An automatic analysis and quality assurance method for lymphocyte subset identification
Author:
Zhang MinYang1ORCID, Zhang YaLi1, Zhang JingWen2, Zhang JiaLi2, Gao SiYuan1, Li ZeChao1, Tao KangPei1, Liang XiaoDan1, Pan JianHua2, Zhu Min1
Affiliation:
1. Department of Digital Management Center , Guangzhou KingMed Diagnostics Group Co., Ltd., Guangzhou Kingmed Center for Clinical Laboratory Co., Ltd. , Guangzhou , Guandong , P.R. China 2. Department of Clinical Hematology and Flow Cytometry Lab , Guangzhou Kingmed Center for Clinical Laboratory Co., Ltd. , Guangzhou , Guandong , P.R. China
Abstract
Abstract
Objectives
Lymphocyte subsets are the predictors of disease diagnosis, treatment, and prognosis. Determination of lymphocyte subsets is usually carried out by flow cytometry. Despite recent advances in flow cytometry analysis, most flow cytometry data can be challenging with manual gating, which is labor-intensive, time-consuming, and error-prone. This study aimed to develop an automated method to identify lymphocyte subsets.
Methods
We propose a knowledge-driven combined with data-driven method which can gate automatically to achieve subset identification. To improve accuracy and stability, we have implemented a Loop Adjustment Gating to optimize the gating result of the lymphocyte population. Furthermore, we have incorporated an anomaly detection mechanism to issue warnings for samples that might not have been successfully analyzed, ensuring the quality of the results.
Results
The evaluation showed a 99.2 % correlation between our method results and manual analysis with a dataset of 2,000 individual cases from lymphocyte subset assays. Our proposed method attained 97.7 % accuracy for all cases and 100 % for the high-confidence cases. With our automated method, 99.1 % of manual labor can be saved when reviewing only the low-confidence cases, while the average turnaround time required is only 29 s, reducing by 83.7 %.
Conclusions
Our proposed method can achieve high accuracy in flow cytometry data from lymphocyte subset assays. Additionally, it can save manual labor and reduce the turnaround time, making it have the potential for application in the laboratory.
Publisher
Walter de Gruyter GmbH
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