医学
子宫内膜癌
接收机工作特性
切断
阶段(地层学)
卵巢癌
淋巴结
淋巴结切除术
内科学
恶性肿瘤
转移
癌抗原
胃肠病学
曲线下面积
淋巴结转移
癌症
肿瘤科
古生物学
物理
量子力学
生物
作者
Nisa Prueksaritanond,Sansanee Angsathapon,Putsarat Insin
摘要
To investigate the diagnostic performance of the serum cancer antigen 125 (CA125), human epididymis protein 4 (HE4), a combination of CA125 and HE4, and a risk of ovarian malignancy algorithm (ROMA) in the preoperative prediction of high-risk lymph node metastasis (LMN) in patients with early stage endometrial cancer (EC).This is a cross-sectional study.A cross-sectional study of data for patients with early stage endometrioid EC treated surgically at Rajavithi Hospital between April 2020 and April 2021 was commenced. The preoperative serum levels of CA125 and HE4 were measured and analyzed. The ROC curves were generated to determine the optimal cutoff values of CA125, HE4, and ROMA with optimum sensitivity and specificity for predicting LMN.Eighty-six patients with surgically staged EC were identified. Lymph node involvement was detected in 9 patients (10.5%). The median serum CA125, HE4, and ROMA levels were significantly higher in EC patients having LMN than in those who did not (p < 0.05). Based on the ROC curve, both serum markers showed good discrimination for the prediction of LMN, with an optimal cutoff value of 35 U/mL for CA125 (AUC 0.789, 95% CI; 0.647-0.932), 200 pMol/L for HE4 (AUC 0.825, 95% CI; 0.700-0.950), and 60% for ROMA (AUC 0.856, 95% CI; 0.720-0.982). Additionally, HE4 showed the highest sensitivity, whereas the combination of CA125 and HE4 had the highest specificity.The lack of ultra-staging might have been an important issue in underestimating the rate of nodal metastasis in low-risk patients and made the number of patients who developed LMN low (10.5%) in this study.The preoperative combined CA125 and HE4 levels are associated with an increased risk of having LMN in patients with early stage EC. This biomarker panel can guide identifying EC patients who might most benefit from lymphadenectomy.
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