| Literature DB >> 34941557 |
Noah Kasiiti Jaafa1, Benard Mokaya1, Simon Muhindi Savai1, Martin Were2, Ada Yeung3, Abraham Mosigisi Siika4.
Abstract
BACKGROUND: Unique patient identification remains a challenge in many health care settings in low- and middle-income countries (LMICs). Without national-level unique identifiers for whole populations, countries rely on demographic-based approaches that have proven suboptimal. Affordable biometrics-based approaches, implemented with consideration of contextual ethical, legal, and social implications, have the potential to address this challenge and improve patient safety and reporting accuracy. However, limited studies exist to evaluate the actual performance of biometric approaches and perceptions of these systems in LMICs.Entities:
Keywords: biometrics; electronic medical record systems; fingerprints; low- and middle-income countries (LMICs); patient matching; unique patient identification
Mesh:
Year: 2021 PMID: 34941557 PMCID: PMC8734934 DOI: 10.2196/28958
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Figure 1Screenshot showing the output of a patient search (“Mark”) using a probabilistic-based algorithm.
Figure 2Screenshot showing the output of a patient search (“Mark”) using fingerprint technology.
Calculated fingerprint technology performance measures.
| Measure | Definition | Formula |
| Sensitivity | The ability of a system to correctly identify and match patients enrolled in the database | True positives/(true positives + false negatives) × 100 |
| Specificity | The ability of the system to correctly reject patients not enrolled in the database | True negatives/(true negatives + false positives) × 100 |
| False acceptance rate | The probability that a user who should be rejected is accepted by the system | False acceptance/total number of attempts × 100 |
| False rejection rate | The probability that a user who should be accepted is rejected by the system | False rejection/total number of attempts × 100 |
| Failure to enroll rate | The rate at which attempts to create a template from a scanned image are unsuccessful | False attempts/total number of attempts × 100 |
Sociodemographic characteristics of participants (N=300).
| Variable | Values | |
| Age (years), mean (SD) | 36.1 (12.3) | |
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| Male | 126 (42) |
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| Female | 174 (58) |
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| Informal | 10 (3.3) |
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| Primary | 75 (25) |
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| Secondary | 78 (26) |
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| Tertiary (college or university graduate) | 137 (45.7) |
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| Student | 66 (22) |
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| Working or retired | 125 (41.7) |
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| Informal employment | 109 (36.3) |
False acceptance rate (FAR), false rejection rate (FRR), and failure to enroll rate (FER) for the fingerprint technology.
| Metric | Calculation | Result (%) |
| FER | 7/307 × 100 | 2.3 |
| FAR | 0/300 × 100 | 0 |
| FRR | 32/300 × 100 | 10.7 |
| Sensitivity | 268/(266 + 32) × 100 | 89.3 |
| Specificity | 0/(0 + 0) × 100 | 0 |
Participants’ perception of the piloted fingerprint biometric system (N=300).
| Variable | Values, n (%) | ||
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| Very comfortable | 228 (76) | |
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| Comfortable | 61 (20.3) | |
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| A little comfortable | 5 (1.7) | |
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| Not comfortable | 3 (1) | |
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| Would rather not say | 3 (1) | |
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| Satisfied | 290 (96.7) | |
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| Dissatisfied | 10 (3.3) | |
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| Yes | 271 (90.3) | |
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| No | 8 (2.7) | |
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| Don’t know | 21 (7) | |
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| Yes | 45 (15) | |
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| No | 241 (80.3) | |
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| Don’t know | 14 (4.7) | |
Bivariate associations of participants’ perception of biometrics and acceptability of the fingerprint technology system (N=300).
| Variables | Acceptable in the future, n (%) | ||||
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| No (n=69) | Yes (n=231) |
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| No | 42 (60.9) | 151 (65.4) | —a | |
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| Yes | 27 (39.1) | 80 (34.6) | .49 | |
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| No | 65 (94.2) | 203 (87.9) | — | |
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| Yes | 4 (5.8) | 28 (12.1) | .14 | |
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| Agree or strongly agree | 30 (43.5) | 79 (34.2) | .16 | |
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| Disagree or strongly disagree or don’t know | 39 (56.5) | 152 (65.8) | — | |
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| Agree or strongly agree | 53 (76.8) | 202 (87.5) | — | |
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| Disagree or strongly disagree or don’t know | 16 (23.2) | 29 (12.6) | .03b | |
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| Dissatisfied | 8 (11.6) | 2 (0.9) | — | |
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| Satisfied | 61 (88.4) | 229 (99.1) | .001b | |
aNot available.
bPearson chi-square test.
Determinants of acceptability of the fingerprint biometric system (N=300).
| Variables | UORa (95% CI) | AORb (95% CI) | |
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| Disagree or strongly disagree or don’t know | Reference | Reference |
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| Agree or strongly agree | 2.10 (1.06-4.16) | 2.30 (1.12-4.69) |
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| Disagree or strongly disagree or don’t know | Reference | Reference |
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| Agree or strongly agree | 0.68 (0.39-1.17) | 0.61 (0.34-1.09) |
| Have ever heard of biometric systems before | 0.82 (0.47-1.43) | 0.51 (0.27-0.96) | |
| Have ever used fingerprint biometric system for identification | 2.24 (0.76-6.63) | 3.57 (1.07-11.92)c | |
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| Working or retired vs student | 1.30 (0.63-2.71) | 1.56 (0.73-3.33) |
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| Informal employment vs student | 0.74 (0.36-1.51) | 0.72 (0.34-1.53) |
aUOR: unadjusted odds ratio.
bAOR: adjusted odds ratio.
cPearson chi-square test.