OBJECTIVE: To perform a systematic review of the literature on the accuracy of prediction models in the preoperative assessment of adnexal masses. DATA SOURCES: Studies were identified through the MEDLINE and EMBASE databases from inception to March 2008. The MEDLINE search was performed using the keywords [“ovarian neoplasms”[MeSH] NOT “therapeutics”[MeSH] AND “model”] and [“ovarian neoplasms”[MeSH] NOT “therapeutics”[MeSH] AND “prediction”]. The Embase search was performed using the keywords [ovary tumor AND prediction], [ovary tumor AND Mathematical model], and [ovary tumor AND statistical model]. METHODS OF STUDY SELECTION: The search detected 1,161 publications; from the cross-references, another 116 studies were identified. Language r...
Background: Adnexal masses indicate a variety of gynecological and nongynecological disorders, which...
Introduction: Many national guidelines concerning the management of ovarian cancer currently advocat...
PURPOSE: To prospectively test the mathematical models for calculation of the risk of malignancy...
OBJECTIVETo evaluate the performance of diagnostic prediction models for ovarian malignancy in all p...
OBJECTIVE: To evaluate the performance of diagnostic prediction models for ovarian malignancy in all...
OBJECTIVE: To evaluate the performance of diagnostic prediction models for ovarian malignancy in all...
INTRODUCTION: The discrimination between benign and malignant adnexal masses is central to decisio...
BACKGROUND: The International Ovarian Tumour Analysis (IOTA) group have developed the ADNEX (The Ass...
BACKGROUND: Accurate methods to preoperatively characterize adnexal tumors are pivotal for optimal p...
Background: The currently available ovarian malignancy probability scores incorporate biochemical ma...
Objectives: To study the validity of the risk of malignancy index 4 in preoperative prediction for ...
Accurate methods to preoperatively characterize adnexal tumors are pivotal for optimal patient manag...
OBJECTIVES: To develop a risk prediction model to preoperatively discriminate between benign, border...
BACKGROUND: The discrimination between benign and malignant ovarian tumor is important in consideri...
Purpose: To externally validate and compare the performance of previously published diagnostic model...
Background: Adnexal masses indicate a variety of gynecological and nongynecological disorders, which...
Introduction: Many national guidelines concerning the management of ovarian cancer currently advocat...
PURPOSE: To prospectively test the mathematical models for calculation of the risk of malignancy...
OBJECTIVETo evaluate the performance of diagnostic prediction models for ovarian malignancy in all p...
OBJECTIVE: To evaluate the performance of diagnostic prediction models for ovarian malignancy in all...
OBJECTIVE: To evaluate the performance of diagnostic prediction models for ovarian malignancy in all...
INTRODUCTION: The discrimination between benign and malignant adnexal masses is central to decisio...
BACKGROUND: The International Ovarian Tumour Analysis (IOTA) group have developed the ADNEX (The Ass...
BACKGROUND: Accurate methods to preoperatively characterize adnexal tumors are pivotal for optimal p...
Background: The currently available ovarian malignancy probability scores incorporate biochemical ma...
Objectives: To study the validity of the risk of malignancy index 4 in preoperative prediction for ...
Accurate methods to preoperatively characterize adnexal tumors are pivotal for optimal patient manag...
OBJECTIVES: To develop a risk prediction model to preoperatively discriminate between benign, border...
BACKGROUND: The discrimination between benign and malignant ovarian tumor is important in consideri...
Purpose: To externally validate and compare the performance of previously published diagnostic model...
Background: Adnexal masses indicate a variety of gynecological and nongynecological disorders, which...
Introduction: Many national guidelines concerning the management of ovarian cancer currently advocat...
PURPOSE: To prospectively test the mathematical models for calculation of the risk of malignancy...