A highly accurate delta check method using deep learning for detection of sample mix-up in the clinical laboratory.
Rui ZhouYu-Fang LiangHua-Li ChengWei WangDa-Wei HuangZhe WangXiang FengZe-Wen HanBiao SongAndrea PadoanMaria Rosaria CapobianchiQing-Tao WangPublished in: Clinical chemistry and laboratory medicine (2021)
The findings indicate that input of a group of hematology test items provides more comprehensive information for the accurate detection of sample mix-up by machine learning (ML) when compared with a single test item input method. The DC method based on DBN demonstrated highly effective sample mix-up identification performance in real-world clinical settings.