Wan Ting, Cai Guangyao, Gao Shangbin, Feng Yanling, Huang He, Liu Lili, Liu Jihong
Department of Gynecologic Oncology, Sun Yat-sen University Cancer Center, State Key Laboratory of Oncology in South China; Collaborative Innovation Center for Cancer Medicine, Guangzhou, China.
Department of Pathology, Sun Yat-sen University Cancer Center, Guangzhou, China.
Front Oncol. 2021 Dec 23;11:774459. doi: 10.3389/fonc.2021.774459. eCollection 2021.
Perineural invasion (PNI) is associated with a poor prognosis for cervical cancer and influences surgical strategies. However, a preoperative evaluation that can determine PNI in cervical cancer patients is lacking.
After 1:1 propensity score matching, 162 cervical cancer patients with PNI and 162 cervical cancer patients without PNI were included in the training set. Forty-nine eligible patients were enrolled in the validation set. The PNI-positive and PNI-negative groups were compared. Multivariate logistic regression was performed to build the PNI prediction nomogram.
Age [odds ratio (OR), 1.028; 95% confidence interval (CI), 0.999-1.058], adenocarcinoma (OR, 1.169; 95% CI, 0.675-2.028), tumor size (OR, 1.216; 95% CI, 0.927-1.607), neoadjuvant chemotherapy (OR, 0.544; 95% CI, 0.269-1.083), lymph node enlargement (OR, 1.953; 95% CI, 1.086-3.550), deep stromal invasion (OR, 1.639; 95% CI, 0.977-2.742), and full-layer invasion (OR, 5.119; 95% CI, 2.788-9.799) were integrated in the PNI prediction nomogram based on multivariate logistic regression. The PNI prediction nomogram exhibited satisfactory performance, with areas under the curve of 0.763 (95% CI, 0.712-0.815) for the training set and 0.860 (95% CI, 0.758-0.961) for the validation set. Moreover, after reviewing the pathological slides of patients in the validation set, four patients initially diagnosed as PNI-negative were recognized as PNI-positive. All these four patients with false-negative PNI were correctly predicted to be PNI-positive (predicted > 0.5) by the nomogram, which improved the PNI detection rate.
The nomogram has potential to assist clinicians when evaluating the PNI status, reduce misdiagnosis, and optimize surgical strategies for patients with cervical cancer.
神经周围浸润(PNI)与宫颈癌预后不良相关,并影响手术策略。然而,目前缺乏一种能够在宫颈癌患者中确定PNI的术前评估方法。
经过1:1倾向评分匹配后,将162例有PNI的宫颈癌患者和162例无PNI的宫颈癌患者纳入训练集。49例符合条件的患者被纳入验证集。对PNI阳性组和PNI阴性组进行比较。采用多因素逻辑回归构建PNI预测列线图。
基于多因素逻辑回归,将年龄[比值比(OR),1.028;95%置信区间(CI),0.999 - 1.058]、腺癌(OR,1.169;95% CI,0.675 - 2.028)、肿瘤大小(OR,1.216;95% CI,0.927 - 1.607)、新辅助化疗(OR,0.544;95% CI,0.269 - 1.083)、淋巴结肿大(OR,1.953;95% CI,1.086 - 3.550)、深部间质浸润(OR,1.