BMC Medical Education (Apr 2021)

Smartpathk: a platform for teaching glomerulopathies using machine learning

  • Nayze Lucena Sangreman Aldeman,
  • Keylla Maria de Sá Urtiga Aita,
  • Vinícius Ponte Machado,
  • Luiz Claudio Demes da Mata Sousa,
  • Antonio Gilberto Borges Coelho,
  • Adalberto Socorro da Silva,
  • Ana Paula da Silva Mendes,
  • Francisco Jair de Oliveira Neres,
  • Semíramis Jamil Hadad do Monte

DOI
https://doi.org/10.1186/s12909-021-02680-1
Journal volume & issue
Vol. 21, no. 1
pp. 1 – 8

Abstract

Read online

Abstract Background With the emergence of the new coronavirus pandemic (COVID-19), distance learning, especially that mediated by information and digital communication technologies, has been adopted in all areas of knowledge and at all levels, including medical education. Imminently practical areas, such as pathology, have made traditional teaching based on conventional microscopy more flexible through the synergies of computational tools and image digitization, not only to improve teaching-learning but also to offer alternatives to repetitive and exhaustive histopathological analyzes. In this context, machine learning algorithms capable of recognizing histological patterns in kidney biopsy slides have been developed and validated with a view to building computational models capable of accurately identifying renal pathologies. In practice, the use of such algorithms can contribute to the universalization of teaching, allowing quality training even in regions where there is a lack of good nephropathologists. The purpose of this work is to describe and test the functionality of SmartPathk, a tool to support teaching of glomerulopathies using machine learning. The training for knowledge acquisition was performed automatically by machine learning methods using the J48 algorithm to create a computational model of an appropriate decision tree. Results An intelligent system, SmartPathk, was developed as a complementary remote tool in the teaching-learning process for pathology teachers and their students (undergraduate and graduate students), showing 89,47% accuracy using machine learning algorithms based on decision trees. Conclusion This artificial intelligence system can assist in teaching renal pathology to increase the training capacity of new medical professionals in this area.

Keywords