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Asthma prediction via affinity graph enhanced classifier: a machine learning approach based on routine blood biomarkers

Authors :
Dejing Li
Stanley Ebhohimhen Abhadiomhen
Dongmei Zhou
Xiang-Jun Shen
Lei Shi
Yubao Cui
Source :
Journal of Translational Medicine, Vol 22, Iss 1, Pp 1-12 (2024)
Publication Year :
2024
Publisher :
BMC, 2024.

Abstract

Abstract Background Asthma is a chronic respiratory disease affecting millions of people worldwide, but early detection can be challenging due to the time-consuming nature of the traditional technique. Machine learning has shown great potential in the prompt prediction of asthma. However, because of the inherent complexity of asthma-related patterns, current models often fail to capture the correlation between data samples, limiting their accuracy. Our objective was to use our novel model to address the above problem via an Affinity Graph Enhanced Classifier (AGEC) to improve predictive accuracy. Methods The clinical dataset used in this study consisted of 152 samples, where 24 routine blood markers were extracted as features to participate in the classification due to their ease of sourcing and relevance to asthma. Specifically, our model begins by constructing a projection matrix to reduce the dimensionality of the feature space while preserving the most discriminative features. Simultaneously, an affinity graph is learned through the resulting subspace to capture the internal relationship between samples better. Leveraging domain knowledge from the affinity graph, a new classifier (AGEC) is introduced for asthma prediction. AGEC’s performance was compared with five state-of-the-art predictive models. Results Experimental findings reveal the superior predictive capabilities of AGEC in asthma prediction. AGEC achieved an accuracy of 72.50%, surpassing FWAdaBoost (61.02%), MLFE (60.98%), SVR (64.01%), SVM (69.80%) and ERM (68.40%). These results provide evidence that capturing the correlation between samples can enhance the accuracy of asthma prediction. Moreover, the obtained $$p$$ p values also suggest that the differences between our model and other models are statistically significant, and the effect of our model does not exist by chance. Conclusion As observed from the experimental results, advanced statistical machine learning approaches such as AGEC can enable accurate diagnosis of asthma. This finding holds promising implications for improving asthma management.

Details

Language :
English
ISSN :
14795876
Volume :
22
Issue :
1
Database :
Directory of Open Access Journals
Journal :
Journal of Translational Medicine
Publication Type :
Academic Journal
Accession number :
edsdoj.5a8814f2fc074e8d877fd1a70d2d6b9b
Document Type :
article
Full Text :
https://doi.org/10.1186/s12967-024-04866-9