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慢性淋巴细胞白血病患者白血病 B 细胞表达 CD200 和白细胞相关免疫球蛋白样受体-1(LAIR-1,CD305)与 Treg 频率的关系。

Leukemic B cells expression of CD200 and Leukocyte-associated immunoglobulin-like receptor-1 (LAIR-1, CD305) in Chronic Lymphocytic Leukemia patients in relation to Treg frequency.

机构信息

Clinical Pathology Department, Faculty of Medicine (for Girls), Al-Azhar University, Nasr City, Cairo 11754, Egypt.

Clinical Pathology Department, National Cancer Institute, Cairo University, Cairo 11976, Egypt.

出版信息

Pathol Res Pract. 2024 Nov;263:155669. doi: 10.1016/j.prp.2024.155669. Epub 2024 Oct 21.

Abstract

BACKGROUND

Chronic lymphocytic leukemia (CLL) is characterized by a wide range of tumor-induced immune alterations. Regulatory T cells (Treg) play a central role in these immune responses. CD200 and Leukocyte-associated immunoglobulin-like receptor-1 (LAIR-1, CD305) are inhibitory markers said to be involved in Treg immune response. We aimed to analyze the expression of CD200 and LAIR-1 on leukemic cells and assess their interactions with the Treg frequency to elucidate their role in the CLL course.

SUBJECTS AND METHODS

This study was conducted on 70 participants: 50 newly diagnosed CLL cases classified according to Rai staging system into group 1 (n = 25) patients with stages 0, I, and II, and group 2 (n = 25) of advanced patients with stages III and IV. In addition to control group (n = 20) of healthy adults. Flow cytometry was used to investigate Treg frequency in bone marrow (BM) proportional to CD4+ T cell and to assess leukemic cell expression of CD200 and LAIR-1. Also, in-silico database analysis was performed to identify study markers interactions for future personalized target therapy.

RESULTS

Comparison between CLL groups 1 and 2 revealed increased leukemic cell percentage expressing LAIR-1 (p = 0.021) in group 1. Group 2 showed significant increase in frequency of Treg in BM and leukemic cells expressing CD200. There was a strong positive correlation between frequency of Treg and leukemic cells expressing CD200 (r = 0.669, p = 0.000). On the other hand, there was a negative correlation between frequency of Treg and leukemic cell expressing LAIR-1 (r = -0.342, p = 0.015). ROC curve analysis revealed that increased frequency of leukemic cells expressing CD200 yielded sensitivity (SN) and specificity (SP) of 96 % and 84 %, respectively in detecting CLL progression, with an AUC of 0.965. Leukemic cell percentages expressing LAIR-1 yielded a lower SN (75 %), SP (72 %), with an AUC of 0.688.

CONCLUSION

Treg frequency in BM was significantly increased in CLL advanced stages according to Rai classification. Leukemic cells CD200 and LAIR-1 expression were differently associated with Treg frequency. Increased CD200 expressions on leukemic cells can be considered a sensitive and specific biomarker in detecting CLL progression. As demonstrated by the in-silico research, CD200 blockade targeting may offer therapeutic benefits for CLL treatment through Treg suppression.

摘要

背景

慢性淋巴细胞白血病(CLL)的特征是广泛的肿瘤诱导的免疫改变。调节性 T 细胞(Treg)在这些免疫反应中起核心作用。CD200 和白细胞相关免疫球蛋白样受体-1(LAIR-1,CD305)是被认为参与 Treg 免疫反应的抑制性标志物。我们旨在分析白血病细胞上 CD200 和 LAIR-1 的表达,并评估它们与 Treg 频率的相互作用,以阐明它们在 CLL 病程中的作用。

受试者和方法

本研究共纳入 70 名参与者:50 名新诊断的 CLL 患者,根据 Rai 分期系统分为 1 组(n=25),包括 0、I 和 II 期患者,2 组(n=25)为晚期患者,包括 III 和 IV 期患者。此外,还有 20 名健康成年人作为对照组。流式细胞术用于检测骨髓(BM)中 Treg 的频率,与 CD4+T 细胞成比例,并评估白血病细胞上 CD200 和 LAIR-1 的表达。此外,还进行了基于计算机的数据库分析,以鉴定研究标志物的相互作用,为未来的个体化靶向治疗提供依据。

结果

CLL 1 组和 2 组之间的比较显示,1 组白血病细胞表达 LAIR-1 的百分比增加(p=0.021)。2 组显示 BM 中 Treg 频率和白血病细胞表达 CD200 的显著增加。Treg 频率与白血病细胞表达 CD200 之间存在强烈的正相关(r=0.669,p=0.000)。另一方面,Treg 频率与白血病细胞表达 LAIR-1 之间存在负相关(r=-0.342,p=0.015)。ROC 曲线分析显示,白血病细胞表达 CD200 频率的增加在检测 CLL 进展方面具有 96%的敏感性(SN)和 84%的特异性(SP),AUC 为 0.965。白血病细胞表达 LAIR-1 的百分比具有较低的 SN(75%)和 SP(72%),AUC 为 0.688。

结论

根据 Rai 分类,CLL 晚期阶段 BM 中 Treg 的频率显著增加。白血病细胞 CD200 和 LAIR-1 的表达与 Treg 频率有不同的关联。白血病细胞上 CD200 的表达增加可作为检测 CLL 进展的敏感和特异性生物标志物。计算机研究表明,CD200 阻断靶向可能通过抑制 Treg 来提供 CLL 治疗的治疗益处。

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