A1 Vertaisarvioitu alkuperäisartikkeli tieteellisessä lehdessä
Acute deep neck infection MRI: deep learning segmentation and clinical relevance of retropharyngeal edema volume
Tekijät: Viertonen, Ville Sakari; Sirén, Aapo; Nyman, Mikko; Huhtanen, Heidi; Klén, Riku; Hirvonen, Jussi; Rainio, Oona
Kustantaja: Springer Nature
Julkaisuvuosi: 2026
Lehti: European radiology experimental
Artikkelin numero: 15
Vuosikerta: 10
eISSN: 2509-9280
DOI: https://doi.org/10.1186/s41747-026-00686-2
Julkaisun avoimuus kirjaamishetkellä: Avoimesti saatavilla
Julkaisukanavan avoimuus : Kokonaan avoin julkaisukanava
Verkko-osoite: https://doi.org/10.1186/s41747-026-00686-2
Rinnakkaistallenteen osoite: https://research.utu.fi/converis/portal/detail/Publication/515746962
Rinnakkaistallenteen lisenssi: CC BY
Rinnakkaistallennetun julkaisun versio: Kustantajan versio
Objective
Retropharyngeal edema (RPE) on MRI in patients with acute neck infection is associated with disease severity. We explored the potential role of RPE volume as a quantitative marker and developed a convolutional neural network (CNN) for automated RPE volume segmentation.
Materials and methodsVolumes of RPE were manually segmented from T2-weighted fat-suppressed Dixon magnetic resonance (MR) images from 244 patients. These volumes were correlated with clinical variables, such as the need for intensive care unit (ICU) admissions, C-reactive protein (CRP) levels, maximal abscess diameter, and length of hospital stay (LOS). Manually segmented masks were used to train a CNN.
ResultsPatients who required ICU admission had significantly higher RPE volumes than those who did not, and RPE volume outperformed the binary RPE (presence/absence) in classification analysis of ICU admissions. Furthermore, RPE volume correlated positively with LOS, CRP, and maximal abscess diameter. At the slice level, the deep learning (DL)-based model achieved its highest area under the receiver operating characteristic curve (AUROC) in sagittal slices (98.2%) and its highest Dice similarity coefficient in axial slices (0.534).
ConclusionRPE volume is a promising quantitative imaging biomarker associated with relevant clinical outcomes in acute neck infections. Our DL-based model enables automated quantification of RPE volume.
Relevance statementRPE volume provides clinically meaningful information in acute neck infections, outperforming binary classification in predicting disease severity and correlating with key clinical outcomes. Automated DL-based segmentation accurately locates the RPE and provides a moderate quantitative measurement of RPE volume, supporting its potential as a clinical imaging biomarker.
Key Points- RPE volume correlated with markers of severe illness and outperformed binary RPE classification.
- We developed a DL-based algorithm for slice-wise classification and automatic segmentation of RPE.
- The classification model achieved excellent performance, while segmentation yielded modest Dice similarity coefficients consistent with prior imaging-based tumor segmentation algorithms.
Ladattava julkaisu This is an electronic reprint of the original article. |
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This study was financially supported by the Sigrid Jusélius Foundation.