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In British journal of neurosurgery ; h5-index 24.0

PURPOSE OF THE ARTICLE : Patients with penicillin allergy labels are more likely to have postoperative wound infections. When penicillin allergy labels are interrogated, a significant number of individuals do not have penicillin allergies and may be delabeled. This study was conducted to gain preliminary evidence into the potential role of artificial intelligence in assisting with perioperative penicillin adverse reaction (AR) evaluation.

MATERIAL AND METHODS : A single-centre retrospective cohort study of consecutive emergency and elective neurosurgery admissions was conducted over a two-year period. Previously derived artificial intelligence algorithms for the classification of penicillin AR were applied to the data.

RESULTS : There were 2063 individual admissions included in the study. The number of individuals with penicillin allergy labels was 124; one patient had a penicillin intolerance label. Of these labels, 22.4% were not consistent with classifications using expert criteria. When the artificial intelligence algorithm was applied to the cohort, the algorithm maintained a high level of classification performance (classification accuracy 98.1% for allergy versus intolerance classification).

CONCLUSIONS : Penicillin allergy labels are common among neurosurgery inpatients. Artificial intelligence can accurately classify penicillin AR in this cohort, and may assist in identifying patients suitable for delabeling.

Jiang Melinda, Lam Antoinette, Lam Lydia, Kovoor Joshua, Inglis Joshua, Shakib Sepehr, Smith William, Abou-Hamden Amal, Bacchi Stephen

2023-Feb-16

Artificial intelligence, allergy, delabeling, neurosurgery, penicillin