The Fifth People's Hospital of Shanghai, Shanghai Key Laboratory of Medical Epigenetics, The International Co-laboratory of Medical Epigenetics and Metabolism, Ministry of Science and Technology, Institutes of Biomedical Sciences, Fudan University, Shanghai, China.
Department of Neurosurgery, Ruijin Hospital, School of Medicine, Shanghai Jiaotong University, Shanghai, China.
EMBO Mol Med. 2022 Feb 7;14(2):e14713. doi: 10.15252/emmm.202114713. Epub 2022 Jan 3.
The prevalence of intracranial aneurysm (IA) is increasing, and the consequences of its rupture are severe. This study aimed to reveal specific, sensitive, and non-invasive biomarkers for diagnosis and classification of ruptured and unruptured IA, to benefit the development of novel treatment strategies and therapeutics altering the course of the disease. We first assembled an extensive candidate biomarker bank of IA, comprising up to 717 proteins, based on altered proteins discovered in the current tissue and serum proteomic analysis, as well as from previous studies. Mass spectrometry assays for hundreds of biomarkers were efficiently designed using our proposed deep learning-based method, termed DeepPRM. A total of 113 potential markers were further quantitated in serum cohort I (n = 212) & II (n = 32). Combined with a machine-learning-based pipeline, we built two sets of biomarker combinations (P6 & P8) to accurately distinguish IA from healthy controls (accuracy: 87.50%) or classify IA rupture patients (accuracy: 91.67%) upon evaluation in the external validation set (n = 32). This extensive circulating biomarker development study provides valuable knowledge about IA biomarkers.
颅内动脉瘤 (IA) 的患病率正在增加,其破裂的后果严重。本研究旨在揭示特定、敏感且非侵入性的生物标志物,用于诊断和分类破裂和未破裂的 IA,从而有助于开发新的治疗策略和改变疾病进程的治疗方法。我们首先基于当前组织和血清蛋白质组分析以及先前研究中发现的改变蛋白,构建了一个包含多达 717 种蛋白的广泛的候选生物标志物库。我们提出的基于深度学习的方法 DeepPRM 可高效地设计数百种生物标志物的质谱检测。在血清队列 I (n = 212) 和 II (n = 32) 中进一步定量了 113 种潜在的标记物。结合基于机器学习的管道,我们构建了两组生物标志物组合 (P6 和 P8),用于在外部验证集 (n = 32) 中评估时准确地区分 IA 与健康对照者 (准确率:87.50%) 或分类 IA 破裂患者 (准确率:91.67%)。这项广泛的循环生物标志物开发研究为 IA 生物标志物提供了有价值的知识。