Title
A multi-task CNN approach for lung nodule malignancy classification and characterization
Abstract
Lung cancer is the type of cancer with highest mortality worldwide. Low-dose computerized tomography is the main tool used for lung cancer screening in clinical practice, allowing the visualization of lung nodules and the assessment of their malignancy. However, this evaluation is a complex task and subject to inter-observer variability, which has fueled the need for computer-aided diagnosis systems for lung nodule malignancy classification. While promising results have been obtained with automatic methods, it is often not straightforward to determine which features a given model is basing its decisions on and this lack of explainability can be a significant stumbling block in guaranteeing the adoption of automatic systems in clinical scenarios. Though visual malignancy assessment has a subjective component, radiologists strongly base their decision on nodule features such as nodule spiculation and texture, and a malignancy classification model should thus follow the same rationale. As such, this study focuses on the characterization of lung nodules as a means for the classification of nodules in terms of malignancy. For this purpose, different model architectures for nodule characterization are proposed and compared, with the final goal of malignancy classification. It is shown that models that combine direct malignancy prediction with specific branches for nodule characterization have a better performance than the remaining models, achieving an Area Under the Curve of 0.783. The most relevant features for malignancy classification according to the model were lobulation, spiculation and texture, which is found to be in line with current clinical practice.
Year
DOI
Venue
2021
10.1016/j.eswa.2021.115469
Expert Systems with Applications
Keywords
DocType
Volume
Lung cancer,Malignancy,Multitasking classification,Convolutional neural networks,Deep learning
Journal
184
ISSN
Citations 
PageRank 
0957-4174
1
0.35
References 
Authors
0
6
Name
Order
Citations
PageRank
Sónia Marques110.35
Filippo Schiavo210.35
Carlos Ferreira311.02
Joao Pedrosa482.89
A. Cunha522.76
Aurélio J. C. Campilho632140.49