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基于机器学习的模型在冷刀锥切术(CKC)治疗高级别鳞状上皮内病变(HSIL)中预测阳性切缘的开发:一项单中心回顾性研究。

Development of a machine learning-based model for predicting positive margins in high-grade squamous intraepithelial lesion (HSIL) treatment by Cold Knife Conization(CKC): a single-center retrospective study.

机构信息

Department of Obstetrics and Gynecology, The First Affiliated Hospital of Yangtze University, Shashi District, 8 Hangkong Road, Jingzhou, Hubei, China.

出版信息

BMC Womens Health. 2024 Jun 7;24(1):332. doi: 10.1186/s12905-024-03180-2.

Abstract

OBJECTIVES

This study aims to analyze factors associated with positive surgical margins following cold knife conization (CKC) in patients with cervical high-grade squamous intraepithelial lesion (HSIL) and to develop a machine-learning-based risk prediction model.

METHOD

We conducted a retrospective analysis of 3,343 patients who underwent CKC for HSIL at our institution. Logistic regression was employed to examine the relationship between demographic and pathological characteristics and the occurrence of positive surgical margins. Various machine learning methods were then applied to construct and evaluate the performance of the risk prediction model.

RESULTS

The overall rate of positive surgical margins was 12.9%. Independent risk factors identified included glandular involvement (OR = 1.716, 95% CI: 1.345-2.189), transformation zone III (OR = 2.838, 95% CI: 2.258-3.568), HPV16/18 infection (OR = 2.863, 95% CI: 2.247-3.648), multiple HR-HPV infections (OR = 1.930, 95% CI: 1.537-2.425), TCT ≥ ASC-H (OR = 3.251, 95% CI: 2.584-4.091), and lesions covering ≥ 3 quadrants (OR = 3.264, 95% CI: 2.593-4.110). Logistic regression demonstrated the best prediction performance, with an accuracy of 74.7%, sensitivity of 76.7%, specificity of 74.4%, and AUC of 0.826.

CONCLUSION

Independent risk factors for positive margins after CKC include HPV16/18 infection, multiple HR-HPV infections, glandular involvement, extensive lesion coverage, high TCT grades, and involvement of transformation zone III. The logistic regression model provides a robust and clinically valuable tool for predicting the risk of positive margins, guiding clinical decisions and patient management post-CKC.

摘要

目的

本研究旨在分析宫颈高级别鳞状上皮内病变(HSIL)患者行冷刀锥切术(CKC)后切缘阳性的相关因素,并建立基于机器学习的风险预测模型。

方法

我们对在我院行 CKC 治疗 HSIL 的 3343 例患者进行了回顾性分析。采用 logistic 回归分析探讨了人口统计学和病理学特征与切缘阳性的关系。然后应用各种机器学习方法构建和评估风险预测模型的性能。

结果

总的切缘阳性率为 12.9%。确定的独立危险因素包括腺体受累(OR=1.716,95%CI:1.345-2.189)、转化区 III 型(OR=2.838,95%CI:2.258-3.568)、HPV16/18 感染(OR=2.863,95%CI:2.247-3.648)、多重 HR-HPV 感染(OR=1.930,95%CI:1.537-2.425)、TCT≥ASC-H(OR=3.251,95%CI:2.584-4.091)和病变累及≥3 个象限(OR=3.264,95%CI:2.593-4.110)。Logistic 回归显示了最佳的预测性能,准确率为 74.7%,灵敏度为 76.7%,特异性为 74.4%,AUC 为 0.826。

结论

CKC 后切缘阳性的独立危险因素包括 HPV16/18 感染、多重 HR-HPV 感染、腺体受累、病变广泛累及、高 TCT 分级和转化区 III 型累及。Logistic 回归模型为预测切缘阳性风险提供了一个强大且具有临床价值的工具,指导 CKC 后的临床决策和患者管理。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ee3d/11157760/4cdabf5d65a5/12905_2024_3180_Fig1_HTML.jpg

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