A Prospective Validation Study of Radiomics in the Differential Diagnosis of Uterine Leiomyoma and Uterine Sarcoma
NCT ID: NCT07269535
Last Updated: 2025-12-08
Study Results
The study team has not published outcome measurements, participant flow, or safety data for this trial yet. Check back later for updates.
Basic Information
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NOT_YET_RECRUITING
500 participants
OBSERVATIONAL
2025-11-30
2050-01-01
Brief Summary
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However, there are still some limitations in retrospective studies and internal validation results, and its application value, universality and stability in real clinical environment have not been fully verified. Therefore, we plan to conduct a prospective validation study in consecutive patients enrolled after January 2025 to evaluate the clinical performance and generalization of the model in predicting the malignant tendency or risk of malignant transformation of uterine fibroids through practical application in the real population, and further analyze the operability in the actual diagnosis and treatment process and the potential value for patient management. This study will provide reliable evidence for early screening, follow-up management and individualized treatment of high-risk population, and has important clinical and public health significance for improving the early diagnosis rate, reducing the risk of malignant transformation and improving the prognosis of patients with uterine fibroids.
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Detailed Description
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To address these challenges, our multicenter collaborative group, led by Tongji Hospital and supported by the National Clinical Research Center for Obstetrics and Gynecology, has established a large-scale systematic database integrating clinical, imaging, pathological, laboratory, and molecular data from multiple tertiary hospitals. Based on multicenter clinical big data collected from January 2012 to January 2025, we have developed a multimodal early-warning model for the malignant transformation of uterine fibroids. This model, primarily incorporating T2WI and DWI features and optimized using a support vector machine (SVM) algorithm, demonstrated high sensitivity and specificity in retrospective analysis and internal validation, suggesting promising potential for identifying high-risk individuals.
However, retrospective designs inherently limit the assessment of the model's real-world clinical applicability, generalizability, and stability. Therefore, beginning in January 2025, we plan to conduct a prospective validation study in consecutively enrolled patients to evaluate the model's diagnostic performance in routine clinical practice, its feasibility in real-world diagnostic workflows, and its potential value for early screening, follow-up management, and individualized treatment of high-risk populations. This study is expected to provide robust evidence to improve early detection, reduce malignant transformation risk, and ultimately enhance clinical outcomes and public health impact.
Conditions
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Study Design
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CASE_CONTROL
PROSPECTIVE
Study Groups
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Patients with a pathological diagnosis of uterine fibroids
No intervention (observational study)
This study is a retrospective observational study without intervention.
Patients with a pathological diagnosis of uterine fibroids or uterine sarcoma
No intervention (observational study)
This study is a retrospective observational study without intervention.
Interventions
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No intervention (observational study)
This study is a retrospective observational study without intervention.
Eligibility Criteria
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Inclusion Criteria
1.2 Patients scheduled for surgical treatment or those eligible for long-term standardized follow-up.
1.3 Patients who are able to understand the study procedures and voluntarily sign the written informed consent form.
Exclusion Criteria
2.2 Patients unable to complete baseline examinations, unable to comply with long-term follow-up, or unwilling to provide written informed consent.
FEMALE
No
Sponsors
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Tongji Hospital
OTHER
Responsible Party
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Wenwen Wang
associate professor
Central Contacts
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Other Identifiers
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TJ-IRB202511040
Identifier Type: -
Identifier Source: org_study_id
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