Literature DB >> 21665898

Does manual anaesthetic record capture remove clinically important data?

J M van Schalkwyk1, D Lowes, C Frampton, A F Merry.   

Abstract

BACKGROUND: Numerous studies have shown smoothing and inaccuracies in handwritten anaesthetic records, but the clinical relevance of these findings is unclear. We therefore sought to determine whether the behaviour of anaesthetists differed in assessing anaesthetic records re-synthesized from either handwritten or automated records.
METHODS: In a recent New Zealand study (ACTRN12608000068369), both manual and automated records were acquired from the same anaesthetics. Manual records were digitized using digital callipers. Selected data (systolic, diastolic, and mean arterial pressure; heart rate; Sp(O(2)); E'(CO(2))) were replayed in a computerized anaesthetic record-keeping system with which the participants were familiar, to present manual and corresponding automated anaesthetic records. Ten anaesthetists, randomly selected from participants in this study, assessed 24 replayed records (a manual and an automated record from each of 10 anaesthetics, with two of each displayed twice). They indicated where and how they would have intervened if administering these anaesthetics. We compared the number of interventions for each pair of anaesthetics and subjective measures of anaesthetic quality.
RESULTS: In our selected sample of unstable anaesthetics, the mean (SD) number of interventions per anaesthetic was 4.0 (2.9) vs 5.2 (3.4) for manual and automated records, respectively (P=0.013). Subjective measures did not differ significantly between record types. Assessors identified 32 artifacts in six manual records (0.32/record assessment) and 105 artifacts in eight automated records (1.05/record assessment), P=0.14. Replicability was moderate (COV 39.8%).
CONCLUSIONS: In comparison with computerized record-keeping, manual record-keeping resulted in loss of clinically relevant information.

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Year:  2011        PMID: 21665898     DOI: 10.1093/bja/aer163

Source DB:  PubMed          Journal:  Br J Anaesth        ISSN: 0007-0912            Impact factor:   9.166


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