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Exploring Patient Data in Context to Support Clinical Research Studies: Research Data Explorer. Adam Wilcox, PhD, Chunhua Weng , PhD, Sunmoo Yoon, PhD, RN, Suzanne Bakken , RN, DNSc WICER Columbia University.
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Exploring Patient Data in Context to Support Clinical Research Studies: Research Data Explorer Adam Wilcox, PhD, ChunhuaWeng, PhD, Sunmoo Yoon, PhD, RN, Suzanne Bakken, RN, DNSc WICER Columbia University AHRQ grant R01 HS019853-01, Washington Heights/Inwood Informatics Infrastructure for Community-Centered Comparative Effectiveness Research (WICER)
“All infusions and drips from the I/O flowsheet, as well as blood products [and ventilation data]” • “Patients will be included if they have undergone surgical resection for exocrine pancreatic tumors” • “We would like to see a sample month of … to verify and understand how these values are being extracted in the data we are seeing”
“PACU admission date and time (defined by the date and time stamp of the first blood pressure recorded on the day of surgery in the PACU; else same in the SICU for those with no vital signs in PACU)” • “Reoperation date and time (reoperation defined as any operative procedure during the index admission, excluding the index operation” • “Text following “Has Patient used Tobacco in past year?” in [note]”
“Other information requested includes: age, gender, ethnicity, clinic location/setting of visit, type of insurance, hemoglobin, hematocrit, mean corpuscular volume, red cell distribution width, serum ferritin, serum iron, serum transferrin, reticulocyte count, serum B12, serum folate, IgA anti-tissue transglutaminase antibodies, IgA endomysial antibodies, IgA anti-gliadin peptide antibodies, reports from endoscopy including esophagogastroduodenoscopy and colonoscopy, endoscopic tissue biopsy pathology reports, all past medical diagnoses and ICD-9 codes.”
Washington Heights/Inwood 5 zip codes: 10031, 10032, 10033, 10034, 10040 Represents significant issues in health care disparities
Making Data Patient-Centered • Across care institutions • Hospital, ambulatory care, home care, long-term care • Longitudinal • Outside the care setting • Demographics and social information • Vital statistics • Patient assessments
Survey Populations 8,000 surveys
RedX Usability Study Users were instructed to complete their scenarios (discovery) first, then explore freely • Task Coding • Login • Select patient by diagnosis • Select patient by service • Choose patient from list • View results • View data type distribution
RedX Usability Study • Users completed scenarios first, then explored freely • Steps • Login • Create list of patients (search) • Select patient from list • View results • View data type distribution
Results: Time Spent Login Select pt by ICD9/Medcode Identify Diagnosis medcode Select by service Select pt from list View results View data type distribution
Results of Usability Study • Need example explaining goals and purpose • Patient selection can be difficult • Comfortable with clinical view, but didn’t know next steps • Data navigation depended on user experience
Lessons Learned • User context important for usability • Still need basic cohort selection tool (e.g. i2b2) • Patient context important for understanding data
Next Steps • Finalize governance • Tutorial • Adjust performance according to use • Speed • Modeling
Barriers, Bottlenecks and Burdens • User navigation of data seems to be one challenge • Data modeling is also a challenge • What are others? • What is the significance of each? • Barriers? • Bottlenecks? • Burdens?