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1. Aligning Temporal Data by Sentinel Events:Discovering Patterns in Electronic Health Records Taowei David Wang, Catherine Plaisant,
Alexander J. Quinn, Roman Stanchak,
Ben Shneiderman, and Shawn Murphy
Presented By: Ben Harner 05/05/2009
2. 2 Authors: Taowei David Wang University of Maryland:
Human Computer Interaction Lab
Ph. D. Student
3. 3 Authors: Catherine Plaisant Associate Director of Research of the Human-Computer Interaction Lab of the University of Maryland
Doctorat d'Ingenieur degree in France in 1982
Enjoys working with multidisciplinary teams on designing and evaluating new interface technologies that are useable and useful
4. 4 Authors: Alexander J. Quinn University of Maryland:
Human Computer Interaction Lab
Ph. D. Student
Research Include human-computer interaction (HCI), digital libraries, distributed human computation (DHC)
5. 5 Authors: Roman Stanchak University of Maryland
Currently on a leave of absence from the PhD program
Interests include Computer Vision, Machine Learning, Graph Analysis, Data Mining, Information Visualization, Human Computer Interaction, Numerical Analysis
6. 6 Authors: Ben Shneiderman Professor in the Department of Computer Science at the University of Maryland
Founding Director (1983-2000) of the Human-Computer Interaction Laboratory
Member of the Institute for Advanced Computer Studies
7. 7 Authors: Shawn Murphy The Associate Director of the Laboratory of Computer Science at Massachusetts General Hospital
Assistant Professor of Neurology at Harvard Medical School.
8. 8 Introduction Discovering patterns is a common step of scientific inquiry
Medical researchers are interested in temporal patterns across health records
Explore strategies to support tasks that involve temporal comparisons relative to important events
Heart attacks, strokes, etc …
9. 9 Related Research Timelines to present temporal data
TimeSearcher, TimeSearcher2, VizTree
Visualization work on single patient records
Powsner, Tufte
Visualizing categorical data on timelines
Lexis diagrams, Lifelines
Form-based query interface for specifying temporal data
PatternFinder
10. 10 Lifelines2 Lifelines2 is an interactive visualization tool for visualizing temporal categorical data across multiple records.
The goal of the project is to enable discovery and exploration of patterns across these records to support hypothesis generation, and finding cause-and-effect relationships in a population.
These tasks are not specific to the medical domain, but first motivation was by EHRs.
11. 11 Lifelines2 Lifelines2 Demo
12. 12 Controlled Experiment Procedure
Scholastic records for a set of students
Data was point events like submitting a paper, software release, dates of dissertation proposal or defense, signing up for a class, or submitting a job application
20 Participants
Divided into two independent parts
13. 13 Controlled Experiment Procedure: Part 1
Participants asked to perform tasks regarding events around first occurrence of event using 2 interfaces
Alignment as an operator
No alignment
Tasks to complete
How many students submitted a paper within 1 month after proposal? (5 records)
How many students submitted a paper within 1 month after proposal? (20 records)
How many students published at least 3 papers between proposal and defense?
What occurred most often within a month of a student’s 1st paper submission?
14. 14 Controlled Experiment Procedure: Part 2
Only used the interface variation with alignment, but varies how the events were represented
The first condition the lines of the interval of validity were visible
The second condition the lines of interval validity were not visible
Tasks to complete
Assuming a class lasts 3 months, how many students proposed while they were taking a class?
Assuming a class lasts 3 months, and it takes 2 months to prepare for proposal, how many students were preparing for proposal while taking a class?
15. 15 Controlled Experiment Intervals of validity
16. 16 Controlled Experiment Results
Task Time Competition Error Rate by Tasks
17. 17 Domain Expert Qualitative Evaluation Procedure
4 medical professionals
11 patients who had asthma, and were prescribed some type of steroid
Some of the patients had other conditions that might also require a steroid prescription
Participants were asked to select patients for a study who had been given steroids for their asthma condition and nothing else.
18. 18 Domain Expert Qualitative Evaluation Results
Three out of the four participants had no problem interpreting the visualization
They were able to immediately figure out the timeline, each patient’s record, and the temporal event data shown as triangles
The important result was that the displayed intervals affect how the participants viewed and interpreted the data
19. 19 Conclusions Lifelines2 provides operations to align, rank, and filter the results of queries
Displays of patient histories aligned on events enable medical researchers to spot precursor, co-occurring, and aftereffect events.
20. 20 Discussion Importance
Credibility
Novelty
Applicability
Generalizability
Scalability
Assumptions
Readability
21. 21 Questions for the Authors? If you think of any additional questions please e-mail me at:
benjamin-harner@uiowa.edu