Dementia etiology classification using NULISA plasma biomarkers and machine learning
Kelly N. DuBois, Subhamoy Pal, Amanda Cook Maher, Judith Heidebrink, Carol Persad, Bruno Giordani, Benjamin M. Hampstead, Kelly M. Bakulski, David G. Morgan, Nicholas M. KanaanAbstract
INTRODUCTION
Accurate ante mortem differentiation among dementia etiologies remains challenging, particularly for atypical or mixed clinical presentations. Multiplexed plasma proteomics paired with supervised machine learning offers a minimally invasive and accessible approach for differential diagnosis.
METHODS
Plasma from 194 participants was analyzed using the Nucleic acid Linked Immuno‐Sandwich Assay (NULISA) Central Nervous System 120+ plasma biomarker panel. Differentially abundant protein patterns associated with Alzheimer's disease, frontotemporal lobar degeneration, Lewy body disease, and vascular disease were identified. These features were used to train supervised XGBoost classifier models. Models were then applied to participants with mild cognitive impairment (MCI) to generate data‐driven predictions of etiology.
RESULTS
NULISA plasma biomarkers revealed disease‐specific protein patterns. XGBoost classifiers differentiated disease etiologies with high specificity. Application of the models to participants with MCI yielded robust etiologic predictions.
DISCUSSION
These results support the feasibility of using multiplexed NULISA plasma proteomics, combined with machine learning, for differential diagnosis of complex neurodegenerative dementia etiologies.