Julien Guy, Marie-C Béné, Ramon Simon Lopez, Marc Maynadié, Céline Row
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Exploring the performance of an artificial intelligence- and morphology-driven workflow integrating 4 platelet enumeration technologies.
Objective: Platelet count, one of the main parameters of the complete blood count, requires accurate evaluation to guide patient management. It can be hampered by EDTA-induced pseudo-thrombocytopenia (PTCP), microcytic red blood cells (RBCs), RBC fragments, or giant platelets. A new set of 4 methods from the Mindray CAL-8000 platform, applicable on a single sample for platelet count, was evaluated.
Methods: The 4 options of the platform respectively use impedance (PLT-I); optical assessment (PLT-O) with a disaggregating agent; morphology (PLT-M) assessed by artificial intelligence-aided visualization on a smear prepared, stained, and analyzed by the platform; and PLT-Pro with morphologic assessment on a larger area of the smear. As part of an evaluation of the Mindray solution, a total of 2474 samples, collected on EDTA and sent for routine CBC, were further evaluated on the CAL-8000. The methods were combined according to a predefined algorithm.
Results: An automated report with accurate evaluation was ultimately obtained for 100% of the samples, using the sequence PLT-I, PLT-O, PLT-M, and PLT-Pro, which allowed accurate counting even in the presence of PTCP-related clumps.
Conclusions: Although this was a proof-of-concept assay including all analysis parameters, it validated the proposed new algorithm that can be implemented for routine flags.
期刊介绍:
The American Journal of Clinical Pathology (AJCP) is the official journal of the American Society for Clinical Pathology and the Academy of Clinical Laboratory Physicians and Scientists. It is a leading international journal for publication of articles concerning novel anatomic pathology and laboratory medicine observations on human disease. AJCP emphasizes articles that focus on the application of evolving technologies for the diagnosis and characterization of diseases and conditions, as well as those that have a direct link toward improving patient care.