wnt/β-catenin, carbohydrate metabolism, and pi3k-akt signaling pathway-related genes as potential cancer predictors
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2019
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Abstract
Predicting the outcome after a cancer diagnosis is critical. Advances in high-throughput sequencing technologies provide physicians with vast amounts of data, yet prognostication remains challenging because the data are greatly dimensional and complex. We evaluated Wnt/β-catenin, carbohydrate metabolism, and PI3K-Akt signaling pathway-related genes as predictive features for classifying tumors and normal samples. Using differentially expressed genes as controls, these pathway-related genes were assessed for accuracy using support-vector machines and three other recommended machine learning models, namely, the random forest, decision tree, and k-nearest neighbor algorithms. The first two outperformed the others. All candidate pathway-related genes yielded areas under the curve exceeding 95.00% for cancer outcomes, and they were most accurate in predicting colorectal cancer. These results suggest that these pathway-related genes are useful and accurate biomarkers for understanding the mechanisms behind cancer development.
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chen2019journalwnt/-catenin,
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| Authors | ;Pengliang Chen;Pengwei Shi;Gang Du;Zhen Zhang;Liang Liu |
| Journal | journal of political philosophy |
| Year | 2019 |
| DOI |
10.1155/2019/9724589
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