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Preoperative Tumor Texture Analysis on MRI for High-Risk Disease Prediction in Endometrial Cancer: A Hypothesis-Generating Study

Articolo
Data di Pubblicazione:
2022
Citazione:
Miccò, M., Gui, B., Russo, L., Boldrini, L., Lenkowicz, J., Cicogna, S., Cosentino, F., Restaino, G., Avesani, G., Panico, C., Moro, F., Ciccarone, F., Macchia, G., Valentini, V., Scambia, G., Manfredi, R., Fanfani, F., Preoperative Tumor Texture Analysis on MRI for High-Risk Disease Prediction in Endometrial Cancer: A Hypothesis-Generating Study, <>, 2022; 12 (11): 1854-N/A. [doi:10.3390/jpm12111854] [https://hdl.handle.net/10807/231852]
Abstract:
Objective: To develop and validate magnetic resonance (MR) imaging-based radiomics models for high-risk endometrial cancer (EC) prediction preoperatively, to be able to estimate deep myometrial invasion (DMI) and lymphovascular space invasion (LVSI), and to discriminate between low-risk and other categories of risk as proposed by ESGO/ESTRO/ESP (European Society of Gynaecological Oncology-European Society for Radiotherapy & Oncology and European Society of Pathology) guidelines. Methods: This retrospective study included 96 women with EC who underwent 1.5-T MR imaging before surgical staging between April 2009 and May 2019 in two referral centers divided into training (T = 73) and validation cohorts (V = 23). Radiomics features were extracted using the MODDICOM library with manual delineation of whole-tumor volume on MR images (axial T2-weighted). Diagnostic performances of radiomic models were evaluated by area under the receiver operating characteristic (ROC) curve in training (AUCT) and validation (AUCV) cohorts by using a subset of the most relevant texture features tested individually in univariate analysis using Wilcoxon-Mann-Whitney. Results: A total of 228 radiomics features were extracted and ultimately limited to 38 for DMI, 29 for LVSI, and 15 for risk-classes prediction for logistic radiomic modeling. Whole-tumor radiomic models yielded an AUCT/AUCV of 0.85/0.68 in DMI estimation, 0.92/0.81 in LVSI prediction, and 0.84/0.76 for differentiating low-risk vs other risk classes (intermediate/high-intermediate/high). Conclusion: MRI-based radiomics has great potential in developing advanced prognostication in EC.
Tipologia CRIS:
Articolo in rivista, Nota a sentenza
Keywords:
endometrial cancer; magnetic resonance imaging; radiomics
Elenco autori:
Miccò, M.; Gui, Benedetta; Russo, L.; Boldrini, Luca; Lenkowicz, Jacopo; Cicogna, S.; Cosentino, F.; Restaino, Gennaro; Avesani, Giacomo; Panico, C.; Moro, Francesca; Ciccarone, Francesca; Macchia, Gabriella; Valentini, Vincenzo; Scambia, Giovanni; Manfredi, Riccardo; Fanfani, Francesco
Link alla scheda completa:
https://publicatt.unicatt.it/handle/10807/231852
Link al Full Text:
https://publicatt.unicatt.it//retrieve/handle/10807/231852/684245/jpm-12-01854.pdf
Pubblicato in:
JOURNAL OF PERSONALIZED MEDICINE
Journal
  • Aree Di Ricerca

Aree Di Ricerca

Settori (2)


LS7_1 - Medical imaging for prevention, diagnosis and monitoring of diseases - (2022)

Settore MED/40 - GINECOLOGIA E OSTETRICIA
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