Cổng tri thức PTIT

Bài báo quốc tế

Kho tri thức

/

/

Convex Hull-Based Coreset Selection for Identifying Differentially Expressed Genes in Pediatric Sepsis

Convex Hull-Based Coreset Selection for Identifying Differentially Expressed Genes in Pediatric Sepsis

Nguyễn Kiều Linh

Pediatric sepsis is a life-threatening condition characterized by dysregulated immune responses, often leading to high mortality rates. Identifying differentially expressed genes (DEGs) is essential for under- standingitspathophysiologyanddiscoveringreliablebiomarkersforearly diagnosis and treatment. In this study, we propose an integrative data analysis method that combines machine learning algorithms with convex hull to detect DEGs from high-dimensional gene expression datasets of pediatric sepsis patients. The convex hull approach is applied to enhance feature selection by geometrically separating relevant gene expression patterns, while supervised learning models are used to classify and val- idate the identified gene sets. Utilizing gene expression data from 249 pediatric patients, encompassing 11,574 genes, we propose a 10-gene sig- nature capable of predicting sepsis-related mortality with an accuracy of 81%. Comparative experiments against baseline methods, including Principal Component Analysis (PCA) and Random Forest Feature Im- portance (RFFI), demonstrate that the proposed method achieves supe- rior predictive performance with a 2–5% improvement in accuracy. This proposed method offers a promising tool for biomarker discovery and advances data-driven research in pediatric sepsis.

Xuất bản trên:

Convex Hull-Based Coreset Selection for Identifying Differentially Expressed Genes in Pediatric Sepsis


Nhà xuất bản:

Địa điểm:


Từ khoá:

Machine Learning, Convex Hull, Feature Selection, Differentially Expressed Genes.