patient stratification

患者分层
  • 文章类型: English Abstract
    Fibroblast activation protein (FAP) is mainly found on the surface of activated fibroblasts but is not expressed on the surface of inactive fibroblasts. Selective FAP inhibitors (FAPI), which are coupled to a radioactive tracer, can be used to quantify profibrotic and proinflammatory fibroblasts in patients using FAPI positron emission tomography (PET) computed tomography (CT). Following initial applications in neoplastic diseases, FAPI-PET/CT is also increasingly being applied in rheumatological diseases. The first studies have shown that in patients with systemic sclerosis (SSc) FAPI accumulates in actively fibrotically remodeled pulmonary and myocardial areas, that a high FAPI accumulation is associated with the risk of short-term progression and that this accumulation in the lungs regresses after successful treatment. In cases of immunoglobulin 4 (IgG4)-associated diseases (IgG4 rheumatic disease, RD), the FAPI signal correlates with the histological accumulation of activated fibroblasts and a poorer response to treatment to inhibit inflammation. Fibroblasts in chronically inflamed tissue, such as patients with inflammatory joint diseases, vasculitis or myositis, also express FAP and can be quantified by FAPI-PET/CT. The treatment-induced change of the phenotype from a destructive IL-6+/MMP3+THY1+ fibroblast subtype to an inflammation inhibiting CD200+DKK3+ subtype can be mechanistically demonstrated using FAPI-PET/CT. These studies provide indications that FAPI-PET/CT enables quantification of the tissue response in patients with fibrosing and chronic inflammatory diseases and can be used for patient stratification; however, further studies are essential for validation of the use of FAPI-PET/CT as a molecular imaging marker.
    UNASSIGNED: „Fibroblast activation protein“ (FAP) ist hauptsächlich auf der Oberfläche von aktivierten Fibroblasten, nicht jedoch auf der von ruhenden Fibroblasten exprimiert ist. Selektive FAP-Inhibitoren (FAPI), die an einen radioaktiven Tracer gekoppelt sind, können genutzt werden, um mittels FAPI-PET/CT (Positronenemissionstomographie/Computertomographie) profibrotische und proentzündliche Fibroblasten im Patienten zu quantifizieren. Nach ersten Anwendungen bei neoplastischen Erkrankungen wird FAPI-PET/CT auch zunehmend bei rheumatologischen Erkrankungen angewendet. Erste Studien zeigen, dass FAPI bei Patienten mit systemischer Sklerose (SSc) in aktiv fibrotisch umgebauten Lungen- und Myokardarealen akkumuliert, eine hohe FAPI-Akkumulation mit dem Risiko der Kurzzeitprogression assoziiert ist und diese Akkumulation in der Lunge bei erfolgreicher Therapie zurückgeht. Bei Ig(Immunglobulin)G4-assoziierten Erkrankungen (IgG4-RD) korreliert das FAPI-Signal mit der Akkumulation aktivierter Fibroblasten in der Histologie und einem schlechteren Ansprechen auf entzündungshemmende Behandlungen. Auch Fibroblasten in chronisch entzündeten Geweben wie bei Patienten mit entzündlichen Gelenkerkrankungen, Vaskulitiden oder Myositiden exprimieren FAP und können mittels FAPI-PET quantifiziert werden. Mechanistisch kann die Therapie-induzierte Änderung des Phänotyps von einem destruktiven IL(Interleukin)-6+/MMP(Matrix-Metalloproteinase)3+THY1(Thy-1-Membran-Glykoprotein)+-Fibroblastensubtyp zu einem entzündungshemmenden CD(„cluster of differentiation“)200+DKK(Dickkopf)3+-Subtyp mittels FAPI-PET/CT dargestellt werden. Diese Studien liefern Hinweise, dass FAPI-PET/CT eine Quantifizierung der Gewebeantwort bei Patient:innen mit fibrosierenden und mit chronisch entzündlichen Erkrankungen ermöglicht und zur Patientenstratifizierung eingesetzt werden kann. Allerdings sind weitere Studien zur Validierung des Einsatzes von FAPI-PET/CT als molekularer Imaging-Biomarker unabdingbar.
