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网络分析和关联规则挖掘在可视化食管鳞状细胞癌淋巴结转移模式中的应用

Application of network analysis and association rule mining for visualizing the lymph node metastasis patterns in esophageal squamous cell carcinoma.

作者信息

Baek Sangwon, Kim Kyunga, Park Seong Yong, Jeon Yeong Jeong, Lee Junghee, Cho Jong Ho, Kim Hong Kwan, Choi Yong Soo, Zo Jae Il, Shim Young Mog

机构信息

Research Institute for Future Medicine, Samsung Medical Center, Seoul, Republic of Korea.

Biomedical Statistics Center, Research Institute for Future Medicine, Samsung Medical Center, Seoul, Republic of Korea.

出版信息

Sci Rep. 2025 Feb 13;15(1):5415. doi: 10.1038/s41598-025-89340-2.

Abstract

Understanding the patterns of lymph node (LN) metastases in esophageal squamous cell carcinoma (ESCC) is important for accurate staging and defining the extent of lymphadenectomy. This study clarified the patterns of LN metastases in ESCC using data mining techniques. 1181 patients with LN metastases who underwent upfront esophagectomy for ESCC were analyzed. Network analysis and association rule mining (ARM) techniques were employed to visualize and quantify LN metastases according to the T stage (T1 vs. T2-4) and the primary lesion location. Network plots depicted the relationship between primary lesions and metastatic LNs, and mutual LN metastasis patterns. ARM metrics assessed connection strengths among LNs. Network analysis identified the most prevalent LN metastases at 106recR/L, 105-108-110, and 1-2-7, independent of the T stage and location. ARM indicated high metastases likelihood at 106recR/L for upper ESCC, 1-2-7 and 106recR for mid-ESCC, and 1-2-7 for lower ESCC. Mutual metastases analysis identified 106recR/L, 1-2-7, and 105-108-110 as common metastasis stations across all subgroups. Conviction showed that cervical LN metastasis occurred independently of 106recR/L. Data mining techniques elucidate the intricate patterns of LN metastases and the association between metastatic LNs in ESCC.

摘要

了解食管鳞状细胞癌(ESCC)的淋巴结(LN)转移模式对于准确分期和确定淋巴结清扫范围至关重要。本研究使用数据挖掘技术阐明了ESCC的LN转移模式。对1181例因ESCC接受 upfront 食管切除术且发生LN转移的患者进行了分析。采用网络分析和关联规则挖掘(ARM)技术,根据T分期(T1与T2 - 4)和原发灶位置对LN转移进行可视化和量化。网络图描绘了原发灶与转移LN之间的关系以及相互的LN转移模式。ARM指标评估了LN之间的连接强度。网络分析确定了最常见的LN转移部位为106recR/L、105 - 108 - 110和1 - 2 - 7,与T分期和位置无关。ARM表明,上段ESCC在106recR/L处转移可能性高,中段ESCC在1 - 2 - 7和106recR处转移可能性高,下段ESCC在1 - 2 - 7处转移可能性高。相互转移分析确定106recR/L、1 - 2 - 7和105 - 108 - 110为所有亚组中常见的转移站。确信度分析表明,颈部LN转移独立于106recR/L发生。数据挖掘技术阐明了ESCC中LN转移的复杂模式以及转移LN之间的关联。

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