Efficient pulmonary nodules classification using radiomics and different artificial intelligence strategies

ConclusionDeep learning methods with transfer learning showed several benefits over statistical learning in terms of nodule prediction performance and saving efforts and time in training large datasets. SVM and DenseNet-121 showed the best performance when compared with their counterparts. There is still more room for improvement, especially when more data can be trained and lesion volume is represented in 3D.Clinical relevance statementMachine learning methods offer unique opportunities and open new venues in clinical diagnosis of lung cancer. The deep learning approach has been more accurate than statistical learning methods. SVM and DenseNet-121 showed superior performance in pulmonary nodule classification.Graphical abstract
Source: Insights into Imaging - Category: Radiology Source Type: research