JSAI2019

Presentation information

General Session

General Session » [GS] J-13 AI application

[2N3-J-13] AI application: medical diagnosis

Wed. Jun 5, 2019 1:20 PM - 2:20 PM Room N (Front-right room of 1F Exhibition hall)

Chair:Koji Morikawa Reviewer:Yoshikuni Sato

2:00 PM - 2:20 PM

[2N3-J-13-03] Detecting patient mix-up on blood samples with machine learning

〇Tomohiro Mitani1, Shunsuke Doi2, Shinichiroh Yokota2, Takeshi Imai1, Kazuhiko Ohe1,2 (1. Graduate School of Medicine, The University of Tokyo, 2. The University of Tokyo Hospital)

Keywords:Anomaly Detection, Medical Safety

Patient mix-up on blood samples is one of the common causes of blood test errors. It is also known as patient misidentification problem. Although the detection of mix-up is commonly performed by naive comparison with the last laboratory results of the same patients: delta checks, either the sensitivity or the specificity of delta checks is not satisfactory. To establish a new detection system, we made simulated mix-up data from actual data of blood cell counts (CBC) and serum chemistry in our hospital. Using differences from the previous laboratory results as features, a highly accurate detection system was built by machine learning technique. An XGBoost model recorded the best ROC AUC score of 0.9986.