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Integrating nnU-Net Segmentation and Clinical-Radiomics for Multicenter MRI-Based Assessment of Soft Tissue Sarcoma Grade and Ki-67 Expression

J Magn Reson Imaging. 2026 Jun 30. doi: 10.1002/jmri.70424. Online ahead of print.

ABSTRACT

BACKGROUND: Histological grade and Ki-67 expression are prognostic risk factors in patients with soft tissue sarcoma (STS). These assessments require biopsy, which may be affected by tumor heterogeneity and is invasive.

PURPOSE: To develop an automated MRI-based pipeline to assess STS grade and Ki-67 expression.

STUDY TYPE: Retrospective.

POPULATION: 186 patients with pathological confirmation of STS (89 low-grade, 97 high-grade; 87 low Ki-67 expression, 99 high Ki-67 expression) across three hospitals, with 130 and 56 patients in the training and validation cohorts.

FIELD STRENGTH/SEQUENCE: 1.5 T and 3.0 T/Fat-suppressed T2-weighted imaging, fat-suppressed gadolinium-enhanced T1-weighted imaging, and diffusion-weighted imaging.

ASSESSMENT: An automatic STS segmentation model was developed and compared with manual segmentations. Clinical-imaging signature (CS) models were developed to distinguish STS grade and Ki-67 expression using: (i) structural MRI (T1WI and T2WI) radiomics features, (ii) structural MRI and ADC radiomics features, and (iii) structural MRI and ADC radiomics features combined with clinical information and MRI semantic features. The diagnostic performance of radiologists (with 6, 8, and 38 years’ experience) for assessing grade and Ki-67 expression was evaluated with and without the assistance of the best-performing models.

STATISTICAL TESTS: Dice coefficient, Cohen’s κ and weighted κ, chi-square test or Fisher’s exact test, logistic regression analyses, decision curve analysis, area under the receiver operating characteristic curve (AUC), and DeLong’s test. A p value < 0.05 was considered significant.

RESULTS: The segmentation model achieved good segmentation performance (0.80 in extremity cases and 0.73 in trunk cases). LR and SVM CS models showed the best performance for grading and Ki-67 assessment, respectively. (AUC in validation cohort: 0.846 and 0.742). Using the model significantly improved the diagnostic performance of the two more-junior radiologists for grade (AUC: 0.720-0.832 and 0.735-0.835) and Ki-67 expression (AUC: 0.665-0.717 and 0.659-0.741).

DATA CONCLUSION: The CS model may assess STS grade and Ki-67 expression and improve the diagnostic performance of less-experienced radiologists.

EVIDENCE LEVEL: 3.

TECHNICAL EFFICACY: 2.

PMID:42378640 | DOI:10.1002/jmri.70424

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