Clinic of Neurosurgery, St. Ivan Rilski University Hospital, 1431 Sofia, Bulgaria.
Stephan Angeloff Institute of Microbiology, Bulgarian Academy of Sciences, 1113 Sofia, Bulgaria.
Int J Mol Sci. 2023 Jan 30;24(3):2597. doi: 10.3390/ijms24032597.
Combining adaptive and innate immunity induction modes, the repertoire of immunoglobulin M (IgM) can reflect changes in the internal environment including malignancies. Previously, it was shown that a mimotope library reflecting the public IgM repertoire of healthy donors (IgM IgOme) can be mined for efficient probes of tumor biomarker antibody reactivities. To better explore the interpretability of this approach for IgM, solid tumor-related profiles of IgM reactivities to linear epitopes of actual tumor antigens and viral epitopes were studied. The probes were designed as oriented planar microarrays of 4526 peptide sequences (as overlapping 15-mers) derived from 24 tumor-associated antigens and 209 cancer-related B cell epitopes from 30 viral antigens. The IgM reactivity in sera from 21 patients with glioblastoma multiforme, brain metastases of other tumors, and non-tumor-bearing neurosurgery patients was thus probed in a proof-of-principle study. A graph representation of the binding data was developed, which mapped the cross-reactivity of the mixture of IgM (poly)specificities, delineating different antibody footprints in the features of the graph-neighborhoods and cliques. The reactivity graph mapped the major features of the IgM repertoire such as the magnitude of the reactivity (titer) and major cross-reactivities, which correlated with blood group reactivity, non-self recognition, and even idiotypic specificities. A correlation between an aspect of this image of the IgM IgOme, namely, small cliques reflecting rare self-reactivities and the capacity of subsets of the epitopes to separate the diagnostic groups studied was found. In this way, the graph representation helped the feature selection in its filtering step and provided reduced feature sets, which, after recursive feature elimination, produced a classifier containing 51 peptide reactivities separating the three diagnostic groups with an unexpected efficiency. Thus, IgM IgOme approaches to repertoire studies is greatly augmented when self/viral antigens are used and the data are represented as a reactivity graph. This approach is most general, and if it is applicable to tumors in immunologically privileged sites, it can be applied to any solid tumors, for instance, breast or lung cancer.
结合适应性和先天免疫诱导模式,免疫球蛋白 M(IgM)的 repertoire 可以反映包括恶性肿瘤在内的内部环境变化。以前已经表明,可以从反映健康供体公共 IgM repertoire 的模拟文库(IgM IgOme)中挖掘出有效的肿瘤生物标志物抗体反应性探针。为了更好地探索这种方法对 IgM 的可解释性,研究了针对实际肿瘤抗原和病毒表位线性表位的 IgM 反应的固体肿瘤相关特征。这些探针被设计为来自 24 个肿瘤相关抗原和 30 个病毒抗原的 209 个癌症相关 B 细胞表位的 4526 个肽序列(作为重叠 15 聚体)的定向平面微阵列。因此,在一项原理验证研究中,探测了 21 名多形性胶质母细胞瘤、其他肿瘤脑转移和非肿瘤性神经外科患者血清中的 IgM 反应性。开发了一种用于表示结合数据的图形表示形式,该图形表示形式映射了 IgM(多)特异性混合物的交叉反应性,在图形邻域和团块的特征中描绘了不同的抗体足迹。该反应图映射了 IgM repertoire 的主要特征,例如反应性(滴度)的大小和主要的交叉反应性,这与血型反应性、非自身识别甚至独特型特异性相关。发现 IgM IgOme 图像的一个方面(即反映罕见自身反应性的小团块)与研究中诊断组的分离能力之间存在相关性。通过这种方式,图形表示形式有助于其过滤步骤中的特征选择,并提供了简化的特征集,经过递归特征消除后,生成了一个包含 51 种肽反应性的分类器,可将三个诊断组分开,效率出人意料。因此,当使用自身/病毒抗原并将数据表示为反应性图时,IgM IgOme 方法对 repertoire 研究有很大的增强。这种方法是最通用的,如果它适用于免疫特权部位的肿瘤,那么它可以应用于任何实体瘤,例如乳腺癌或肺癌。