Affiliation:
1. Department of Radiology The Affiliated Hospital of Qingdao University Qingdao China
2. Department of Research Collaboration, Research and Development (R&D) center Beijing Deepwise and League of Philosophy Doctor (PHD) Technology Co., Ltd Beijing China
3. Operation center Qingdao Women and Children's Hospital Shandong China
4. Department of Pathology The Affiliated Hospital of Qingdao University Qingdao China
5. Department of Radiology Shandong Provincial Hospital Affiliated to Shandong First Medical University Jinan China
6. Department of Radiology Hebei Medical University Third Hospital Shijiazhuang China
7. Key Laboratory of Biomechanics of Hebei Province Shijiazhuang China
Abstract
BackgroundTraditional biopsies pose risks and may not accurately reflect soft tissue sarcoma (STS) heterogeneity. MRI provides a noninvasive, comprehensive alternative.PurposeTo assess the diagnostic accuracy of histological grading and prognosis in STS patients when integrating clinical‐imaging parameters with deep learning (DL) features from preoperative MR images.Study TypeRetrospective/prospective.Population354 pathologically confirmed STS patients (226 low‐grade, 128 high‐grade) from three hospitals and the Cancer Imaging Archive (TCIA), divided into training (n = 185), external test (n = 125), and TCIA cohorts (n = 44). 12 patients (6 low‐grade, 6 high‐grade) were enrolled into prospective validation cohort.Field Strength/Sequence1.5 T and 3.0 T/Unenhanced T1‐weighted and fat‐suppressed‐T2‐weighted.AssessmentDL features were extracted from MR images using a parallel ResNet‐18 model to construct DL signature. Clinical‐imaging characteristics included age, gender, tumor‐node‐metastasis stage and MRI semantic features (depth, number, heterogeneity at T1WI/FS‐T2WI, necrosis, and peritumoral edema). Logistic regression analysis identified significant risk factors for the clinical model. A DL clinical‐imaging signature (DLCS) was constructed by incorporating DL signature with risk factors, evaluated for risk stratification, and assessed for progression‐free survival (PFS) in retrospective cohorts, with an average follow‐up of 23 ± 22 months.Statistical TestsLogistic regression, Cox regression, Kaplan–Meier curves, log‐rank test, area under the receiver operating characteristic curve (AUC),and decision curve analysis. A P‐value <0.05 was considered significant.ResultsThe AUC values for DLCS in the external test, TCIA, and prospective test cohorts (0.834, 0.838, 0.819) were superior to clinical model (0.662, 0.685, 0.694). Decision curve analysis showed that the DLCS model provided greater clinical net benefit over the DL and clinical models. Also, the DLCS model was able to risk‐stratify patients and assess PFS.Data ConclusionThe DLCS exhibited strong capabilities in histological grading and prognosis assessment for STS patients, and may have potential to aid in the formulation of personalized treatment plans.Level of Evidence4.Technical EfficacyStage 2.
Funder
Natural Science Foundation of Shandong Province
National Natural Science Foundation of China
Cited by
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