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Individualized Health Management of Epithelial Ovarian Cancer: A Retrospective Study

Individualized Health Management of Epithelial Ovarian Cancer: A Retrospective Study

Status
UNKNOWN
Phases
Unknown
Study type
Observational
Source
ClinicalTrials.gov
Registry ID
NCT06085456
Enrollment
1000
Registered
2023-10-17
Start date
2021-09-01
Completion date
2024-06-30
Last updated
2023-10-17

For informational purposes only — not medical advice. Sourced from public registries and may not reflect the latest updates. Terms

Conditions

Epithelial Ovarian Cancer

Keywords

Epithelial Ovarian Cancer, Diagnosis, Prognosis

Brief summary

The purpose of this study is to identify the demographic and sociological characteristics of epithelial ovarian cancer in a cohort, identify the risk factors of epithelial ovarian cancer, effectively identify the high-risk population of epithelial ovarian cancer in the population, implement standardized health management, and clarify the effect of standardized health management on the incidence and prognosis of epithelial ovarian cancer. It can also provide a case control population for the clinical cohort of epithelial ovarian cancer to benefit the majority of postoperative patients.

Detailed description

1. The clinical characteristics, preoperative hematological parameters of patients with epithelial ovarian cancer and patients with benign gynecological diseases, and the pathological stage, grade and features extracted by PET/CT images of patients with epithelial ovarian cancer were recorded. 2. Patients from Renji Hospital were divided into training group and test group at a ratio of 7:3, and patients from Shanghai First Maternity and Infant Hospital were used as external validation group. 3. The training group was used to establish the diagnosis and prognosis prediction model of epithelial ovarian cancer, and the test group and the external validation group were used to verify the model, and the area under the ROC curve, accuracy, specificity, and sensitivity were used to evaluate the effect of the model. 4. For machine learning models, SHAP and LIME algorithms were used for model interpretation. 5. Unsupervised clustering algorithm was used to distinguish the subgroups of epithelial ovarian cancer patients, and KM was used to analyze the overall survival (OS) and progression-free survival (PFS) to predict the survival and recurrence of the subgroups. Overall survival (OS) was defined as the time from the first diagnosis of epithelial ovarian cancer to the confirmation of death or the end of follow-up. Progression-free survival (PFS) was defined as the time from the first diagnosis of epithelial ovarian cancer to the confirmation of disease progression or the end of follow-up.

Interventions

DIAGNOSTIC_TESTHematologic features

Hematologic features including blood routine tests, blood biochemical indicators, and tumor markers before surgery

Sponsors

RenJi Hospital
Lead SponsorOTHER

Study design

Observational model
COHORT
Time perspective
RETROSPECTIVE

Eligibility

Sex/Gender
FEMALE
Age
18 Years to 80 Years
Healthy volunteers
No

Inclusion criteria

* Patients were diagnosed as primary epithelial ovarian cancer with definite pathological stage and grade and underwent preoperative PET/CT examination, or patients diagnosed as benign gynecological diseases including ovarian cysts, uterine fibroids, and uterine prolapse. * age between 18 to 80 years old; * complete preoperative blood routine test results, blood biochemical indicators, and tumor markers;

Exclusion criteria

* complicated with acute or chronic genital tract infectious diseases; * patients with diagnosed tumors other than ovarian cancer; * complicated with severe systemic diseases; * pregnant or lactating women; * patients diagnosed with recurrent epithelial ovarian cancer.

Design outcomes

Primary

MeasureTime frameDescription
Number of diagnosed patientsone month after surgeryPatients were diagnosed with epithelial ovarian cancer or benign gynecological diseases (including ovarian cysts, uterine fibroids, and uterine prolapse). The blood characteristics of patients with epithelial ovarian cancer and patients with benign gynecological diseases (including ovarian cysts, uterine fibroids, and uterine prolapse) were compared to observe the performance of the study model in predicting disease diagnosis

Secondary

MeasureTime frameDescription
Overall survivalup to 5 yearsThe time from the first surgical or biopsy diagnosis of epithelial ovarian cancer to confirmed death or the end of follow-up
Progression-free survivalup to 5 yearsThe time from the first surgical or needle biopsy diagnosis of epithelial ovarian cancer to the confirmation of disease progression or the end of follow-up

Countries

China

Contacts

Primary ContactSijia Gu
gusijia47@163.com86+15021845201

Outcome results

None listed

Source: ClinicalTrials.gov · Data processed: Feb 4, 2026