Department of Radiology, Faculty of Medicine, Eskisehir Osmangazi University, Eskisehir, Turkey.
Department of Mathematics and Computer, Faculty of Science and Letters, Eskisehir Osmangazi University, Eskisehir, Turkey.
Curr Med Imaging. 2021;17(9):1137-1141. doi: 10.2174/1573405617666210204210500.
Every year, lung cancer contributes to a high percentage deaths in the world. Early detection of lung cancer is important for its effective treatment, and non-invasive rapid methods are usually used for diagnosis.
In this study, we aimed to detect lung cancer using deep learning methods and determine the contribution of deep learning to the classification of lung carcinoma using a convolutional neural network (CNN).
A total of 301 patients diagnosed with lung carcinoma pathologies in our hospital were included in the study. In the thorax, Computed Tomography (CT) was performed for diagnostic purposes prior to the treatment. After tagging the section images, tumor detection, small and non-small cell lung carcinoma differentiation, adenocarcinoma-squamous cell lung carcinoma differentiation, and adenocarcinoma-squamous cell-small cell lung carcinoma differentiation were sequentially performed using deep CNN methods.
In total, 301 lung carcinoma images were used to detect tumors, and the model obtained with the deep CNN system exhibited 0.93 sensitivity, 0.82 precision, and 0.87 F1 score in detecting lung carcinoma. In the differentiation of small cell-non-small cell lung carcinoma, the sensitivity, precision and F1 score of the CNN model at the test stage were 0.92, 0.65, and 0.76, respectively. In the adenocarcinoma-squamous cancer differentiation, the sensitivity, precision, and F1 score were 0.95, 0.80, and 0.86, respectively. The patients were finally grouped as small cell lung carcinoma, adenocarcinoma, and squamous cell lung carcinoma, and the CNN model was used to determine whether it could differentiate these groups. The sensitivity, specificity, and F1 score of this model were 0.90, 0.44, and 0.59, respectively, in this differentiation.
In this study, we successfully detected tumors and differentiated between adenocarcinoma- squamous cell carcinoma groups with the deep learning method using the CNN model. Due to their non-invasive nature and the success of the deep learning methods, they should be integrated into radiology to diagnose lung carcinoma.
每年,肺癌都会导致世界上很高比例的死亡。早期发现肺癌对于有效治疗非常重要,通常使用非侵入性的快速方法进行诊断。
在这项研究中,我们旨在使用深度学习方法检测肺癌,并使用卷积神经网络(CNN)确定深度学习对肺癌分类的贡献。
共纳入我院 301 例肺癌病理患者。在胸部,治疗前进行 CT 扫描以进行诊断。在标记切片图像后,使用深度 CNN 方法依次进行肿瘤检测、小细胞肺癌和非小细胞肺癌的区分、腺癌-鳞癌的区分和腺癌-鳞癌-小细胞肺癌的区分。
共使用 301 例肺癌图像检测肿瘤,深度 CNN 系统获得的模型在检测肺癌时表现出 0.93 的敏感性、0.82 的准确性和 0.87 的 F1 评分。在小细胞癌-非小细胞癌的区分中,CNN 模型在测试阶段的敏感性、准确性和 F1 评分分别为 0.92、0.65 和 0.76。在腺癌-鳞癌的区分中,敏感性、准确性和 F1 评分分别为 0.95、0.80 和 0.86。最后将患者分为小细胞肺癌、腺癌和鳞癌,并用 CNN 模型判断是否能对这些组进行区分。该模型在这种区分中的敏感性、特异性和 F1 评分分别为 0.90、0.44 和 0.59。
在这项研究中,我们成功地使用基于 CNN 的深度学习方法检测了肿瘤,并对腺癌-鳞癌组进行了区分。由于其非侵入性和深度学习方法的成功,它们应该被整合到放射学中以诊断肺癌。