A logistic model for the prediction of endometriosis

用于预测子宫内膜异位症的逻辑模型

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Abstract

OBJECTIVE: To develop a model that uses individual and lesion characteristics to help surgeons choose lesions that have a high probability of containing histologically confirmed endometriosis. DESIGN: Secondary analysis of prospectively collected information. SETTING: Government research hospital in the United States. PATIENT(S): Healthy women 18-45 years of age, with chronic pelvic pain and possible endometriosis, who were enrolled in a clinical trial. INTERVENTION(S): All participants underwent laparoscopy, and information was collected on all visible lesions. Lesion data were randomly allocated to a training and test data set. MAIN OUTCOME MEASURE(S): Predictive logistic regression, with the outcome of interest being histologic diagnosis of endometriosis. RESULT(S): After validation, the model was applied to the complete data set, with a sensitivity of 88.4% and specificity of 24.6%. The positive predictive value was 69.2%, and the negative predictive value was 53.3%, equating to correct classification of a lesion of 66.5%. Mixed color; larger width; and location in the ovarian fossa, colon, or appendix were most strongly associated with the presence of endometriosis. CONCLUSION(S): This model identified characteristics that indicate high and low probabilities of biopsy-proven endometriosis. It is useful as a guide in choosing appropriate lesions for biopsy, but the improvement using the model is not great enough to replace histologic confirmation of endometriosis.

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