Zhang Tingting, Baert Laurie, Woodbury Neal W, Kelbauskas Laimonas
Biodesign Institute, Arizona State University, Tempe, AZ, United States.
Department of Immunology, Mayo Clinic, Scottsdale, AZ, United States.
Front Immunol. 2025 May 16;16:1528524. doi: 10.3389/fimmu.2025.1528524. eCollection 2025.
Lyme disease (LD) is a tick-borne disease that is a substantial public health burden with estimated about 0.5 million new cases per year in the US and increasing incidence. Differentiating Lyme disease, especially in its early stages, from other febrile illnesses with similar clinical symptoms (look-alike diseases) represents a significant challenge due to the lack of diagnostic tools. Current diagnostic tools based on serology were not specifically developed for differential diagnosis and show limited sensitivity in early LD resulting in high false negative rates.
The work presented here focuses on a broad profiling of the humoral immune response in terms of circulating antibody repertoire in patients diagnosed with LD and a number of diseases with similar clinical symptoms. A combination of antibody binding to a library of linear, diverse peptides and machine learning methods revealed a panel of biomarker proteins from the proteome of the Borrelia burgdorferi bacterium (LD causing pathogen) that can be used to differentiate between LD and other diseases.
A subset of the biomarkers was independently validated and demonstrated to show robust differentiating power. Importantly, the discovered biomarkers distinguish between LD patients that previously tested negative with the current test standard (false negatives) and the look-alike diseases.
These findings are important in that the discovered biomarkers can be utilized for differential diagnosis of LD. Furthermore, because the discovery approach is agnostic, the results suggest that it can also be used for biomarker discovery of other diseases.
莱姆病(LD)是一种由蜱传播的疾病,给公共卫生带来了沉重负担,据估计美国每年新增病例约50万,且发病率呈上升趋势。由于缺乏诊断工具,将莱姆病,尤其是早期莱姆病与具有相似临床症状的其他发热性疾病(相似疾病)区分开来是一项重大挑战。目前基于血清学的诊断工具并非专门为鉴别诊断而开发,在莱姆病早期显示出有限的敏感性,导致假阴性率很高。
本文介绍的工作重点是对确诊为莱姆病的患者以及一些具有相似临床症状的疾病患者的体液免疫反应进行广泛分析,以了解循环抗体库情况。抗体与线性多样肽库结合以及机器学习方法相结合,揭示了一组来自伯氏疏螺旋体(导致莱姆病的病原体)蛋白质组的生物标志物蛋白,可用于区分莱姆病和其他疾病。
部分生物标志物经过独立验证,显示出强大的鉴别能力。重要的是,发现的生物标志物能够区分先前按照当前检测标准检测为阴性的莱姆病患者(假阴性)和相似疾病。
这些发现很重要,因为发现的生物标志物可用于莱姆病的鉴别诊断。此外,由于发现方法具有通用性,结果表明它也可用于其他疾病的生物标志物发现。