Machine Learning Algorithms for Breast Cancer Prediction

被引:0
|
作者
Kumar, K. M. E. Senthil [1 ]
Akalya, A. [1 ]
Kanimozhi, V. [1 ]
机构
[1] Rangasamy Coll technol Tiruchengode, Dept Informat Technol KS, Tiruchengode, India
关键词
Semi-supervised learning; deep learning; genomics; multi-omics; variation auto-encoding;
D O I
10.47750/jptcp.2023.30.07.029
中图分类号
R9 [药学];
学科分类号
1007 ;
摘要
There are numerous subtypes of breast cancer, each with its own unique outlook. The evaluation of the expression of small gene sets is the primary focus of the current stratification methods. In the upcoming years, Next Generation Sequencing (NGS) is anticipated to generate a significant amount of genomic data. We investigate the application of deep learning, or machine learning, to the subtyping of breast cancer in this case study. We used pan-cancer and non-cancer data to create semi-supervised settings because there weren't any publicly accessible data. A wide range of supervised and semisupervised designs are investigated with the help of Integrative omics data like microRNA expression and copy number variations.On our gene expression data challenge, accuracy results indicate that simpler models perform better than deep semi-supervised approaches. Deep model performance improves only marginally (if at all) when integrated combining several omics data types emphasises the need for additional research on bigger datasets of multi-omics data as they become accessible. In terms of biology, our linear model typically confirms. earlier classifications of gene subtypes. The development of a more varied and unexplored set of representative omics traits that may be helpful for subtyping breast cancer has resulted from deep methods, which imitate non-linear interactions.
引用
收藏
页码:E245 / E250
页数:6
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