• Medientyp: E-Artikel
  • Titel: Advancing noninvasive glioma classification with diffusion radiomics: Exploring the impact of signal intensity normalization
  • Beteiligte: Foltyn-Dumitru, Martha; Schell, Marianne; Sahm, Felix; Kessler, Tobias; Wick, Wolfgang; Bendszus, Martin; Rastogi, Aditya; Brugnara, Gianluca; Vollmuth, Philipp
  • Erschienen: Oxford University Press (OUP), 2024
  • Erschienen in: Neuro-Oncology Advances
  • Sprache: Englisch
  • DOI: 10.1093/noajnl/vdae043
  • ISSN: 2632-2498
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  • Beschreibung: <jats:title>Abstract</jats:title> <jats:sec> <jats:title>Background</jats:title> <jats:p>This study investigates the influence of diffusion-weighted Magnetic Resonance Imaging (DWI-MRI) on radiomic-based prediction of glioma types according to molecular status and assesses the impact of DWI intensity normalization on model generalizability.</jats:p> </jats:sec> <jats:sec> <jats:title>Methods</jats:title> <jats:p>Radiomic features, compliant with image biomarker standardization initiative standards, were extracted from preoperative MRI of 549 patients with diffuse glioma, known IDH, and 1p19q-status. Anatomical sequences (T1, T1c, T2, FLAIR) underwent N4-Bias Field Correction (N4) and WhiteStripe normalization (N4/WS). Apparent diffusion coefficient (ADC) maps were normalized using N4 or N4/z-score. Nine machine-learning algorithms were trained for multiclass prediction of glioma types (IDH-mutant 1p/19q codeleted, IDH-mutant 1p/19q non-codeleted, IDH-wild type). Four approaches were compared: Anatomical, anatomical + ADC naive, anatomical + ADC N4, and anatomical + ADC N4/z-score. The University of California San Francisco (UCSF)-glioma dataset (n = 409) was used for external validation.</jats:p> </jats:sec> <jats:sec> <jats:title>Results</jats:title> <jats:p>Naïve-Bayes algorithms yielded overall the best performance on the internal test set. Adding ADC radiomics significantly improved AUC from 0.79 to 0.86 (P = .011) for the IDH-wild-type subgroup, but not for the other 2 glioma subgroups (P &amp;gt; .05). In the external UCSF dataset, the addition of ADC radiomics yielded a significantly higher AUC for the IDH-wild-type subgroup (P ≤ .001): 0.80 (N4/WS anatomical alone), 0.81 (anatomical + ADC naive), 0.81 (anatomical + ADC N4), and 0.88 (anatomical + ADC N4/z-score) as well as for the IDH-mutant 1p/19q non-codeleted subgroup (P &amp;lt; .012 each).</jats:p> </jats:sec> <jats:sec> <jats:title>Conclusions</jats:title> <jats:p>ADC radiomics can enhance the performance of conventional MRI-based radiomic models, particularly for IDH-wild-type glioma. The benefit of intensity normalization of ADC maps depends on the type and context of the used data.</jats:p> </jats:sec>
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