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  • 文章类型: Journal Article
    系统性红斑狼疮(SLE)是一种自身免疫性疾病,其特征是多种疾病症状和不可预测的临床病程。为了改善治疗结果,根据SLE患者常见的免疫学表现进行分层,如自身抗体,I型干扰素(IFN)签名和中性粒细胞胞外诱捕网(NET)的释放可能有所帮助。假设这些免疫学现象之间存在关联,因为NET释放诱导IFN产生并且IFN通过B细胞活化诱导自身抗体形成。在这里,我们研究了自身抗体之间的关联,IFN签名,NET版本,SLE患者的临床表现。
    我们对25例SLE患者的57例SLE相关自身抗体进行了主成分分析(PCA)和层次聚类。我们将每种自身抗体与IFN标签和NET诱导能力相关联。
    我们观察到两个不同的簇:一个簇主要包含具有高IFN特征的患者。这种类型的患者通常会出现皮肤狼疮,并具有较高的抗dsDNA浓度。另一簇包含具有高和低IFN特征的患者的混合。NET诱导能力高和低的患者在集群之间分布相等。簇之间的差异主要由针对组蛋白的抗体驱动,RibP2,RibP0,EphB2,RibP1,PCNA,dsDNA,和核小体。此外,我们发现,在有IFN标记的患者中,抗EphB2,RibP1和RNP70的自身抗体浓度有增加的趋势.我们发现NET诱导能力与抗FcER(r=-0.530;p=0.007)和抗PmScl100(r=-0.445;p=0.03)呈负相关。
    我们确定了一组具有IFN特征的患者,这些患者表达了针对DNA和RNA结合蛋白的抗体浓度增加,这可以用于进一步的患者分层和更有针对性的治疗。我们没有发现自身抗体和NET诱导能力之间的正相关。我们的研究进一步加强了RNA结合自身抗体和IFN标签之间相关性的证据。
    UNASSIGNED: Systemic lupus erythematosus (SLE) is an autoimmune disease characterized by a variety of disease symptoms and an unpredictable clinical course. To improve treatment outcome, stratification based on immunological manifestations commonly seen in patients with SLE such as autoantibodies, type I interferon (IFN) signature and neutrophil extracellular trap (NET) release may help. It is assumed that there is an association between these immunological phenomena, since NET release induces IFN production and IFN induces autoantibody formation via B-cell activation. Here we studied the association between autoantibodies, the IFN signature, NET release, and clinical manifestations in patients with SLE.
    UNASSIGNED: We performed principal component analysis (PCA) and hierarchical clustering of 57 SLE-related autoantibodies in 25 patients with SLE. We correlated each autoantibody to the IFN signature and NET inducing capacity.
    UNASSIGNED: We observed two distinct clusters: one cluster contained mostly patients with a high IFN signature. Patients in this cluster often present with cutaneous lupus, and have higher anti-dsDNA concentrations. Another cluster contained a mix of patients with a high and low IFN signature. Patients with high and low NET inducing capacity were equally distributed between the clusters. Variance between the clusters is mainly driven by antibodies against histones, RibP2, RibP0, EphB2, RibP1, PCNA, dsDNA, and nucleosome. In addition, we found a trend towards increased concentrations of autoantibodies against EphB2, RibP1, and RNP70 in patients with an IFN signature. We found a negative correlation of NET inducing capacity with anti-FcER (r = -0.530; p = 0.007) and anti-PmScl100 (r = -0.445; p = 0.03).
    UNASSIGNED: We identified a subgroup of patients with an IFN signature that express increased concentrations of antibodies against DNA and RNA-binding proteins, which can be useful for further patient stratification and a more targeted therapy. We did not find positive associations between autoantibodies and NET inducing capacity. Our study further strengthens the evidence of a correlation between RNA-binding autoantibodies and the IFN signature.
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  • 文章类型: Journal Article
    背景:危重病人的免疫反应,比如那些患有败血症的人,严重创伤,或者大手术,是异构和动态的,但对其表征和对结果的影响知之甚少。直到现在,提高我们对该疾病的认识的主要挑战是同时解决多参数和时间方面的问题.
    方法:我们使用聚类方法来识别不同的患者组,基于入住ICU后第一周的各种免疫标志物轨迹。在339名严重受伤的患者中,我们最初纵向聚集常见的生物标志物(可溶性和细胞参数),在脓毒症的免疫抑制阶段,其变异是公认的。然后,我们使用由全血免疫相关mRNA组成的标记应用了这种多轨迹聚类。
    结果:我们发现两组标记都显示了两种免疫类型,其中一个与更糟糕的结果有关,如医院获得性感染和死亡率的风险增加,和延长住院时间。这种免疫型显示出炎症过度和免疫抑制的迹象,随着时间的推移。
    结论:我们的研究表明,重症患者的免疫系统可以通过两种不同的纵向免疫类型来表征,其中一例包括免疫反应持续失调和受损的患者.这项工作证实了这种方法对患者进行分层的相关性,并为使用指示潜在免疫调节药物靶标的标志物进行进一步研究铺平道路。
    BACKGROUND: The immune response of critically ill patients, such as those with sepsis, severe trauma, or major surgery, is heterogeneous and dynamic, but its characterization and impact on outcomes are poorly understood. Until now, the primary challenge in advancing our understanding of the disease has been to concurrently address both multiparametric and temporal aspects.
    METHODS: We used a clustering method to identify distinct groups of patients, based on various immune marker trajectories during the first week after admission to ICU. In 339 severely injured patients, we initially longitudinally clustered common biomarkers (both soluble and cellular parameters), whose variations are well-established during the immunosuppressive phase of sepsis. We then applied this multi-trajectory clustering using markers composed of whole blood immune-related mRNA.
    RESULTS: We found that both sets of markers revealed two immunotypes, one of which was associated with worse outcomes, such as increased risk of hospital-acquired infection and mortality, and prolonged hospital stays. This immunotype showed signs of both hyperinflammation and immunosuppression, which persisted over time.
    CONCLUSIONS: Our study suggest that the immune system of critically ill patients can be characterized by two distinct longitudinal immunotypes, one of which included patients with a persistently dysregulated and impaired immune response. This work confirms the relevance of such methodology to stratify patients and pave the way for further studies using markers indicative of potential immunomodulatory drug targets.
