This observational cross-sectional study analyzed cerebrospinal fluid proteomics using mass spectrometry in 237 participants, including 87 ALS patients, 89 healthy controls, and 61 neurological controls. The authors aimed to identify disease-specific biomarkers and an ALS-specific CSF proteomic signature.
The analysis identified 399 proteins significantly dysregulated in ALS. Complement protein levels increased progressively with declining ALS Functional Rating Scale-Revised and longer disease duration. Early-stage markers CLSTN3, CHAD, and RELN indicated pre-symptomatic neuronal and synaptic disruptions. A minimal five-protein CSF panel (MB, ITLN1, YWHAG, FCGR3A, PGAM1) accurately distinguished ALS patients from healthy controls.
The authors note key limitations: the cross-sectional design limits causal inference, proteomic analysis was performed on CSF only (not other biofluids or tissues), and the machine learning model requires external validation. The study provides a framework for diagnostic biomarker development but does not validate the five-protein panel for clinical use.
Practice relevance is restrained; the findings suggest associations for earlier intervention and monitoring but are not therapeutic. The study is observational, and results show associations, not causation.
View Original Abstract ↓
Amyotrophic lateral sclerosis (ALS) is a rapidly progressing neurodegenerative disease with a heterogeneous clinical presentation, complicating early diagnosis and therapeutic monitoring. To identify disease-specific biomarkers, we performed an unbiased cerebrospinal fluid (CSF) proteomic analysis in 87 ALS patients, 89 healthy controls, and 61 neurological controls using mass spectrometry. Across all quantified proteins, 399 were significantly dysregulated in ALS, including established neurodegeneration (NEFL, NEFM, UCHL1) and neuroinflammatory (CHIT1, CHI3L1, CHI3L2) markers. Correlation and pathway analyses uncovered dysregulation of immune, synaptic, and metabolic processes, with aberrant complement activation emerging as a hallmark. Complement proteins increased progressively with declining ALS Functional Rating Scale-Revised and longer disease duration, whereas early-stage markers (CLSTN3, CHAD, RELN) indicated pre symptomatic neuronal and synaptic disruptions. Machine learning identified a minimal five protein CSF panel (MB, ITLN1, YWHAG, FCGR3A, PGAM1) that accurately distinguished ALS patients from healthy controls, capturing disease-specific pathophysiology beyond general neurodegeneration. Our findings define a robust ALS-specific CSF proteomic signature, reveal prognostic protein candidates across disease stages, and provide a framework for diagnostic biomarker development, enabling earlier intervention and monitoring.