College of Electronic and Information Engineering, Hebei University, Baoding, China.
Research Center of Machine Vision Engineering & Technology of Hebei Province, Baoding, China.
Med Phys. 2023 Sep;50(9):5630-5642. doi: 10.1002/mp.16340. Epub 2023 Mar 11.
For hepatocellular carcinoma and metastatic hepatic carcinoma, imaging is one of the main diagnostic methods. In clinical practice, diagnosis mainly relied on experienced imaging physicians, which was inefficient and cannot met the demand for rapid and accurate diagnosis. Therefore, how to efficiently and accurately classify the two types of liver cancer based on imaging is an urgent problem to be solved at present.
The purpose of this study was to use the deep learning classification model to help radiologists classify the single metastatic hepatic carcinoma and hepatocellular carcinoma based on the enhanced features of enhanced CT (Computer Tomography) portal phase images of the liver site.
In this retrospective study, 52 patients with metastatic hepatic carcinoma and 50 patients with hepatocellular carcinoma were among the patients who underwent preoperative enhanced CT examinations from 2017-2020. A total of 565 CT slices from these patients were used to train and validate the classification network (EI-CNNet, training/validation: 452/113). First, the EI block was used to extract edge information from CT slices to enrich fine-grained information and classify them. Then, ROC (Receiver Operating Characteristic) curve was used to evaluate the performance, accuracy, and recall of the EI-CNNet. Finally, the classification results of EI-CNNet were compared with popular classification models.
By utilizing 80% data for model training and 20% data for model validation, the average accuracy of this experiment was 98.2% ± 0.62 (mean ± standard deviation (SD)), the recall rate was 97.23% ± 2.77, the precision rate was 98.02% ± 2.07, the network parameters were 11.83 MB, and the validation time was 9.83 s/sample. The classification accuracy was improved by 20.98% compared to the base CNN network and the validation time was 10.38 s/sample. Compared with other classification networks, the InceptionV3 network showed improved classification results, but the number of parameters was increased and the validation time was 33 s/sample, and the classification accuracy was improved by 6.51% using this method.
EI-CNNet demonstrated promised diagnostic performance and has potential to reduce the workload of radiologists and may help distinguish whether the tumor is primary or metastatic in time; otherwise, it may be missed or misjudged.
对于肝细胞癌和转移性肝癌,影像学是主要的诊断方法之一。在临床实践中,诊断主要依赖于经验丰富的影像医师,这种方法效率低下,无法满足快速准确诊断的需求。因此,如何基于影像高效准确地对这两种肝癌进行分类是目前亟待解决的问题。
本研究旨在使用深度学习分类模型帮助放射科医师根据肝脏部位增强 CT(计算机断层扫描)门静脉期图像的增强特征对单发转移性肝癌和肝细胞癌进行分类。
本回顾性研究纳入了 2017 年至 2020 年间接受术前增强 CT 检查的 52 例转移性肝癌患者和 50 例肝细胞癌患者。共使用这些患者的 565 张 CT 切片来训练和验证分类网络(EI-CNNet,训练/验证:452/113)。首先,EI 模块用于从 CT 切片中提取边缘信息,以丰富细粒度信息并对其进行分类。然后,使用 ROC 曲线评估 EI-CNNet 的性能、准确率和召回率。最后,将 EI-CNNet 的分类结果与流行的分类模型进行比较。
通过利用 80%的数据进行模型训练和 20%的数据进行模型验证,本实验的平均准确率为 98.2%±0.62(平均值±标准差(SD)),召回率为 97.23%±2.77,精确率为 98.02%±2.07,网络参数为 11.83MB,验证时间为 9.83s/样本。与基础 CNN 网络相比,分类准确率提高了 20.98%,验证时间为 10.38s/样本。与其他分类网络相比,InceptionV3 网络的分类结果有所改善,但参数数量增加,验证时间为 33s/样本,使用该方法分类准确率提高了 6.51%。
EI-CNNet 表现出了有前景的诊断性能,有望减轻放射科医师的工作量,并有助于及时判断肿瘤是原发性还是转移性;否则,可能会漏诊或误诊。