Leukemia is a form of cancer that affects the bone marrow and lymphatic system, and it requires complex treatment strategies that vary with each subtype. Due to the subtle morphological differences among these types, monitoring gene expressions is crucial for accurate classification. Manual or pathological testing can be time-consuming and expensive. Therefore, data-driven methods and machine learning algorithms offer an efficient alternative for leukemia classification. This study introduced a novel super learning model that leverages heterogeneous machine learning models to analyze gene expression data and classify leukemia cells. The proposed approach incorporates an entropy-based feature importance technique to identify the gene profiles most significant to the labeling process. The strength of this super learning model lies in its final super learner, Random Forest, which effectively classifies cross-validated data from the candidate learners. Validation on a gene expression monitoring dataset demonstrates that this model outperforms other state-of-the-art models in predictive accuracy. The study contributes to the knowledge regarding the use of advanced machine learning techniques to improve the accuracy and reliability of leukemia classification using gene expression data, addressing the challenges of traditional methods that rely on clinical features and morphological examination.
DNA microarrayGene expressionsLeukemiaMachine learningRandom forestSuper learner APA Author BIBTEX Harvard Standard RIS VancouverSelvaraj, S., Alsayed, A. O., Ismail, N. A., Kavin, B. P., Onyema, E. M., Seng, G. H., & Uchechi, A. Q. (2024). Super learner model for classifying leukemia through gene expression monitoring. Discover Oncology, 15(1), Article 499. https://doi.org/10.1007/s12672-024-01337-x
相关知识
A Review on Learner Autonomy with Mobile
Is Chronic Myeloid Leukemia Treatable?
expression是什么意思
10 habits for good health
表观遗传学——环境对基因表达的影响
Soft electronics for advanced infant monitoring,Materials Today
内分泌代谢病科
Ascletis Pharma Inc.
Towards a Personal Health Large Language Model
清华大学学位论文服务系统
网址: Super learner model for classifying leukemia through gene expression monitoring https://m.trfsz.com/newsview1290286.html