English

Multi-modal Graph Fusion for Inductive Disease Classification in Incomplete Datasets

Machine Learning 2019-05-09 v1 Machine Learning

Abstract

Clinical diagnostic decision making and population-based studies often rely on multi-modal data which is noisy and incomplete. Recently, several works proposed geometric deep learning approaches to solve disease classification, by modeling patients as nodes in a graph, along with graph signal processing of multi-modal features. Many of these approaches are limited by assuming modality- and feature-completeness, and by transductive inference, which requires re-training of the entire model for each new test sample. In this work, we propose a novel inductive graph-based approach that can generalize to out-of-sample patients, despite missing features from entire modalities per patient. We propose multi-modal graph fusion which is trained end-to-end towards node-level classification. We demonstrate the fundamental working principle of this method on a simplified MNIST toy dataset. In experiments on medical data, our method outperforms single static graph approach in multi-modal disease classification.

Keywords

Cite

@article{arxiv.1905.03053,
  title  = {Multi-modal Graph Fusion for Inductive Disease Classification in Incomplete Datasets},
  author = {Gerome Vivar and Hendrik Burwinkel and Anees Kazi and Andreas Zwergal and Nassir Navab and Seyed-Ahmad Ahmadi},
  journal= {arXiv preprint arXiv:1905.03053},
  year   = {2019}
}

Comments

9 pages, 3 figures

R2 v1 2026-06-23T09:00:18.619Z