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  • 文章类型: Journal Article
    背景:磁共振成像(MRI)检测到的腰椎间盘退变(LDD)与LBP之间的关联通常不大。这种关联在特定患者亚组中可能更大。
    目的:研究LDD和LBP之间的关联是否因潜在的遗传易感性而改变。
    方法:英国生物银行(UKB)和TwinsUK的横断面研究。
    方法:在347,538名UKB参与者中进行了解剖学慢性疼痛位置的全基因组关联研究(GWAS)。GWAS用于在30,000UKB参与者的保留样本中开发全基因组多基因风险评分(PRS)。然后将PRS模型用于对645名TwinsUK参与者进行标准化LDDMRI评估的分析。
    方法:曾有LBP伴残疾持续≥1个月(LBP1)。
    方法:使用PRS作为“遗传预测的疼痛倾向”的代理,我们将TwinsUK参与者分为PRS四分位数.“基本”模型检查了LDD汇总评分(LSUM)和LBP1之间的关联,并针对协变量进行了调整。“完全调整”模型还针对PRS四分位数和LSUMxPRS四分位数相互作用项进行了调整。
    结果:在基本模型中,LBP1的比值比(OR)为1.8/LSUM的标准差(95%置信区间[CI]1.4-2.3).在完全调整的模型中,四分位数4中LSUM-LBP1的关联具有统计学意义(OR=2.5[95%CI1.7-3.7],p=2.6×10-6),在四分位数3中(OR=2.0,[95%CI1.3-3.0];p=0.002),在最低的两个PRS四分位数中具有小幅度和/或不显着的关联。PRS四分位数是LSUM-LBP1关联的显着影响修饰符(相互作用p≤0.05)。
    结论:遗传预测的疼痛倾向改变了LDD-LBP关联,在遗传倾向于疼痛的人中存在最强的关联。在特定的人群亚组中,腰椎MRI发现可能与LBP有更强的联系。
    BACKGROUND: Associations between magnetic resonance imaging (MRI)-detected lumbar intervertebral disc degeneration (LDD) and LBP are often of modest magnitude. This association may be larger in specific patient subgroups.
    OBJECTIVE: To examine whether the association between LDD and LBP is modified by underlying genetic predispositions to pain.
    METHODS: Cross-sectional study in UK Biobank (UKB) and Twins UK.
    METHODS: A genome-wide association study (GWAS) of the number of anatomical chronic pain locations was conducted in 347,538 UKB participants. The GWAS was used to develop a genome-wide polygenic risk score (PRS) in a holdout sample of 30,000 UKB participants. The PRS model was then used in analyses of 645 TwinsUK participants with standardized LDD MRI assessments.
    METHODS: Ever having had LBP associated with disability lasting ≥1 month (LBP1).
    METHODS: Using the PRS as a proxy for \"genetically-predicted propensity to pain\", we stratified TwinsUK participants into PRS quartiles. A \"basic\" model examined the association between an LDD summary score (LSUM) and LBP1, adjusting for covariates. A \"fully-adjusted\" model also adjusted for PRS quartile and LSUM x PRS quartile interaction terms.
    RESULTS: In the basic model, the odds ratio (OR) of LBP1 was 1.8 per standard deviation of LSUM (95% confidence interval [CI] 1.4-2.3). In the fully-adjusted model, there was a statistically significant LSUM-LBP1 association in quartile 4, the highest PRS quartile (OR=2.5 [95% CI 1.7-3.7], p=2.6×10-6), and in quartile 3 (OR=2.0, [95% CI 1.3-3.0]; p=.002), with small-magnitude and/or nonsignificant associations in the lowest 2 PRS quartiles. PRS quartile was a significant effect modifier of the LSUM-LBP1 association (interaction p≤.05).
    CONCLUSIONS: Genetically-predicted propensity to pain modifies the LDD-LBP association, with the strongest association present in people with the highest genetic propensity to pain. Lumbar MRI findings may have stronger connections to LBP in specific subgroups of people.
