A multi-modal fusion model with enhanced feature representation for chronic kidney disease progression prediction.

Journal: Briefings in bioinformatics
PMID:

Abstract

Artificial intelligence (AI)-based multi-modal fusion algorithms are pivotal in emulating clinical practice by integrating data from diverse sources. However, most of the existing multi-modal models focus on designing new modal fusion methods, ignoring critical role of feature representation. Enhancing feature representativeness can address the noise caused by modal heterogeneity at the source, enabling high performance even with small datasets and simple architectures. Here, we introduce DeepOmix-FLEX (Fusion with Learning Enhanced feature representation for X-modal or FLEX in short), a multi-modal fusion model that integrates clinical data, proteomic data, metabolomic data, and pathology images across different scales and modalities, with a focus on advanced feature learning and representation. FLEX contains a Feature Encoding Trainer structure that can train feature encoding, thus achieving fusion of inter-feature and inter-modal. FLEX achieves a mean AUC of 0.887 for prediction of chronic kidney disease progression on an internal dataset, exceeding the mean AUC of 0.727 using conventional clinical variables. Following external validation and interpretability analyses, our model demonstrated favorable generalizability and validity, as well as the ability to exploit markers. In summary, FLEX highlights the potential of AI algorithms to integrate multi-modal data and optimize the allocation of healthcare resources through accurate prediction.

Authors

  • Yixuan Qiao
    Operations Research and Cybernetics at Beijing University of Technology, China.
  • Hong Zhou
    Department of TCM Orthopedics & Traumatology, Gansu province hospital of TCM, Lanzhou, China.
  • Yang Liu
    Department of Computer Science, Hong Kong Baptist University, Hong Kong, China.
  • Ruixuan Chen
    National Clinical Research Center for Kidney Disease, State Key Laboratory of Organ Failure Research, Nanfang Hospital, Southern Medical University, No. 1838 Guangzhou North Avenue, Baiyun District, Guangzhou 510515, China.
  • Xiaodong Zhang
    The Center of Psychosomatic Medicine, Sichuan Provincial Center for Mental Health, Sichuan Provincial People's Hospital, University of Electronic Science and Technology of China, Chengdu 611731, China.
  • Sheng Nie
    State Key Laboratory of Organ Failure Research, National Clinical Research Center for Kidney Disease and Nanfang Hospital, Southern Medical University, Guangzhou, China.
  • Fan Fan Hou
    State Key Laboratory of Organ Failure Research, National Clinical Research Center for Kidney Disease and Nanfang Hospital, Southern Medical University, Guangzhou, China.
  • Yi Zhao
    Department of Biostatistics and Health Data Science, Indiana University School of Medicine.
  • Xin Xu
    State Key Laboratory of Oral Diseases, Sichuan University, Chengdu, China.
  • Lianhe Zhao
    Research Center for Ubiquitous Computing Systems, Institute of Computing Technology, Chinese Academy of Sciences, Beijing 100190, China.