Prediction Model That Combines With Multidisciplinary Analysis For Clinical Evaluation Of Malignancy Risk Of Solid Breast Nodules

JOURNAL OF INTERNATIONAL MEDICAL RESEARCH(2021)

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Abstract
ObjectiveFew studies have systematically developed predictive models for clinical evaluation of the malignancy risk of solid breast nodules. We performed a retrospective review of female patients who underwent breast surgery or puncture, aiming to establish a predictive model for evaluating the clinical malignancy risk of solid breast nodules.MethodMultivariable logistic regression was used to identify independent variables and establish a predictive model based on a model group (207 nodules). The regression model was further validated using a validation group (112 nodules).ResultsWe identified six independent risk factors (X-3, boundary; X-4, margin; X-6, resistive index; X-7, S/L ratio; X-9, increase of maximum sectional area; and X-14, microcalcification) using multivariate analysis. The combined predictive formula for our model was: Z=-5.937 + 1.435X(3) + 1.820X(4) + 1.760X(6) + 2.312X(7) + 3.018X(9) + 2.494X(14). The accuracy, sensitivity, specificity, missed diagnosis rate, misdiagnosis rate, negative likelihood ratio, and positive likelihood ratio of the model were 88.39%, 90.00%, 87.80%, 10.00%, 12.20%, 7.38, and 0.11, respectively.ConclusionThis predictive model is simple, practical, and effective for evaluation of the malignancy risk of solid breast nodules in clinical settings.
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Key words
Breast cancer, nodules, logistic regression, risk, interdisciplinary, predictive model
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