| Literature DB >> 35293877 |
Karin Hek1, Leàn Rolfes2, Eugène P van Puijenbroek2,3, Linda E Flinterman1, Saskia Vorstenbosch2, Liset van Dijk1,3, Robert A Verheij1,4.
Abstract
BACKGROUND: Real-world data from electronic health records (EHRs) represent a wealth of information for studying the benefits and risks of medical treatment. However, they are limited in scope and should be complemented by information from the patient perspective.Entities:
Keywords: adverse drug reaction; electronic health record; general practice; learning health systems; overactive bladder; patient-reported outcome; research infrastructure
Year: 2022 PMID: 35293877 PMCID: PMC8968626 DOI: 10.2196/33250
Source DB: PubMed Journal: JMIR Med Inform
Figure 1Benefit, Risk, and Impact of Medication Monitor workflow. T provides an estimate of the timing of the workflow. For this study, general practitioners received a monthly list of patients to check. EHR: electronic health record; GP: general practitioner; LIM: Lareb Intensive Monitoring; Nivel-PCD: Nivel Primary Care Database; OAB: overactive bladder; TTP: trusted third party.
Reasons for general practitioners to exclude flagged patients (n=1297).
| Exclusion criteria | Patients, n (%) |
| No overactive bladder | 539 (41.56) |
| Reason unknown | 315 (24.29) |
| Cognitively or mentally unable | 142 (10.95) |
| Moved or deceased | 82 (6.32) |
| Cannot handle a personal computer | 63 (4.86) |
| Treated by a urologist | 53 (4.09) |
| Terminally ill or in hospital | 46 (3.55) |
| Insufficient knowledge of the Dutch language | 37 (2.85) |
| Other reasons | 20 (1.54) |
Characteristics of the study population.
| Characteristics | Flagged patients (n=2933) | Invited patients (n=1636) | Participating patients (n=295)a | ||||
| Female, n (%) | 1741 (59.36) | 958 (58.56) | 141 (47.77) | ||||
| Age (years), mean (SD) | 63.46 (19.05) | 62.91 (17.89) | 66.4 (12.91) | ||||
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| 18-44 | 549 (18.72) | 282 (17.24) | 19 (6.42) | |||
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| 45-64 | 758 (25.84) | 457 (27.93) | 95 (32.32) | |||
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| 65-74 | 652 (22.23) | 423 (25.86) | 111 (37.58) | |||
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| 75-84 | 620 (21.14) | 334 (20.42) | 54 (18.32) | |||
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| ≥85 | 354 (12.07) | 140 (8.56) | 16 (5.43) | |||
| Use of overactive bladder medication, n (%)b,c | 640 (22.42) | 392 (24.87) | 68 (25.78) | ||||
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| 0 | 405 (20.94) | 203 (20.34) | 31 (16.93) | |||
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| 1 or 2 | 725 (27.48) | 421 (42.18) | 80 (43.69) | |||
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| ≥3 | 804 (41.57) | 374 (37.47) | 72 (39.31) | |||
aResults of the 7 patients who did not give consent for data linkage between questionnaires and electronic health record data were not included in calculations on overactive bladder medication and number of chronic diseases.
bInformation on medication use was available for 2854, 1576, and 264 patients, and information on chronic comorbidities was available for 1934, 998, and 183 patients.
cOveractive bladder medication was defined as medication with Anatomical Therapeutic Chemical code G04BD.
dThe number of chronic comorbidities was based on a list of the 29 most common chronic diseases, including, for example, Chronic Obstructive Pulmonary Disease and cardiovascular disease [15].
Figure 2Summary of strengths, weaknesses, opportunities, and threats of the Benefit, Risk, and Impact of Medication Monitor infrastructure. BRIMM: Benefit, Risk, and Impact of Medication Monitor; GP: general practitioner.