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Automated identification of leukocyte subsets improves standardization of database-guided expert-supervised diagnostic orientation in acute leukemia: a EuroFlow study

机译:白细胞亚群的自动鉴定提高了急性白血病中数据库引导的专家监督诊断定位的标准化:Euroflow研究

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Precise classification of acute leukemia (AL) is crucial for adequate treatment. EuroFlow has previously designed an AL orientation tube (ALOT) to guide toward the relevant classification panel and final diagnosis. In this study, we designed and validated an algorithm for automated (database-supported) gating and identification (AGI tool) of cell subsets within samples stained with ALOT. A reference database of normal peripheral blood (PB, n-=-41) and bone marrow (BM; n-=-45) samples analyzed with the ALOT was constructed, and served as a reference for the AGI tool to automatically identify normal cells. Populations not unequivocally identified as normal cells were labeled as checks and were classified by an expert. Additional normal BM (n-=-25) and PB (n-=-43) and leukemic samples (n-=-109), analyzed in parallel by experts and the AGI tool, were used to evaluate the AGI tool. Analysis of normal PB and BM samples showed low percentages of checks (<3% in PB, -0.95 for all cell types in PB and r2->-0.75 in BM) and resulted in highly concordant classification of leukemic cells by our previously published automated database-guided expert-supervised orientation tool for immunophenotypic diagnosis and classification of acute leukemia (Compass tool). Similar data were obtained using alternative, commercially available tubes, confirming the robustness of the developed tools. The AGI tool represents an innovative step in minimizing human intervention and requirements in expertise, toward a "sample-in and result-out" approach which may result in more objective and reproducible data analysis and diagnostics. The AGI tool may improve quality of immunophenotyping in individual laboratories, since high percentages of checks in normal samples are an alert on the quality of the internal procedures.
机译:精确分类急性白血病(Al)对于足够治疗至关重要。 Euroflow先前设计了一个Al取向管(很多),以指导相关的分类面板和最终诊断。在本研究中,我们设计并验证了一种用于自动(数据库支持的)门控和识别(AGI工具)的样本内染色的单元集的识别算法和识别(AGI工具)。构建了用次次分析的正常外周血(Pb,N - = - 41)和骨髓(Bm; n - = - 45)样品的参考数据库,并作为AGI工具自动识别正常细胞的参考。未识别为正常细胞的群体被标记为支票,并由专家分类。通过专家和AGI工具并联分析的另外的正常BM(N - = - 25)和PB(N - = - 43)和白血病样品(N - = - 109)来评估AGI工具。普通Pb和BM样品的分析显示,对于Pb和R2 - > -0.75的所有细胞类型,Pb,-0.95的Pb,-0.95中的<3%,BM中的3%),并通过我们之前公布的自动化进行了高度合格的白血病细胞分类具有免疫型诊断和急性白血病分类的数据库引导的专家监督方向工具(指南针工具)。使用替代的市售管获得类似的数据,确认开发工具的稳健性。 AGI工具代表了最大限度地减少人为干预和在专业知识的要求,朝着“采样和结果”方法,这可能导致更客观和可重复的数据分析和诊断。 AGI工具可以提高个别实验室中免疫蛋白型的质量,因为正常样本中的高百分比是内部程序质量的警报。
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