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基于机器学习的 CT 影像学对胸腺瘤的组织学分型与侵袭预测

Histological Classification and Invasion Prediction of Thymoma by Machine Learning-Based Computed Tomography Imaging.

机构信息

Department of Radiology, Shantou Central Hospital, Shantou 515031, Guangdong, China.

出版信息

Contrast Media Mol Imaging. 2022 Aug 5;2022:4594757. doi: 10.1155/2022/4594757. eCollection 2022.

Abstract

PURPOSE

The values of machine learning-based computed tomography (CT) imaging in histological classification and invasion prediction of thymoma were investigated.

METHODS

181 patients diagnosed with thymoma by surgery or biopsy in Shantou Central Hospital between February 2017 and March 2022 were selected. According to the concept of simplified histological classification and the latest histological classification by the WHO, thymoma was divided into two groups, including low-risk (types A, AB, B1, and metaplastic type) and high-risk groups (types B2 and B3). CT images were reconstructed by filtering back projection (FBP) algorithm. CT image features were collected for statistical analysis.

RESULTS

The main symptoms of patients diagnosed with thymoma included respiratory tract infection, chest distress and shortness of breath, and chest pain. 35.91% of them suffered from complicated myasthenia gravis. Tumor size and position in low-risk and high-risk groups showed no statistical significance ( > 0.05). Tumor morphology and boundary between the two groups suggested statistical difference ( < 0.05). Whether tumor invaded adjacent tissues was apparently correlated with simplified histological classification ( < 0.01). The sensitivity and specificity of CT images for the invasion of mediastinal pleura or pericardium were around 90% and negative predictive values both reached above 95%. Those of the CT images for lung invasion were over 80%. The negative and positive predictive values were 93.54% and 63.82%, respectively. Those of the CT images for blood vessel invasion were 67.32% and 97.93%. The negative and positive predictive values were 98.21% and 83%, respectively.

CONCLUSION

The machine learning-based CT image had significant values in the prediction of different histological classification and even invasion level.

摘要

目的

探讨基于机器学习的计算机断层扫描(CT)成像在胸腺瘤组织学分类和侵袭预测中的价值。

方法

选取 2017 年 2 月至 2022 年 3 月在汕头市中心医院手术或活检诊断为胸腺瘤的 181 例患者。根据简化的组织学分类概念和最新的世界卫生组织(WHO)组织学分类,将胸腺瘤分为低危组(A、AB、B1 和化生型)和高危组(B2 和 B3)。采用滤波反投影(FBP)算法重建 CT 图像,采集 CT 图像特征进行统计分析。

结果

胸腺瘤患者的主要症状包括呼吸道感染、胸闷和呼吸困难、胸痛,其中 35.91%合并有重症肌无力。低危组和高危组的肿瘤大小和位置无统计学差异(>0.05),肿瘤形态和边界两组比较有统计学差异(<0.05)。肿瘤是否侵犯相邻组织与简化组织学分类明显相关(<0.01)。CT 图像对纵隔胸膜或心包侵犯的敏感度和特异度均在 90%左右,阴性预测值均在 95%以上,对肺侵犯的敏感度在 80%以上,阴性和阳性预测值分别为 93.54%和 63.82%,对血管侵犯的敏感度和特异度分别为 67.32%和 97.93%,阴性和阳性预测值分别为 98.21%和 83%。

结论

基于机器学习的 CT 图像在预测不同组织学分类甚至侵袭水平方面具有重要价值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/95d7/9410846/7b1deef8ce2d/CMMI2022-4594757.001.jpg

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