Hegarty Ciara, Neto Nuno, Cahill Paul, Floudas Achilleas
Translational Immunology lab, School of Biotechnology, Dublin City University, Dublin, Ireland.
Trinity Centre for Biomedical Engineering, Trinity College Dublin, Ireland.
Comput Struct Biotechnol J. 2023 Aug 6;21:4009-4020. doi: 10.1016/j.csbj.2023.08.005. eCollection 2023.
Inflammatory arthritis, including rheumatoid (RA), and psoriatic (PsA) arthritis, are clinically and immunologically heterogeneous diseases with no identified cure. Chronic inflammation of the synovial tissue ushers loss of function of the joint that severely impacts the patient's quality of life, eventually leading to disability and life-threatening comorbidities. The pathogenesis of synovial inflammation is the consequence of compounded immune and stromal cell interactions influenced by genetic and environmental factors. Deciphering the complexity of the synovial cellular landscape has accelerated primarily due to the utilisation of bulk and single cell RNA sequencing. Particularly the capacity to generate cell-cell interaction networks could reveal evidence of previously unappreciated processes leading to disease. However, there is currently a lack of universal nomenclature as a result of varied experimental and technological approaches that discombobulates the study of synovial inflammation. While spatial transcriptomic analysis that combines anatomical information with transcriptomic data of synovial tissue biopsies promises to provide more insights into disease pathogenesis, in vitro functional assays with single-cell resolution will be required to validate current bioinformatic applications. In order to provide a comprehensive approach and translate experimental data to clinical practice, a combination of clinical and molecular data with machine learning has the potential to enhance patient stratification and identify individuals at risk of arthritis that would benefit from early therapeutic intervention. This review aims to provide a comprehensive understanding of the effect of computational approaches in deciphering synovial inflammation pathogenesis and discuss the impact that further experimental and novel computational tools may have on therapeutic target identification and drug development.
炎症性关节炎,包括类风湿性关节炎(RA)和银屑病关节炎(PsA),是临床和免疫方面具有异质性的疾病,目前尚无治愈方法。滑膜组织的慢性炎症会导致关节功能丧失,严重影响患者的生活质量,最终导致残疾和危及生命的合并症。滑膜炎症的发病机制是遗传和环境因素影响下免疫细胞与基质细胞相互作用的综合结果。由于采用了批量和单细胞RNA测序,解析滑膜细胞景观的复杂性有了显著进展。特别是生成细胞 - 细胞相互作用网络的能力,可以揭示导致疾病的先前未被认识的过程。然而,由于实验和技术方法的多样性,目前缺乏通用的命名法,这使得滑膜炎症的研究变得混乱。虽然将解剖信息与滑膜组织活检的转录组数据相结合的空间转录组分析有望为疾病发病机制提供更多见解,但需要单细胞分辨率的体外功能测定来验证当前的生物信息学应用。为了提供一种全面的方法并将实验数据转化为临床实践,将临床和分子数据与机器学习相结合有可能加强患者分层,并识别出可能从早期治疗干预中受益的关节炎高危个体。本综述旨在全面了解计算方法在解析滑膜炎症发病机制中的作用,并讨论进一步的实验和新型计算工具可能对治疗靶点识别和药物开发产生的影响。