• Medicine · Dec 2020

    Meta Analysis

    Magnetic resonance imaging for the non-invasive diagnosis in patients with ovarian cancer: A protocol for systematic review and meta-analysis.

    • Yongxue Su, Lingli Deng, Lijun Yang, Xianhong Yuan, Wei Xia, and Ping Liu.
    • Department of Radiology.
    • Medicine (Baltimore). 2020 Dec 11; 99 (50): e23551e23551.

    BackgroundIn developed nations, ovarian cancer has resulted in the most fatalities from gynecological cancer. Laparoscopy is primarily utilized as the test to diagnose ovarian cancer. Besides being costly, there are surgical risks associated with laparoscopies. At present, clinical practitioners have access to non-invasive tests for diagnosing ovarian cancer. This study aims to evaluate the diagnostic accuracy of magnetic resonance imaging (MRI) for diagnosing ovarian cancer.MethodsIn order to obtain eligible studies, cross-sectional studies or randomized controlled trials are searched in electronic databases. The databases include 5 English databases (PubMed, the Cochrane Library, PsycINFO, EMBASE, and Web of Science) and 3 Chinese databases (China Biomedical Literature Database, China National Knowledge Infrastructure, and WanFang database). The databases are searched from their origin to October 2020. Quality Assessment of Diagnostic Accuracy Studies-2 is used to assess the methodological quality of the selected studies. RevMan 5.3 and SAS NLMIXED software are used to assess the data synthesis, sensitivity analysis, and risk of bias assessment.ResultsThis study evaluates the pooled diagnostic value of MRI for diagnosing ovarian cancer.ConclusionsThis study will summarize previously published evidence of MRI in relation to diagnosing ovarian cancer.Ethics And DisseminationSince this study does not utilize data from patients, this protocol does not require ethical approval.Protocol Registration NumberDOI 10.17605/OSF.IO/A6SPQ (https://osf.io/a6spq).

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