Prospective evaluation of logistic regression models for the diagnosis of ovarian cancer.

@article{Aslam2000ProspectiveEO,
  title={Prospective evaluation of logistic regression models for the diagnosis of ovarian cancer.},
  author={Naumaan Aslam and Sujoy Banerjee and Jeff Carr and Michael Savvas and Richard I Hooper and Davor Jurkovic},
  journal={Obstetrics and gynecology},
  year={2000},
  volume={96 1},
  pages={75-80}
}
OBJECTIVE To test the accuracy of three logistic regression models in diagnosing malignancy in women with adnexal masses. METHODS This was a prospective collaborative study. Women were recruited from three hospitals and all assessments were performed at the Gynaecology Ultrasound Unit, King's College Hospital. One hundred women with known adnexal masses were examined preoperatively. The demographic, biochemical, and sonographic data recorded for each patient included age, menopausal status… CONTINUE READING

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