posted on 2025-10-11, 14:41authored byFangying Shi, Shengjie Li, Jun Ren, Xinyi Li, Yuhang Zhang, Yinghua Yan, Chuan-Fan Ding, Wenjun Cao
Timely and accurate diagnosis of primary glaucoma, along
with reliable
subtype and severity stratification, remains a major clinical challenge.
Here, we develop a serum-based metabolomic fingerprint strategy that
leverages flower-like hierarchical metal oxide heterojunctions as
the matrix for laser desorption/ionization mass spectrometry, combined
with a neural network algorithm. A total of 591 serum samples from
two independent hospital cohorts were analyzed. In the internal test
set, the model achieved exceptionally high diagnostic performance,
with accuracy, F1 score, precision, and recall all reaching 1.000.
External validation further confirmed its robustness, with an area
under the curve (AUC) value of 1.000 and classification accuracy,
F1 score, and recall each at 0.990. Subtype classification for primary
angle-closure glaucoma (PACG) achieved an accuracy of 97.6%. Severity
assessment of severe glaucoma showed strong performance, with an AUC
of 0.990 and accuracy of 0.831. These results support the applicability
of the proposed approach for precise glaucoma diagnosis and longitudinal
monitoring across multicenter clinical cohorts.