Machine learning prediction model for lateral lymph node metastasis in rectal cancer.

Longchun Dong, Shiyong Du, Hongjie Yang, Xipeng Zhang, Zhichun Zhang, Shuan Geng, Yuanda Zhou, Peng Li, Qingsheng Zeng, Yi Sun, Peishi Jiang
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Abstract

Background: The preoperative diagnosis of lateral lymph node metastasis presents a significant challenge. In this study, we aimed to predict the pathological characteristics of lateral lymph nodes in patients with rectal cancer using preoperative clinical information and to develop a logistic prediction model for lateral lymph node metastasis.

Methods: A retrospective analysis of 143 patients who underwent total mesorectal excision (TME) and lateral lymph node dissection (LLND) at Tianjin Union Medical Center, from January 2017 to June 2024 was conducted. Patients were categorized into lateral lymph node metastasis and non-metastasis groups based on postoperative pathological findings. Basic information, tumor markers, and MRI reports were compared. Patients were segmented into training and validation sets at an 8:2 ratio. The R software was used to create a logistic prediction model and a nomogram.

Results: This study included 66 pathologically positive and 77 pathologically negative lateral lymph node cases. Extramural vascular invasion (EMVI), MRI clinical N stage (MRI cN stage), and the number of enlarged lateral lymph nodes (NoELLN) were used to construct the logistic prediction model. The model achieved an accuracy of 0.62, sensitivity of 0.80, specificity of 0.43, and area under the curve (AUC) of 0.80 in predicting the pathological characteristics of lateral lymph nodes using the test dataset.

Conclusion: EMVI, MRI cN stage, and NoELLN are significant predictive factors for predicting lateral lymph node pathology in patients with rectal cancer. These findings offer guidance for determining patient eligibility for LLND surgery.

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直肠癌侧淋巴结转移的机器学习预测模型。
背景:外侧淋巴结转移的术前诊断是一个重大的挑战。在本研究中,我们旨在利用术前临床信息预测直肠癌患者侧淋巴结的病理特征,并建立侧淋巴结转移的logistic预测模型。方法:回顾性分析2017年1月至2024年6月在天津协和医院行全肠系膜切除术(TME)和侧淋巴结清扫术(LLND)的143例患者。根据术后病理结果将患者分为外侧淋巴结转移组和非转移组。比较基本信息、肿瘤标志物和MRI报告。患者按8:2的比例分为训练组和验证组。使用R软件建立逻辑预测模型和模态图。结果:本组病理阳性66例,病理阴性77例。采用外血管浸润(EMVI)、MRI临床N分期(MRI cN分期)、侧淋巴结肿大数(NoELLN)构建logistic预测模型。该模型预测外侧淋巴结病理特征的准确率为0.62,灵敏度为0.80,特异性为0.43,曲线下面积(AUC)为0.80。结论:EMVI、MRI cN分期、NoELLN是预测直肠癌患者侧淋巴结病理的重要预测因素。这些发现为确定患者是否有资格接受LLND手术提供了指导。
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