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基于 CT 的机器学习模型鉴别腹膜结核和腹膜癌转移:一项多中心研究。

Differentiating peritoneal tuberculosis and peritoneal carcinomatosis based on a machine learning model with CT: a multicentre study.

机构信息

School of Management, Hefei University of Technology, Hefei, China.

Department of Artificial Intelligence, Beijing Chest Hospital, Capital Medical University, Beijing, China.

出版信息

Abdom Radiol (NY). 2023 Apr;48(4):1545-1553. doi: 10.1007/s00261-022-03749-1. Epub 2023 Mar 13.

Abstract

PURPOSE

It is still a challenge to make early differentiation of peritoneal tuberculosis (PTB) and peritoneal carcinomatosis (PC) clinically as well as on imaging and laboratory tests. We aimed to develop a model to differentiate PTB from PC based on clinical characteristics and primary CT signs.

METHODS

This retrospective study included 88 PTB patients and 90 PC patients (training cohort: 68 PTB patients and 69 PC patients from Beijing Chest Hospital; testing cohort: 20 PTB patients and 21 PC patients from Beijing Shijitan Hospital). The images were analyzed for omental thickening, peritoneal thickening and enhancement, small bowel mesentery thickening, the volume and density of ascites, and enlarged lymph nodes (LN). Meaningful clinical characteristics and primary CT signs comprised the model. ROC curve was used to validate the capability of the model in the training and testing cohorts.

RESULTS

There were significant differences in the following aspects between the two groups: (1) age; (2) fever; (3) night sweat; (4) cake-like thickening of the omentum and omental rim (OR) sign; (5) irregular thickening of the peritoneum, peritoneal nodules, and scalloping sign; (6) large ascites; and (7) calcified and ring enhancement of LN. The AUC and F1 score of the model were 0.971 and 0.923 in the training cohort and 0.914 and 0.867 in the testing cohort.

CONCLUSION

The model has the potential to distinguish PTB from PC and thus has the potential to be a diagnostic tool.

摘要

目的

临床上、影像学和实验室检查均难以对腹膜结核(PTB)和腹膜癌病(PC)进行早期鉴别。本研究旨在建立一种基于临床特征和原发 CT 征象的模型,以区分 PTB 和 PC。

方法

本回顾性研究纳入了 88 例 PTB 患者和 90 例 PC 患者(训练队列:来自北京胸科医院的 68 例 PTB 患者和 69 例 PC 患者;测试队列:来自北京世纪坛医院的 20 例 PTB 患者和 21 例 PC 患者)。对网膜增厚、腹膜增厚和强化、小肠系膜增厚、腹水体积和密度以及增大的淋巴结(LN)进行分析。有意义的临床特征和原发 CT 征象构成了该模型。ROC 曲线用于验证该模型在训练和测试队列中的能力。

结果

两组间存在以下显著差异:(1)年龄;(2)发热;(3)盗汗;(4)饼样网膜增厚和网膜边缘(OR)征;(5)腹膜不规则增厚、腹膜结节和扇贝征;(6)大量腹水;(7)LN 钙化和环形强化。该模型在训练队列中的 AUC 和 F1 评分分别为 0.971 和 0.923,在测试队列中的 AUC 和 F1 评分分别为 0.914 和 0.867。

结论

该模型具有区分 PTB 和 PC 的潜力,因此有可能成为一种诊断工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/fef8/10009348/ab8464684dac/261_2022_3749_Fig1_HTML.jpg

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