College of Medicine and Biomedical Information Engineering, Northeastern University, Shenyang, Liaoning, China.
CAS Key Laboratory of Molecular Imaging, Institute of Automation, Chinese Academy of Sciences, Beijing, China.
JAMA Netw Open. 2020 Jul 1;3(7):e2011625. doi: 10.1001/jamanetworkopen.2020.11625.
Accurate identification of lymph node metastasis preoperatively and noninvasively in patients with cervical cancer can avoid unnecessary surgical intervention and benefit treatment planning.
To develop a deep learning model using preoperative magnetic resonance imaging for prediction of lymph node metastasis in cervical cancer.
DESIGN, SETTING, AND PARTICIPANTS: This diagnostic study developed an end-to-end deep learning model to identify lymph node metastasis in cervical cancer using magnetic resonance imaging (MRI). A total of 894 patients with stage IB to IIB cervical cancer who underwent radical hysterectomy and pelvic lymphadenectomy were reviewed. All patients underwent radical hysterectomy and pelvic lymphadenectomy, received pelvic MRI within 2 weeks before the operations, had no concurrent cancers, and received no preoperative treatment. To achieve the optimal model, the diagnostic value of 3 MRI sequences was compared, and the outcomes in the intratumoral and peritumoral regions were explored. To mine tumor information from both image and clinicopathologic levels, a hybrid model was built and its prognostic value was assessed by Kaplan-Meier analysis. The deep learning model and hybrid model were developed on a primary cohort consisting of 338 patients (218 patients from Sun Yat-sen University Cancer Center, Guangzhou, China, between January 2011 and December 2017 and 120 patients from Henan Provincial People's Hospital, Zhengzhou, China, between December 2016 and June 2018). The models then were evaluated on an independent validation cohort consisting of 141 patients from Yunnan Cancer Hospital, Kunming, China, between January 2011 and December 2017.
The primary diagnostic outcome was lymph node metastasis status, with the pathologic characteristics diagnosed by lymphadenectomy. The secondary primary clinical outcome was survival. The primary diagnostic outcome was assessed by receiver operating characteristic (area under the curve [AUC]) analysis; the primary clinical outcome was assessed by Kaplan-Meier survival analysis.
A total of 479 patients (mean [SD] age, 49.1 [9.7] years) fulfilled the eligibility criteria and were enrolled in the primary (n = 338) and validation (n = 141) cohorts. A total of 71 patients (21.0%) in the primary cohort and 32 patients (22.7%) in the validation cohort had lymph node metastais confirmed by lymphadenectomy. Among the 3 image sequences, the deep learning model that used both intratumoral and peritumoral regions on contrast-enhanced T1-weighted imaging showed the best performance (AUC, 0.844; 95% CI, 0.780-0.907). These results were further improved in a hybrid model that combined tumor image information mined by deep learning model and MRI-reported lymph node status (AUC, 0.933; 95% CI, 0.887-0.979). Moreover, the hybrid model was significantly associated with disease-free survival from cervical cancer (hazard ratio, 4.59; 95% CI, 2.04-10.31; P < .001).
The findings of this study suggest that deep learning can be used as a preoperative noninvasive tool to diagnose lymph node metastasis in cervical cancer.
准确识别宫颈癌患者术前和非侵入性的淋巴结转移可以避免不必要的手术干预,并有利于治疗计划。
利用术前磁共振成像开发一种深度学习模型,用于预测宫颈癌的淋巴结转移。
设计、设置和参与者:这项诊断研究使用磁共振成像(MRI)开发了一种端到端深度学习模型,以识别宫颈癌的淋巴结转移。共纳入 894 例接受根治性子宫切除术和盆腔淋巴结切除术的 IB 期至 IIB 期宫颈癌患者。所有患者均接受根治性子宫切除术和盆腔淋巴结切除术,在手术前 2 周内接受盆腔 MRI 检查,无合并癌症,且未接受术前治疗。为了达到最佳模型,比较了 3 种 MRI 序列的诊断价值,并探讨了肿瘤内和肿瘤周围区域的结果。为了从图像和临床病理水平挖掘肿瘤信息,构建了混合模型,并通过 Kaplan-Meier 分析评估其预后价值。深度学习模型和混合模型在一个由 338 例患者(218 例来自中山大学肿瘤中心,广州,中国,2011 年 1 月至 2017 年 12 月;120 例来自河南省人民医院,郑州,中国,2016 年 12 月至 2018 年 6 月)组成的主要队列中进行了开发。然后,在一个由 141 例来自云南省肿瘤医院的患者组成的独立验证队列中对模型进行了评估(昆明,中国,2011 年 1 月至 2017 年 12 月)。
主要诊断结果是淋巴结转移状态,以淋巴结切除术诊断的病理特征为准。次要主要临床结果是生存。主要诊断结果通过接收者操作特征(曲线下面积[AUC])分析进行评估;主要临床结果通过 Kaplan-Meier 生存分析进行评估。
共有 479 例(平均[标准差]年龄,49.1[9.7]岁)符合入选标准,并纳入主要队列(n=338)和验证队列(n=141)。在主要队列中,71 例(21.0%)和验证队列中,32 例(22.7%)患者的淋巴结转移经淋巴结切除术证实。在 3 种图像序列中,深度学习模型同时使用肿瘤内和肿瘤周围区域的对比增强 T1 加权成像表现最佳(AUC,0.844;95%CI,0.780-0.907)。在结合深度学习模型挖掘的肿瘤图像信息和 MRI 报告的淋巴结状态的混合模型中,这些结果得到了进一步提高(AUC,0.933;95%CI,0.887-0.979)。此外,混合模型与宫颈癌无病生存率显著相关(危险比,4.59;95%CI,2.04-10.31;P < 0.001)。
这项研究的结果表明,深度学习可作为术前非侵入性工具,用于诊断宫颈癌的淋巴结转移。