4.5 Article

Colorectal cancer subtype identification from differential gene expression levels using minimalist deep learning

Journal

BIODATA MINING
Volume 15, Issue 1, Pages -

Publisher

BMC
DOI: 10.1186/s13040-022-00295-w

Keywords

DeepCSD; Cancer subtype identification; Differential gene expression

Funding

  1. Health and Medical Research Fund
  2. Food and Health Bureau, The Government of the Hong Kong Special Administrative Region [07181426]

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In this study, a computational framework based on deep learning was proposed for colorectal cancer subtyping. The framework utilizes a minimalist feed-forward neural network to capture distinct molecular features in different cancer subtypes. The results demonstrate that the proposed method achieves superior performance compared to other algorithms and provides novel insights into cancer subtype identification and characterization mechanisms through gene ontology enrichment and pathology analysis.
Background Cancer molecular subtyping plays a critical role in individualized patient treatment. In previous studies, high-throughput gene expression signature-based methods have been proposed to identify cancer subtypes. Unfortunately, the existing ones suffer from the curse of dimensionality, data sparsity, and computational deficiency. Methods To address those problems, we propose a computational framework for colorectal cancer subtyping without any exploitation in model complexity and generality. A supervised learning framework based on deep learning (DeepCSD) is proposed to identify cancer subtypes. Specifically, based on the differentially expressed genes under cancer consensus molecular subtyping, we design a minimalist feed-forward neural network to capture the distinct molecular features in different cancer subtypes. To mitigate the overfitting phenomenon of deep learning as much as possible, L-1 and L-2 regularization and dropout layers are added. Results For demonstrating the effectiveness of DeepCSD, we compared it with other methods including Random Forest (RF), Deep forest (gcForest), support vector machine (SVM), XGBoost, and DeepCC on eight independent colorectal cancer datasets. The results reflect that DeepCSD can achieve superior performance over other algorithms. In addition, gene ontology enrichment and pathology analysis are conducted to reveal novel insights into the cancer subtype identification and characterization mechanisms. Conclusions DeepCSD considers all subtype-specific genes as input, which is pathologically necessary for its completeness. At the same time, DeepCSD shows remarkable robustness in handling cross-platform gene expression data, achieving similar performance on both training and test data without significant model overfitting or exploitation of model complexity.

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