Title
Multi-Perspective Hierarchical Deep-Fusion Learning Framework for Lung Nodule Classification
Document Type
Article
Publication Date
11-18-2022
Abstract
Lung cancer is the leading cancer type that causes mortality in both men and women. Computer-aided detection (CAD) and diagnosis systems can play a very important role for helping physicians with cancer treatments. This study proposes a hierarchical deep-fusion learning scheme in a CAD framework for the detection of nodules from computed tomography (CT) scans. In the proposed hierarchical approach, a decision is made at each level individually employing the decisions from the previous level. Further, individual decisions are computed for several perspectives of a volume of interest. This study explores three different approaches to obtain decisions in a hierarchical fashion. The first model utilizes raw images. The second model uses a single type of feature image having salient content. The last model employs multi-type feature images. All models learn the parameters by means of supervised learning. The proposed CAD frameworks are tested using lung CT scans from the LIDC/IDRI database. The experimental results showed that the proposed multi-perspective hierarchical fusion approach significantly improves the performance of the classification. The proposed hierarchical deep-fusion learning model achieved a sensitivity of 95% with only 0.4 fp/scan.
Publication Source (Journal or Book title)
Sensors (Basel, Switzerland)
Recommended Citation
Sekeroglu, K., & Soysal, Ö. M. (2022). Multi-Perspective Hierarchical Deep-Fusion Learning Framework for Lung Nodule Classification. Sensors (Basel, Switzerland), 22 (22) https://doi.org/10.3390/s22228949