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Use of a Hybrid Intelligence Decision Tree to Identify Mature B-cell Neoplasms.

Cytometry Part B, Clinical cytometry(2023)

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摘要
BACKGROUND:Mature B-cell neoplasms are challenging to diagnose due to their heterogeneity and overlapping clinical and biological features. In this study, we present a new workflow strategy that leverages a large amount of flow cytometry data and an artificial intelligence approach to classify these neoplasms.METHODS:By combining mathematical tools, such as classification algorithms and regression tree (CART) models, with biological expertise, we have developed a decision tree that accurately identifies mature B-cell neoplasms. This includes chronic lymphocytic leukemia (CLL), for which cytometry has been extensively used, as well as other non-CLL subtypes.RESULTS:The decision tree is easy to use and proposes a diagnosis and classification of mature B-cell neoplasms to the users. It can identify the majority of CLL cases using just three markers: CD5, CD43, and CD200.CONCLUSION:This approach has the potential to improve the accuracy and efficiency of mature B-cell neoplasm diagnosis.
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关键词
artificial intelligence,classification,decision tree,mature B-cell neoplasms
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