Primary Tumor Origin Classification of Lung Nodules in Spectral CT using Transfer Learning
Linde S. Hesse, Pim A. de Jong, Josien P.W. Pluim, Veronika Cheplygina

TL;DR
This study develops an automated system using transfer learning and spectral CT to classify lung nodules and primary tumor origins, achieving high accuracy and demonstrating spectral features' limited but positive impact.
Contribution
Introduces a transfer learning approach with pre-trained 3D CNNs for lung nodule classification in spectral CT, reducing the need for extensive training data.
Findings
State-of-the-art detection and malignancy classification on LIDC-IDRI dataset.
Higher classification accuracy at scan-level compared to nodule-level.
Spectral features improve classifier performance slightly.
Abstract
Early detection of lung cancer has been proven to decrease mortality significantly. A recent development in computed tomography (CT), spectral CT, can potentially improve diagnostic accuracy, as it yields more information per scan than regular CT. However, the shear workload involved with analyzing a large number of scans drives the need for automated diagnosis methods. Therefore, we propose a detection and classification system for lung nodules in CT scans. Furthermore, we want to observe whether spectral images can increase classifier performance. For the detection of nodules we trained a VGG-like 3D convolutional neural net (CNN). To obtain a primary tumor classifier for our dataset we pre-trained a 3D CNN with similar architecture on nodule malignancies of a large publicly available dataset, the LIDC-IDRI dataset. Subsequently we used this pre-trained network as feature extractor…
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Taxonomy
TopicsAdvanced X-ray and CT Imaging · Radiomics and Machine Learning in Medical Imaging · Medical Imaging Techniques and Applications
