Department of Thoracic Surgical Oncology, The Cancer Institute Hospital, Japanese Foundation for Cancer Research, 3-8-31, Ariake, Koto-ku, Tokyo, 135-8550, Japan.
Gen Thorac Cardiovasc Surg. 2021 Dec;69(12):1545-1552. doi: 10.1007/s11748-021-01671-9. Epub 2021 Jun 16.
The aim of this study was to create the preoperative predictive model on mediastinal lymph-node metastasis based on artificial intelligence in surgically resected lung adenocarcinoma.
We enrolled 301 surgical resections of patients with clinical stage N0-1 lung adenocarcinoma, who received positron emission tomography preoperatively between 2015 and 2019. We randomly assigned the patients into two groups: the training (n = 201) and validation groups (n = 100). The training group was used to obtain basic data for learning by artificial intelligence, whereas the validation group was used to verify the constructed algorithm. We used an automatic machine learning platform, to create artificial intelligence model. For comparison, multivariate analysis was performed in the training group, whereas for calculating and verifying the prediction accuracy rate, significant predicting factors were applied to the validation group.
Of the 301 patients, 41 patients were diagnosed as mediastinal lymph node metastasis. In multivariate analysis, the maximum standardized uptake value was an individual predictive factor. The accuracy rate of artificial intelligence model was 84%, and the specificity was 98% which were higher than those of the maximum standardized uptake value (61% and 57%). However, in terms of sensitivity, artificial intelligence model remarked low at 12%.
An artificial intelligence-based diagnostic algorithm showed remarkable specificity compared with the maximum standardized uptake value. Although this model is not ready to practical use and the result was preliminary because of poor sensitivity, artificial intelligence could be able to complement the shortcomings of existing diagnostic modalities.
本研究旨在建立基于人工智能的肺腺癌手术切除患者纵隔淋巴结转移的术前预测模型。
我们纳入了 2015 年至 2019 年间接受正电子发射断层扫描术(PET)术前检查的 301 例临床 N0-1 期肺腺癌手术患者。将患者随机分为两组:训练组(n=201)和验证组(n=100)。训练组用于通过人工智能获取基础数据进行学习,验证组用于验证构建的算法。我们使用自动机器学习平台创建人工智能模型。为了进行比较,在训练组中进行多变量分析,而在验证组中应用有显著预测价值的因素来计算和验证预测准确率。
在 301 例患者中,41 例被诊断为纵隔淋巴结转移。多变量分析显示,最大标准化摄取值是个体预测因素。人工智能模型的准确率为 84%,特异性为 98%,均高于最大标准化摄取值(分别为 61%和 57%)。然而,人工智能模型的敏感性较低,为 12%。
基于人工智能的诊断算法与最大标准化摄取值相比具有显著的特异性。尽管该模型的敏感性较差,目前还不能实际应用,结果也只是初步的,但人工智能可以弥补现有诊断方法的不足。