| Literature DB >> 25341558 |
Abstract
BACKGROUND: Narrative resources in electronic health records make clinical phenotyping study difficult to achieve. If a narrative patient history can be represented in a timeline, this would greatly enhance the efficiency of information-based studies. However, current timeline representations have limitations in visualizing narrative events. In this paper, we propose a temporal model named the 'V-Model' which visualizes clinical narratives into a timeline.Entities:
Mesh:
Year: 2014 PMID: 25341558 PMCID: PMC4283133 DOI: 10.1186/1472-6947-14-90
Source DB: PubMed Journal: BMC Med Inform Decis Mak ISSN: 1472-6947 Impact factor: 2.796
Figure 1Problems with conventional timeline representation. (a) Illustrates an example of a causality problem, and (b) shows an ambiguous sequence problem. The timeline view is generated from the LifeLines [32] program to show a conventional timeline example. For explanation purposes, we represented all unclear events as a point.
Figure 2V-Model structure.
Semantic types of the V-Model
| Notation | Explanation | Position |
|---|---|---|
| Purpose | Purpose | Problem |
| Sx | Symptom | Problem |
| Dx | Diagnosis | Problem/Action |
| Finding | Finding | Problem/Action |
| Drug | Drug | Action |
| Op | Operation | Action |
| Other | Any other events | Action |
| Plan | Plan | Action |
| Test | Test | Action |
| Tx | Treatment | Action |
| Adm | Admission | Visit |
| Death | Death | Visit |
| Disch | Discharge | Visit |
| Visit | Hospital/Department visit information | Visit |
Figure 3V-Model example. Note that the gray context block rectangles are not part of the V-Model visualization. They are added to aid in understanding.
Distinctive features of the V-Model
| Id | Distinctive features | Related issue | |
|---|---|---|---|
| Representation | P1 | Connection of Problem-Action relationship (P-A connection) | Causality |
| P2 | Non-explicit temporal expression (non-explicitness) | Granularity | |
| P3 | Temporal proximity implied in medical terms (proximity hint) | Non-explicitness | |
| P4 | Uneven granularity (uneven granularity) | Non-explicitness | |
| P5 | Implicit internal sequence | Non-explicitness | |
| Reasoning | R1 | Problem starts before Action (P precedes A) | Reasoning |
| R2 | Qualitative temporal relation (qualitative relation) | Reasoning | |
| R3 | Temporal distance from non-explicit event (implicit distance) | Reasoning | |
| Visualization | V1 | Intuitive view in discovering Problem-Action relationship (intuitive P-A relation) | Visual enhancement |
| V2 | Blocking effect of Problem-Action relationship among successive events (blocking effect) | Visual enhancement | |
| V3 | Overview of events' flow | Visual enhancement | |
| V4 | Dynamic scaled timeline (dynamic scale) | visual enhancement | |
| V5 | Highly readable history view in tracing long period events (long history) | visual enhancement |
Figure 4Multiple problem-action links in the V-Model.
Figure 5Pattern recognition by the V-Model timeline. (a) Patient timelines and common patterns in a target patient cohort. (b) Patient timelines beyond the target group.
Demographics of the participants
| (a) Students | ||
|---|---|---|
| Clinical rotation experience | Group | |
| V-Model | Lifelines | |
| No | 10 | 10 |
| Yes | 10 | 10 |
| 20 | 20 | |
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| Internal medicine | 10 | |
| Pediatrics | 10 | |
| Neurology | 5 | |
| Family medicine | 5 | |
| Rehabilitation medicine | 5 | |
| Psychiatry | 5 | |
| 40 | ||
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| 1 year | 7 | 5 |
| 2 years | 3 | 6 |
| 3 years | 7 | 7 |
| 4 years | 3 | 2 |
| 20 | 20 | |
Step 1 experimental results
| Evaluation item | n | LifeLines (N = 40) | V-Model (N = 40) | Statistical analysis | |||
|---|---|---|---|---|---|---|---|
| n_c (accuracy) | RT (sec.) median, IQR(25–75) | n_c (accuracy) | RT (sec.) median, IQR (25–75) | chi-squared test (p-value) | MWU test (p-value) | ||
|
| |||||||
| [P1] P-A connection | 140 | 71 (50.71) | 43.32 (33.08-61.91) | 115 (82.14) | 35.31 (24.99-50.24) | <0.000 | <0.000 |
| [P2] non-explicitness | 40 | - | - | 36 (90.00) | - | - | - |
| [P3] proximity | 80 | - | - | 74 (92.50) | - | - | - |
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| [R1] P precedes A | 40 | 36 (90.00) | 35.48 (25.23-47.77) | 40 (100.00) | 14.9 (12.15-18.74) | 0.116 | <0.000 |
| [R2] qualitative relation | 80 | 76 (95.00) | 7.6 (5.16-11.97) | 69 (86.25) | 9.95 (6.23-13.84) | 0.058 | 0.036 |
| [R3] implicit distance | 40 | - | - | 40 (100.00) | - | - | - |
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| [V1] intuitive P-A relation | 140 | 104 (74.29) | 32.17 (21.46-54.07) | 125 (89.29) | 19.48 (15- | <0.000 | <0.000 |
| 40 | 25 (62.50) | 56.82 (44.92-80.35) | 21 (52.50) | 45.72 (33.93-62.79) | 0.366 | 0.006 | |
| [V5] long history | 40 | 22 (55.00) | 92.7 (69.64-134.48) | 38 (95.00) | 35.23 (25.84-40.46) | <0.000 | <0.000 |
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| [P04] uneven granularity | V-Model participants | 3.75 | 96.25 | ||||
| (selection) | LifeLines participants | 7.5 | 92.5 | ||||
| mean | 5.63 | 94.38 | |||||
| [V04] dynamic scale | V-Model participants | 5 | 95 | ||||
| (preference) | LifeLines participants | 25 | 75 | ||||
| mean | 15 | 85 | |||||
N, number of data; N, number of participants; n_c, number of correct answers.
Figure 6Usability questionnaire results.