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  • 文章类型: Journal Article
    三阴性乳腺癌(TNBC)是最具挑战性的乳腺癌亚型。分子分层和靶向治疗为TNBC患者带来临床益处,但是在临床实践中很难实施全面的分子检测。这里,使用我们的多组学TNBC队列(N=425),设计并验证了基于深度学习的框架,以全面预测分子特征,来自病理全幻灯片图像的亚型和预后。该框架首先结合了神经网络来分解WSI上的组织,然后是第二个,根据某些组织类型进行训练,以预测不同的目标。分析了多组学分子特征,包括体细胞突变,拷贝数更改,种系突变,生物途径活性,代谢组学特征和免疫治疗生物标志物。研究表明,可以预测具有治疗意义的分子特征,包括体细胞PIK3CA突变,种系BRCA2突变和PD-L1蛋白表达(曲线下面积[AUC]:分别为0.78、0.79和0.74)。可以鉴定TNBC的分子亚型(对于基底样免疫抑制的AUC:0.84、0.85、0.93和0.73,免疫调节,腔雄激素受体,和间充质样亚型)及其独特的形态模式被揭示,这为TNBC的异质性提供了新的见解。整合图像特征和临床协变量的神经网络将患者分成不同生存结果的组(log-rankP<0.001)。我们的预测框架和神经网络模型在TCGA(N=143)的TNBC病例上进行了外部验证,并且对患者人群的变化表现出稳健。对于潜在的临床翻译,我们建立了一个小说在线平台,在这里,我们模块化并部署了我们的框架以及经过验证的模型。它可以实现对新病例的实时一站式预测。总之,仅使用病理性WSI,我们提出的框架可以对TNBC患者进行全面分层,并为治疗决策提供有价值的信息.它有可能在临床上实施并促进TNBC的个性化管理。
    Triple-negative breast cancer (TNBC) is the most challenging breast cancer subtype. Molecular stratification and target therapy bring clinical benefit for TNBC patients, but it is difficult to implement comprehensive molecular testing in clinical practice. Here, using our multi-omics TNBC cohort (N = 425), a deep learning-based framework was devised and validated for comprehensive predictions of molecular features, subtypes and prognosis from pathological whole slide images. The framework first incorporated a neural network to decompose the tissue on WSIs, followed by a second one which was trained based on certain tissue types for predicting different targets. Multi-omics molecular features were analyzed including somatic mutations, copy number alterations, germline mutations, biological pathway activities, metabolomics features and immunotherapy biomarkers. It was shown that the molecular features with therapeutic implications can be predicted including the somatic PIK3CA mutation, germline BRCA2 mutation and PD-L1 protein expression (area under the curve [AUC]: 0.78, 0.79 and 0.74 respectively). The molecular subtypes of TNBC can be identified (AUC: 0.84, 0.85, 0.93 and 0.73 for the basal-like immune-suppressed, immunomodulatory, luminal androgen receptor, and mesenchymal-like subtypes respectively) and their distinctive morphological patterns were revealed, which provided novel insights into the heterogeneity of TNBC. A neural network integrating image features and clinical covariates stratified patients into groups with different survival outcomes (log-rank P < 0.001). Our prediction framework and neural network models were externally validated on the TNBC cases from TCGA (N = 143) and appeared robust to the changes in patient population. For potential clinical translation, we built a novel online platform, where we modularized and deployed our framework along with the validated models. It can realize real-time one-stop prediction for new cases. In summary, using only pathological WSIs, our proposed framework can enable comprehensive stratifications of TNBC patients and provide valuable information for therapeutic decision-making. It had the potential to be clinically implemented and promote the personalized management of TNBC.
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  • 文章类型: Journal Article
    可变剪接(AS)发生在基因转录后过程中,这对蛋白质的正确合成和功能非常重要。AS模式的改变可能导致肺癌相关基因的表达水平或功能改变,进而影响肺癌的发生和发展。特定的AS模式可能被用作预测框架中的癌症的早期预警和预后评估的生物标志物,预防性,和个性化医疗(PPPM;3PM)。免疫相关基因(IRGs)的AS事件与肿瘤进展和免疫治疗密切相关。我们假设IRG-AS事件在肺腺癌(LUADs)与对照或肺鳞状细胞癌(LUSC)与controls.鉴定IRG-AS改变谱以构建IRG差异表达的AS(IRG-DEAS)特征模型。研究肺癌患者特异性IRGs的选择性AS事件对进一步探讨肺癌的发病机制具有重要意义。实现肺癌的早期发现和有效监测,寻找新的治疗靶点,克服耐药性,制定更有效的治疗策略,更好地用于预测,诊断,预防,和肺癌的个性化医疗。
    转录组,临床,从TCGA及其SpliceSeq数据库下载LUAD和LUSC的AS数据。在LUAD和LUSC中发现了IRG-DEAS事件,其次是它们的功能特征,和总生存期(OS)分析。用Lasso回归建立LUAD和LUSC的OS相关IRG-DEAS预后模型,用于将LUADs和LUSCs分为低危和高危评分组。此外,免疫细胞分布,免疫相关评分,药物敏感性,突变状态,和GSEA/GSVA状态在低和高风险组之间进行分析。此外,在LUAD和LUSC中分析了低和高免疫簇和AS因子(SF)-OS相关的AS共表达网络以及CELF6细胞功能的验证。
    转录组的综合分析,临床,LUAD和LUSC的AS数据确定了LUAD(n=1607)和LUSC(n=1656)中的IRG-AS事件,包括LUAD(n=127)和LUSC(n=105)中与OS相关的IRG-AS事件。与对照相比,在LUAD中鉴定出总共66个IRG-DEAS事件和在LUSC中鉴定出89个IRG-DEAS事件。IRG-DEAS和与OS相关的IRG-AS事件之间的重叠分析显示,LUAD有14个与OS相关的IRG-DEAS事件,LUSC有16个与OS相关的IRG-DEAS事件,用于识别和优化LUAD的12-OS相关IRG-DEAS特征预后模型和LUSC的11-OS相关IRG-DEAS特征预后模型。这两个预后模型有效地将LUAD或LUSC样本分为与OS密切相关的低和高风险评分组。临床特征,和肿瘤免疫微环境,在两组中丰富了显著的基因集和通路。此外,加权基因共表达网络(WGCNA)和非负矩阵分解方法(NMF)分析确定了LUAD的四个OS相关亚型和LUSC的六个OS相关亚型,ssGSEA确定了LUAD的5种免疫相关亚型和LUSC的5种免疫相关亚型。有趣的是,剪接因子-OS相关-AS网络显示hub分子CELF6与肺癌细胞的恶性表型显著相关。
