Oppong Alexandra E, Coelewij Leda, Robertson Georgia, Martin-Gutierrez Lucia, Waddington Kirsty E, Dönnes Pierre, Nytrova Petra, Farrell Rachel, Pineda-Torra Inés, Jury Elizabeth C
Division of Medicine, Department of Inflammation, University College London, London WC1E 6JF, UK.
Scicross AB, Skövde, Sweden.
iScience. 2024 Feb 15;27(3):109225. doi: 10.1016/j.isci.2024.109225. eCollection 2024 Mar 15.
There are no blood-based biomarkers distinguishing patients with relapsing-remitting (RRMS) from secondary progressive multiple sclerosis (SPMS) although evidence supports metabolomic changes according to MS disease severity. Here machine learning analysis of serum metabolomic data stratified patients with RRMS from SPMS with high accuracy and a putative score was developed that stratified MS patient subsets. The top differentially expressed metabolites between SPMS versus patients with RRMS included lipids and fatty acids, metabolites enriched in pathways related to cellular respiration, notably, elevated lactate and glutamine (gluconeogenesis-related) and acetoacetate and bOHbutyrate (ketone bodies), and reduced alanine and pyruvate (glycolysis-related). Serum metabolomic changes were recapitulated in the whole blood transcriptome, whereby differentially expressed genes were also enriched in cellular respiration pathways in patients with SPMS. The final gene-metabolite interaction network demonstrated a potential metabolic shift from glycolysis toward increased gluconeogenesis and ketogenesis in SPMS, indicating metabolic stress which may trigger stress response pathways and subsequent neurodegeneration.
尽管有证据支持根据多发性硬化症(MS)疾病严重程度发生的代谢组学变化,但目前尚无基于血液的生物标志物可区分复发缓解型多发性硬化症(RRMS)患者与继发进展型多发性硬化症(SPMS)患者。在此,通过对血清代谢组学数据进行机器学习分析,可高精度地将RRMS患者与SPMS患者分层,并开发了一个推定评分,该评分可对MS患者亚组进行分层。SPMS与RRMS患者之间差异表达最显著的代谢物包括脂质和脂肪酸,这些代谢物在与细胞呼吸相关的途径中富集,具体而言,乳酸和谷氨酰胺(与糖异生相关)、乙酰乙酸和β-羟丁酸(酮体)水平升高,而丙氨酸和丙酮酸(与糖酵解相关)水平降低。全血转录组中概括了血清代谢组学变化,SPMS患者中差异表达的基因也在细胞呼吸途径中富集。最终的基因-代谢物相互作用网络表明,SPMS中可能存在从糖酵解向糖异生和生酮增加的潜在代谢转变,这表明代谢应激可能触发应激反应途径及随后的神经退行性变。