Streamlining data recording through optical character recognition: a prospective multi-center study in intensive care units

Background The manual entry of data into large patient databases requires significant resources and time. It is possible that a system that is enhanced with the technology of optical character recognition (OCR) can facilitate data entry, reduce data entry errors, and decrease the burden on healthcar...

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Published inCritical care (London, England) Vol. 29; no. 1; p. 117
Main Authors Nitayavardhana, Prompak, Liu, Keibun, Fukaguchi, Kiyomitsu, Fujisawa, Mineto, Koike, Itaru, Tominaga, Aina, Iwamoto, Yuta, Goto, Tadahiro, Suen, Jacky Y., Fraser, John F., Ng, Pauline Yeung
Format Journal Article
LanguageEnglish
Published London BioMed Central 18.03.2025
BioMed Central Ltd
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ISSN1364-8535
1466-609X
1364-8535
1466-609X
1366-609X
DOI10.1186/s13054-025-05347-1

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Summary:Background The manual entry of data into large patient databases requires significant resources and time. It is possible that a system that is enhanced with the technology of optical character recognition (OCR) can facilitate data entry, reduce data entry errors, and decrease the burden on healthcare personnel. Methods This was a prospective multi-center observational study across intensive care units (ICU) in 3 countries. Subjects were critically-ill and required invasive mechanical ventilation and extracorporeal life support. Clinical photos from various medical devices were uploaded using an OCR-enhanced case record form. The degree of data completeness, data accuracy, and time saved in entering data were compared with conventional manual data entry. Results The OCR-based system was developed with 868 photos and validated with 469 photos. In independent validation by 8 untrained personnel involving 1018 data points, the overall data completeness was 98.5% (range 98.2–100%), while the overall data accuracy was 96.9% (range 95.3–100%). It significantly reduced data entry time compared to manual entry (mean reduction 43.9% [range 27.0–1.1%]). The average data entry time needed per patient were 3.4 (range 1.2–5.9) minutes with the OCR-based system, compared with 6.0 (range 2.2–8.1) minutes with manual data entry. Users reported high satisfaction with the tool, with an overall recommendation rate of 4.25 ± 1.04 (maximum of 5). Conclusion An OCR-based data entry system can effectively and efficiently facilitate data entry into clinical databases, making it a promising tool for future clinical data management. Wider uptake of these systems should be encouraged to better understand their strengths and limitations in both clinical and research settings.
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ISSN:1364-8535
1466-609X
1364-8535
1466-609X
1366-609X
DOI:10.1186/s13054-025-05347-1