Lymphoma discrimination by computerized triple matrix analysis of list mode data from three-color flow cytometric immunophenotypes of bone marrow aspirates.

Cytometry Pub Date : 2000-09-01
R Bartsch, M Arland, S Lange, C Kahl, G Valet, H G Höffkes
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Abstract

Background: The goal of this study was to evaluate a self-learning algorithm for the computer classification of information extracted from flow cytometric immunophenotype list mode files from high-grade non-Hodgkin's lymphoma (NHL), Hodgkin's disease (HD), and multiple myeloma (MM). Materials and Methods Bone marrow aspirates (BMA) were obtained from untreated NHL (n = 51), HD (n = 9), or MM (n = 13) patients. Bone marrow aspirates were not infiltrated in NHL and HD patients as confirmed by thorough histologic and cytologic investigation; however, MM patients showed an infiltration rate >50% by malignant myeloma cells. Peripheral blood leukocyte (PBL) samples were taken from age-matched healthy volunteers (n = 44) as easily available control material. A second control group of 15 healthy volunteers, from whom BMA and PBL samples were available, allowed us to differentiate whether the observed classification results on malignant samples were due to the malignant process or simply to the inherent differences between BMA and PBL. Bone marrow aspirates and PBL were analyzed by the same immunophenotyping antibody panel (CD45/14/20, CD4/8/3, kappa/CD19/5, lambda/CD19/5). The acquired list mode data files were analyzed and classified by the self-learning triple matrix classification algorithms CLASSIF1 following a priori separation of the data into a learning set and unknown test set. After completion of the learning phase, known patient samples were reclassified and unknown samples prospectively classified by the algorithm.

Results: Highly discriminatory information was extracted for the various lymphoma entities. The most discriminating information was encountered in antibody binding, antibody binding ratios, and relative antibody surface density parameters of leukocytes rather than in percentage frequencies of discrete leukocyte subpopulations. Samples from healthy controls were classified as normal in 97.2% of the cases, whereas those of NHL, HD, and MM patients were on average correctly classified in 80. 8% of the cases.

Conclusions: Although no detectable lymphoma cells were present in BMA of NHL and HD patients, the CLASSIF1 classification of the immunophenotypes of morphologically normal cells provided a surprisingly good disease discrimination equal or better than that obtained by examining pathological lymph nodes according to the respective literature. The results are suggestive for a lymphoma-related and disease-specific antigen expression shift on normal hematopoietic bone marrow cells that can be used to discriminate the underlying disease (specificity of unspecific changes), i.e., in this case NHL from HD. Multiple myeloma patients were discriminated by changes on malignant as well as on normal bone marrow cells.

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骨髓抽吸物三色流式细胞免疫表型表模式数据的计算机三重矩阵分析淋巴瘤鉴别。
背景:本研究的目的是评估从流式细胞术免疫表型列表模式文件中提取的信息计算机分类的自学习算法,这些文件来自高级非霍奇金淋巴瘤(NHL)、霍奇金病(HD)和多发性骨髓瘤(MM)。材料和方法从未经治疗的NHL (n = 51)、HD (n = 9)或MM (n = 13)患者中获得骨髓抽吸液(BMA)。经彻底的组织学和细胞学检查证实,NHL和HD患者骨髓抽吸液未发生浸润;MM患者的恶性骨髓瘤细胞浸润率>50%。外周血白细胞(PBL)样本取自年龄匹配的健康志愿者(n = 44),作为易于获得的对照材料。第二个对照组由15名健康志愿者组成,其中有BMA和PBL样本,这使我们能够区分观察到的恶性样本的分类结果是由于恶性过程还是仅仅由于BMA和PBL之间的固有差异。骨髓抽吸液和PBL采用相同的免疫表型抗体(CD45/14/20、CD4/8/3、kappa/CD19/5、lambda/CD19/5)进行分析。将数据先验地分离为学习集和未知测试集,采用自学习三矩阵分类算法CLASSIF1对获取的列表模式数据文件进行分析和分类。完成学习阶段后,对已知患者样本进行重新分类,对未知样本进行前瞻性分类。结果:提取了各种淋巴瘤实体的高度歧视性信息。最具鉴别性的信息是在白细胞的抗体结合、抗体结合比率和相对抗体表面密度参数中遇到的,而不是在离散的白细胞亚群的百分比频率中。在97.2%的病例中,来自健康对照的样本被分类为正常,而NHL、HD和MM患者的样本平均被分类为正确的比例为80%。8%的病例。结论:尽管在NHL和HD患者的BMA中没有检测到淋巴瘤细胞,但形态学正常细胞的免疫表型的CLASSIF1分类提供了与各自文献中检查病理淋巴结相同或更好的疾病鉴别结果。结果提示,正常造血骨髓细胞上存在淋巴瘤相关和疾病特异性抗原表达转移,可用于区分潜在疾病(非特异性变化的特异性),即在本例中,是NHL还是HD。多发性骨髓瘤患者的鉴别依据是正常骨髓细胞和恶性骨髓细胞的变化。
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