Author
Listed:
- Stephan Ellmann
- Victoria Langer
- Nathalie Britzen-Laurent
- Kai Hildner
- Carina Huber
- Philipp Tripal
- Lisa Seyler
- Maximilian Waldner
- Michael Uder
- Michael Stürzl
- Tobias Bäuerle
Abstract
Magnetic resonance imaging (MRI) allows non-invasive evaluation of inflammatory bowel disease (IBD) by assessing pathologically altered gut. Besides morphological changes, relaxation times and diffusion capacity of involved bowel segments can be obtained by MRI. The aim of this study was to assess the use of multiparametric MRI in the diagnosis of experimentally induced colitis in mice, and evaluate the diagnostic benefit of parameter combinations using machine learning. This study relied on colitis induction by Dextran Sodium Sulfate (DSS) and investigated the colon of mice in vivo as well as ex vivo. Receiver Operating Characteristics were used to calculate sensitivity, specificity, positive- and negative-predictive values (PPV and NPV) of these single values in detecting DSS-treatment as a reference condition. A Model Averaged Neural Network (avNNet) was trained on the multiparametric combination of the measured values, and its predictive capacity was compared to those of the single parameters using exact binomial tests. Within the in vivo subgroup (n = 19), the avNNet featured a sensitivity of 91.3% (95% CI: 86.6–96.0%), specificity of 92.3% (95% CI: 85.1–99.6%), PPV of 96.9% (94.0–99.9%) and NPV of 80.0% (95% CI: 69.9–90.1%), significantly outperforming all single parameters in at least 2 accuracy measures (p
Suggested Citation
Stephan Ellmann & Victoria Langer & Nathalie Britzen-Laurent & Kai Hildner & Carina Huber & Philipp Tripal & Lisa Seyler & Maximilian Waldner & Michael Uder & Michael Stürzl & Tobias Bäuerle, 2018.
"Application of machine learning algorithms for multiparametric MRI-based evaluation of murine colitis,"
PLOS ONE, Public Library of Science, vol. 13(10), pages 1-17, October.
Handle:
RePEc:plo:pone00:0206576
DOI: 10.1371/journal.pone.0206576
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