    这项研究建立了两个可靠的IRG-DEAS签名预后模型,并在LUAD和LUSC中构建了有趣的剪接因子-剪接事件网络,可用于构建临床相关的免疫亚型,患者分层,预后预测,PPPM实践中的个性化医疗服务。
    在线版本包含补充材料,可在10.1007/s13167-024-00366-4获得。
    UNASSIGNED: Alternative splicing (AS) occurs in the process of gene post-transcriptional process, which is very important for the correct synthesis and function of protein. The change of AS pattern may lead to the change of expression level or function of lung cancer-related genes, and then affect the occurrence and development of lung cancers. The specific AS pattern might be used as a biomarker for early warning and prognostic assessment of a cancer in the framework of predictive, preventive, and personalized medicine (PPPM; 3PM). AS events of immune-related genes (IRGs) were closely associated with tumor progression and immunotherapy. We hypothesize that IRG-AS events are significantly different in lung adenocarcinomas (LUADs) vs. controls or in lung squamous cell carcinomas (LUSCs) vs. controls. IRG-AS alteration profiling was identified to construct IRG-differentially expressed AS (IRG-DEAS) signature models. Study on the selective AS events of specific IRGs in lung cancer patients might be of great significance for further exploring the pathogenesis of lung cancer, realizing early detection and effective monitoring of lung cancer, finding new therapeutic targets, overcoming drug resistance, and developing more effective therapeutic strategies, and better used for the prediction, diagnosis, prevention, and personalized medicine of lung cancer.
    UNASSIGNED: The transcriptomic, clinical, and AS data of LUADs and LUSCs were downloaded from TCGA and its SpliceSeq databases. IRG-DEAS events were identified in LUAD and LUSC, followed by their functional characteristics, and overall survival (OS) analyses. OS-related IRG-DEAS prognostic models were constructed for LUAD and LUSC with Lasso regression, which were used to classify LUADs and LUSCs into low- and high-risk score groups. Furthermore, the immune cell distribution, immune-related scores, drug sensitivity, mutation status, and GSEA/GSVA status were analyzed between low- and high-risk score groups. Also, low- and high-immunity clusters and AS factor (SF)-OS-related-AS co-expression network and verification of cell function of CELF6 were analyzed in LUAD and LUSC.
    UNASSIGNED: Comprehensive analysis of transcriptomic, clinical, and AS data of LUADs and LUSCs identified IRG-AS events in LUAD (n = 1607) and LUSC (n = 1656), including OS-related IRG-AS events in LUAD (n = 127) and LUSC (n = 105). A total of 66 IRG-DEAS events in LUAD and 89 IRG-DEAS events in LUSC were identified compared to controls. The overlapping analysis between IRG-DEASs and OS-related IRG-AS events revealed 14 OS-related IRG-DEAS events for LUAD and 16 OS-related IRG-DEAS events for LUSC, which were used to identify and optimize a 12-OS-related-IRG-DEAS signature prognostic model for LUAD and an 11-OS-related-IRG-DEAS signature prognostic model for LUSC. These two prognostic models effectively divided LUAD or LUSC samples into low- and high-risk score groups that were closely associated with OS, clinical characteristics, and tumor immune microenvironment, with significant gene sets and pathways enriched in the two groups. Moreover, weighted gene co-expression network (WGCNA) and nonnegative matrix factorization method (NMF) analyses identified four OS-relevant subtypes of LUAD and six OS-relevant subtypes of LUSC, and ssGSEA identified five immunity-relevant subtypes of LUAD and five immunity-relevant subtypes of LUSC. Interestingly, splicing factors-OS-related-AS network revealed hub molecule CELF6 was significantly related to the malignant phenotype in lung cancer cells.
    UNASSIGNED: This study established two reliable IRG-DEAS signature prognostic models and constructed interesting splicing factor-splicing event networks in LUAD and LUSC, which can be used to construct clinically relevant immune subtypes, patient stratification, prognostic prediction, and personalized medical services in the PPPM practice.
    UNASSIGNED: The online version contains supplementary material available at 10.1007/s13167-024-00366-4.
