Circulating proteomic panels for risk stratification of intracranial aneurysm and its rupture.
Yueting XiongYongtao ZhengYan YanJun YaoHebin LiuFenglin ShenSiyuan KongShuang YangGuoquan YanHuanhuan ZhaoXinwen ZhouJia HuBin ZhouTao JinHuali ShenBing LengPengyuan YangXiaohui LiuPublished in: EMBO molecular medicine (2022)
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.
Keyphrases
- machine learning
- deep learning
- mass spectrometry
- end stage renal disease
- coronary artery
- healthcare
- ejection fraction
- chronic kidney disease
- artificial intelligence
- newly diagnosed
- peritoneal dialysis
- risk factors
- liquid chromatography
- high resolution
- small molecule
- dna methylation
- risk assessment
- human health
- patient reported
- drug induced
- endovascular treatment