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An attention-based deep learning network for lung nodule malignancy discrimination

Gang Liu, Fei Liu, Jun Gu, Xu Mao, Xiao‐Ting Xie, Jingyao Sang

2023Frontiers in Neuroscience13 citationsDOIOpen Access PDF

Abstract

Introduction: Effective classification of lung cancers plays a vital role in lung tumor diagnosis and subsequent treatments. However, classification of benign and malignant lung nodules remains inaccurate. Methods: This study proposes a novel multimodal attention-based 3D convolutional neural network (CNN) which combines computed tomography (CT) imaging features and clinical information to classify benign and malignant nodules. Results: An average diagnostic sensitivity of 96.2% for malignant nodules and an average accuracy of 81.6% for classification of benign and malignant nodules were achieved in our algorithm, exceeding results achieved from traditional ResNet network (sensitivity of 89% and accuracy of 80%) and VGG network (sensitivity of 78% and accuracy of 73.1%). Discussion: The proposed deep learning (DL) model could effectively distinguish benign and malignant nodules with higher precision.

Topics & Concepts

MalignancyConvolutional neural networkDeep learningNodule (geology)Artificial intelligenceRadiologyLungMedicineComputer sciencePattern recognition (psychology)PathologyInternal medicinePaleontologyBiologyLung Cancer Diagnosis and TreatmentRadiomics and Machine Learning in Medical ImagingAI in cancer detection
An attention-based deep learning network for lung nodule malignancy discrimination | Litcius