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  • 文章类型: Journal Article
    DNA甲基化是表观遗传学的重要机制,能改变基因的转录能力,与卵巢癌的发病密切相关。我们假设与对照相比,OC中的DNA甲基化显着不同。特定的DNA甲基化状态可作为OC的生物标志物,靶向这些甲基化模式和DNA甲基转移酶的靶向药物可能具有更好的治疗效果。研究OC患者免疫相关基因(IRGs)的关键DNA甲基化位点,研究这些甲基化位点对免疫微环境的影响,可能为进一步探讨OC的发病机制提供新的方法。实现对OC的早期检测和有效监控,确定DNA甲基化亚型和药物靶标的有效生物标志物,提高靶向药物的疗效或克服耐药性,更好地将其应用于预测性诊断,预防,和OC的个性化医疗(PPPM;3PM)。
    基于IRG中不同甲基化位点的丰度,在OCs中建立了高甲基化亚型(簇1)和低甲基化亚型(簇2)。免疫评分的差异,免疫检查点,免疫细胞,分析OC样本中不同甲基化亚型之间的总生存期。重要的途径,基因本体论(GO),和蛋白质-蛋白质相互作用(PPI)网络中鉴定的IRG甲基化位点的富集。此外,免疫相关甲基化特征通过多元回归分析构建.构建并验证了基于IRGs的甲基化位点模子。
    总共鉴定了120个IRG,具有142个差异甲基化位点(DMS)。将DMS分为高水平甲基化组(簇1)和低水平甲基化组(簇2)。重要的途径和GO分析显示了许多免疫相关和癌症相关的富集。构建了基于IRGs的甲基化位点标签,包括RORC|cg25112191、S100A13|cg14467840、TNF|cg04425624、RLN2|cg03679581和IL1RL2|cg22797169。5个基因的甲基化位点在OC中均表现为低甲基化,RORC|cg25112191,S100A13|cg14467840和TNF|cg04425624之间存在统计学差异(p<0.05)。这种基于低水平甲基化和高水平甲基化组的预后模型与OC的免疫微环境以及总体生存率显着相关。
    该研究根据IRG的甲基化位点为OC患者提供了不同的甲基化亚型。此外,它有助于建立甲基化和免疫微环境之间的关系,这显示了生物信号通路的特定差异,基因组变化,和两个亚组内的免疫机制。这些数据为深入了解免疫相关甲基化基因在OC发生发展中的作用机制提供了依据。甲基化位点特征也为OC治疗建立了新的可能性。这些数据是OC患者向先进的3PM方法分层和靶向治疗的宝贵资源。
    在线版本包含补充材料,可在10.1007/s13167-024-00359-3获得。
    UNASSIGNED: DNA methylation is an important mechanism in epigenetics, which can change the transcription ability of genes and is closely related to the pathogenesis of ovarian cancer (OC). We hypothesize that DNA methylation is significantly different in OCs compared to controls. Specific DNA methylation status can be used as a biomarker of OC, and targeted drugs targeting these methylation patterns and DNA methyltransferase may have better therapeutic effects. Studying the key DNA methylation sites of immune-related genes (IRGs) in OC patients and studying the effects of these methylation sites on the immune microenvironment may provide a new method for further exploring the pathogenesis of OC, realizing early detection and effective monitoring of OC, identifying effective biomarkers of DNA methylation subtypes and drug targets, improving the efficacy of targeted drugs or overcoming drug resistance, and better applying it to predictive diagnosis, prevention, and personalized medicine (PPPM; 3PM) of OC.
    UNASSIGNED: Hypermethylated subtypes (cluster 1) and hypomethylated subtypes (cluster 2) were established in OCs based on the abundance of different methylation sites in IRGs. The differences in immune score, immune checkpoints, immune cells, and overall survival were analyzed between different methylation subtypes in OC samples. The significant pathways, gene ontology (GO), and protein-protein interaction (PPI) network of the identified methylation sites in IRGs were enriched. In addition, the immune-related methylation signature was constructed with multiple regression analysis. A methylation site model based on IRGs was constructed and verified.
    UNASSIGNED: A total of 120 IRGs with 142 differentially methylated sites (DMSs) were identified. The DMSs were clustered into a high-level methylation group (cluster 1) and a low-level methylation group (cluster 2). The significant pathways and GO analysis showed many immune-related and cancer-associated enrichments. A methylation site signature based on IRGs was constructed, including RORC|cg25112191, S100A13|cg14467840, TNF|cg04425624, RLN2|cg03679581, and IL1RL2|cg22797169. The methylation sites of all five genes showed hypomethylation in OC, and there were statistically significant differences among RORC|cg25112191, S100A13|cg14467840, and TNF|cg04425624 (p < 0.05). This prognostic model based on low-level methylation and high-level methylation groups was significantly linked to the immune microenvironment as well as overall survival in OC.
    UNASSIGNED: This study provided different methylation subtypes for OC patients according to the methylation sites of IRGs. In addition, it helps establish a relationship between methylation and the immune microenvironment, which showed specific differences in biological signaling pathways, genomic changes, and immune mechanisms within the two subgroups. These data provide ones to deeply understand the mechanism of immune-related methylation genes on the occurrence and development of OC. The methylation-site signature is also to establish new possibilities for OC therapy. These data are a precious resource for stratification and targeted treatment of OC patients toward an advanced 3PM approach.
    UNASSIGNED: The online version contains supplementary material available at 10.1007/s13167-024-00359-3.
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  • 文章类型: Journal Article
    亨廷顿病(HD)是由亨廷顿基因中的CAG三核苷酸扩增引起的进行性神经退行性疾病。CAG重复序列的长度与疾病发作成反比。HD的特点是多动性运动障碍,精神症状,和认知缺陷,这极大地影响了患者的生活质量。尽管有明确的遗传过程,可以观察到HD患者症状的高度变异性。目前HD的临床诊断仅依赖于运动体征的存在,无视疾病的其他重要方面。通过采用更广泛的方法,涵盖HD的运动和非运动方面,预测性,预防性,和个性化(3P)医学可以提高诊断准确性并改善患者护理。
    从Enroll-HD研究中收集的HD患者的多症状疾病轨迹首先在常见的疾病时间尺度上对齐,以解释疾病症状发作和诊断的异质性。在此之后,使用先前发表的变异深度嵌入-复发(VaDER)算法对排列一致的疾病轨迹进行聚类,并对由此产生的进展亚型进行临床表征.最后,我们学习了AI/ML模型,仅从首次访视数据或额外随访访视数据预测进展亚型.
