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首页> 外文期刊>Journal of evaluation in clinical practice >Prediction of breast cancer and lymph node metastatic status with tumour markers using logistic regression models.
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Prediction of breast cancer and lymph node metastatic status with tumour markers using logistic regression models.

机译:使用Logistic回归模型使用肿瘤标志物预测乳腺癌和淋巴结转移状态。

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摘要

AIMS: Early detection of breast cancer can improve disease mortality. The aim of this study was to evaluate the effectiveness of serum biomarkers in the detection of primary breast cancer and lymph node metastatic status. METHODS: Serum samples were obtained from 55 female patients with breast cancer and 39 women without breast cancer. For these subjects, clinicopathological data were collected and serum levels of carcinoembryonic antigen, breast cancer-specific cancer antigen 15.3 (CA15-3), tissue polypeptide-specific antigen (TPS), soluble interleukin-2 receptor (sIL-2R) and insulin-like growth factor binding protein-3 (IGFBP-3) were assayed. Univariate and multivariate logistic regression were performed to evaluate the association between biomarkers and breast cancer, as well as lymph node metastatic status. RESULTS: For breast cancer prediction, the serum level of TPS had the best predictive value, with a sensitivity of 80% at an optimal cut-off value of 69.1 U L(-1). The combination of TPS, CA15-3and IGFBP-3 with logistic regression model increased the sensitivity to 85%. For lymph node metastasis prediction, the serum level of sIL-2R had the best predictive value, with a sensitivity of 66% at an optimal cut-off value of 286 U mL(-1). The combination of sIL-2R and TPS with logistic regression model increased the sensitivity to 69%. CONCLUSION: TPS may be useful in the detection of primary breast cancer, while sIL-2R may be useful in lymph node metastasis prediction. The combination of more than one biomarker with logistic regression model can improve the predictive sensitivity.
机译:目的:及早发现乳腺癌可以提高疾病死亡率。这项研究的目的是评估血清生物标志物在检测原发性乳腺癌和淋巴结转移状态中的有效性。方法:从55名女性乳腺癌患者和39名非乳腺癌女性患者中获取血清样本。对于这些受试者,收集了临床病理数据,并检测了血清癌胚抗原,乳腺癌特异性癌症抗原15.3(CA15-3),组织多肽特异性抗原(TPS),可溶性白介素2受体(sIL-2R)和胰岛素-如生长因子结合蛋白-3(IGFBP-3)进行了测定。进行单因素和多因素logistic回归以评估生物标志物与乳腺癌之间的关联以及淋巴结转移状态。结果:对于乳腺癌的预测,TPS的血清水平具有最佳的预测价值,在最佳临界值为69.1 U L(-1)时灵敏度为80%。 TPS,CA15-3和IGFBP-3与Logistic回归模型的组合将敏感性提高到85%。对于淋巴结转移预测,血清sIL-2R水平具有最佳预测值,在最佳临界值为286 U mL(-1)时灵敏度为66%。 sIL-2R和TPS与Logistic回归模型的组合将敏感性提高到69%。结论:TPS可用于检测原发性乳腺癌,而sIL-2R可用于预测淋巴结转移。多种生物标志物与逻辑回归模型的组合可以提高预测敏感性。

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