A Review on Data Fusion of Multidimensional Medical and Biomedical Data

Molecules. 2022 Nov 2;27(21):7448. doi: 10.3390/molecules27217448.

Abstract

Data fusion aims to provide a more accurate description of a sample than any one source of data alone. At the same time, data fusion minimizes the uncertainty of the results by combining data from multiple sources. Both aim to improve the characterization of samples and might improve clinical diagnosis and prognosis. In this paper, we present an overview of the advances achieved over the last decades in data fusion approaches in the context of the medical and biomedical fields. We collected approaches for interpreting multiple sources of data in different combinations: image to image, image to biomarker, spectra to image, spectra to spectra, spectra to biomarker, and others. We found that the most prevalent combination is the image-to-image fusion and that most data fusion approaches were applied together with deep learning or machine learning methods.

Keywords: MALDI imaging; Raman spectroscopy; computed tomography; data fusion; deep learning; fluorescence lifetime imaging microscopy; machine learning; magnetic resonance imaging; mammography; positron emission tomography; single photon emission computed tomography; ultrasonography.

Publication types

  • Review

MeSH terms

  • Image Processing, Computer-Assisted* / methods
  • Machine Learning*