    结果显示两种不同的亚型,一个大的集群(n=7122)显示相对稳定的疾病进展和第二个,较小的集群(n=411)显示出明显更多的疾病轨迹。两种亚型的临床特征与CAG重复长度相关,以及几种神经行为,精神病学,和认知得分。事实上,发现认知损害是两种亚型之间的主要差异。此外,预后模型显示仅从首次就诊的患者中预测HD亚型的能力。
    总之,这项研究旨在通过显示非运动症状对于预测和分类每个患者的疾病进展模式至关重要,从而实现从反应性到预防和个性化医学的范式转变。因为认知衰退往往比运动方面更能反映HD进展。考虑到这些方面,而咨询和治疗定义将个性化每个人的治疗。能够为患者提供对其疾病进展的客观评估,从而为他们的HD生活提供视角,是改善其生活质量的关键。通过对这两种亚型的生物学数据进行额外分析,有可能对这些亚型有更深入的了解,并发现疾病的潜在生物学因素。这与转向3P医学的目标非常吻合。
    在线版本包含补充材料,可在10.1007/s13167-024-00368-2获得。
    UNASSIGNED: Huntington\'s disease (HD) is a progressive neurodegenerative disease caused by a CAG trinucleotide expansion in the huntingtin gene. The length of the CAG repeat is inversely correlated with disease onset. HD is characterized by hyperkinetic movement disorder, psychiatric symptoms, and cognitive deficits, which greatly impact patient\'s quality of life. Despite this clear genetic course, high variability of HD patients\' symptoms can be observed. Current clinical diagnosis of HD solely relies on the presence of motor signs, disregarding the other important aspects of the disease. By incorporating a broader approach that encompasses motor as well as non-motor aspects of HD, predictive, preventive, and personalized (3P) medicine can enhance diagnostic accuracy and improve patient care.
    UNASSIGNED: Multisymptom disease trajectories of HD patients collected from the Enroll-HD study were first aligned on a common disease timescale to account for heterogeneity in disease symptom onset and diagnosis. Following this, the aligned disease trajectories were clustered using the previously published Variational Deep Embedding with Recurrence (VaDER) algorithm and resulting progression subtypes were clinically characterized. Lastly, an AI/ML model was learned to predict the progression subtype from only first visit data or with data from additional follow-up visits.
    UNASSIGNED: Results demonstrate two distinct subtypes, one large cluster (n = 7122) showing a relative stable disease progression and a second, smaller cluster (n = 411) showing a dramatically more progressive disease trajectory. Clinical characterization of the two subtypes correlates with CAG repeat length, as well as several neurobehavioral, psychiatric, and cognitive scores. In fact, cognitive impairment was found to be the major difference between the two subtypes. Additionally, a prognostic model shows the ability to predict HD subtypes from patients\' first visit only.
    UNASSIGNED: In summary, this study aims towards the paradigm shift from reactive to preventive and personalized medicine by showing that non-motor symptoms are of vital importance for predicting and categorizing each patients\' disease progression pattern, as cognitive decline is oftentimes more reflective of HD progression than its motor aspects. Considering these aspects while counseling and therapy definition will personalize each individuals\' treatment. The ability to provide patients with an objective assessment of their disease progression and thus a perspective for their life with HD is the key to improving their quality of life. By conducting additional analysis on biological data from both subtypes, it is possible to gain a deeper understanding of these subtypes and uncover the underlying biological factors of the disease. This greatly aligns with the goal of shifting towards 3P medicine.
    UNASSIGNED: The online version contains supplementary material available at 10.1007/s13167-024-00368-2.
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  • 文章类型: Journal Article
    他汀类药物广泛用于降低心血管疾病(CVD)的风险。在血液透析中患有终末期肾病(ESRD)的患者发生CVD的风险显着增加。然而,这些患者的他汀类药物治疗在患者队列水平的大型试验中没有显示出统计学上显著的益处。
    我们生成了他汀类药物的基因表达谱,以研究体外对人肾近端肾小管细胞和系膜细胞的细胞程序的影响。我们随后从关键的他汀类药物影响的分子通路中选择了生物标志物,并在AURORA队列的血浆样本中评估了这些生物标志物。双盲,随机化,接受瑞舒伐他汀治疗的血液透析或血液滤过患者的多中心研究。使用潜在类别模型聚类基于鉴定的生物标志物创建患者聚类(表型),并且使用Cox比例风险回归模型评估与生成的表型的结果的关联。根据先前在AURORA中发表的数据,针对临床和生物学协变量调整了多变量模型。
    他汀类药物治疗对肾小球系膜细胞的影响比肾小管细胞更大,其中阿托伐他汀和瑞舒伐他汀的差异表达基因有大量重叠,表明药物类别效应占优势。受影响的分子途径包括TGFB-,TNF-,以及MAPK信号传导和局灶性粘附等。基于八种生物标志物的基线血浆浓度鉴定四个患者群。表型1的特征是低至中等水平的肝细胞生长因子(HGF)和高水平的白介素6(IL6)或基质金属蛋白酶2(MMP2),并且与结局显着相关,表明发生重大不良心血管事件(MACE)或心血管死亡的风险增加。表型2具有高HGF但低Fas细胞表面死亡受体(FAS)水平,并且在1年时与显着更好的结果相关。
    在这项翻译研究中,我们根据他汀类药物治疗的机制标志物确定了患者亚组,这些标志物与血液透析患者的疾病结局相关.
