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一种结合术中冰冻切片分析和临床特征的随机森林算法预测模型指导周围型孤立性肺结节的手术策略。

A random forest algorithm predicting model combining intraoperative frozen section analysis and clinical features guides surgical strategy for peripheral solitary pulmonary nodules.

作者信息

Qian Liqiang, Zhou Yinjie, Zeng Wanqin, Chen Xiaoke, Ding Zhengping, Shen Yujia, Qian Yifeng, Tosi Davide, Silva Mario, Han Yuchen, Fu Xiaolong

机构信息

Shanghai Lung Cancer Center, Shanghai Chest Hospital, Shanghai Jiao Tong University, Shanghai, China.

Department of Thoracic Surgery, Hwa Mei Hospital, University of Chinese Academy of Science (Ningbo No. 2 Hospital), Ningbo, China.

出版信息

Transl Lung Cancer Res. 2022 Jun;11(6):1132-1144. doi: 10.21037/tlcr-22-395.

Abstract

BACKGROUND

Intraoperative frozen section (FS) analysis has been used to guide the extent of resection in patients with solitary pulmonary nodules (SPNs), but its accuracy varies greatly among different hospitals. Artificial intelligence (AI) and multidimensional data technology are developing rapidly these years, meanwhile, surgeons need better methods to guide the surgical strategy of SPNs. We established predicting models combining FS results with multidimensional perioperative clinical features using logistic regression analysis and the random forest (RF) algorithm to get more accurate extent of SPN resection.

METHODS

Patients with peripheral SPNs who underwent FS-guided surgical resection at the Shanghai Chest Hospital (January 2017-December 2018) were retrospectively examined (N=3,089). The accuracy of intraoperative FS-guided resection extent was analyzed and used as Model 1. The clinical features (sex, age, CT features, tumor markers, smoking history, lesion size and nodule location) of patients were collected, and Models 2 and 3 were established using logistic regression and RF algorithms to combine the FS with clinical features. We confirmed the performance of these models in an external validation cohort of 117 patients from Hwa Mei Hospital, University of Chinese Academy of Science (Ningbo No. 2 Hospital). We compared the effectiveness in classifying low/high-risk groups of SPN among them.

RESULTS

The accuracy of FS analysis was 61.3%. Model 3 exhibited the best diagnostic accuracy and had an area under the curve of 0.903 in n the internal validation cohort and 0.919 in the external validation cohort. The calibration plots and net reclassification index (NRI) of Model 3 also exhibited significantly better performance than the other models. Improved diagnostic accuracy was observed in in both internal and external validation cohort.

CONCLUSIONS

Using an RF algorithm, clinical characteristics can be combined with intraoperative FS analysis to significantly improve intraoperative judgment accuracy for low- and high-risk tumors, and may serve as a reliable complementary method when FS evaluation is equivocal, improving the accuracy of the extent of surgical resection.

摘要

背景

术中冰冻切片(FS)分析已被用于指导孤立性肺结节(SPN)患者的切除范围,但不同医院之间其准确性差异很大。近年来,人工智能(AI)和多维数据技术发展迅速,同时,外科医生需要更好的方法来指导SPN的手术策略。我们使用逻辑回归分析和随机森林(RF)算法建立了将FS结果与围手术期多维临床特征相结合的预测模型,以获得更准确的SPN切除范围。

方法

回顾性研究2017年1月至2018年12月在上海胸科医院接受FS引导下手术切除的外周型SPN患者(N = 3089)。分析术中FS引导下切除范围的准确性,并将其作为模型1。收集患者的临床特征(性别、年龄、CT特征、肿瘤标志物、吸烟史、病变大小和结节位置),并使用逻辑回归和RF算法建立模型2和模型3,将FS与临床特征相结合。我们在中国科学院大学宁波华美医院(宁波市第二医院)的117例患者的外部验证队列中确认了这些模型的性能。我们比较了它们在分类SPN低/高风险组方面的有效性。

结果

FS分析的准确性为61.3%。模型3表现出最佳的诊断准确性,在内部验证队列中的曲线下面积为0.903,在外部验证队列中的曲线下面积为0.919。模型3的校准图和净重新分类指数(NRI)也表现出比其他模型显著更好的性能。在内部和外部验证队列中均观察到诊断准确性的提高。

结论

使用RF算法,可将临床特征与术中FS分析相结合,显著提高对低风险和高风险肿瘤的术中判断准确性,并且在FS评估不明确时可作为一种可靠的补充方法,提高手术切除范围的准确性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e7c2/9271446/a0bac5c4603b/tlcr-11-06-1132-f1.jpg

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