Data reduction and data visualization for automatic diagnosis using gene expression and clinical data.

Journal: Artificial intelligence in medicine
Published Date:

Abstract

Accurate diagnoses of specific diseases require, in general, the review of the whole medical history of a patient. Currently, even though many advances have been made for disease monitoring, domain experts are still requested to perform direct analyses in order to get a precise classification, thus implying significant efforts and costs. In this work we present a framework for automated diagnosis based on high-dimensional gene expression and clinical data. Given that high-dimensional data can be difficult to analyze and computationally expensive to process, we first perform data reduction to transform high-dimensional representations of data into a lower dimensional space, yet keeping them meaningful for our purposes. We used then different data visualization techniques to embed complex pieces of information in 2-D images, that are in turn used to perform diagnosis relying on deep learning approaches. Experimental analyses show that the proposed method achieves good performance, featuring a prediction Recall value between 91% and 99%.

Authors

  • Pierangela Bruno
    Department of Mathematics and Computer Science, University of Calabria, Rende, Italy. Electronic address: bruno@mat.unical.it.
  • Francesco Calimeri
  • Alexandre Sébastien Kitanidis
    Department of Electronics, Information and Bioengineering, Politecnico di Milano, Milano, Italy. Electronic address: alexandresebastien.kitanidis@mail.polimi.it.
  • Elena De Momi