    UNASSIGNED: Statins are widely used to reduce the risk of cardiovascular disease (CVD). Patients with end-stage renal disease (ESRD) on hemodialysis have significantly increased risk of developing CVD. Statin treatment in these patients however did not show a statistically significant benefit in large trials on a patient cohort level.
    UNASSIGNED: We generated gene expression profiles for statins to investigate the impact on cellular programs in human renal proximal tubular cells and mesangial cells in-vitro. We subsequently selected biomarkers from key statin-affected molecular pathways and assessed these biomarkers in plasma samples from the AURORA cohort, a double-blind, randomized, multi-center study of patients on hemodialysis or hemofiltration that have been treated with rosuvastatin. Patient clusters (phenotypes) were created based on the identified biomarkers using Latent Class Model clustering and the associations with outcome for the generated phenotypes were assessed using Cox proportional hazards regression models. The multivariable models were adjusted for clinical and biological covariates based on previously published data in AURORA.
    UNASSIGNED: The impact of statin treatment on mesangial cells was larger as compared with tubular cells with a large overlap of differentially expressed genes identified for atorvastatin and rosuvastatin indicating a predominant drug class effect. Affected molecular pathways included TGFB-, TNF-, and MAPK-signaling and focal adhesion among others. Four patient clusters were identified based on the baseline plasma concentrations of the eight biomarkers. Phenotype 1 was characterized by low to medium levels of the hepatocyte growth factor (HGF) and high levels of interleukin 6 (IL6) or matrix metalloproteinase 2 (MMP2) and it was significantly associated with outcome showing increased risk of developing major adverse cardiovascular events (MACE) or cardiovascular death. Phenotype 2 had high HGF but low Fas cell surface death receptor (FAS) levels and it was associated with significantly better outcome at 1 year.
    UNASSIGNED: In this translational study, we identified patient subgroups based on mechanistic markers of statin therapy that are associated with disease outcome in patients on hemodialysis.
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  • 文章类型: Journal Article
    神经发育障碍和免疫障碍的共同发生和家族聚集性提示共同的遗传风险因素。基于来自五种神经发育障碍和四种免疫障碍的全基因组关联汇总统计,我们进行了全基因组,局部遗传相关和多基因重叠分析。我们进一步进行了跨性状GWAS荟萃分析。使用多种算法和方法将两类疾病之间共享的趋性基因座映射到候选基因。在神经发育障碍和免疫障碍之间观察到显着的遗传相关性,包括正相关和负相关。与免疫疾病相比,神经发育障碍表现出更高的多源性。大约50%-90%的免疫疾病的遗传变异与神经发育障碍共有。交叉性状荟萃分析揭示了154个全基因组显著基因座,包括8个新的多效性位点。观察到30个基因座与两种疾病的显着关联。对这些基因座的候选基因的途径分析揭示了这两种疾病共有的共同途径,包括神经信号,炎症。回应,和PI3K-Akt信号通路。此外,30个铅SNP中的26个与血细胞性状相关。神经发育障碍表现出复杂的多基因结构,一部分个体患有神经发育和免疫疾病的遗传风险增加。多效性基因座的鉴定对于探索药物再利用的机会具有重要意义。实现更准确的患者分层,并在神经发育障碍的医学领域推进基因组学信息的精确性。
    The co-occurrence and familial clustering of neurodevelopmental disorders and immune disorders suggest shared genetic risk factors. Based on genome-wide association summary statistics from five neurodevelopmental disorders and four immune disorders, we conducted genome-wide, local genetic correlation and polygenic overlap analysis. We further performed a cross-trait GWAS meta-analysis. Pleotropic loci shared between the two categories of diseases were mapped to candidate genes using multiple algorithms and approaches. Significant genetic correlations were observed between neurodevelopmental disorders and immune disorders, including both positive and negative correlations. Neurodevelopmental disorders exhibited higher polygenicity compared to immune disorders. Around 50%-90% of genetic variants of the immune disorders were shared with neurodevelopmental disorders. The cross-trait meta-analysis revealed 154 genome-wide significant loci, including 8 novel pleiotropic loci. Significant associations were observed for 30 loci with both types of diseases. Pathway analysis on the candidate genes at these loci revealed common pathways shared by the two types of diseases, including neural signaling, inflammatory response, and PI3K-Akt signaling pathway. In addition, 26 of the 30 lead SNPs were associated with blood cell traits. Neurodevelopmental disorders exhibit complex polygenic architecture, with a subset of individuals being at a heightened genetic risk for both neurodevelopmental and immune disorders. The identification of pleiotropic loci has important implications for exploring opportunities for drug repurposing, enabling more accurate patient stratification, and advancing genomics-informed precision in the medical field of neurodevelopmental disorders.
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