Integrative deep learning with prior assisted feature selection

Author:

Wang Feifei12,Jia Ke2,Li Yang12ORCID

Affiliation:

1. Center for Applied Statistics Renmin University of China Beijing China

2. School of Statistics Renmin University of China Beijing China

Abstract

Integrative analysis has emerged as a prominent tool in biomedical research, offering a solution to the “small and large ” challenge. Leveraging the powerful capabilities of deep learning in extracting complex relationship between genes and diseases, our objective in this study is to incorporate deep learning into the framework of integrative analysis. Recognizing the redundancy within candidate features, we introduce a dedicated feature selection layer in the proposed integrative deep learning method. To further improve the performance of feature selection, the rich previous researches are utilized by an ensemble learning method to identify “prior information”. This leads to the proposed prior assisted integrative deep learning (PANDA) method. We demonstrate the superiority of the PANDA method through a series of simulation studies, showing its clear advantages over competing approaches in both feature selection and outcome prediction. Finally, a skin cutaneous melanoma (SKCM) dataset is extensively analyzed by the PANDA method to show its practical application.

Funder

National Natural Science Foundation of China

Publisher

Wiley

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