Xie Lipeng, Xu Yongrui, Zheng Mingfeng, Chen Yundi, Sun Min, Archer Michael A, Mao Wenjun, Tong Yubing, Wan Yuan
School of Cyber Science and Engineering, Zhengzhou University, Zhengzhou, China.
Department of Cardio-thoracic Surgery, Nanjing Medical University Affiliated Wuxi People's Hospital, Wuxi, Jiangsu, China; Nanjing Medical University, Nanjing, Jiangsu, China.
Comput Med Imaging Graph. 2024 Dec;118:102438. doi: 10.1016/j.compmedimag.2024.102438. Epub 2024 Oct 10.
The accurate categorization of lung nodules in CT scans is an essential aspect in the prompt detection and diagnosis of lung cancer. The categorization of grade and texture for nodules is particularly significant since it can aid radiologists and clinicians to make better-informed decisions concerning the management of nodules. However, currently existing nodule classification techniques have a singular function of nodule classification and rely on an extensive amount of high-quality annotation data, which does not meet the requirements of clinical practice. To address this issue, we develop an anthropomorphic diagnosis system of pulmonary nodules (PN) based on deep learning (DL) that is trained by weak annotation data and has comparable performance to full-annotation based diagnosis systems. The proposed system uses DL models to classify PNs (benign vs. malignant) with weak annotations, which eliminates the need for time-consuming and labor-intensive manual annotations of PNs. Moreover, the PN classification networks, augmented with handcrafted shape features acquired through the ball-scale transform technique, demonstrate capability to differentiate PNs with diverse labels, including pure ground-glass opacities, part-solid nodules, and solid nodules. Through 5-fold cross-validation on two datasets, the system achieved the following results: (1) an Area Under Curve (AUC) of 0.938 for PN localization and an AUC of 0.912 for PN differential diagnosis on the LIDC-IDRI dataset of 814 testing cases, (2) an AUC of 0.943 for PN localization and an AUC of 0.815 for PN differential diagnosis on the in-house dataset of 822 testing cases. In summary, our system demonstrates efficient localization and differential diagnosis of PNs in a resource limited environment, and thus could be translated into clinical use in the future.
在CT扫描中对肺结节进行准确分类是肺癌早期检测和诊断的一个重要方面。对结节的分级和纹理进行分类尤为重要,因为它可以帮助放射科医生和临床医生在结节管理方面做出更明智的决策。然而,目前现有的结节分类技术具有单一的结节分类功能,并且依赖大量高质量的标注数据,这不符合临床实践的要求。为了解决这个问题,我们开发了一种基于深度学习(DL)的肺结节拟人化诊断系统,该系统由弱标注数据训练,其性能与基于全标注的诊断系统相当。所提出的系统使用DL模型对带有弱标注的肺结节(良性与恶性)进行分类,这消除了对肺结节进行耗时且费力的手动标注的需求。此外,通过球尺度变换技术获取的手工形状特征增强的肺结节分类网络,能够区分具有不同标签的肺结节,包括纯磨玻璃影、部分实性结节和实性结节。通过在两个数据集上进行5折交叉验证,该系统取得了以下结果:(1)在包含814个测试病例的LIDC-IDRI数据集上,肺结节定位的曲线下面积(AUC)为0.938,肺结节鉴别诊断的AUC为0.912;(2)在包含822个测试病例的内部数据集上,肺结节定位的AUC为0.943,肺结节鉴别诊断的AUC为0.815。总之,我们的系统在资源有限的环境中展示了高效的肺结节定位和鉴别诊断能力,因此未来有望转化为临床应用。