Computed tomography-derived quantitative imaging biomarkers enable the prediction of disease manifestations and survival in patients with systemic sclerosis.

IF 4.7 2区 医学 Q1 RHEUMATOLOGY
Malte Maria Sieren, Hanna Grasshoff, Gabriela Riemekasten, Lennart Berkel, Felix Nensa, Rene Hosch, Jörg Barkhausen, Roman Kloeckner, Franz Wegner
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引用次数: 0

Abstract

Introduction: Systemic sclerosis (SSc) is a complex inflammatory vasculopathy with diverse symptoms and variable disease progression. Despite its known impact on body composition (BC), clinical decision-making has yet to incorporate these biomarkers. This study aims to extract quantitative BC imaging biomarkers from CT scans to assess disease severity, define BC phenotypes, track changes over time and predict survival.

Materials and methods: CT exams were extracted from a prospectively maintained cohort of 452 SSc patients. 128 patients with at least one CT exam were included. An artificial intelligence-based 3D body composition analysis (BCA) algorithm assessed muscle volume, different adipose tissue compartments, and bone mineral density. These parameters were analysed with regard to various clinical, laboratory, functional parameters and survival. Phenotypes were identified performing K-means cluster analysis. Longitudinal evaluation of BCA changes employed regression analyses.

Results: A regression model using BCA parameters outperformed models based on Body Mass Index and clinical parameters in predicting survival (area under the curve (AUC)=0.75). Longitudinal development of the cardiac marker enabled prediction of survival with an AUC=0.82. Patients with altered BCA parameters had increased ORs for various complications, including interstitial lung disease (p<0.05). Two distinct BCA phenotypes were identified, showing significant differences in gastrointestinal disease manifestations (p<0.01).

Conclusion: This study highlights several parameters with the potential to reshape clinical pathways for SSc patients. Quantitative BCA biomarkers offer a means to predict survival and individual disease manifestations, in part outperforming established parameters. These insights open new avenues for research into the mechanisms driving body composition changes in SSc and for developing enhanced disease management tools, ultimately leading to more personalised and effective patient care.

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计算机断层扫描衍生的定量成像生物标志物能够预测系统性硬化症患者的疾病表现和生存。
系统性硬化症(SSc)是一种复杂的炎症性血管病变,具有多种症状和不同的疾病进展。尽管已知其对身体成分(BC)的影响,但临床决策尚未纳入这些生物标志物。本研究旨在从CT扫描中提取定量BC成像生物标志物,以评估疾病严重程度,定义BC表型,跟踪随时间的变化并预测生存率。材料和方法:从452例SSc患者前瞻性维持队列中提取CT检查结果。128例患者至少做过一次CT检查。一种基于人工智能的3D身体成分分析(BCA)算法评估了肌肉体积、不同脂肪组织区室和骨矿物质密度。对这些参数进行临床、实验室、功能参数和生存率的分析。通过k均值聚类分析确定表型。BCA变化的纵向评价采用回归分析。结果:基于BCA参数的回归模型在预测生存方面优于基于身体质量指数和临床参数的模型(曲线下面积(AUC)=0.75)。心脏标志物的纵向发展使AUC=0.82的生存预测成为可能。BCA参数改变的患者发生各种并发症的or增加,包括间质性肺疾病(结论:本研究强调了几个参数可能重塑SSc患者的临床途径。定量BCA生物标志物提供了预测生存和个体疾病表现的手段,在一定程度上优于既定参数。这些见解为研究SSc中驱动身体成分变化的机制和开发增强的疾病管理工具开辟了新的途径,最终导致更个性化和更有效的患者护理。
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来源期刊
RMD Open
RMD Open RHEUMATOLOGY-
CiteScore
7.30
自引率
6.50%
发文量
205
审稿时长
14 weeks
期刊介绍: RMD Open publishes high quality peer-reviewed original research covering the full spectrum of musculoskeletal disorders, rheumatism and connective tissue diseases, including osteoporosis, spine and rehabilitation. Clinical and epidemiological research, basic and translational medicine, interesting clinical cases, and smaller studies that add to the literature are all considered.
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