Lyu Shuyi, Zhang Meiwu, Yang Lifen, Zhang Baisong, Gao Libo, Yang Liu, Zhang Yan
Department of Interventional Therapy, Ningbo NO.2 Hospital, China.
Department of Ultrasound, Zhenhai Hospital of Traditional Chinese Medicine, Ningbo, China.
Curr Med Imaging. 2024;20:e15734056272324. doi: 10.2174/0115734056272324231115103747.
The accurate diagnosis of superficial lymphadenopathy is challenging. We aim to explore a non-invasive and accurate machine-learning method for distinguishing benign lymph nodes, lymphoma, and metastatic lymph nodes.
The clinical data and ultrasound images of 160 patients with superficial lymphadenopathy (58 benign lymph nodes, 62 lymphoma, 40 metastatic lymph nodes) admitted to our hospital from January 2020 to November 2022 were retrospectively studied. Patients were randomly divided into a training set and test set according to the ratio of 6:4. Firstly, the radiomics features of each lymph node were extracted, and then a series of statistical methods were used to avoid over-fitting. Then, the gradient boosting machine(GBM) was used to build the model. The area under receiver(AUC) operating characteristic curve, precision, recall rate and F1 value were calculated to evaluate the effectiveness of the model.
Ten robust features were selected to build the model. The AUC values of benign lymph nodes, lymphoma and metastatic lymph nodes in the training set were 1.00, 0.98 and 0.99, and the AUC values of the test set were 0.96, 0.84 and 0.90, respectively.
It was a reliable and non-invasive method for the differential diagnosis of lymphadenopathy based on the model constructed by machine learning.
浅表淋巴结病的准确诊断具有挑战性。我们旨在探索一种用于区分良性淋巴结、淋巴瘤和转移性淋巴结的非侵入性且准确的机器学习方法。
回顾性研究了2020年1月至2022年11月我院收治的160例浅表淋巴结病患者(58个良性淋巴结、62个淋巴瘤、40个转移性淋巴结)的临床资料和超声图像。患者按6:4的比例随机分为训练集和测试集。首先,提取每个淋巴结的影像组学特征,然后使用一系列统计方法避免过拟合。接着,使用梯度提升机(GBM)构建模型。计算受试者工作特征曲线下面积(AUC)、精度、召回率和F1值以评估模型的有效性。
选择了10个稳健特征来构建模型。训练集中良性淋巴结、淋巴瘤和转移性淋巴结的AUC值分别为1.00、0.98和0.99,测试集的AUC值分别为0.96、0.84和0.90。
基于机器学习构建的模型是一种用于淋巴结病鉴别诊断的可靠且非侵入性的方法。