Salta alla navigazione principale Salta alla ricerca Salta al contenuto principale

A neural network for glomerulus classification based on histological images of kidney biopsy

  • G. D. Cascarano
  • , F. S. Debitonto
  • , R. Lemma
  • , A. Brunetti
  • , D. Buongiorno
  • , Feudis I. De
  • , A. Guerriero
  • , U. Venere
  • , S. Matino
  • , M. T. Rocchetti
  • , M. Rossini
  • , Francesco Pesce
  • , L. Gesualdo
  • , V. Bevilacqua*
  • *Autore corrispondente per questo lavoro
  • Polytechnic University of Bari
  • University of Bari

Risultato della ricerca: Contributo in rivistaArticolo

Abstract

Background: Computer-aided diagnosis (CAD) systems based on medical images could support physicians in the decision-making process. During the last decades, researchers have proposed CAD systems in several medical domains achieving promising results. CAD systems play an important role in digital pathology supporting pathologists in analyzing biopsy slides by means of standardized and objective workflows. In the proposed work, we designed and tested a novel CAD system module based on image processing techniques and machine learning, whose objective was to classify the condition affecting renal corpuscles (glomeruli) between sclerotic and non-sclerotic. Such discrimination is useful for the biopsy slides evaluation performed by pathologists. Results: We collected 26 digital slides taken from the kidneys of 19 donors with Periodic Acid-Schiff staining. Expert pathologists have conducted the slides preparation, digital acquisition and glomeruli annotations. Before setting the classifiers, we evaluated several feature extraction techniques from the annotated regions. Then, a feature reduction procedure followed by a shallow artificial neural network allowed discriminating between the glomeruli classes. We evaluated the workflow considering an independent dataset (i.e., processing images not used in the training procedure). Ten independent runs of the training algorithm, and evaluation, allowed achieving MCC and Accuracy of 0.95 (± 0.01) and 0.99 (standard deviation < 0.00), respectively. We also obtained good precision (0.9844 ± 0.0111) and recall (0.9310 ± 0.0153). Conclusions: Results on the test set confirm that the proposed workflow is consistent and reliable for the investigated domain, and it can support the clinical practice of discriminating the two classes of glomeruli. Analyses on misclassifications show that the involved images are usually affected by staining artefacts or present partial sections due to slice preparation and staining processes. In clinical practice, however, pathologists discard images showing such artefacts.
Lingua originaleInglese
pagine (da-a)1-1
Numero di pagine1
RivistaBMC Medical Informatics and Decision Making
Volume21
Numero di pubblicazione21
DOI
Stato di pubblicazionePubblicato - 2021

OSS delle Nazioni Unite

Questo processo contribuisce al raggiungimento dei seguenti obiettivi di sviluppo sostenibile

  1. SDG 3 - Salute e benessere
    SDG 3 Salute e benessere

All Science Journal Classification (ASJC) codes

  • Politiche della Salute
  • Informatica della Salute
  • Informatica Applicata

Keywords

  • ANN
  • CKD
  • Glomerulus classification
  • Kidney
  • Morphological features
  • Texture features

Fingerprint

Entra nei temi di ricerca di 'A neural network for glomerulus classification based on histological images of kidney biopsy'. Insieme formano una fingerprint unica.

Cita questo