AI Article Synopsis

  • The study aimed to assess how effective conventional MRI features and texture analysis are in distinguishing between ovarian thecoma-fibroma groups (OTFGs) and ovarian granulosa cell tumors (OGCTs).
  • A total of 52 patients were surveyed, and various MRI-based and texture features were analyzed to create a model capable of differentiating between the two types of ovarian tumors.
  • The findings showed that the MRI-based model and a combination model performed nearly equally well in terms of diagnostic accuracy, while texture analysis alone did not significantly improve diagnosis, suggesting MRI analysis is a reliable method for distinguishing these tumors.

Article Abstract

Objective: To evaluate the diagnostic utility of conventional magnetic resonance imaging (MRI)-based characteristics and a texture analysis (TA) for discriminating between ovarian thecoma-fibroma groups (OTFGs) and ovarian granulosa cell tumors (OGCTs).

Methods: This retrospective multicenter study enrolled 52 patients with 32 OGCTs and 21 OTFGs, which were dissected and pathologically diagnosed between January 2008 and December 2019. MRI-based features (MBFs) and texture features (TFs) were evaluated and compared between OTFGs and OGCTs. A least absolute shrinkage and selection operator (LASSO) regression analysis was performed to select features and construct the discriminating model. ROC analyses were conducted on MBFs, TFs, and their combination to discriminate between the two diseases.

Results: We selected 3 features with the highest absolute value of the LASSO regression coefficient for each model: the apparent diffusion coefficient (ADC), peripheral cystic area, and contrast enhancement in the venous phase (VCE) for the MRI-based model; the 10th percentile, difference variance, and maximal correlation coefficient for the TA-based model; and ADC, VCE, and the difference variance for the combination model. The areas under the curves of the constructed models were 0.938, 0.817, and 0.941, respectively. The diagnostic performance of the MRI-based and combination models was similar (p = 0.38), but significantly better than that of the TA-based model (p < 0.05).

Conclusions: The conventional MRI-based analysis has potential as a method to differentiate OTFGs from OGCTs. TA did not appear to be of any additional benefit. Further studies are needed on the use of these methods for a preoperative differential diagnosis of these two diseases.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9131674PMC
http://dx.doi.org/10.1186/s13048-022-00989-zDOI Listing

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