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雅培 Alinity hq 分析仪的全血细胞计数和细胞群数据参数可用于区分骨髓增生异常综合征与其他形式的血细胞减少症。

Complete blood count and cell population data parameters from the Abbott Alinity hq analyzer are useful in differentiating myelodysplastic syndromes from other forms of cytopenia.

机构信息

Department of Laboratory Medicine, Seoul National University Bundang Hospital, Seongnam, Korea.

Department of Laboratory Medicine, Seoul National University College of Medicine, Seoul, Korea.

出版信息

Int J Lab Hematol. 2022 Jun;44(3):468-476. doi: 10.1111/ijlh.13777. Epub 2021 Dec 7.

DOI:10.1111/ijlh.13777
PMID:34877795
Abstract

INTRODUCTION

Myelodysplastic syndromes (MDS) are characterized by morphologic dysplasia and cytopenia and have a propensity for acute leukemic transformation. However, dysplasia is diagnosed by morphology, thus having cell population data (CPD) that can differentiate cytopenic patients with MDS from other conditions may facilitate accurate diagnosis. We assessed the utility of complete blood count (CBC) parameters and CPD derived from an Abbott Alinity hq analyzer to discriminate MDS-related cytopenia.

METHODS

The patient cohort (n = 345) included 64 samples from patients with MDS, 162 from patients with other cytopenia, and 119 from healthy controls. The hematological parameters and research use-only parameters of the Abbott Alinity hq analyzer were compared between the cytopenic groups. The effectiveness of the individual standard and research CBC parameters to differentiate MDS from other forms of cytopenia was assessed through a receiver operating characteristics (ROC) analysis.

RESULTS

The percentage of MAC (Macrocytic RBCs) and hemoglobin distribution width (HDW) were higher in the MDS group than in the other cytopenia group and showed the greatest difference between both groups, with an area under the curve (AUC) of 0.766 (0.678-0.855) and 0.786 (0.702-0.870), respectively. The platelet distribution width was higher in the MDS group than in the other cytopenia group, with an AUC of 0.697 (0.623-0.770). WBC CPD extracted from histograms, especially Atyp-PMN-loc and Neu-ALL-M, showed high AUCs of 0.815 (0.750-0.879) and 0.778 (0.711-0.845), respectively.

CONCLUSION

Our findings demonstrate the clinical utility of CPD and hematology parameters of the Abbott Alinity hq analyzer in the differential diagnosis of MDS.

摘要

简介

骨髓增生异常综合征(MDS)的特征是形态学发育不良和细胞减少,并倾向于急性白血病转化。然而,发育不良是通过形态学诊断的,因此具有能够区分 MDS 相关细胞减少症患者与其他疾病的细胞群体数据(CPD)可能有助于准确诊断。我们评估了雅培 Alinity hq 分析仪的全血细胞计数(CBC)参数和 CPD 用于区分 MDS 相关细胞减少症的效用。

方法

患者队列(n=345)包括 64 例 MDS 患者样本、162 例其他细胞减少症患者样本和 119 例健康对照样本。比较了血细胞减少症组之间雅培 Alinity hq 分析仪的血液学参数和研究用参数。通过受试者工作特征(ROC)分析评估单个标准和研究 CBC 参数区分 MDS 与其他形式细胞减少症的有效性。

结果

MDS 组的 MAC(大红细胞)百分比和血红蛋白分布宽度(HDW)高于其他细胞减少症组,两组之间的差异最大,曲线下面积(AUC)分别为 0.766(0.678-0.855)和 0.786(0.702-0.870)。MDS 组的血小板分布宽度高于其他细胞减少症组,AUC 为 0.697(0.623-0.770)。从直方图中提取的白细胞计数 CPD,尤其是 Atyp-PMN-loc 和 Neu-ALL-M,具有较高的 AUC,分别为 0.815(0.750-0.879)和 0.778(0.711-0.845)。

结论

我们的研究结果表明,雅培 Alinity hq 分析仪的 CPD 和血液学参数在 MDS 的鉴别诊断中具有临床应用价值。

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