clarity External Data Master Data ADT Transactions Appointments / Visits Internal to Clarity Tests/ Pharmacy Accounts Class Relationship Ontology Map (26 levels) Disease Management HIMC DW architecture (high level view) Reports/Dashboards Users BO Universe * Partially developed ** Planned Security – Honest Broker ** Security – Auditing ** Ontology management ** NLP editing ** Reports Red = non-HIMC Blue = HIMC Users Security – Access Management ** Views * Metadata * Query Tool ** Ontologies ** HIMC DW Atomic layer * Natural Language Processing ** Other Interfaces* Healthlink (Clarity/ Chronicles) ETL* Data mart * The ecosystem for IT and Analytics IT Analytics Technology (i.e. Data Center, Networks) Data warehouse (HIMC, Clarity) Applications (i.e. email, web, Epic, PeopleSoft) Analytical tools (Natural Language Processing, Honest Broker, Ontologies) The differences between IT and anaytics IT Analytics Mostly tactical and operational levels Mostly strategic and tactical levels Systems operated at this level tend to support operational workflows (email, Epic, Peoplesoft), the strengths are processes automation (i.e. CPOE, logistics, billing, HR). The technological infrastructure (servers, networks, desktop computers) is part of this area, it establishes the platform where the operational systems rely upon. This area helps process optimization, efficiency and productivity. Systems developed in this area are mostly targeted at transforming data into information and knowledge. This is mostly an strategic decision support area. Reports, dashboards, simulations, depend a lot on the business characteristics, the meaning and quality of data, the data crunching performed on high volume datasets. This area tend to be less technological, and much more business dependent, it will help planning, benchmarking and discoveries. Process drivers Business drivers CPOE, billing, admitting, scheduling, discharging are examples of processes supported by this area. This area guarantees that security and privacy are in place. It is mostly based on mission critical systems. Highly regulated, users need to be well trained in operating the systems. This area keeps the lights on. Budget planning, root cause analysis, comparative effectiveness, scenario simulation (a new hospital, a new ward, more nurses, etc), personalized medicine, cohort finding, are examples of non-routine, applications at the strategic and tactical levels supported by analytics. This area helps plan for the immediate and distant future. Engineering, customization Architecture, development The IT area is highly structured, depend on well defined and implemented methods that are known by all (users and operators). This is why most of the solutions are purchased from third-parties. More than developing methods, this area apply them. Systems like Epic, will be customized to be more adequate to the local characteristics. The core of the system is untouched, only parts of the system can be customized. This area requires more management (big contracts, large teams, complex IT technologies) and less development. Different from conventional IT (data is shaped to satisfy computer needs), analytics is closer to the human reasoning. Rather than processes and workflows, this area deals with meaningful information and knowledge. There are no commercial systems ready to fulfill the needs of this area, therefore they need to be developed. There are computational tools, available to help those developments, but they assist mostly on how to transform and present information, identify patterns, extrapolate and forecast. Analytics, because of the factors described, is closer to be an architectural work. The differences between IT and analytics IT Analytics Management Creation/Vision The measures of a successful CIO are all related to excellence in management. Perfect budgets, on time deliveries, regulatory discipline, project and contract management. This well structured mission, requires a risk-averse personality and a standardized/predictable behavior, since most products support mission-critical tasks in a very sensitive environment. The CIO for Analytics, is a different type of professional. This person needs to be highly motivated to work in a less structured environment, he/she likes to take risks (and know how to select the reasonable ones), be imaginative and innovative. The products of the analytics will be as good as the capacity to predict future trends, motivate people based on concepts and ideas, rather than repeat/improve what others are doing. Evolutionary Transformative Like any other engineering process, this area produces tools and solutions that will allow for incremental improvements (i.e. more security, faster systems, better interfaces, more integration). Epic, for instance, gets better in every upgrade. Networks are more reliable, secure and faster every year. Analytics is a parallel business to IT. While it depends on the existence of a well built and managed IT environment, the purpose of the analytics is to recycle data products (data stored on databases), in the pursue of innovating, finding problems and opportunities, feeding decision makers to change the business model, be it health care business or clinical thinking. Low Intellectual Property Because most of the systems on IT are purchased from vendors, there is very little potential for institutional IP development. High Intellectual Property ROI (Return of Investment) RONI (Risk of NOT Investing) Conventional IT depends on positive ROI. Although, the real ROIs are very difficult to calculate and prove, the industry is moved by those metrics. It is a conservative approach, and CIOs are trained to follow those predicaments (very conservative). Health care is a business in transformation. The science is different, the population profile is changing, the costs are not sustainable, the patients demand different products, chronic disease management is a new challenge. Not developing tools and solutions that will help understand, plan and actually change the status quo becomes an enormous risk! The area of analytics provide an enormous potential for IP accrual. Those IP assets can come from two sources: the methods and tools developed in house, and also the findings (i.e. discoveries, high yield datasets, best practices, risk management). The “new guy” CIO vs. CRIO… CIO EHR, ERP, Quality, PACS JCAHO, AHRQ, MU, ACO, HIPAA, OSHA, HIE Customers: Physicians, nurses, CXO, managers HIMSS 1000s FTEs EDW (Clinical, Quality) CRIO CTMS, IRB, Bio Banking, Grants Mgt, etc I2b2, caBIG, VIVO, IRB/HIPAA, clinicaltrials.gov Customers: Researchers, students, faculty AMIA 10s-100s FTEs EDW (Research, Education) … and, IT vs. Analytics IT Operations and workflows Technologies Security Predictability, reproducibility Engineering, implementation Analytics Decision support Knowledge Risk Unpredictability, innovation Architecture, research Research (CTMS) X Patient Care (EHR) Regulatory IRB HIPAA Storage High Capacity / Non fault-tolerant Medium Size / Fault tolerant Data Ownership PI Healthcare provider State Offline Online Finance Grants/Contracts Billing Registries/Panels/Datasets Data Warehouse Reporting NLP Semantic Mgt Analytics (is this the CRIO?) Data Governance IT Data Center Networks Support Training Security Applications