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A novel data mining system points out hidden relationships between immunological markers in multiple sclerosis

机译:一种新颖的数据挖掘系统指出了多发性硬化症中免疫标志物之间的隐藏关系

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Background Multiple Sclerosis (MS) is a multi-factorial disease, where a single biomarker unlikely can provide comprehensive information. Moreover, due to the non-linearity of biomarkers, traditional statistic is both unsuitable and underpowered to dissect their relationship. Patients affected with primary (PP=14), secondary (SP=33), benign (BB=26), relapsing-remitting (RR=30) MS, and 42 sex and age matched healthy controls were studied. We performed a depth immune-phenotypic and functional analysis of peripheral blood mononuclear cell (PBMCs) by flow-cytometry. Semantic connectivity maps (AutoCM) were applied to find the natural associations among immunological markers. AutoCM is a special kind of Artificial Neural Network able to find consistent trends and associations among variables. The matrix of connections, visualized through minimum spanning tree, keeps non linear associations among variables and captures connection schemes among clusters. Results Complex immunological relationships were shown to be related to different disease courses. Low CD4IL25+ cells level was strongly related (link strength, ls=0.81) to SP MS. This phenotype was also associated to high CD4ROR+ cells levels (ls=0.56). BB MS was related to high CD4+IL13 cell levels (ls=0.90), as well as to high CD14+IL6 cells percentage (ls=0.80). RR MS was strongly (ls=0.87) related to CD4+IL25 high cell levels, as well indirectly to high percentages of CD4+IL13 cells. In this latter strong (ls=0.92) association could be confirmed the induction activity of the former cells (CD4+IL25) on the latter (CD4+IL13). Another interesting topographic data was the isolation of Th9 cells (CD4IL9) from the main part of the immunological network related to MS, suggesting a possible secondary role of this new described cell phenotype in MS disease. Conclusions This novel application of non-linear mathematical techniques suggests peculiar immunological signatures for different MS phenotypes. Notably, the immune-network displayed by this new method, rather than a single marker, might be viewed as the right target of immunotherapy. Furthermore, this new statistical technique could be also employed to increase the knowledge of other age-related multifactorial disease in which complex immunological networks play a substantial role.
机译:背景多发性硬化症(MS)是一种多因素疾病,其中单个生物标志物不可能提供全面的信息。此外,由于生物标记物的非线性,传统的统计数据既不适合,也不足以剖析它们之间的关系。研究了患有原发性(PP = 14),继发性(SP = 33),良性(BB = 26),复发缓解(RR = 30)MS以及42个性别和年龄相匹配的健康对照组的患者。我们通过流式细胞仪对外周血单核细胞(PBMC)进行了深度免疫表型和功能分析。应用语义连接图(AutoCM)查找免疫标记之间的自然关联。 AutoCM是一种特殊的人工神经网络,能够发现变量之间的一致趋势和关联。通过最小生成树可视化的连接矩阵可保持变量之间的非线性关联,并捕获集群之间的连接方案。结果显示复杂的免疫学关系与不同的病程有关。低CD4IL25 +细胞水平与SP MS密切相关(链接强度,ls = 0.81)。该表型还与高CD4ROR +细胞水平相关(Is = 0.56)。 BB MS与高CD4 + IL13细胞水平(ls = 0.90)和高CD14 + IL6细胞百分比(ls = 0.80)相关。 RR MS与CD4 + IL25高细胞水平密切相关(ls = 0.87),也与CD4 + IL13高百分比细胞间接相关。在后者中,强关联(Is = 0.92)可以被证实,前者细胞(CD4 + IL25)对后者(CD4 + IL13)的诱导活性。另一个有趣的地形数据是从与MS相关的免疫网络的主要部分分离了Th9细胞(CD4IL9),这表明这种新描述的细胞表型在MS疾病中可能具有辅助作用。结论非线性数学技术的这种新颖应用为不同的MS表型提出了独特的免疫学特征。值得注意的是,用这种新方法显示的免疫网络而不是单个标记物可能被视为免疫疗法的正确靶标。此外,这种新的统计技术还可用于增加其他与年龄有关的多因素疾病的知识,在这些疾病中,复杂的免疫网络起着重要作用。

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