| Literature DB >> 33655198 |
Lauren Etter1,2, Alinani Simukanga3, Wenda Qin4, Rachel Pieciak1, Lawrence Mwananyanda1,5, Margrit Betke4, Jackson Phiri3, Caroline Carbo2, Arnold Hamapa5, Chris Gill1.
Abstract
Patient identification in low- to middle-income countries is one of the most pressing public health challenges of our day. Given the ubiquity of mobile phones, their use for health-care coupled with a biometric identification method, present a unique opportunity to address this challenge. Our research proposes an Android-based solution of an ear biometric tool for reliable identification. Unlike many popular biometric approaches (e.g., fingerprints, irises, facial recognition), ears are noninvasive and easily accessible on individuals across a lifespan. Our ear biometric tool uses a combination of hardware and software to identify a person using an image of their ear. The hardware supports an image capturing process that reduces undesired variability. The software uses a pattern recognition algorithm to transform an image of the ear into a unique identifier. We created three cross-sectional datasets of ear images, each increasing in complexity, with the final dataset representing our target use-case population of Zambian infants (N=224, aged 6days-6months). Using these datasets, we conducted a series of validation experiments, which informed iterative improvements to the system. Results of the improved system, which yielded high recognition rates across the three datasets, demonstrate the feasibility of an Android ear biometric tool as a solution to the persisting patient identification challenge. Copyright:Entities:
Keywords: biometrics; electronic medical records; global health; patient identification
Year: 2020 PMID: 33655198 PMCID: PMC7887869 DOI: 10.12688/gatesopenres.13197.1
Source DB: PubMed Journal: Gates Open Res ISSN: 2572-4754